The Impact of YouTube on Loneliness and Mental Health
Abstract
:1. Introduction
1.1. Aim
1.2. Use of YouTube and Different Perspectives in Research
1.3. Rationale for Current Research
2. Overview of Existing Work
2.1. The Psychosocial Impact from the Use of Social Media
2.2. The Dichotomous Mental Health Impact from the Use of YouTube
2.3. When Does High Frequency YouTube Use Become a Psychological Risk?
2.4. Human-Computer Interaction Considerations of YouTube Use
3. Methods
4. Findings on Loneliness and Mental Health Issues from the Use of YouTube
4.1. Loneliness and the Use of YouTube
4.2. Mental Health Issues and the Use of YouTube
5. Human–Computer Interaction Issues in the Use of YouTube
6. Summary of Findings and Highlighting of Future Directions
6.1. Findings of Current Study
6.2. Limitations
6.3. Future Research
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviation
ACM | Association for Computing Machinery |
AI | artificial intelligence |
BPD | borderline personality disorder |
ASMU | active social media use |
DMH | digital mental health |
DMHIs | digital mental health interventions |
DPAVs | depression personal account videos |
HCI | human-computer interaction |
IEEE | the Institute of Electrical and Electronics Engineers |
LGBTQ | lesbian, gay, bisexual, transgender, queer or questioning |
ML | Machine Learning |
NLP | Natural Language Processing |
PSMU | passive social media use |
PTSD | posttraumatic stress disorder |
QMH | quantifying mental health |
RCT | randomized controlled trial |
SHWM | #StayHome #WithMe |
TV | television |
UK | United Kingdom |
US | United States |
WHO | World Health Organization |
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Reference | Authors | Study Design/Main Aim | Use of YouTube (Type, Purpose, Mental Health Indication/s and/or Population/s), Methods | Outcomes/Findings |
---|---|---|---|---|
[57] | Naslund et al. (2014) | Qualitative To examine the risks and benefits of individuals with severe mental illness uploading videos to YouTube, and posting and responding to comments as a form of peer support | Social interaction use (peer support). YouTube commenters responded to videos by individuals who self-identified as having mental health issues including schizophrenia, schizoaffective disorder, or bipolar disorder. Comments (n = 3044) were analyzed by thematic analysis | The data supports the notion of peer support in severe mental illness as inclusive and mutual advancement through shared experience and developing a sense of community. However, there is uncertainty for benefitting this community because of a lack of anonymity on YouTube which presents as a risk for being identified |
[24] | Jaber et al. (2015) | Quantitative To examine the prevalence of depression and attitudes towards depression and mental health treatment in Arab-American adolescents | Education use. RCT with Arab-Americans aged 12–17 years recruited from a community center. Intervention group (n = 46): 4–5-min YouTube video by health professional on mental health awareness. Control group (n = 42): 4–5-min YouTube video by health professional on childhood obesity | Rate of depression (14%). Stigma is associated with both depression and seeking psychological help. Positive effect of an educational video about mental health stigma |
[58] | Pereira et al. (2016) | Quantitative To look at men and women who utilized YouTube, to document their struggles with eating disorders (ED) | Information sharing use. Content analysis of testimonial videos (n = 50) including viewer response | Most posters used YouTube for peer-to-peer support beyond treatment. Most of the viewers responded with positive and supportive comments compared to negative comments (8:1) |
[59] | Nour et al. (2017) | Qualitative To analyze the accuracy of depictions of psychosis in the context of a diagnosis of acute schizophrenia and to assess the utility of these videos as educational tools | Education use. YouTube videos purporting to show acute schizophrenia (n = 4200) were assessed by two consultant psychiatrists for diagnostic accuracy, psychopathology, and educational utility | Some schizophrenia presentations on YouTube were deemed inaccurate and containing non-specific psychopathology. The potential for inaccurate information should be noted for mental health care professionals, students and patients seeking health information |
[60] | Zheng and Woo (2017) | Qualitative To compare YouTube against traditional talk-based workshops in delivering dementia knowledge to the Chinese-American population | Education use. A 17-month period comparison of a talk-based workshop with a real-time recording on YouTube (i.e., two 25-min videos) involving a board-certified psychiatrist on a North American Chinese television station who gave an educational talk about dementia | A talk-based workshop is more desired in delivering dementia education to the older Chinese-American ethnic population |
[37] | Klobas et al. (2018) | Quantitative To compare the effects of use motivation and personality on compulsive use of YouTube among Malaysian university students | Information, learning and entertainment use. A paper-and-pencil questionnaire was administered to university students (n = 807) and analyzed using hierarchical multiple regression | Users with a tendency toward anxiety and neuroticism are a little more at risk of compulsive YouTube use than others. Those with a motivation to use YouTube for entertainment are much more likely to use it compulsively–there is a small countereffect of use for information and learning. Research on self-management interventions in education is required |
[61] | Kumar and Jha (2018) | Quantitative To assess the quality, in terms of the amount and accuracy of the information provided on psychosocial interventions for individuals diagnosed with schizophrenia | Education use. YouTube videos were searched (n = 49) for being related to psychosocial interventions for schizophrenia | Most of these videos have been posted by professionals or professional groups presenting the information in a simple manner and having reliable content. However, the descriptions of the interventions are not adequately detailed |
[26] | de Bérail et al. (2019) | Quantitative To identify the determinants of YouTube addiction by examining the relationships between social anxiety, parasocial relationships with YouTubers and YouTube addiction based on a cognitive-behavioral theoretical framework | Entertainment use. Cross-sectional study from an online survey of French university students and non-student international participants (n = 932) investigating parasocial relationships, addiction, social anxiety, attachment styles, social isolation, loneliness, perceived social network support | Parasocial relationships are not negative, although it contributes to addictive behaviors on YouTube especially in those with social anxiety. A moderated-mediation model may help interventions for such at-risk persons e.g., through psychoeducation, guided Internet treatment and face-to-face cognitive-behavioral therapy |
[62] | van der Velden et al. (2019) | Quantitative To examine the independent predictive values of social networking sites-use | Different types of use. YouTube in combination with various social networking sites (e.g., Facebook, Instagram, Twitter, LinkedIn, Google+, Pinterest, Flickr). A population-based prospective study applied logistic and multiple regression analyses of mental health and sleep problems, loneliness and demographics data from the Longitudinal Internet studies for the Social Sciences panel based on a random sample of Dutch residents (n = 3486) | When controlling for prior problems and loneliness, social networking sites-use does not or hardly predicts mental health and sleep problems on the short or long term |
[63] | Villagonzalo et al. (2019) | Quantitative To identify demographic, clinical, and personal variables associated with overall and mental health-related internet use | Different types of use. YouTube in combination with internet use in general by adult community mental health service users (n = 189) with nonaffective and affective psychotic disorders | Of those who regularly used the internet (87.3%), most (67.9%) reported using the internet for mental health information, which is associated with younger age, higher levels of overall internet use, current productive employment, and higher loneliness. This population are overall suitable for engagement with online mental health information |
[64] | Devendorf et al. (2020) | Quantitative To analyze YouTube as a platform that facilitates public presentations for depression | Different types of use. Content analysis of YouTube videos on depression (n = 327) | Depression is commonly presented as a biological or environmental condition, and one that is chronic, treatable (often with medication, therapy, or diet/exercise behaviors), recurrent, and has few benefits associated with experiencing it. Further research on this topic and improvements are needed in message framing |
[65] | Guo et al. (2020) | Quantitative To understand the role of using YouTube as a platform for psychiatric emergency outreach among Chinese Americans | Information sharing use. The sample of this study includes viewing data (n = 5976) during a five-year period with regards to three videos in Cantonese about psychiatric emergencies | Most of the views came through YouTube recommended videos. There is a good potential to explore the effectiveness of using social media and wireless devices for psychiatric emergency education in minority populations prior to emergency department arrival |
[66] | Niederkrotenthaler et al. (2020) | Quantitative To investigate the quality of German language videos on YouTube based on media recommendations for suicide reporting | Information sharing use. Content analysis of randomly selected YouTube videos retrieved with the suicide method- and help-related search terms, were compared to search results for “suicide” (n = 232) | YouTube video content related to suicide are mainly inconsistent with recommendations for safe suicide portrayals in the media. YouTube has a worse mean ratio of potentially protective to harmful characteristics than material retrieved on search engines such as Google. Improvements are needed for safe and accurate information to users who are looking for information on suicide |
[67] | Woloshyn and Savage (2020) | Quantitative To describe the dominant messages that individuals who self-identify with the diagnosis of borderline personality disorder (BPD) present through YouTube videos | Information sharing use. Content analysis of YouTube videos on BPD (n = 349) | The nature and content of BPD first-person YouTube uploads has increased and changed over time. Positive examples may be used by mental health practitioners to promote engagement in help-seeking and effective coping behaviors |
[68] | Zhang et al. (2020) | Quantitative To examine, among college students in the United States, the relationships of deteriorating depression and anxiety conditions with the changes in user behaviors when engaging with Google Search and YouTube during COVID-19 | Different types of use. Longitudinal observational study on Google Search and YouTube history data correlated with pre- and post-pandemic measurement of anxiety and depression levels in college students (n = 49) | Changes in Google Search and YouTube behavior were significantly correlated with deteriorating depression and anxiety conditions. Feasibility–the proposed features may be used to build predictive machine learning models for noninvasive mental health screening |
[69] | Choi et al. (2021) | Quantitative To identify strategies for using video-based social media to combat stigmatized diseases, such as mental health, among college students | Different types of use. Inductive content analysis to identify the different types of YouTube videos concerning college students’ mental health (n = 452) according to video attributes, including poster, perspective, and purpose | YouTube videos on college students’ mental health can be well differentiated by the types of posters and the purpose of the videos. Sharing information about mental health from personal experience were the most engaging videos. YouTube has a good potential for providing social support, validating experience, and positively sharing help-seeking among college students |
[70] | Gaus et al. (2021) | Quantitative To identify if depression personal account videos (DPAVs) reference youth, suicidality, and depression treatments | Information seeking use. DPAVs were identified using 4 search phrases on YouTube and included if they were longer than 2 min, from a unique creator, and had more than 5000 views | There is a frequent prevalence of youth, suicidality and self-harm, and clinical treatment references in DPAVs on YouTube and in their comment sections. Future research is needed to determine motivations of viewing videos, accuracy and usefulness. There is a need for safety guidelines for video creators and users. Practitioners should assist youth with assessing accuracy of information provided on YouTube |
[71] | Gharani et al. (2021) | Quantitative To adopt an unsupervised data-driven approach as opposed to a model-based assumption about the association between social media use and loneliness | Different types of use. Various social media platforms were investigated although predominantly YouTube. Online survey investigated perceived social well-being and functioning, self-rated loneliness and mental health, and overall physical health of US adults (n = 20,096) | Non-Hispanic white female YouTube users aged 25–44 years who have high school or less education level and are single or never married have more significant high loneliness. This appears to be associated with self-reported poorer physical and mental health outcomes |
[72] | Jung and Kim (2021) | Qualitative and quantitative To examine how deliverers of suicide-themed contents on YouTube discuss suicide and to examine what factors, among content provider characteristics, story characteristics, and content expression characteristics, predict viewer engagement | Content uploader and message deliverer use. Preliminary coding analysis of users determined the characteristics of the suicide-themed content according to graphic, verbal, and textual expressions of suicide method. A content analysis method applied a hierarchical multiple regression to identify the factors that draw viewers to suicide-themed videos on YouTube (n = 589) | Viewers are more engaged with the content when the deliverers have close experience of suicide. Sharing suicide stories through art, music, and film such as in vlog format is involving, whereas lecture-based or preaching approaches are less involving in terms of likes and comments. Therefore, who presents the message is perceived as more significant than the characteristics of the message. YouTube may facilitate mental health support, education and suicidal ideation diagnosis |
[73] | Keating and Rudd-Arieta (2021) | Quantitative To examine attitudes and beliefs of emerging adults about suicide and identify whether relationships exist with technology/social media use | Different types of use for YouTube as well as listening to music, texting, streaming movies, and Snapchat. A descriptive correlational study with young adults aged between 18 and 29 years (n = 297)–an online survey examined attitudes about suicide and technology use | Significant relationships were found with technology/social media, including a positive relationship between YouTube and glorification/normalization of suicide. Further research recommended on relationship between social media use and attitudes about suicide |
[74] | Vuorre et al. (2021) | Quantitative To investigate whether technology is becoming more harmful to mental health | Different types of use. Different types of technologies including YouTube. An online survey examined users aged 10–15 years for changes in associations between technology engagement and mental health in three nationally representative samples in the UK and US | There is little evidence for increases in the associations between adolescents’ technology use and mental health. Future studies should use data that afford a more detailed, more accurate, and less biased look into the individuals engaging with technologies |
[75] | Woznicki et al. (2021) | Quantitative To explore how parasocial relationships with LGBTQ YouTubers may moderate the links between family support, loneliness, and depression symptoms among LGBQ emerging adults living with their parents during the COVID-19 pandemic | Entertainment and social interaction use. Mid-pandemic measurement and cross-sectional correlations of frequency of YouTube Use, family support, loneliness and depression symptoms as well as parasocial relationship strength in LGBQ US-based adults aged 18 –23 (n = 183) | Associations between family support and loneliness, and between loneliness and depression symptoms, were weakened by high parasocial relationship strength. Engagement–potential of YouTube to be used as a complementary digital solution to assist at-risk LGBQ youth |
[76] | Akhther and Sopory (2022) | Quantitative To determine whether self-ratings of depression and anxiety, perceived peer support, and perceived health benefits of social media predicted mental health–related information seeking and sharing behaviors during the COVID-19 pandemic | Information seeking and sharing: use of various social media. A cross-sectional online survey of a randomized sample of the general population (n = 865) investigated experience of COVID-19, social media use, information seeking and sharing about mental health, depression and anxiety self-ratings, perceived health-related social media peer support, and perceived health benefits of social media | YouTube, Facebook, and Instagram were used the most for information seeking and Facebook, Instagram, and Twitter were used the most for information sharing. Social media mental health–related seeking and sharing behaviors may help facilitate coping. Conceptual finding-social media may be used in tailored approaches to serving people with specific mental health conditions (e.g., severe depression and anxiety) |
[31] | Di Cara et al. (2022) | Quantitative To provide estimates of demographics as well as mental health and well-being outcomes by social media platform | Different types of use. YouTube in comparison Facebook, Twitter, Instagram, Snapchat. Longitudinal study with parents and children population cohort (n = 4083). Descriptive analysis was conducted | YouTube users are the most likely to have poorer mental health outcomes (wide range of indications) in both sexes although their use is mostly passive and for longer than the other platforms. They were likely drawn to experience benefits such as community building and peer support as opposed to social networking |
[77] | Ghate et al. (2022) | Quantitative To identify the potential role of social media in trichotillomania | Information sharing use. Cross-sectional observational study involving content analysis to examine the most-viewed YouTube videos (n = 100) for trichotillomania content until June 2018 | Mostly positive messages/information, and helpful recommendations for trichotillomania were found on YouTube. It may therefore be an underleveraged platform for this disorder |
[78] | Jones et al. (2022) | Quantitative To pilot a brief online video-based intervention that aimed to increase help-seeking attitudes, intentions, and mental health literacy (specifically depression literacy) in an athletic population | Information sharing use. Online convenience sampling recruited athletes (n = 207) to video intervention on YouTube followed by an online survey on injury response, help-seeking and social support, and signs/symptoms of depression | YouTube videos that provide information targeting help-seeking during times of injury showed promise. This may have a flow on effect by reducing the negative psychological impacts of injury, such as depression, stress, and anxiety. However, an RCT design was recommended in addition to exploring if an improvement in attitudes or intentions corresponds with increased help-seeking behavior |
[79] | King and McCashin (2022) | Qualitative To gain insight into how YouTube commenters are responding to vlogs centered on BPD | Social interaction use. YouTube commenters (both with and without mental health issues) responded to vlogs on mental health support for BPD. Comments (n = 1197) were analyzed by thematic analysis | The data provided opinions and knowledge of BPD with key themes indicating solidarity, support, de-stigmatization, normalization, sharing, comfort and encouragement |
[80] | Lee et al. (2022) | Quantitative To examine the relationship between frequent social media use and subsequent mental health in a representative sample of US adolescents | Different types of use. Longitudinal study of YouTube, Snapchat, Instagram, Twitter, Facebook use and internalizing mental health problems of US adolescents (n = 5114) as per four waves (2013–2018) of nationally representative Population Assessment of Tobacco and Health data | Frequent social media use is probably associated with poorer subsequent mental health for adolescents, in both boys and girls. Future research would benefit from such continuous measures, including other aspects of mental health and potential differences in social media usage as well as the relationship between social media use across different platforms and mental health |
[81] | Lotun et al. (2022) | Quantitative To assess whether parasocial interventions reduce prejudice towards people with mental health issues by first creating a new parasocial relationship with a YouTube creator disclosing their experiences with BPD | Information sharing use. Online non-randomized correlational study with non-BPD affiliated adults aged 18–35 (n = 557). Causal analysis to determine the influence of parasocial relationship strength on prejudice | The intervention successfully reduced explicit prejudice and intergroup anxiety. Preliminary findings suggest that lower prejudice is sustained over time. Prejudice intervention studies are a time-efficient, cost-efficient, and largely scalable remedy, compared to face-to-face interventions |
[82] | McLellan et al. (2022) | Qualitative To examine public online discourse in response to amateur YouTube videos that purport to de-stigmatize mental illness | Information sharing use. Thematic analysis–985 comments were randomly sampled for analysis from 12,842 comments collected | 5 themes were found (1) community building, (2) personal experiences of mental illness, (3) personal experiences of stigmatization, (4) debates regarding the validity of the mental illness construct and (5) providing explanations for mental illness. Potential for both positive outcomes (e.g., finding community and encouragement) and negative outcomes (e.g., further entrenching stigmatizing beliefs about mental illness) |
[32] | O’Reilly et al. (2022) | Qualitative What aspects of social media engagement do adolescents consider as positive for their own and others’ mental health? | Different types of use. Social media, mainly YouTube videos and music on their phones. Six focus groups with UK adolescents aged 11–18 years (n = 54). Based on macro-social constructionism theoretical framework, a view that children and childhood are constructed and change over time | Adolescents are not a homogenous group and may be less vulnerable and more resilient than they are given credit for, in terms of social media use. Both the risks and the benefits to wellbeing should be considered |
[83] | Sherman et al. (2022) | Quantitative To understand the trends of mental health topics through YouTube videos in the context of the COVID-19 pandemic | Different types of use. YouTube videos on COVID-19 from the US were reviewed for correlations in the context of mental health (n = 100) | Anxiety and depression were the most common mental health conditions experienced during COVID-19. Other mental health conditions and suicide were mentioned less frequently. YouTube is used prevalently and is a relevant and influential source for sharing information on mental health. Public health and government agencies could better use YouTube to disseminate coping skills and destigmatize mental illness |
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Balcombe, L.; De Leo, D. The Impact of YouTube on Loneliness and Mental Health. Informatics 2023, 10, 39. https://doi.org/10.3390/informatics10020039
Balcombe L, De Leo D. The Impact of YouTube on Loneliness and Mental Health. Informatics. 2023; 10(2):39. https://doi.org/10.3390/informatics10020039
Chicago/Turabian StyleBalcombe, Luke, and Diego De Leo. 2023. "The Impact of YouTube on Loneliness and Mental Health" Informatics 10, no. 2: 39. https://doi.org/10.3390/informatics10020039
APA StyleBalcombe, L., & De Leo, D. (2023). The Impact of YouTube on Loneliness and Mental Health. Informatics, 10(2), 39. https://doi.org/10.3390/informatics10020039