| Literature DB >> 32663157 |
Jorge Arias-de la Torre1,2,3,4, Elisa Puigdomenech3,5, Xavier García3, Jose M Valderas6, Francisco Jose Eiroa-Orosa7, Tania Fernández-Villa4, Antonio J Molina4, Vicente Martín2,4, Antoni Serrano-Blanco2,8, Jordi Alonso2,9,10, Mireia Espallargues3,5.
Abstract
BACKGROUND: Despite the relevance of mobile technologies and social media (MTSM) for adolescents, their association with depressive disorders in this population remains unclear. While there are previous reviews that have identified the use of MTSM as a risk factor for developing depression, other reviews have indicated their possible preventive effect.Entities:
Keywords: adolescents; depression; mobile technologies and social media; review
Mesh:
Year: 2020 PMID: 32663157 PMCID: PMC7481866 DOI: 10.2196/16388
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Flow diagram of the review process.
Characteristics of the included reviews.
| Author (year) | Objective of the review | Databases searched | Number of studies included | Number of participants | Quality assessment of studies included | Methodology |
| Best et al (2014) [ | To assess the impact of social media use on mental wellbeing in young people | ASSIAa, Communication abstracts, CINAHL, ERICb, Medline (Ovid), PsycINFO (Ovid), SCOPUS, SSCIc | 43 | NSd | Specific criteria developed by the authors of the review | 32 quantitative, 9 qualitative, 2 mixed methods or others |
| Wu et al (2016) [ | To examine the association between internet use, social connection, and levels of depression, anxiety, and loneliness | CINAHL, ERIC, Psychology and Behavioral Series Collection, Science and Technology Collection, EBSCO social sciences database | 12 | 5582 | Specific criteria developed by the authors of the review | 9 quantitative (all cross-sectional), 1 mixed methods, and 2 qualitative |
| Seabrook et al (2016) [ | To examine the relationship between the use of social networks and depression and anxiety as well as links with wellbeing and potential mediators and moderators of these relationships | PsycINFO, MEDLINE (Ovid), Scopus, IEEE Xplore, CINAHL, Education Resources Information Center, SSCI, Communication and Mass Media Complete | 70 | 46,015 | Adaptation of the Cochrane bias tool | NS |
| McCrae et al (2017) [ | To examine the association between social media (websites used primarily for social interaction) and depression or depressive symptoms | Medline, PsycINFO, EMBASE | 11 | 12,646 | Robins-Ie, | Quantitative (7 cross-sectional, |
| Marino et al (2018) [ | To examine the association between Facebook use (problematic, abusive, overuse, compulsive) and psychological disorders in adolescents and young adults | PsycINFO, PubMed, Scopus, ResearchGate, Google Scholar, Dissertation Abstracts International, Pro-Quest Dissertations and Theses Open, Open Access Theses and Dissertations | 23 | 13,929 | Specific criteria developed by the authors of the review | Quantitative |
| Keles et al (2019) [ | To examine the influence of using social networks on depression in adolescents | PsycINFO, Medline, EMBASE, CINAHL, SSCI | 13 | 21,231 | NIHf | Quantitative (12 cross-sectional, 1 longitudinal) |
| Yoon et al (2019) [ | To examine the relationship between the use of social networking sites and depression | PsycINFO, PubMed, ProQuest Dissertations & Theses Global | 55 | 22,099 | NS | Quantitative |
aASSIA: Applied Social Sciences Index and Abstracts.
bERIC: Education Resources Information Center.
cSSCI: Social Sciences Citation Index.
dNS: not specified.
eRisk of bias tool to assess nonrandomized studies of interventions.
fNIH: National Institutes of Health Quality Assessment Tool for Observational Cohort and Cross-Sectional Studies.
Results of the included reviews.
| Author (year) | Sample (number of studies) or age (years) | Use of MTSMa | Association(s) | Gender effect | Other associations |
| Best et al (2014) [ | Adolescents (age range not specified) | Communication and social interaction | Mixed results in the association of social media technologies and depression | Does not distinguish nor consider this factor | Mixed results on self-esteem, social support, loneliness, and cyberbullying |
| Wu et al (2016) [ | 10-21 | Use of internet and related technologies | 1 of 5 studies found that social media technology use can lead to depressive feelings; 4 of 5 studies did not find an association. | Takes into account the population of the studies (10 mixed gender, 2 only boys), but not in terms of the results | Mixed results on social connectivity, anxiety, and loneliness |
| Seabrook et al (2016) [ | Adolescents (8), young adults (40), general population (18), adults (2), clinical depression (1), others (1) | Use of social networks | Mixed results: positive interactions, social support, and connectivity in social networks related with lower levels of depression; negative interactions and social comparison related with higher levels of depression | Not considered as a variable in the included studies but considered in the discussion of the results | Mixed results for anxiety and wellbeing |
| McCrae et al (2017) [ | 10-17 (one study included “high school students” but did not specify age range) | Use of social media | Small but statistically significant overall correlation between social media use and depressive symptoms | 4 studies found that girls had more depressive symptoms related to social media use; 2 studies showed that boys were more likely to show depressive symptoms; the rest showed no gender differences | NSb |
| Marino et al (2018) [ | Mean 21.9 (SD 3.97); 16.5-32.4 (mean age range) | Problematic Facebook use | Association between problematic Facebook use and depression | Proportion of girls (60.7%) did not moderate the effect | Correlation between problematic Facebook use and psychological distress was greater in samples with a higher mean age. |
| Keles et al (2019) [ | 13-18 | Time spent, activity (quality and quantity of user’s engagement and interaction with social media sets and other users), investment (time spent on social media), addiction (state of being dependent on social media) | Time spent: 1 study showed association, 1 did not, 2 did not find association; activity: 2 studies showed positive association, and 1 did not; investment: 3 studies showed association; addiction: 3 studies showed positive association | 4 studies measured the effect of gender between social media–related variables and mental health outcomes. 2 studies did not find effects on gender, while 1 found that social media might have negative effects in girls and can be considered a positive leisure activity for boys. Facebook had a negative impact on both genders. | There was a relationship between age, heavy social media use, and negatively internalizing symptoms. Younger adolescents were more likely to experience internalizing symptoms (being anxious, depressed, withdrawn). Most studies highlighted the fact that the relationships observed were too complex for straightforward statements and mediating and moderating factors should be taken into account. |
| Yoon et al (2019) [ | 17.83-24.76 (mean age range) | Use of SNSc: time spent and SNS checking; social comparison and “upward” social comparison | Positive statistically significant difference between depression and time spent on its use, frequency of use, social comparison, and “upwards” comparison | No difference | NS |
aMTSM: mobile technologies and social media.
bNS: not specified.
cSNS: social networking sites.