Vol.:(0123456789)
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Adolescent Res Rev (2017) 2:315–330
DOI 10.1007/s40894-017-0053-4
SYSTEMATIC REVIEW
Social Media and Depressive Symptoms in Childhood
and Adolescence: A Systematic Review
Niall McCrae1
· Sheryl Gettings2
· Edward Purssell2
Received: 23 November 2016 / Accepted: 25 January 2017 / Published online: 2 March 2017
© The Author(s) 2017. This article is published with open access at Springerlink.com
Introduction
New technology can transform society, but fears have been
raised about its physical, social and psychological conse-
quences. This has historical precedent. In the nineteenth
century, many people were diagnosed with “railway sick-
ness”, a condition attributed to the unnatural motions of
train travel, most frequently observed in passengers who
had faced backwards (Shaw-Mackenzie 1895). Perhaps
the rapid and universal growth of social media has cre-
ated a “cyber carriage”, in which vast numbers of people
are oblivious to their physical surroundings while fixated
on the internet, accessed through handheld devices. Is liv-
ing in the virtual reality of social media harmful to younger
people’s social and emotional development, well-being and
mental health, or are the dangers exaggerated by older gen-
erations? This is a significant question, because there are
reports of escalating mental health problems in children,
and difficulties experienced at this age may have enduring
impact. This article presents a systematic review of studies
measuring the relationship between social media use and
depressive symptoms in young people.
Impact of Social Media Use in Childhood
and Adolescence
The internet is a ubiquitous medium for business, informa-
tion and entertainment, but arguably it has had most pro-
found impact as a means of interpersonal communication.
Use of social networking sites grew exponentially after the
launch of MySpace and Facebook in 2004. Within a few
years, Facebook was being used by four-fifths of inter-
net users aged 13–16 in the UK (Livingstone et al. 2011).
Twitter, allowing short messages to be sent to unlimited
Abstract Concerns are increasingly raised in academic
and lay literature about the impact of the internet on young
people’s well-being. This systematic review examined
empirical research on the relationship between social media
use and depressive symptoms in the child and adolescent
population. A systematic search of Medline, PsycInfo and
Embase databases yielded eleven eligible studies. Relevant
results were extracted from each study, with a total sample
of 12,646. Analysis revealed a small but statistically sig-
nificant correlation between social media use and depres-
sive symptoms in young people. However, studies varied
widely in methods, sample size and results, making the
clinical significance of these findings nuanced. Over half
of the studies were cross-sectional, while those of longitu-
dinal design were of limited duration. This review justifies
further investigation of this phenomenon, with a need for
consensus on variables and measurement.
Keywords Internet · Social media · Adolescence ·
Depression · Mental health
Electronic supplementary material The online version of this
article (doi:10.1007/s40894-017-0053-4) contains supplementary
material, which is available to authorized users.
* Niall McCrae
n.mccrae@kcl.ac.uk
1
Mental Health Nursing, Florence Nightingale Faculty
of Nursing and Midwifery, King’s College London,
1.17 James Clerk Maxwell Building, 57 Waterloo Road,
London SE1 8WA, UK
2
Child & Family Health, Florence Nightingale Faculty
of Nursing and Midwifery, King’s College London, London,
UK
316 Adolescent Res Rev (2017) 2:315–330
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recipients, was introduced in 2006 and rapidly gained
global popularity. Since the launch of internet-connected
smartphones, which overtook sales of cell phones in 2013,
instant messaging sites such as Snapchat and WhatsApp
have become standard tools of communication. In the
USA, recent data show that 93% of people aged 15–17 have
mobile internet access through a phone or tablet; while
Facebook remains highly popular, Instagram and Twitter
are more valued by teenagers (Statista 2016). Whether on
conventional computer screen or mobile device, young peo-
ple use social media in every waking hour, in countries rich
and poor.
The internet may be a double-edged sword. Neurosci-
entist Susan Greenfield (2014) argued in her book Mind
Change that digital technology has deleterious effects on
personality, identity and relationships. Applying Prensky’s
(2001) distinction between “digital immigrants” and “digi-
tal natives”, Greenfield explained that whereas the former
were schooled in a pre-digital era, now using the internet
alongside older media, the latter have known nothing else.
According to this conceptualization, digital immigrants
confer higher value on face-to-face interaction, sometimes
criticising younger people for contravening traditional
social norms when focusing on their mobile devices, while
digital natives dismiss this as older people’s fear of change.
As described in Turkle’s book Alone Together: Why We
Expect More from Technology and Less from Each Other
(2011), family relationships are weakened when proximate
reality is neglected in favor of online contact. Digital tech-
nology may be changing conceptualizations and language
of human relationships. Defined as a “dyadic, co-con-
structed phenomenon characterized by reciprocity, close-
ness and intimacy” (Amichai-Hamburger et al. 2013: 34),
friendship is vital for the well-being of children and adults,
but the advent of social media appears to have modified its
meaning. For “Generation Wired” (a term used by Tam and
Walter 2013), such relationships are increasingly generated
and maintained online. Data from the Pew Research Center
(Madden et al. 2013) show an average of 300 Facebook
friends for teenagers in the United States, but the quality
of such relationships is more important than the quantity.
With a much larger social circle than in traditional friend-
ships, inevitably much communication is shallow (Grieve
et al. 2013). Virtual reality may become the real world for
some users, to the extent that friends known only through
cyberspace become their closest confiding relationships
(McKenna et al. 2002).
Evidence suggests that while people with strong social
skills and technological abilities accrue benefit from
online interaction, those who are less adept do not fare so
well. This exacerbation of differences was portrayed by
Kraut and colleagues (2002) as “the rich get richer”. By
contrast, the social compensation hypothesis postulates
that socially-awkward people derive benefit from online
contact that they do not find with face-to-face interac-
tion (Valkenburg and Peter 2007; Amichai-Hamburger
and Schneider 2014). However, while Dolev-Cohen and
Barak (2013) suggested that online communication is
supportive for shy, anxious or depressive young people, it
may compound their difficulties by reinforcing poor self-
esteem (Staksrud et al. 2013).
Concerns have arisen about the mental health impact
of internet activity on the young, with frequent coverage
of this topic in the mass media. Early evidence of adverse
psychological impact was presented by Kraut and col-
leagues (1998) and by Young and Rodgers (1998), who
found that frequent internet use raised the risk of depres-
sive symptoms. Since then, studies have shown cor-
relations of online activity by younger people with low
self-esteem (Caplan 2002), loneliness (Clayton et al.
2013), self-harm (Lam et al. 2009) and autistic traits
(Finkenauer et al. 2012). However, other studies have
indicated higher self-esteem and satisfaction with life,
and reduced risk of mental health problems (Valkenburg
et al. 2006; Bessièrre et al. 2008; Grieve et al. 2013; Best
et al. 2014). Development of supportive social bonds and
belongingness can protect against adversities such as
loneliness and bullying (Wu et al. 2016).
A high proportion of serious mental health problems in
adulthood emerges during adolescence (Kessler et al. 2005;
Children Young People’s Health Outcomes Forum 2012).
Epidemiological data predating mass use of online social
media showed a high risk of depression in this age group,
with estimates of 2–5% prevalence of major depressive
disorder (Costello et al. 2003), but recent reports show an
alarming increase in depressed younger people (Office for
National Statistics 2014). The internet, and related social
trends, may be a major factor in the rise of psychological
morbidity in the young.
Various theories have been proposed for the putative link
between social media use and psychological problems in
younger people. Socialization is crucial to the progression
from adolescence to adulthood, and use of social media
may have profound influence on this adjustment (Wood
et al. 2016). Applying John Bowlby’s psychanalytic theory,
Oldmeadow and colleagues (2013) found that people with
attachment anxiety were more likely to turn to Facebook
for emotional support. However, reduced face-to-face con-
tact detracts from a traditional supportive environment that
can help young people to manage the challenges of ado-
lescence. Development of self-awareness may be inhibited
in young people who lack engagement in reflective inter-
actions with family and friends (Siegel 2014). Empathy is
honed through social relationships, which may not be as
close and meaningful online, where superficial behavior
such as virtue-signalling prevails.
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The internet may be changing the process of identity for-
mation, which psychoanalyst Erik Erikson (1980) empha-
sized in the adolescent stage of his model of eight stages
of the human lifespan. Each stage presents conflict, which
must be resolved to advance successfully to the next stage.
Most young people overcome the stress and difficulties of
adolescence, but some flounder. Successful progress from
adolescence to adulthood entails acquisition of social
skills, confirmed and rewarded by social acceptance. Self-
presentation is tested through display and response. As
friendships become more complex in adolescence, with the
emergence of romantic intimacy and sexual interest, there
is need for privacy, yet social media encourage openness
and divulgence of personal information. A review of stud-
ies of online identity development by Wängqvist and Frisén
(2016) showed that aspects of identity constrained in offline
contact are freely expressed online, and that anonymity in
internet communication has implications for cohesive iden-
tity formation.
As argued in an influential book Generation Me by Jean
Twenge (2006), narcissism may be increasing in Western
society. Twenge and colleagues (2008) found considerably
higher scores in this trait in students compared to a group
of 20 years earlier. Narcissistic behavior has always been
more evident in younger people, who have relatively little
responsibility to others while tending to be self-absorbed.
The extent is probably exaggerated in the media, as the
term is used for people merely taking “selfies”: such behav-
ior may be vain, but is socially normative and should not be
pathologized if it does not pervasively disrupt daily func-
tioning (Webber 2016). However, the internet has provided
more opportunity for expression of narcissistic aspects of
personality. People with narcissistic traits are prone to low
mood when their high expectations are not fulfilled (Web-
ber 2016). Huprich (2014) described a narcissistic person-
ality pattern including depressive and masochistic tenden-
cies as “malignant self-regard”. A depressive reaction to
setbacks is a prominent feature of the DSM-V condition of
narcissistic personality disorder.
Several socio-cultural theories have emerged on the
effect of digital media on mental health. The internet can
be a harsh environment for young people, who are heav-
ily influenced by peer pressure. A review by Wu and col-
leagues (2016) of research on use of the internet for social
purposes showed that a major motive for young people
is positive reinforcement of their social connectedness.
Social media are the forum for the setting and reinforc-
ing of norms. Conformity is rewarded, while a careless
remark might result in a person being ostracized. Unreal-
istic expectations arise as users see the relative popular-
ity of others, as indicated by their number of friends and
“likes”. A study of college students (Feinstein et al. 2013)
showed that negative comparisons with peers on Facebook
leads to rumination, which increases the risk of depression.
Online self-disclosure may relieve stress, generates sup-
portive messages and raises a person’s profile (Tamir and
Mitchell 2012), but control of sensitive information is lost.
Depressed or anxious young people do not always make
sensible decisions about privacy, sometimes revealing per-
sonal details in a way that they later regret (McKenna et al.
2002).
Young people are expected to be in perpetual contact,
and to project themselves visually as well as verbally.
Attractiveness is a major criterion of status and popular-
ity. Young female internet users are particularly keen to
choose the most favorable image of themselves on Face-
book (Pempek et al. 2009). “Selfies” may be uploaded to
seek approval, but an adverse remark may be distressing for
someone of delicate self-esteem. Young people are increas-
ingly transmitting sexualized messages or images (“sex-
ting”), with little concern for consent or for exploitation by
abusive peers or strangers (Staksrud et al. 2013). Impulsive
behavior online may jeopardize future careers, and in some
instances children have been criminalized for disseminat-
ing sexual images. Aggressive behavior or “trolling” is a
common problem in internet use by young people (Ko et al.
2012; Hinduja and Patchin 2013). A review of 113 studies
by Kowalski and colleagues (2014) found that cyberbully-
ing correlates with mental health problems in adolescence;
in some cases it has led to suicide (Hinduja and Patchin
2010). Bullying may be worse online than in physical prox-
imity, factors being the anonymity of the bully and the
inescapable public embarrassment and shame (Slonje et al.
2013). The three most frequent problems arising in coun-
selling sessions provided by ChildLine (a British helpline
for children) in 2016 were low self-esteem or unhappiness,
family relationships and bullying (online and offline); the
latter was the most common reason for counselling in chil-
dren aged 11 and under, and third in the 12 to 15 years age
group (National Society for the Prevention of Cruelty to
Children 2016).
Gender differences are an important consideration.
Rodgers and colleagues (2013) found that body image
concerns correlate with social media use by young female
but not male users; such perceptions may lead to eating
problems and poorer outcomes of adolescent adjustment.
A review of 67 studies of internet use and body image
concerns in adolescence by Rodgers and Melioli (2016)
described various theoretical perspectives on this link.
One theory is self-objectification, which is based on the
feminist argument that women are seen as sexual objects
under a male gaze. Self-objectification is a form of con-
sciousness manifesting in habitual monitoring of physical
appearance, with tendencies for anxiety and shame. Work
by Tiggemann and Slater (2013) suggests that self-objecti-
fication is a significant cause of psychological problems in
318 Adolescent Res Rev (2017) 2:315–330
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adolescence. The combination of media and peer pressure
on girls to be thin and sexually attractive is compounded by
the internet. Being constantly connected turns a young per-
son into a commodity, to be compared with others (Gon-
zales and Hancock 2011). However, a limitation of socio-
cultural theories is their emphasis on structure over agency,
which reduces internet users to passivity.
Research has repeatedly shown that girls use the internet
mostly for relational purposes (thus being highest users of
social media), while boys tend to use it more for instrumen-
tal activities such as video-gaming (Park 2009; Kuss and
Griffiths 2012). In a study of Canadian teenagers by Sam-
pasa-Kanyinga and Lewis (2015), 71% of girls used social
networks for more than 2 h daily, compared to 29% of boys,
which partly explained their finding of a marked gender
imbalance in psychological distress. A recent UK govern-
ment survey of children aged 14–15 (Department of Health
and NHS England 2015) showed that girls were more than
twice as likely as boys to suffer from symptoms of com-
mon mental disorder (37–15%), with the proportion of girls
with anxiety or depression rising by 10% since the previous
survey 10 years earlier. Among various factors discussed
by experts was excessive use of social media (Times 22nd
August 2016). Gender-related differences in case ascertain-
ment for mental health problems also need consideration,
with girls possibly more likely to seek help.
Addictive personality traits may be stimulated by the
internet. Soon after the emergence of the worldwide web,
psychiatrist Ivan Goldberg (1995) proposed internet addic-
tion as a specific disorder; manifestations are similar to
other compulsive behaviors such as gambling, includ-
ing preoccupation, mood problems, functional impair-
ment and withdrawal effects (Leung 2004). Young (1999)
devised the Internet Addiction Scale, which has been used
widely in research on internet use. Another instrument is
the Facebook Addiction Scale, which measures mood and
withdrawal symptoms (Andreassen et al. 2012). Although
such addiction was not included by the American Psychiat-
ric Association (2013) in the latest Diagnostic & Statistical
Manual of Mental Disorders, internet gaming disorder was
entered as a condition for further investigation. However,
such diagnostic expansion has been criticized as medicali-
sation of everyday life (Moynihan and Henry 2006).
Disruption of the body clock may also be a factor in
the psychological consequences of internet use. Blue
light emitted by digital screens inhibits secretion of mela-
tonin, which is necessary for sleep. A meta-analysis by
Carter and colleagues (2016) showed that sleeping beside
mobile devices stimulates the brain. Disturbed sleep pat-
terns may cause obesity, weakened immunity and stunted
growth. Daytime tiredness and irritability may have social
and educational consequences. Change to normal circadian
rhythms has known influence on mood (Lewy et al. 1998).
Thus it can be seen that research on the relationship
between social media and mental health in young people
is multifaceted. Much of the discussion of this topic has
occurred in lay media including the popular press, possi-
bly leading to uncritical acceptance of untested ideas and
assumptions. Studies indicate benefits as well as harmful
effects of internet use, but evidence is complicated by the
lack of either causal mechanisms or a certain direction of
relationship between variables. Results in one study set-
ting may not be generalizable to young people elsewhere.
Whether any increase of psychological distress in adoles-
cence is attributable to online social media activity is not
yet understood. A review of relevant peer-reviewed studies
was therefore indicated.
Current Review
This review examined empirical research on the relation-
ship between social media use and depressive symptoms in
the child and adolescent population, with three objectives.
First, we aimed to produce a critique of the design and
conclusions of relevant studies. It is apparent that research
findings, particularly as reported in the popular media, may
lack inferential validity in measuring the impact of social
media on mental health. Secondly, the review was to ana-
lyze correlations between social media use and depressive
symptoms, including a “dose” effect, taking account of lim-
itations considered above. Thirdly, the review investigated
the role of gender, as differences between male and female
behavior and response to social media use have been high-
lighted in research.
Method
A systematic literature search was conducted, seeking rele-
vant articles in peer-reviewed journals. Eligible studies had
a generic child or adolescent sample, rather than selecting
groups by mental health morbidity or vulnerability. Social
media were defined as websites used primarily for social
interaction: these include social networking sites such as
Facebook, instant messaging (e.g., WhatsApp) and image-
sharing applications (e.g., Instagram). Excluded were stud-
ies measuring depressive symptoms in relation to use of the
internet rather than social media specifically. Although the
internet is a rapidly changing phenomenon, no time period
was applied, or geographical restriction; such limits would
be arbitrary and a risk of selection bias (McCrae and Purs-
sell 2015). As there was no resource for translation, only
studies in English language were included. The databases
Medline, PsychInfo, and Embase were used, with the fol-
lowing search strategy:
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Adolescent Res Rev (2017) 2:315–330
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Population: child/adolescent aged 5–18
Exposure: social media
Outcome: depression/depressive symptoms
Articles were screened first by title, then by abstract.
At the final stage of screening, full articles were read and
assessed independently by all three authors, with any dif-
ferences in verdict followed by discussion to gain consen-
sus. Eligible articles were summarized and assessed for
risk of bias, using the Cochrane Collaboration Methods
Group Tool to assess risk of bias in cohort studies.
For statistical analysis, the most relevant result was
extracted from each study on the relationship between
social media use and depressive symptoms. Most studies
had a correlational design, but for studies presenting other
statistics, these were converted to correlations using the
compute.es package (Re 2014). These were analyzed and
forest plots generated using the meta (Schwarzer 2015) and
metafor (Viechtbauer 2015) packages in R (R Core Team
2016). The metacor command was used with Fisher’s z
transformation for the correlation and the DerSimonian-
Laird estimator for τ2
. Because a-priori heterogeneity
was assumed, a random-effects model was used for the
primary analysis; although the fixed-effect equivalent was
also calculated as comparison of their differing inferential
assumptions can be instructive. The random-effects model
provides an unconditional inference about a broader set of
studies of which the studies included in the meta-analysis
are assumed to be a random sample, while the fixed-effects
approach makes an inference based only on and about those
studies actually included in the meta-analysis (Viechtbauer
2015).
Results
The computerized search yielded 2357 unique studies with
a further 18 from the hand search. After screening by title,
349 abstracts were read. This second stage of screening
reduced the total to 134, of which all but one unobtainable
article were inspected. Eleven studies fulfilled the eligibil-
ity criteria and were included in the analysis (Fig. 1).
Of the 11 studies, six were cross-sectional and five were
longitudinal (Table 1). Two studies each were conducted in
the United States, Australia and the Netherlands; and one
each from Belgium, Spain, Romania, Canada and Taiwan.
Overall, the studies had 13,532 participants, although for
this review the results applied to a slightly smaller sam-
ple of 12,646. In four studies depressive symptoms were
the only psychological correlate or outcome variable,
while seven studies had two or more such variables (these
included social anxiety, stress and suicidal ideation). A
variety of different measures were used, the most common
being the Children’s Depression Inventory, which was used
in three studies. DSM criteria for depression were meas-
ured in one study.
Risk of bias across studies was high due to the prepon-
derance of cross-sectional studies or longitudinal studies
with short follow-up times, lack of exclusion of existing
cases of depression, reliance on self-report, and (in some
studies) measurement that had not been validated or use of
instruments in a different context than originally intended
(see Supplementary File 1).
Theoretical Approach
The “rich get richer” and social compensation hypotheses
were tested by Selfhout and colleagues (2009), who com-
pared incidence of depression and anxiety between use of
internet for communication and other uses in high school
pupils. Van der Eijnden and colleagues (2008) studied the
relationship between compulsive online communication
and psychological well-being, based on previous research
indicating that unlike instrumental activities online, use of
the internet for social purposes raises the risk of loneliness
and depression. The researchers tested several hypotheses
to investigate a possible bidirectional relationship.
Self-identity was the theoretical basis for three studies.
Social comparison and feedback-seeking are important
means of forming a self-identity in adolescence, but Nesi
and Prinstein (2015) were interested in how young peo-
ple may engage in such behaviors in maladaptive ways on
the internet. They hypothesized that a high frequency of
social comparison and feedback-seeking online would pre-
dict depression, although this would be moderated by peer
popularity. Neira and Barber (2014) applied self-concept
theory in their study of adolescent use of social media.
Social comparison and peer feedback are integral to the
younger person’s self-evaluation, and these are dramati-
cally increased by internet use, thus making a plausible link
between social media, self-concept and depressed mood.
Dumitrache and colleagues (2012) studied self-image and
depressive tendencies in teenage Facebook users. Referring
to the contrasting hypotheses of enhancement and compen-
sation, they examined the relationship between positive or
negative self-image and the quantity and type of informa-
tion posted online.
In a female sample, Tiggemann and Slater (2015) inves-
tigated correlations between self-objectification, body
shame, dieting and use of various types of media. Inter-
net use was considered as a predictor of self-objectifica-
tion and its adverse consequences, including depression.
Gámez-Gaudix (2014) applied the cognitive-behavioral
model to investigate problematic internet use and depres-
sive symptoms in teenagers. In this model, online social
320 Adolescent Res Rev (2017) 2:315–330
1 3
communication is less threatening than face-to-face interac-
tion, but this readily available source of emotional support
can lead to excessive and dysfunctional use. Online activity
may be a maladaptive response to depressive tendencies.
Stress was the focus of two studies. Frison and Egger-
mont (2015) noted that stress increases in adolescence, due
to pressures at school and in family relationships. Coping
mechanisms include actively seeking social support and
avoidance, which are respectively adaptive and maladap-
tive. While the internet facilitates social support, friend-
ship on Facebook is often weaker, to the effect that support
may not be received, with potentially adverse psychologi-
cal consequences. The researchers studied relationships
between daily stress, seeking and receiving of social sup-
port, and depressed mood. A psycho-physiological study by
Morin-Major and colleagues (2016) investigated Facebook
activity (frequency of use, network size, self-presentation
and peer interaction) with basal cortisol level (a measure
of stress) and depressive symptoms. It is known that social
support is a buffer to biological response to acute stressors.
Hwang and colleagues (2009) considered the internet
as a means of social support in the rapidly changing con-
text of Taiwan. In contrast to the individualism of Western
societies, Taiwan has a collectivist culture, and young peo-
ple are subjected to high social pressures in academic per-
formance, sometimes to the detriment of their well-being.
Whereas depression has been normalized in American life,
it remains stigmatized in Oriental countries, causing double
jeopardy for sufferers. The study by Hwang and colleagues
was primarily concerned with the online and offline activity
of younger people with depressed mood, but it recruited a
general adolescent sample and measured the behavioral and
psychological variables in a regression model.
The study by Ybarra and colleagues (2005) had no stated
theoretical rationale, but they referred to previous research
showing differences in use of the internet by young people
Fig. 1  PRISMA flowchart
Records idenfied through
database searching
Embase = 239
Medline = 1622
PsycINFO = 788
Total = 2649
Addional records idenfied
through other sources
(n =18)
Records aer duplicates removed
(n = 2357)
Records screened by
abstract
(n = 369 )
Records excluded
(n = 233)
Full-text arcles assessed
for eligibility
(n = 134)
Full-text arcles excluded
(n =123)
Reasons for exclusions:
Adults or mixed age sample without
separate data for 18 = 17
Psychiatric paents = 1
Case studies = 1
Evaluaon of instrument = 2
Lacks social media data = 54
No depressive symptoms outcomes = 17
No data on correlaon between social
media and depressive symptoms = 31
Studies included in
quantave synthesis
(meta-analysis)
(n = 11)
Records screened by tle
(n = 2375)
Records excluded
(n = 2006)
Unavailable records
excluded
(n = 2)
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Adolescent Res Rev (2017) 2:315–330
1 3
in relation to depressive symptoms. Through the Youth
Internet Safety Survey they measured online communica-
tion, self-disclosure and exposure to sexual content and
harassment. Depressive symptoms were assessed using
DSM categories of minor and major depressive disorder.
Results of Cross‑sectional Studies
Ybarra and colleagues (2005) categorized the most fre-
quent purpose of internet use (chatroom, e-mail, instant
messaging and others). From an overall sample of 1501,
chatroom was used most by 136, of whom 101 were not
depressed, 22 had symptoms of minor depressive disor-
der and 13 of major depressive disorder. The proportion
depressed (minor or major) was 34%. For this review an
odds ratio for depression was calculated, comparing chat-
room users with those in the category of other purposes;
the result was a statistically significant excess of depression
in the chatroom group. Although not included in statistical
analysis in this review, the instant messaging category was
also relevant. This was the most common use of internet
for 154 participants, of whom 133 were not depressed,
18 had symptoms of minor depressive disorder, and 3 of
major depressive disorder; the depressed proportion was
14%. Hwang and colleagues (2009) found a statistically
significant relationship between online communication and
depressed mood. Overall, the study showed that adoles-
cent participants who reported depressive mood were more
likely to use the internet for friendships and to express
feelings compared to those who did not report depressive
symptoms. From the study by Dumitrache and colleagues
(2012) of self-image and depressive tendencies in Face-
book users, we extracted the correlation between amount
of identity-related items in Facebook profiles and depres-
sive symptoms; this was statistically significant. Overall,
the study showed that depressive symptoms correlated with
low self-image and identity-type information on Facebook.
Extracted from the study by Neira and Barber (2014) was
Table 1  Summary of studies
Authors (year) Country Design Age Overall sample Girls (%) Mental/behavioural
outcome(s)
Instrument for depres-
sive symptoms
Ybarra et al. (2005) USA Cross-sectional 10–17 1501 47 Depressive symp-
toms
Nine symptoms from
DSM
van den Eijnden
et al. (2008)
Netherlands Longitudinal cohort 12–15 663 52 Depression, loneli-
ness
Depressive Mood List
Hwang et al. (2009) Taiwan Cross-sectional 12–17 6341 51 Mood Daily Life and
Depressive Mood
Survey
Selfhout et al.
(2009)
Netherlands Longitudinal cohort 14–17 307 51 Depressive
symptoms, social
anxiety
Children’s Depression
Inventory
Gamez-Guadix
(2014)
Spain Longitudinal cohort 13–17 957 61 Depressive symp-
toms
Brief Symptom Inven-
tory (depression
subscale)
Neira and Barber
(2014)
Australia Cross-sectional 13–17 1819 55 Social self-concept,
self-esteem,
depressed mood
Depressed Mood
Scale
Frison and Egger-
mont (2015)
Belgium Cross-sectional High school 910 52 Stress, depressed
mood
Centre for Epide-
miological Studies
Depression Scale for
Children (five items)
Nesi and Prinstein
(2015)
USA Cross-sectional 12–16 619 57 Depressive symp-
toms
Short Mood and Feel-
ings Questionnaire
Tiggemann and
Slater (2015)
Australia Cross-sectional 10–13 204 100 Self-objectification,
body shame, diet-
ing, depressive
symptoms
Children’s Depression
Inventory (short
form)
Morin-Major et al.
(2016)
Canada Longitudinal cohort 12–17 88 53 Cortisol levels,
stress, self-esteem,
depressive symp-
toms
Children’s Depression
Inventory
Dumitrache et al.
(2012)
Romania Cross-sectional 16–17 123 68 Self-image, depres-
sion
Beck’s Depression
Inventory
322 Adolescent Res Rev (2017) 2:315–330
1 3
the correlation between frequency of social network use
and depressed mood, which was a statistically significant
negative result. However, the study also measured partici-
pants’ investment in social media, which produced a sta-
tistically significant correlation of 0.22. The study showed
that although depression reduced with frequency of social
network use, it increased with excessive use. Frison and
Eggermont (2015) found that stress levels predicted seek-
ing of social support on Facebook. We extracted the cor-
relation between seeking social support and depression,
which was statistically significant. While seeking social
support increased the risk of depressed mood, actual sup-
port decreased it. From the study by Tiggemann and Slater
(2015) of correlations between self-objectification, body
shame, dieting and use of media, we extracted the result for
Facebook and MySpace use and depressive symptoms; this
was statistically significant. Statistically significant cor-
relations with social media use were also found with self-
objectification, body shame and dieting.
Results of Longitudinal Studies
In the study of social comparison and feedback-seeking and
depressive symptoms by Nesi and Prinstein (2015), a sta-
tistically significant relationship was found between these
online behaviors at baseline and depression 12 months
later. Van der Eijnden and colleagues (2008) modelled
the relationship between various internet uses, loneliness
and depressive symptoms, with two time points (0 and
6 months). The result for instant messaging was extracted,
as this was much more widely used by participants
(49–55%) than chatrooms (3–5%). For instant messaging
at time 1 and depressive symptoms at time 2, the correla-
tion was 0.17, while the result for chatroom use was 0.07
(not statistically significant). Unlike other types of internet
use, social media raised the risk of compulsive internet use
6 months later. Selfhout and colleagues (2009) compared
incidence of depression and anxiety between use of inter-
net for communication and other uses, with two time points
(0 and 12 months). Extracted was the correlation between
instant messaging and depression at time 2; the negative
result was not statistically significant. Compared to surfing
the internet, time spent in socializing online is more benefi-
cial. Participants with lower quality of friendships and who
used the internet for purposes other than communication
were more likely to become depressed or socially anxious.
Gámez-Gaudix (2014) measured temporal relationships
between features of problematic internet use and depressive
symptoms, with an interval of 12 months. Extracted was
the result for preference for online over offline communi-
cation (time 1) and depressive symptoms (time 2), which
was statistically significant. A bidirectional relationship
was found between depression and use of social media: the
former at time 1 predicted increase in the latter at time 2,
and vice versa. Morin-Major and colleagues (2016) mod-
elled the relationship between basal cortisol level, Face-
book activity and depressive symptoms, over a period of
3 weeks. Extracted was the correlation between Facebook
use frequency and depressive symptoms, which produced a
negative but not statistically significant result. Also meas-
ured was Facebook peer interaction behaviors and depres-
sive symptoms, producing a negative result (not statistically
significant). The study showed that cortisol levels were
positively correlated with the number of Facebook friends
and negatively with peer interaction; no relationship was
found with depressive symptoms.
Gender
Several of the studies found gender differences in the
relationship between social media use and depressive
symptoms. Nesi and Prinstein (2015) found a stronger
correlation of social comparison and feedback-seeking
and depressed mood in girls. Neira and Barber (2014)
found a similar result with online social networking: girls
who invest in social network sites were more suscepti-
ble than boys to depressed mood. Frison and Eggermont
(2015) found that stress predicted depressed mood in
girls but not boys. The study by Ybarra and colleagues
(2005) showed that girls with high internet use were 3.8
times more likely to have major depressive symptoms
than no symptoms. Other studies found no gender dif-
ferences, while two studies (Van der Eijnden et al. 2008;
Dumitrache et al. 2012) found that girls were less likely
to show depressive symptoms than boys. Several studies
showed that girls and boys use the internet for different
reasons, and that through greater investment in social
media, female users derive benefits while also being
more prone to adverse consequences. There was imbal-
ance in the sex of study subjects: one study (Tiggemann
and Slater 2015) was confined to girls, but this does not
account for an overall female sample of 59%.
Statistical Analysis
The overall random effects pooled estimate was 0.13
(0.05, 0.2), p = 0.001; Q = 131.47, df = 10, p =  0.0001,
­I2
= 92.4% (Fig. 2), suggesting a clinically and statisti-
cally significant relationship between social media use
and depressive symptoms (Table 2). There was little evi-
dence of publication bias: the linear regression test of
funnel plot asymmetry showing no evidence to reject the
null hypothesis of funnel plot symmetry (t = 0.3, df = 9,
p = 0.77); although this measures small study effects
rather than bias directly. The funnel plot for this is shown
323
Adolescent Res Rev (2017) 2:315–330
1 3
in Fig. 3. Additionally the trim and fill analysis showed
two outlying studies (Dumitrache et al. 2012; Nesi and
Prinstein 2015), trimming and filling of which had some
effect in reducing the random effects estimate, r = 0.09
(95% CI 0.01, 0.16), p = 0.03; Q = 180.67, df = 12,
p  0.0001, ­I2
= 93.4% (see Supplementary File 2).
To assess any possible impact from publication type,
sub-group analyses were conducted for the two types
of study design. The pooled estimate for cross-sec-
tional studies (n = 6) was r = 0.12, (95% CI 0.02, 0.22),
Q = 81.01, ­I2
= 93.8%; while that for longitudinal stud-
ies (n = 5) was r = 0.12, (95% -0.01, 0.25), Q = 38.98,
­I2
= 89.7%; suggesting little effect, although the differ-
ence between study types was not always marked and
the time over which the longitudinal studies were con-
ducted varied widely. Although there was a difference
between the two estimates, this is not clinically signifi-
cant and the test for subgroup difference was not statisti-
cally significant (Q = 0.0, df = 1, p = 0.98). In order to try
to understand the results Euclidean cluster analysis was
undertaken based on the results alone. The agglomera-
tive coefficient was strong (0.94) and showed three main
clusters (Fig. 4), suggesting that study outcomes could be
broadly put into three groups. Examination of the clus-
ters revealed two groups of outlying studies; one showing
small negative correlations and the other large positive
effects. However, the third and largest cluster, accounting
for the majority of studies, had a limited range of out-
comes. Thus although we cannot account for the clusters
methodologically, this distribution of results is support-
ive of our pooled estimate being an accurate reflection of
the underlying phenomenon.
Table 2  Selected study results
*p0.01
**p0.001
Authors (year) Included sample Correlates Correlation result
Ybarra et al. (2005) 1061 Internet used most frequently for chatroom versus other purposes/
depressive symptoms
0.14**
Van der Eijnden et al. (2008) 663 Instant messaging (time 1)/depression (time 2) 0.17**
Hwang et al. (2009) 6341 Online communication/depressed mood 0.13*
Selfhout et al. (2009) 307 Instant messaging (time 1)/depression (time 2) −0.02
Neira and Barber (2014) 1819 Social media use/depressive symptoms −0.09*
Gámez-Gaudix (2014) 699 Preference for online social interaction (time 1)/depression (time 2) 0.13*
Frison and Eggermont (2015) 910 Social support seeking on Facebook/depressed mood 0.13**
Nesi and Prinstein (2015) 619 Technology-based social comparison and feedback-seeking (time 1)/
depressive symptoms (time 2)
0.34**
Tiggemann and Slater (2015) 204 Social media use/depressive symptoms 0.19*
Morin-Major et al. (2016) 88 Facebook use/depressive symptoms −0.097
Dumitrache et al. (2012) 76 Items of identity-related information on Facebook/depression 0.355*
Fig. 2  Forest plot
324 Adolescent Res Rev (2017) 2:315–330
1 3
Discussion
The internet has transformed lives, with young people
now spending several hours per day online. While there
are obvious benefits of technological progress, including
the communication facility of social media, problematic
activity online may detract from the development and well-
being of younger people. Mental health problems appear to
be increasing in younger people (Office for National Statis-
tics 2014), and use of social media is an important factor to
consider. Although the putative depressogenic impact has
been investigated by several researchers, it is not yet known
whether use of social networking sites and instant messag-
ing are causative, or whether there is a “dose” effect; or if
it is an artefact of increased case ascertainment and general
societal concern.
This systematic review makes an important contribu-
tion to the literature: first, by showing a small but statisti-
cally significant correlation between social media use and
depressive symptoms in the child and adolescent popula-
tion; and secondly, by indicating further research goals.
Fig. 4  Cluster analysis
Fig. 3  Funnel plot
325
Adolescent Res Rev (2017) 2:315–330
1 3
However, there are limitations to consider. Most of the
studies were not directly answering the review question,
and heterogeneity in design and results with wide confi-
dence intervals temper any conclusion that can be drawn.
The number of eligible studies was low, as the majority
of research on internet use and mental health problems
does not specifically measure the effect of social media on
depressive symptoms. Consequently, the amount of evi-
dence collated for this review was modest. Sample size var-
ied widely, and it should be noted that while small studies
provide imprecise estimates of the population parameter
due to sampling error, large studies can have the opposite
effect of producing statistically significant but clinically
spurious differences.
Studies of the psychological effects of internet use are
often reported in the mass media, but as noted by McCo-
nway and Spiegelhalter (2012), methodological weak-
nesses are scarcely acknowledged. A preponderance of
observational designs does not allow proper causal attri-
bution. Over half of the studies reviewed here were cross-
sectional, while longitudinal studies had short time periods,
with 12 months the longest interval between assessments.
Indeed, the fundamental difficulty in research on the impact
of internet behavior is the direction of relationship. Build-
ing a more robust evidence base is challenging: with the
globally pervasive use of social media, there is no natural-
istic control group, and historic comparison groups would
have dubious validity.
The task for researchers is to measure psychological
impact while taking account of the complex, probably bi-
directional relationship between habitual social media
activity and mental health. In a systematic review of social
media use and business management, Ngai and colleagues
(2015) proposed a causal-chain framework, pursuing a
sophisticated interactional model of the socio-psycho-
logical causes and effects of social media activity. In this
framework, the relationship between antecedents and out-
comes is not simply linear but is interpreted as the product
of influence by moderators and mediators. Until more is
known on the interplay of variables, straightforward cause-
and-effect studies are not fully credible, unless a large sam-
ple can be observed and analyzed over a suitably long time
period. Furthermore, research should be designed not only
on methodological logic, but also informed by theory of
child and adolescent development (Amichai-Hamburger
et al. 2013).
Notwithstanding these qualifying comments, it would
be fair to conclude that some degree of correlation exists
between social media use and depressive symptoms in the
young. However, it is possible that any increase in men-
tal health problems is temporally but not causally con-
nected to the internet. Fears about the harmful effects of
online behavior may be stoked by greater public awareness
and concern about mental health problems in young peo-
ple. Recent government policy in the UK (Department of
Health and NHS England 2015) has pledged substantial
investment in child and adolescent mental health services,
enabling early identification of vulnerable young people,
with better access to support and treatment. A recent report
highlighted a 54% increase in British children prescribed
antidepressant drugs from 2005 to 2012 (Bachmann et al.
2016), but while this coincides with the rapid expansion of
social media, this may be due to unrelated patterns in case
ascertainment and marketing of these drugs. However, 54%
was a relatively small absolute increase, from 0.7 to 1.1%.
Whether the incidence of depression has actually
increased is a moot point. Arguably, there are material
gains in the expansion of the detection and treatment of
mental health problems in the child and adolescent popu-
lation. Various factors could result in a lowering threshold
for diagnosis of depression, including professional and
commercial interests. Critics of medical hegemony, most
notably Ivan Illich (1975), have alerted society to the con-
cept of disease mongering, which Moynihan and Henry
(2006) defined as “the selling of sickness that widens the
boundaries of illness and grows the markets for those who
sell and deliver treatments”. This is particularly apparent
in mental health, where standard classifications of illness
have expanded with each revised edition. As noted ear-
lier, internet-related disorders have entered the psychiatric
taxonomy. O’Keeffe and Clarke-Pearson (2011) proposed
“Facebook depression” as a specific illness, but this has
been criticized by other scholars who assert the need for
hypothesis-driven research questions and robust scientific
investigation.
Another possible reason for the rising rates of depres-
sion in young people is emotional articulacy and encour-
agement of expression in online social networks. Gender is
an important factor here. As the study by Neira and Barber
(2014) showed, social media use may have more adverse
psychological impact on girls than on boys, which may
simply be due to higher frequency of use. Irrespective of
gender, depressed mood was predicted by investment in
online communication. Nesi and Prinstein (2015) found a
strong relationship between social comparison and depres-
sive symptoms in girls. The impact of negative messages
may be compounded by the overlap of online and offline
networks. Social media may be triggering narcissistic
behavior, as suggested by the amount of “selfies” posted on
Facebook and Instagram, and a perhaps excessive empha-
sis on the presentation of self. Research by Tiggemann and
Slater (2013) suggests that Facebook use exacerbates body
image distortion in adolescent girls. However, Dumitrache
and colleagues (2012) found a lower rate of depressive ten-
dencies in girls than in boys.
326 Adolescent Res Rev (2017) 2:315–330
1 3
Social media offer tremendous opportunities for interac-
tion, unbounded by the constraints of face-to-face contact,
but they also have antisocial uses. The internet reflects
society, but it may exacerbate darker sides of human nature
as shown by online bullying and abuse. This phenomenon
may be similar to “road rage”, whereby people behave
aggressively to other drivers, shielded from normal social
restraint. Several studies here showed higher correlations
of social media use and depressive symptoms in young
people with psychological vulnerability. Gámez-Gaudix
(2014) found prior psychological problems to be a predic-
tor and outcome of problematic internet use, with academic
and social impairment raising the risk of depressive symp-
toms. A factor may be limited access to reliable support in
offline relationships. Ybarra and colleagues (2005) found
that young people with depressed mood were less likely to
have face-to-face interaction, communicating instead with
virtual friends.
This could be explained in part by the nature of
depressed mood, where symptoms can include lethargy and
reduced interest in usual social activity; socializing online
may be preferred as a substitute to interacting face-to-face,
which may require more effort including travel. Further-
more, symptoms of depression can include irritability, and
teenagers may have some predisposition to impulsivity
(Siegel 2014); if these factors influence online communica-
tion they could post comments that they later regret, pos-
sibly detracting from their popularity. Online friends not
already known sufficiently well offline may be less forgiv-
ing of an online faux pas, and may not be aware or sym-
pathetic to another social network user’s psychological
difficulties. Social media use in this situation could have
negative consequences for a young person with depressive
symptoms.
Online friendships lack some of the benefits of physi-
cal contact: interaction is often superficial, and lacking in
genuine interest. Hwang and colleagues (2009) showed
that depressed young people find difficulty in making
friends face-to-face and instead seek friendship on the
internet; two-fifths of participants with depressive symp-
toms expressed thoughts and feelings online that they could
not do otherwise. Although this suggests social media as a
valuable resource, there is a danger of reinforcing negative
beliefs and behavior. Young people struggling with stress
turn to Facebook for social support, but as Neira and Bar-
ber (2014) reported, as much as 80% of requests for support
were unanswered, raising the risk of depressive symptoms.
Attachment theory would be relevant to such findings.
The “rich get richer” hypothesis is supported by stud-
ies in this review. For most internet users, online interac-
tion reinforces friendships, rather than replacing one set of
friends with another. That young people with fewer proxi-
mate friends derive less benefit from social media may not
be a problem, as quality of close relationships should trump
quantity of online contacts. However, as Nesi and Prin-
stein (2015) indicated, the online environment facilitates
social comparison and feedback-seeking, and less confident
young people may be more likely to use social media for
such purpose. The cluster analysis indicated three groups;
however, there was no clear pattern to this that would
explain why study results had clustered in this way. Depres-
sive symptoms are perpetuated by negative online expe-
riences. Much of the socialization process in childhood
development now occurs through social media, and mood
problems may be a temporary feature of the transition to
adolescence. However, as many psychiatric disorders of
adulthood first appear in adolescence, vulnerability in this
developmental stage is high and protective factors such as
positive friendships offline and positive relationships with
caring adults therefore gain importance for young people to
build resilience.
Various interventions have been devised to prevent harm
to young people online, including policies to tackle cyber-
bullying in schools (e.g., Childnet International 2015).
Also, more awareness of the hazards of social media is
needed in parents: “digital immigrants” may not be fully
alert to the rapidly changing patterns of internet use by
young people. Facebook was not designed for use by chil-
dren, and does not adequately protect their identity and
privacy. Lack of parental guidance on internet use exposes
children to potential harm from reckless or malevolent
communication, as well as from violent or pornographic
content (O’Keeffe and Clarke-Pearson 2011). However,
controlling use of the internet is difficult, particularly with
teenagers, who use online media for educational as well
as interactional purposes. Meanwhile, some parents are
not good role models for internet use, posting pictures of
their children on Facebook which may later cause embar-
rassment. While schools teach about sex and relationships,
such education must be updated regularly in relation to
trends of online activity by young people. In the context of
an expanding virtual reality, more facilities should be pro-
vided for children to meet friends in physical proximity.
Instead of focusing on the negative effects of internet use,
the benefits of face-to-face contact should be accentuated.
Young people are not a homogenous group in relation to
internet use. Most of the studies reviewed here had a wide
age range, mixing pre-pubescent children with imminent
school-leavers. Data from the Pew Research Center show
differences in how younger compared to older children use
social media; many teenagers lose interest in Facebook as
they seek privacy for aspects of their personal lives (Mad-
den et al. 2013). Meanwhile, social media platforms are
continually developing and new risks and harms may arise
with each functional advance. Current trends will not con-
tinue forever, and social media may be used differently or
327
Adolescent Res Rev (2017) 2:315–330
1 3
abandoned in the near future. Today, typed communica-
tion prevails while oral communication has declined, as
the “mobile telephone” has become a misnomer. However,
keypads could soon be outmoded by devices that enable
users to communicate without the need for manual input.
Vast data obtained from social networking sites can be
used for marketing purposes and by potential employers.
Exploration of its use in a healthcare context would be ben-
eficial. If a degree of “profiling” from online communica-
tion is possible, there may be a moral argument towards
considering using such data in a risk assessment context.
For example, a sophisticated screening mechanism could
potentially identify patterns suggesting concern (around a
person’s wellbeing, e.g., suicidal ideation) and an offer of
support could be “triggered” for the social media user with
a view to preventing escalation of difficulties they might be
experiencing or to even put them in touch with services that
could help.
The influence of the functionality of the social media
platform requires further exploration in this context, e.g.,
the perceived reward systems involved. Exploration of
the young person’s expectation from online communica-
tion, and coping mechanisms they have if they encounter
unwanted outcomes from using social media would help
to gain more in-depth understanding of the relationship
between social media and young people’s mental health.
Some examination of the change in relationship with social
media through developmental stages and as the young
social media user’s experience grows would also be inform-
ative. The social communication needs of young people
could be better provided for through involving young peo-
ple in the design and development of social networking
sites. Similarly, improved safeguards could be integrated
into platform functionality if appropriate.
Hyperbole should be avoided in discussing the impact
of internet use by young people. Observing moral panic
as a recurring reaction to social change, Furedi (2015)
described how the emergence of commercial publishing in
the eighteenth century led to popular novels being blamed
for “fevers”. The Sorrows of Young Werther was banned in
parts of Europe because readers identified strongly with a
self-destructive character, allegedly causing a spate of sui-
cide. More recently, the term “Werther effect” was used
by American sociologist Dave Phillips (1974) for uncriti-
cal belief in media-stimulated imitations of suicidal behav-
ior. Perhaps the same phenomenon has arisen with digital
media.
Conclusion
A degree of correlation is found between social media
use and depressive symptoms in young people. However,
causality is not clear, and further development is needed in
research on this topic. Researchers have lacked consensus
on the phenomena for investigation, resulting in limited
replication. Qualitative methods also have an important part
to play in understanding the phenomenon of mental health
impact of internet use from young people’s perspectives.
Such enquiry would help to develop explanatory models
and hypotheses for inferential studies. The cyber carriage
continues to speed along the tracks, and it is not yet under-
stood whether it causes sickness for its passengers.
Acknowledgements Trevor Murrells (King’s College London) pro-
vided statistical support.
Author contributions NM, SG and EP conceived of the study, par-
ticipated in its design and coordination and drafted the manuscript;
EP performed the statistical analysis; EP, NM and SG participated in
interpretation of the data. All authors contributed to the writing, read
and approved the final manuscript.
Compliance with ethical standards
Conflict of interest The authors declare that they have no conflicts
of interest.
Funding This work was not funded.
Open Access This article is distributed under the terms of the
Creative Commons Attribution 4.0 International License (http://
creativecommons.org/licenses/by/4.0/), which permits unrestricted
use, distribution, and reproduction in any medium, provided you give
appropriate credit to the original author(s) and the source, provide a
link to the Creative Commons license, and indicate if changes were
made.
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مثال 6.pdf

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    Vol.:(0123456789) 1 3 Adolescent ResRev (2017) 2:315–330 DOI 10.1007/s40894-017-0053-4 SYSTEMATIC REVIEW Social Media and Depressive Symptoms in Childhood and Adolescence: A Systematic Review Niall McCrae1 · Sheryl Gettings2 · Edward Purssell2 Received: 23 November 2016 / Accepted: 25 January 2017 / Published online: 2 March 2017 © The Author(s) 2017. This article is published with open access at Springerlink.com Introduction New technology can transform society, but fears have been raised about its physical, social and psychological conse- quences. This has historical precedent. In the nineteenth century, many people were diagnosed with “railway sick- ness”, a condition attributed to the unnatural motions of train travel, most frequently observed in passengers who had faced backwards (Shaw-Mackenzie 1895). Perhaps the rapid and universal growth of social media has cre- ated a “cyber carriage”, in which vast numbers of people are oblivious to their physical surroundings while fixated on the internet, accessed through handheld devices. Is liv- ing in the virtual reality of social media harmful to younger people’s social and emotional development, well-being and mental health, or are the dangers exaggerated by older gen- erations? This is a significant question, because there are reports of escalating mental health problems in children, and difficulties experienced at this age may have enduring impact. This article presents a systematic review of studies measuring the relationship between social media use and depressive symptoms in young people. Impact of Social Media Use in Childhood and Adolescence The internet is a ubiquitous medium for business, informa- tion and entertainment, but arguably it has had most pro- found impact as a means of interpersonal communication. Use of social networking sites grew exponentially after the launch of MySpace and Facebook in 2004. Within a few years, Facebook was being used by four-fifths of inter- net users aged 13–16 in the UK (Livingstone et al. 2011). Twitter, allowing short messages to be sent to unlimited Abstract Concerns are increasingly raised in academic and lay literature about the impact of the internet on young people’s well-being. This systematic review examined empirical research on the relationship between social media use and depressive symptoms in the child and adolescent population. A systematic search of Medline, PsycInfo and Embase databases yielded eleven eligible studies. Relevant results were extracted from each study, with a total sample of 12,646. Analysis revealed a small but statistically sig- nificant correlation between social media use and depres- sive symptoms in young people. However, studies varied widely in methods, sample size and results, making the clinical significance of these findings nuanced. Over half of the studies were cross-sectional, while those of longitu- dinal design were of limited duration. This review justifies further investigation of this phenomenon, with a need for consensus on variables and measurement. Keywords Internet · Social media · Adolescence · Depression · Mental health Electronic supplementary material The online version of this article (doi:10.1007/s40894-017-0053-4) contains supplementary material, which is available to authorized users. * Niall McCrae [email protected] 1 Mental Health Nursing, Florence Nightingale Faculty of Nursing and Midwifery, King’s College London, 1.17 James Clerk Maxwell Building, 57 Waterloo Road, London SE1 8WA, UK 2 Child & Family Health, Florence Nightingale Faculty of Nursing and Midwifery, King’s College London, London, UK
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    316 Adolescent ResRev (2017) 2:315–330 1 3 recipients, was introduced in 2006 and rapidly gained global popularity. Since the launch of internet-connected smartphones, which overtook sales of cell phones in 2013, instant messaging sites such as Snapchat and WhatsApp have become standard tools of communication. In the USA, recent data show that 93% of people aged 15–17 have mobile internet access through a phone or tablet; while Facebook remains highly popular, Instagram and Twitter are more valued by teenagers (Statista 2016). Whether on conventional computer screen or mobile device, young peo- ple use social media in every waking hour, in countries rich and poor. The internet may be a double-edged sword. Neurosci- entist Susan Greenfield (2014) argued in her book Mind Change that digital technology has deleterious effects on personality, identity and relationships. Applying Prensky’s (2001) distinction between “digital immigrants” and “digi- tal natives”, Greenfield explained that whereas the former were schooled in a pre-digital era, now using the internet alongside older media, the latter have known nothing else. According to this conceptualization, digital immigrants confer higher value on face-to-face interaction, sometimes criticising younger people for contravening traditional social norms when focusing on their mobile devices, while digital natives dismiss this as older people’s fear of change. As described in Turkle’s book Alone Together: Why We Expect More from Technology and Less from Each Other (2011), family relationships are weakened when proximate reality is neglected in favor of online contact. Digital tech- nology may be changing conceptualizations and language of human relationships. Defined as a “dyadic, co-con- structed phenomenon characterized by reciprocity, close- ness and intimacy” (Amichai-Hamburger et al. 2013: 34), friendship is vital for the well-being of children and adults, but the advent of social media appears to have modified its meaning. For “Generation Wired” (a term used by Tam and Walter 2013), such relationships are increasingly generated and maintained online. Data from the Pew Research Center (Madden et al. 2013) show an average of 300 Facebook friends for teenagers in the United States, but the quality of such relationships is more important than the quantity. With a much larger social circle than in traditional friend- ships, inevitably much communication is shallow (Grieve et al. 2013). Virtual reality may become the real world for some users, to the extent that friends known only through cyberspace become their closest confiding relationships (McKenna et al. 2002). Evidence suggests that while people with strong social skills and technological abilities accrue benefit from online interaction, those who are less adept do not fare so well. This exacerbation of differences was portrayed by Kraut and colleagues (2002) as “the rich get richer”. By contrast, the social compensation hypothesis postulates that socially-awkward people derive benefit from online contact that they do not find with face-to-face interac- tion (Valkenburg and Peter 2007; Amichai-Hamburger and Schneider 2014). However, while Dolev-Cohen and Barak (2013) suggested that online communication is supportive for shy, anxious or depressive young people, it may compound their difficulties by reinforcing poor self- esteem (Staksrud et al. 2013). Concerns have arisen about the mental health impact of internet activity on the young, with frequent coverage of this topic in the mass media. Early evidence of adverse psychological impact was presented by Kraut and col- leagues (1998) and by Young and Rodgers (1998), who found that frequent internet use raised the risk of depres- sive symptoms. Since then, studies have shown cor- relations of online activity by younger people with low self-esteem (Caplan 2002), loneliness (Clayton et al. 2013), self-harm (Lam et al. 2009) and autistic traits (Finkenauer et al. 2012). However, other studies have indicated higher self-esteem and satisfaction with life, and reduced risk of mental health problems (Valkenburg et al. 2006; Bessièrre et al. 2008; Grieve et al. 2013; Best et al. 2014). Development of supportive social bonds and belongingness can protect against adversities such as loneliness and bullying (Wu et al. 2016). A high proportion of serious mental health problems in adulthood emerges during adolescence (Kessler et al. 2005; Children Young People’s Health Outcomes Forum 2012). Epidemiological data predating mass use of online social media showed a high risk of depression in this age group, with estimates of 2–5% prevalence of major depressive disorder (Costello et al. 2003), but recent reports show an alarming increase in depressed younger people (Office for National Statistics 2014). The internet, and related social trends, may be a major factor in the rise of psychological morbidity in the young. Various theories have been proposed for the putative link between social media use and psychological problems in younger people. Socialization is crucial to the progression from adolescence to adulthood, and use of social media may have profound influence on this adjustment (Wood et al. 2016). Applying John Bowlby’s psychanalytic theory, Oldmeadow and colleagues (2013) found that people with attachment anxiety were more likely to turn to Facebook for emotional support. However, reduced face-to-face con- tact detracts from a traditional supportive environment that can help young people to manage the challenges of ado- lescence. Development of self-awareness may be inhibited in young people who lack engagement in reflective inter- actions with family and friends (Siegel 2014). Empathy is honed through social relationships, which may not be as close and meaningful online, where superficial behavior such as virtue-signalling prevails.
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    317 Adolescent Res Rev(2017) 2:315–330 1 3 The internet may be changing the process of identity for- mation, which psychoanalyst Erik Erikson (1980) empha- sized in the adolescent stage of his model of eight stages of the human lifespan. Each stage presents conflict, which must be resolved to advance successfully to the next stage. Most young people overcome the stress and difficulties of adolescence, but some flounder. Successful progress from adolescence to adulthood entails acquisition of social skills, confirmed and rewarded by social acceptance. Self- presentation is tested through display and response. As friendships become more complex in adolescence, with the emergence of romantic intimacy and sexual interest, there is need for privacy, yet social media encourage openness and divulgence of personal information. A review of stud- ies of online identity development by Wängqvist and Frisén (2016) showed that aspects of identity constrained in offline contact are freely expressed online, and that anonymity in internet communication has implications for cohesive iden- tity formation. As argued in an influential book Generation Me by Jean Twenge (2006), narcissism may be increasing in Western society. Twenge and colleagues (2008) found considerably higher scores in this trait in students compared to a group of 20 years earlier. Narcissistic behavior has always been more evident in younger people, who have relatively little responsibility to others while tending to be self-absorbed. The extent is probably exaggerated in the media, as the term is used for people merely taking “selfies”: such behav- ior may be vain, but is socially normative and should not be pathologized if it does not pervasively disrupt daily func- tioning (Webber 2016). However, the internet has provided more opportunity for expression of narcissistic aspects of personality. People with narcissistic traits are prone to low mood when their high expectations are not fulfilled (Web- ber 2016). Huprich (2014) described a narcissistic person- ality pattern including depressive and masochistic tenden- cies as “malignant self-regard”. A depressive reaction to setbacks is a prominent feature of the DSM-V condition of narcissistic personality disorder. Several socio-cultural theories have emerged on the effect of digital media on mental health. The internet can be a harsh environment for young people, who are heav- ily influenced by peer pressure. A review by Wu and col- leagues (2016) of research on use of the internet for social purposes showed that a major motive for young people is positive reinforcement of their social connectedness. Social media are the forum for the setting and reinforc- ing of norms. Conformity is rewarded, while a careless remark might result in a person being ostracized. Unreal- istic expectations arise as users see the relative popular- ity of others, as indicated by their number of friends and “likes”. A study of college students (Feinstein et al. 2013) showed that negative comparisons with peers on Facebook leads to rumination, which increases the risk of depression. Online self-disclosure may relieve stress, generates sup- portive messages and raises a person’s profile (Tamir and Mitchell 2012), but control of sensitive information is lost. Depressed or anxious young people do not always make sensible decisions about privacy, sometimes revealing per- sonal details in a way that they later regret (McKenna et al. 2002). Young people are expected to be in perpetual contact, and to project themselves visually as well as verbally. Attractiveness is a major criterion of status and popular- ity. Young female internet users are particularly keen to choose the most favorable image of themselves on Face- book (Pempek et al. 2009). “Selfies” may be uploaded to seek approval, but an adverse remark may be distressing for someone of delicate self-esteem. Young people are increas- ingly transmitting sexualized messages or images (“sex- ting”), with little concern for consent or for exploitation by abusive peers or strangers (Staksrud et al. 2013). Impulsive behavior online may jeopardize future careers, and in some instances children have been criminalized for disseminat- ing sexual images. Aggressive behavior or “trolling” is a common problem in internet use by young people (Ko et al. 2012; Hinduja and Patchin 2013). A review of 113 studies by Kowalski and colleagues (2014) found that cyberbully- ing correlates with mental health problems in adolescence; in some cases it has led to suicide (Hinduja and Patchin 2010). Bullying may be worse online than in physical prox- imity, factors being the anonymity of the bully and the inescapable public embarrassment and shame (Slonje et al. 2013). The three most frequent problems arising in coun- selling sessions provided by ChildLine (a British helpline for children) in 2016 were low self-esteem or unhappiness, family relationships and bullying (online and offline); the latter was the most common reason for counselling in chil- dren aged 11 and under, and third in the 12 to 15 years age group (National Society for the Prevention of Cruelty to Children 2016). Gender differences are an important consideration. Rodgers and colleagues (2013) found that body image concerns correlate with social media use by young female but not male users; such perceptions may lead to eating problems and poorer outcomes of adolescent adjustment. A review of 67 studies of internet use and body image concerns in adolescence by Rodgers and Melioli (2016) described various theoretical perspectives on this link. One theory is self-objectification, which is based on the feminist argument that women are seen as sexual objects under a male gaze. Self-objectification is a form of con- sciousness manifesting in habitual monitoring of physical appearance, with tendencies for anxiety and shame. Work by Tiggemann and Slater (2013) suggests that self-objecti- fication is a significant cause of psychological problems in
  • 4.
    318 Adolescent ResRev (2017) 2:315–330 1 3 adolescence. The combination of media and peer pressure on girls to be thin and sexually attractive is compounded by the internet. Being constantly connected turns a young per- son into a commodity, to be compared with others (Gon- zales and Hancock 2011). However, a limitation of socio- cultural theories is their emphasis on structure over agency, which reduces internet users to passivity. Research has repeatedly shown that girls use the internet mostly for relational purposes (thus being highest users of social media), while boys tend to use it more for instrumen- tal activities such as video-gaming (Park 2009; Kuss and Griffiths 2012). In a study of Canadian teenagers by Sam- pasa-Kanyinga and Lewis (2015), 71% of girls used social networks for more than 2 h daily, compared to 29% of boys, which partly explained their finding of a marked gender imbalance in psychological distress. A recent UK govern- ment survey of children aged 14–15 (Department of Health and NHS England 2015) showed that girls were more than twice as likely as boys to suffer from symptoms of com- mon mental disorder (37–15%), with the proportion of girls with anxiety or depression rising by 10% since the previous survey 10 years earlier. Among various factors discussed by experts was excessive use of social media (Times 22nd August 2016). Gender-related differences in case ascertain- ment for mental health problems also need consideration, with girls possibly more likely to seek help. Addictive personality traits may be stimulated by the internet. Soon after the emergence of the worldwide web, psychiatrist Ivan Goldberg (1995) proposed internet addic- tion as a specific disorder; manifestations are similar to other compulsive behaviors such as gambling, includ- ing preoccupation, mood problems, functional impair- ment and withdrawal effects (Leung 2004). Young (1999) devised the Internet Addiction Scale, which has been used widely in research on internet use. Another instrument is the Facebook Addiction Scale, which measures mood and withdrawal symptoms (Andreassen et al. 2012). Although such addiction was not included by the American Psychiat- ric Association (2013) in the latest Diagnostic & Statistical Manual of Mental Disorders, internet gaming disorder was entered as a condition for further investigation. However, such diagnostic expansion has been criticized as medicali- sation of everyday life (Moynihan and Henry 2006). Disruption of the body clock may also be a factor in the psychological consequences of internet use. Blue light emitted by digital screens inhibits secretion of mela- tonin, which is necessary for sleep. A meta-analysis by Carter and colleagues (2016) showed that sleeping beside mobile devices stimulates the brain. Disturbed sleep pat- terns may cause obesity, weakened immunity and stunted growth. Daytime tiredness and irritability may have social and educational consequences. Change to normal circadian rhythms has known influence on mood (Lewy et al. 1998). Thus it can be seen that research on the relationship between social media and mental health in young people is multifaceted. Much of the discussion of this topic has occurred in lay media including the popular press, possi- bly leading to uncritical acceptance of untested ideas and assumptions. Studies indicate benefits as well as harmful effects of internet use, but evidence is complicated by the lack of either causal mechanisms or a certain direction of relationship between variables. Results in one study set- ting may not be generalizable to young people elsewhere. Whether any increase of psychological distress in adoles- cence is attributable to online social media activity is not yet understood. A review of relevant peer-reviewed studies was therefore indicated. Current Review This review examined empirical research on the relation- ship between social media use and depressive symptoms in the child and adolescent population, with three objectives. First, we aimed to produce a critique of the design and conclusions of relevant studies. It is apparent that research findings, particularly as reported in the popular media, may lack inferential validity in measuring the impact of social media on mental health. Secondly, the review was to ana- lyze correlations between social media use and depressive symptoms, including a “dose” effect, taking account of lim- itations considered above. Thirdly, the review investigated the role of gender, as differences between male and female behavior and response to social media use have been high- lighted in research. Method A systematic literature search was conducted, seeking rele- vant articles in peer-reviewed journals. Eligible studies had a generic child or adolescent sample, rather than selecting groups by mental health morbidity or vulnerability. Social media were defined as websites used primarily for social interaction: these include social networking sites such as Facebook, instant messaging (e.g., WhatsApp) and image- sharing applications (e.g., Instagram). Excluded were stud- ies measuring depressive symptoms in relation to use of the internet rather than social media specifically. Although the internet is a rapidly changing phenomenon, no time period was applied, or geographical restriction; such limits would be arbitrary and a risk of selection bias (McCrae and Purs- sell 2015). As there was no resource for translation, only studies in English language were included. The databases Medline, PsychInfo, and Embase were used, with the fol- lowing search strategy:
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    319 Adolescent Res Rev(2017) 2:315–330 1 3 Population: child/adolescent aged 5–18 Exposure: social media Outcome: depression/depressive symptoms Articles were screened first by title, then by abstract. At the final stage of screening, full articles were read and assessed independently by all three authors, with any dif- ferences in verdict followed by discussion to gain consen- sus. Eligible articles were summarized and assessed for risk of bias, using the Cochrane Collaboration Methods Group Tool to assess risk of bias in cohort studies. For statistical analysis, the most relevant result was extracted from each study on the relationship between social media use and depressive symptoms. Most studies had a correlational design, but for studies presenting other statistics, these were converted to correlations using the compute.es package (Re 2014). These were analyzed and forest plots generated using the meta (Schwarzer 2015) and metafor (Viechtbauer 2015) packages in R (R Core Team 2016). The metacor command was used with Fisher’s z transformation for the correlation and the DerSimonian- Laird estimator for τ2 . Because a-priori heterogeneity was assumed, a random-effects model was used for the primary analysis; although the fixed-effect equivalent was also calculated as comparison of their differing inferential assumptions can be instructive. The random-effects model provides an unconditional inference about a broader set of studies of which the studies included in the meta-analysis are assumed to be a random sample, while the fixed-effects approach makes an inference based only on and about those studies actually included in the meta-analysis (Viechtbauer 2015). Results The computerized search yielded 2357 unique studies with a further 18 from the hand search. After screening by title, 349 abstracts were read. This second stage of screening reduced the total to 134, of which all but one unobtainable article were inspected. Eleven studies fulfilled the eligibil- ity criteria and were included in the analysis (Fig. 1). Of the 11 studies, six were cross-sectional and five were longitudinal (Table 1). Two studies each were conducted in the United States, Australia and the Netherlands; and one each from Belgium, Spain, Romania, Canada and Taiwan. Overall, the studies had 13,532 participants, although for this review the results applied to a slightly smaller sam- ple of 12,646. In four studies depressive symptoms were the only psychological correlate or outcome variable, while seven studies had two or more such variables (these included social anxiety, stress and suicidal ideation). A variety of different measures were used, the most common being the Children’s Depression Inventory, which was used in three studies. DSM criteria for depression were meas- ured in one study. Risk of bias across studies was high due to the prepon- derance of cross-sectional studies or longitudinal studies with short follow-up times, lack of exclusion of existing cases of depression, reliance on self-report, and (in some studies) measurement that had not been validated or use of instruments in a different context than originally intended (see Supplementary File 1). Theoretical Approach The “rich get richer” and social compensation hypotheses were tested by Selfhout and colleagues (2009), who com- pared incidence of depression and anxiety between use of internet for communication and other uses in high school pupils. Van der Eijnden and colleagues (2008) studied the relationship between compulsive online communication and psychological well-being, based on previous research indicating that unlike instrumental activities online, use of the internet for social purposes raises the risk of loneliness and depression. The researchers tested several hypotheses to investigate a possible bidirectional relationship. Self-identity was the theoretical basis for three studies. Social comparison and feedback-seeking are important means of forming a self-identity in adolescence, but Nesi and Prinstein (2015) were interested in how young peo- ple may engage in such behaviors in maladaptive ways on the internet. They hypothesized that a high frequency of social comparison and feedback-seeking online would pre- dict depression, although this would be moderated by peer popularity. Neira and Barber (2014) applied self-concept theory in their study of adolescent use of social media. Social comparison and peer feedback are integral to the younger person’s self-evaluation, and these are dramati- cally increased by internet use, thus making a plausible link between social media, self-concept and depressed mood. Dumitrache and colleagues (2012) studied self-image and depressive tendencies in teenage Facebook users. Referring to the contrasting hypotheses of enhancement and compen- sation, they examined the relationship between positive or negative self-image and the quantity and type of informa- tion posted online. In a female sample, Tiggemann and Slater (2015) inves- tigated correlations between self-objectification, body shame, dieting and use of various types of media. Inter- net use was considered as a predictor of self-objectifica- tion and its adverse consequences, including depression. Gámez-Gaudix (2014) applied the cognitive-behavioral model to investigate problematic internet use and depres- sive symptoms in teenagers. In this model, online social
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    320 Adolescent ResRev (2017) 2:315–330 1 3 communication is less threatening than face-to-face interac- tion, but this readily available source of emotional support can lead to excessive and dysfunctional use. Online activity may be a maladaptive response to depressive tendencies. Stress was the focus of two studies. Frison and Egger- mont (2015) noted that stress increases in adolescence, due to pressures at school and in family relationships. Coping mechanisms include actively seeking social support and avoidance, which are respectively adaptive and maladap- tive. While the internet facilitates social support, friend- ship on Facebook is often weaker, to the effect that support may not be received, with potentially adverse psychologi- cal consequences. The researchers studied relationships between daily stress, seeking and receiving of social sup- port, and depressed mood. A psycho-physiological study by Morin-Major and colleagues (2016) investigated Facebook activity (frequency of use, network size, self-presentation and peer interaction) with basal cortisol level (a measure of stress) and depressive symptoms. It is known that social support is a buffer to biological response to acute stressors. Hwang and colleagues (2009) considered the internet as a means of social support in the rapidly changing con- text of Taiwan. In contrast to the individualism of Western societies, Taiwan has a collectivist culture, and young peo- ple are subjected to high social pressures in academic per- formance, sometimes to the detriment of their well-being. Whereas depression has been normalized in American life, it remains stigmatized in Oriental countries, causing double jeopardy for sufferers. The study by Hwang and colleagues was primarily concerned with the online and offline activity of younger people with depressed mood, but it recruited a general adolescent sample and measured the behavioral and psychological variables in a regression model. The study by Ybarra and colleagues (2005) had no stated theoretical rationale, but they referred to previous research showing differences in use of the internet by young people Fig. 1  PRISMA flowchart Records idenfied through database searching Embase = 239 Medline = 1622 PsycINFO = 788 Total = 2649 Addional records idenfied through other sources (n =18) Records aer duplicates removed (n = 2357) Records screened by abstract (n = 369 ) Records excluded (n = 233) Full-text arcles assessed for eligibility (n = 134) Full-text arcles excluded (n =123) Reasons for exclusions: Adults or mixed age sample without separate data for 18 = 17 Psychiatric paents = 1 Case studies = 1 Evaluaon of instrument = 2 Lacks social media data = 54 No depressive symptoms outcomes = 17 No data on correlaon between social media and depressive symptoms = 31 Studies included in quantave synthesis (meta-analysis) (n = 11) Records screened by tle (n = 2375) Records excluded (n = 2006) Unavailable records excluded (n = 2)
  • 7.
    321 Adolescent Res Rev(2017) 2:315–330 1 3 in relation to depressive symptoms. Through the Youth Internet Safety Survey they measured online communica- tion, self-disclosure and exposure to sexual content and harassment. Depressive symptoms were assessed using DSM categories of minor and major depressive disorder. Results of Cross‑sectional Studies Ybarra and colleagues (2005) categorized the most fre- quent purpose of internet use (chatroom, e-mail, instant messaging and others). From an overall sample of 1501, chatroom was used most by 136, of whom 101 were not depressed, 22 had symptoms of minor depressive disor- der and 13 of major depressive disorder. The proportion depressed (minor or major) was 34%. For this review an odds ratio for depression was calculated, comparing chat- room users with those in the category of other purposes; the result was a statistically significant excess of depression in the chatroom group. Although not included in statistical analysis in this review, the instant messaging category was also relevant. This was the most common use of internet for 154 participants, of whom 133 were not depressed, 18 had symptoms of minor depressive disorder, and 3 of major depressive disorder; the depressed proportion was 14%. Hwang and colleagues (2009) found a statistically significant relationship between online communication and depressed mood. Overall, the study showed that adoles- cent participants who reported depressive mood were more likely to use the internet for friendships and to express feelings compared to those who did not report depressive symptoms. From the study by Dumitrache and colleagues (2012) of self-image and depressive tendencies in Face- book users, we extracted the correlation between amount of identity-related items in Facebook profiles and depres- sive symptoms; this was statistically significant. Overall, the study showed that depressive symptoms correlated with low self-image and identity-type information on Facebook. Extracted from the study by Neira and Barber (2014) was Table 1  Summary of studies Authors (year) Country Design Age Overall sample Girls (%) Mental/behavioural outcome(s) Instrument for depres- sive symptoms Ybarra et al. (2005) USA Cross-sectional 10–17 1501 47 Depressive symp- toms Nine symptoms from DSM van den Eijnden et al. (2008) Netherlands Longitudinal cohort 12–15 663 52 Depression, loneli- ness Depressive Mood List Hwang et al. (2009) Taiwan Cross-sectional 12–17 6341 51 Mood Daily Life and Depressive Mood Survey Selfhout et al. (2009) Netherlands Longitudinal cohort 14–17 307 51 Depressive symptoms, social anxiety Children’s Depression Inventory Gamez-Guadix (2014) Spain Longitudinal cohort 13–17 957 61 Depressive symp- toms Brief Symptom Inven- tory (depression subscale) Neira and Barber (2014) Australia Cross-sectional 13–17 1819 55 Social self-concept, self-esteem, depressed mood Depressed Mood Scale Frison and Egger- mont (2015) Belgium Cross-sectional High school 910 52 Stress, depressed mood Centre for Epide- miological Studies Depression Scale for Children (five items) Nesi and Prinstein (2015) USA Cross-sectional 12–16 619 57 Depressive symp- toms Short Mood and Feel- ings Questionnaire Tiggemann and Slater (2015) Australia Cross-sectional 10–13 204 100 Self-objectification, body shame, diet- ing, depressive symptoms Children’s Depression Inventory (short form) Morin-Major et al. (2016) Canada Longitudinal cohort 12–17 88 53 Cortisol levels, stress, self-esteem, depressive symp- toms Children’s Depression Inventory Dumitrache et al. (2012) Romania Cross-sectional 16–17 123 68 Self-image, depres- sion Beck’s Depression Inventory
  • 8.
    322 Adolescent ResRev (2017) 2:315–330 1 3 the correlation between frequency of social network use and depressed mood, which was a statistically significant negative result. However, the study also measured partici- pants’ investment in social media, which produced a sta- tistically significant correlation of 0.22. The study showed that although depression reduced with frequency of social network use, it increased with excessive use. Frison and Eggermont (2015) found that stress levels predicted seek- ing of social support on Facebook. We extracted the cor- relation between seeking social support and depression, which was statistically significant. While seeking social support increased the risk of depressed mood, actual sup- port decreased it. From the study by Tiggemann and Slater (2015) of correlations between self-objectification, body shame, dieting and use of media, we extracted the result for Facebook and MySpace use and depressive symptoms; this was statistically significant. Statistically significant cor- relations with social media use were also found with self- objectification, body shame and dieting. Results of Longitudinal Studies In the study of social comparison and feedback-seeking and depressive symptoms by Nesi and Prinstein (2015), a sta- tistically significant relationship was found between these online behaviors at baseline and depression 12 months later. Van der Eijnden and colleagues (2008) modelled the relationship between various internet uses, loneliness and depressive symptoms, with two time points (0 and 6 months). The result for instant messaging was extracted, as this was much more widely used by participants (49–55%) than chatrooms (3–5%). For instant messaging at time 1 and depressive symptoms at time 2, the correla- tion was 0.17, while the result for chatroom use was 0.07 (not statistically significant). Unlike other types of internet use, social media raised the risk of compulsive internet use 6 months later. Selfhout and colleagues (2009) compared incidence of depression and anxiety between use of inter- net for communication and other uses, with two time points (0 and 12 months). Extracted was the correlation between instant messaging and depression at time 2; the negative result was not statistically significant. Compared to surfing the internet, time spent in socializing online is more benefi- cial. Participants with lower quality of friendships and who used the internet for purposes other than communication were more likely to become depressed or socially anxious. Gámez-Gaudix (2014) measured temporal relationships between features of problematic internet use and depressive symptoms, with an interval of 12 months. Extracted was the result for preference for online over offline communi- cation (time 1) and depressive symptoms (time 2), which was statistically significant. A bidirectional relationship was found between depression and use of social media: the former at time 1 predicted increase in the latter at time 2, and vice versa. Morin-Major and colleagues (2016) mod- elled the relationship between basal cortisol level, Face- book activity and depressive symptoms, over a period of 3 weeks. Extracted was the correlation between Facebook use frequency and depressive symptoms, which produced a negative but not statistically significant result. Also meas- ured was Facebook peer interaction behaviors and depres- sive symptoms, producing a negative result (not statistically significant). The study showed that cortisol levels were positively correlated with the number of Facebook friends and negatively with peer interaction; no relationship was found with depressive symptoms. Gender Several of the studies found gender differences in the relationship between social media use and depressive symptoms. Nesi and Prinstein (2015) found a stronger correlation of social comparison and feedback-seeking and depressed mood in girls. Neira and Barber (2014) found a similar result with online social networking: girls who invest in social network sites were more suscepti- ble than boys to depressed mood. Frison and Eggermont (2015) found that stress predicted depressed mood in girls but not boys. The study by Ybarra and colleagues (2005) showed that girls with high internet use were 3.8 times more likely to have major depressive symptoms than no symptoms. Other studies found no gender dif- ferences, while two studies (Van der Eijnden et al. 2008; Dumitrache et al. 2012) found that girls were less likely to show depressive symptoms than boys. Several studies showed that girls and boys use the internet for different reasons, and that through greater investment in social media, female users derive benefits while also being more prone to adverse consequences. There was imbal- ance in the sex of study subjects: one study (Tiggemann and Slater 2015) was confined to girls, but this does not account for an overall female sample of 59%. Statistical Analysis The overall random effects pooled estimate was 0.13 (0.05, 0.2), p = 0.001; Q = 131.47, df = 10, p = 0.0001, ­I2 = 92.4% (Fig. 2), suggesting a clinically and statisti- cally significant relationship between social media use and depressive symptoms (Table 2). There was little evi- dence of publication bias: the linear regression test of funnel plot asymmetry showing no evidence to reject the null hypothesis of funnel plot symmetry (t = 0.3, df = 9, p = 0.77); although this measures small study effects rather than bias directly. The funnel plot for this is shown
  • 9.
    323 Adolescent Res Rev(2017) 2:315–330 1 3 in Fig. 3. Additionally the trim and fill analysis showed two outlying studies (Dumitrache et al. 2012; Nesi and Prinstein 2015), trimming and filling of which had some effect in reducing the random effects estimate, r = 0.09 (95% CI 0.01, 0.16), p = 0.03; Q = 180.67, df = 12, p 0.0001, ­I2 = 93.4% (see Supplementary File 2). To assess any possible impact from publication type, sub-group analyses were conducted for the two types of study design. The pooled estimate for cross-sec- tional studies (n = 6) was r = 0.12, (95% CI 0.02, 0.22), Q = 81.01, ­I2 = 93.8%; while that for longitudinal stud- ies (n = 5) was r = 0.12, (95% -0.01, 0.25), Q = 38.98, ­I2 = 89.7%; suggesting little effect, although the differ- ence between study types was not always marked and the time over which the longitudinal studies were con- ducted varied widely. Although there was a difference between the two estimates, this is not clinically signifi- cant and the test for subgroup difference was not statisti- cally significant (Q = 0.0, df = 1, p = 0.98). In order to try to understand the results Euclidean cluster analysis was undertaken based on the results alone. The agglomera- tive coefficient was strong (0.94) and showed three main clusters (Fig. 4), suggesting that study outcomes could be broadly put into three groups. Examination of the clus- ters revealed two groups of outlying studies; one showing small negative correlations and the other large positive effects. However, the third and largest cluster, accounting for the majority of studies, had a limited range of out- comes. Thus although we cannot account for the clusters methodologically, this distribution of results is support- ive of our pooled estimate being an accurate reflection of the underlying phenomenon. Table 2  Selected study results *p0.01 **p0.001 Authors (year) Included sample Correlates Correlation result Ybarra et al. (2005) 1061 Internet used most frequently for chatroom versus other purposes/ depressive symptoms 0.14** Van der Eijnden et al. (2008) 663 Instant messaging (time 1)/depression (time 2) 0.17** Hwang et al. (2009) 6341 Online communication/depressed mood 0.13* Selfhout et al. (2009) 307 Instant messaging (time 1)/depression (time 2) −0.02 Neira and Barber (2014) 1819 Social media use/depressive symptoms −0.09* Gámez-Gaudix (2014) 699 Preference for online social interaction (time 1)/depression (time 2) 0.13* Frison and Eggermont (2015) 910 Social support seeking on Facebook/depressed mood 0.13** Nesi and Prinstein (2015) 619 Technology-based social comparison and feedback-seeking (time 1)/ depressive symptoms (time 2) 0.34** Tiggemann and Slater (2015) 204 Social media use/depressive symptoms 0.19* Morin-Major et al. (2016) 88 Facebook use/depressive symptoms −0.097 Dumitrache et al. (2012) 76 Items of identity-related information on Facebook/depression 0.355* Fig. 2  Forest plot
  • 10.
    324 Adolescent ResRev (2017) 2:315–330 1 3 Discussion The internet has transformed lives, with young people now spending several hours per day online. While there are obvious benefits of technological progress, including the communication facility of social media, problematic activity online may detract from the development and well- being of younger people. Mental health problems appear to be increasing in younger people (Office for National Statis- tics 2014), and use of social media is an important factor to consider. Although the putative depressogenic impact has been investigated by several researchers, it is not yet known whether use of social networking sites and instant messag- ing are causative, or whether there is a “dose” effect; or if it is an artefact of increased case ascertainment and general societal concern. This systematic review makes an important contribu- tion to the literature: first, by showing a small but statisti- cally significant correlation between social media use and depressive symptoms in the child and adolescent popula- tion; and secondly, by indicating further research goals. Fig. 4  Cluster analysis Fig. 3  Funnel plot
  • 11.
    325 Adolescent Res Rev(2017) 2:315–330 1 3 However, there are limitations to consider. Most of the studies were not directly answering the review question, and heterogeneity in design and results with wide confi- dence intervals temper any conclusion that can be drawn. The number of eligible studies was low, as the majority of research on internet use and mental health problems does not specifically measure the effect of social media on depressive symptoms. Consequently, the amount of evi- dence collated for this review was modest. Sample size var- ied widely, and it should be noted that while small studies provide imprecise estimates of the population parameter due to sampling error, large studies can have the opposite effect of producing statistically significant but clinically spurious differences. Studies of the psychological effects of internet use are often reported in the mass media, but as noted by McCo- nway and Spiegelhalter (2012), methodological weak- nesses are scarcely acknowledged. A preponderance of observational designs does not allow proper causal attri- bution. Over half of the studies reviewed here were cross- sectional, while longitudinal studies had short time periods, with 12 months the longest interval between assessments. Indeed, the fundamental difficulty in research on the impact of internet behavior is the direction of relationship. Build- ing a more robust evidence base is challenging: with the globally pervasive use of social media, there is no natural- istic control group, and historic comparison groups would have dubious validity. The task for researchers is to measure psychological impact while taking account of the complex, probably bi- directional relationship between habitual social media activity and mental health. In a systematic review of social media use and business management, Ngai and colleagues (2015) proposed a causal-chain framework, pursuing a sophisticated interactional model of the socio-psycho- logical causes and effects of social media activity. In this framework, the relationship between antecedents and out- comes is not simply linear but is interpreted as the product of influence by moderators and mediators. Until more is known on the interplay of variables, straightforward cause- and-effect studies are not fully credible, unless a large sam- ple can be observed and analyzed over a suitably long time period. Furthermore, research should be designed not only on methodological logic, but also informed by theory of child and adolescent development (Amichai-Hamburger et al. 2013). Notwithstanding these qualifying comments, it would be fair to conclude that some degree of correlation exists between social media use and depressive symptoms in the young. However, it is possible that any increase in men- tal health problems is temporally but not causally con- nected to the internet. Fears about the harmful effects of online behavior may be stoked by greater public awareness and concern about mental health problems in young peo- ple. Recent government policy in the UK (Department of Health and NHS England 2015) has pledged substantial investment in child and adolescent mental health services, enabling early identification of vulnerable young people, with better access to support and treatment. A recent report highlighted a 54% increase in British children prescribed antidepressant drugs from 2005 to 2012 (Bachmann et al. 2016), but while this coincides with the rapid expansion of social media, this may be due to unrelated patterns in case ascertainment and marketing of these drugs. However, 54% was a relatively small absolute increase, from 0.7 to 1.1%. Whether the incidence of depression has actually increased is a moot point. Arguably, there are material gains in the expansion of the detection and treatment of mental health problems in the child and adolescent popu- lation. Various factors could result in a lowering threshold for diagnosis of depression, including professional and commercial interests. Critics of medical hegemony, most notably Ivan Illich (1975), have alerted society to the con- cept of disease mongering, which Moynihan and Henry (2006) defined as “the selling of sickness that widens the boundaries of illness and grows the markets for those who sell and deliver treatments”. This is particularly apparent in mental health, where standard classifications of illness have expanded with each revised edition. As noted ear- lier, internet-related disorders have entered the psychiatric taxonomy. O’Keeffe and Clarke-Pearson (2011) proposed “Facebook depression” as a specific illness, but this has been criticized by other scholars who assert the need for hypothesis-driven research questions and robust scientific investigation. Another possible reason for the rising rates of depres- sion in young people is emotional articulacy and encour- agement of expression in online social networks. Gender is an important factor here. As the study by Neira and Barber (2014) showed, social media use may have more adverse psychological impact on girls than on boys, which may simply be due to higher frequency of use. Irrespective of gender, depressed mood was predicted by investment in online communication. Nesi and Prinstein (2015) found a strong relationship between social comparison and depres- sive symptoms in girls. The impact of negative messages may be compounded by the overlap of online and offline networks. Social media may be triggering narcissistic behavior, as suggested by the amount of “selfies” posted on Facebook and Instagram, and a perhaps excessive empha- sis on the presentation of self. Research by Tiggemann and Slater (2013) suggests that Facebook use exacerbates body image distortion in adolescent girls. However, Dumitrache and colleagues (2012) found a lower rate of depressive ten- dencies in girls than in boys.
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    326 Adolescent ResRev (2017) 2:315–330 1 3 Social media offer tremendous opportunities for interac- tion, unbounded by the constraints of face-to-face contact, but they also have antisocial uses. The internet reflects society, but it may exacerbate darker sides of human nature as shown by online bullying and abuse. This phenomenon may be similar to “road rage”, whereby people behave aggressively to other drivers, shielded from normal social restraint. Several studies here showed higher correlations of social media use and depressive symptoms in young people with psychological vulnerability. Gámez-Gaudix (2014) found prior psychological problems to be a predic- tor and outcome of problematic internet use, with academic and social impairment raising the risk of depressive symp- toms. A factor may be limited access to reliable support in offline relationships. Ybarra and colleagues (2005) found that young people with depressed mood were less likely to have face-to-face interaction, communicating instead with virtual friends. This could be explained in part by the nature of depressed mood, where symptoms can include lethargy and reduced interest in usual social activity; socializing online may be preferred as a substitute to interacting face-to-face, which may require more effort including travel. Further- more, symptoms of depression can include irritability, and teenagers may have some predisposition to impulsivity (Siegel 2014); if these factors influence online communica- tion they could post comments that they later regret, pos- sibly detracting from their popularity. Online friends not already known sufficiently well offline may be less forgiv- ing of an online faux pas, and may not be aware or sym- pathetic to another social network user’s psychological difficulties. Social media use in this situation could have negative consequences for a young person with depressive symptoms. Online friendships lack some of the benefits of physi- cal contact: interaction is often superficial, and lacking in genuine interest. Hwang and colleagues (2009) showed that depressed young people find difficulty in making friends face-to-face and instead seek friendship on the internet; two-fifths of participants with depressive symp- toms expressed thoughts and feelings online that they could not do otherwise. Although this suggests social media as a valuable resource, there is a danger of reinforcing negative beliefs and behavior. Young people struggling with stress turn to Facebook for social support, but as Neira and Bar- ber (2014) reported, as much as 80% of requests for support were unanswered, raising the risk of depressive symptoms. Attachment theory would be relevant to such findings. The “rich get richer” hypothesis is supported by stud- ies in this review. For most internet users, online interac- tion reinforces friendships, rather than replacing one set of friends with another. That young people with fewer proxi- mate friends derive less benefit from social media may not be a problem, as quality of close relationships should trump quantity of online contacts. However, as Nesi and Prin- stein (2015) indicated, the online environment facilitates social comparison and feedback-seeking, and less confident young people may be more likely to use social media for such purpose. The cluster analysis indicated three groups; however, there was no clear pattern to this that would explain why study results had clustered in this way. Depres- sive symptoms are perpetuated by negative online expe- riences. Much of the socialization process in childhood development now occurs through social media, and mood problems may be a temporary feature of the transition to adolescence. However, as many psychiatric disorders of adulthood first appear in adolescence, vulnerability in this developmental stage is high and protective factors such as positive friendships offline and positive relationships with caring adults therefore gain importance for young people to build resilience. Various interventions have been devised to prevent harm to young people online, including policies to tackle cyber- bullying in schools (e.g., Childnet International 2015). Also, more awareness of the hazards of social media is needed in parents: “digital immigrants” may not be fully alert to the rapidly changing patterns of internet use by young people. Facebook was not designed for use by chil- dren, and does not adequately protect their identity and privacy. Lack of parental guidance on internet use exposes children to potential harm from reckless or malevolent communication, as well as from violent or pornographic content (O’Keeffe and Clarke-Pearson 2011). However, controlling use of the internet is difficult, particularly with teenagers, who use online media for educational as well as interactional purposes. Meanwhile, some parents are not good role models for internet use, posting pictures of their children on Facebook which may later cause embar- rassment. While schools teach about sex and relationships, such education must be updated regularly in relation to trends of online activity by young people. In the context of an expanding virtual reality, more facilities should be pro- vided for children to meet friends in physical proximity. Instead of focusing on the negative effects of internet use, the benefits of face-to-face contact should be accentuated. Young people are not a homogenous group in relation to internet use. Most of the studies reviewed here had a wide age range, mixing pre-pubescent children with imminent school-leavers. Data from the Pew Research Center show differences in how younger compared to older children use social media; many teenagers lose interest in Facebook as they seek privacy for aspects of their personal lives (Mad- den et al. 2013). Meanwhile, social media platforms are continually developing and new risks and harms may arise with each functional advance. Current trends will not con- tinue forever, and social media may be used differently or
  • 13.
    327 Adolescent Res Rev(2017) 2:315–330 1 3 abandoned in the near future. Today, typed communica- tion prevails while oral communication has declined, as the “mobile telephone” has become a misnomer. However, keypads could soon be outmoded by devices that enable users to communicate without the need for manual input. Vast data obtained from social networking sites can be used for marketing purposes and by potential employers. Exploration of its use in a healthcare context would be ben- eficial. If a degree of “profiling” from online communica- tion is possible, there may be a moral argument towards considering using such data in a risk assessment context. For example, a sophisticated screening mechanism could potentially identify patterns suggesting concern (around a person’s wellbeing, e.g., suicidal ideation) and an offer of support could be “triggered” for the social media user with a view to preventing escalation of difficulties they might be experiencing or to even put them in touch with services that could help. The influence of the functionality of the social media platform requires further exploration in this context, e.g., the perceived reward systems involved. Exploration of the young person’s expectation from online communica- tion, and coping mechanisms they have if they encounter unwanted outcomes from using social media would help to gain more in-depth understanding of the relationship between social media and young people’s mental health. Some examination of the change in relationship with social media through developmental stages and as the young social media user’s experience grows would also be inform- ative. The social communication needs of young people could be better provided for through involving young peo- ple in the design and development of social networking sites. Similarly, improved safeguards could be integrated into platform functionality if appropriate. Hyperbole should be avoided in discussing the impact of internet use by young people. Observing moral panic as a recurring reaction to social change, Furedi (2015) described how the emergence of commercial publishing in the eighteenth century led to popular novels being blamed for “fevers”. The Sorrows of Young Werther was banned in parts of Europe because readers identified strongly with a self-destructive character, allegedly causing a spate of sui- cide. More recently, the term “Werther effect” was used by American sociologist Dave Phillips (1974) for uncriti- cal belief in media-stimulated imitations of suicidal behav- ior. Perhaps the same phenomenon has arisen with digital media. Conclusion A degree of correlation is found between social media use and depressive symptoms in young people. However, causality is not clear, and further development is needed in research on this topic. Researchers have lacked consensus on the phenomena for investigation, resulting in limited replication. Qualitative methods also have an important part to play in understanding the phenomenon of mental health impact of internet use from young people’s perspectives. Such enquiry would help to develop explanatory models and hypotheses for inferential studies. The cyber carriage continues to speed along the tracks, and it is not yet under- stood whether it causes sickness for its passengers. Acknowledgements Trevor Murrells (King’s College London) pro- vided statistical support. 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