| Literature DB >> 35254279 |
Chuqin Li1, Adesoji Ademiluyi1, Yaorong Ge1, Albert Park1.
Abstract
BACKGROUND: Evidence in the literature surrounding obesity suggests that social factors play a substantial role in the spread of obesity. Although social ties with a friend who is obese increase the probability of becoming obese, the role of social media in this dynamic remains underexplored in obesity research. Given the rapid proliferation of social media in recent years, individuals socialize through social media and share their health-related daily routines, including dieting and exercising. Thus, it is timely and imperative to review previous studies focused on social factors in social media and obesity.Entities:
Keywords: obesity; social-ecological model; systematic review; web-based social factors
Mesh:
Year: 2022 PMID: 35254279 PMCID: PMC8938846 DOI: 10.2196/25552
Source DB: PubMed Journal: JMIR Public Health Surveill ISSN: 2369-2960
Figure 1Study flow.
Number of studies over year.
| Year | Studies, n |
| 2011 | 1 |
| 2012 | 1 |
| 2013 | 1 |
| 2014 | 7 |
| 2015 | 5 |
| 2016 | 12 |
| 2017 | 14 |
| 2018 | 8 |
| 2019 | 1 |
Figure 2The distribution of study region.
A descriptive overview of social media platforms.
| Type and platforms | Studies, n | Data collection, n | Intervention pathway, n | Ancillary resource, n | |
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| 14 | 11 | 2 | 1 | |
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| 1 | 0 | 1 | 0 | |
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| 14 | 1 | 13 | 0 | |
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| Blogs | 4 | 4 | 0 | 0 |
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| 7 | 5 | 2 | 0 | |
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| 1 | 1 | 0 | 0 | |
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| YouTube | 3 | 3 | 0 | 0 |
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| 2 | 2 | 0 | 0 | |
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| Yahoo! Answers | 1 | 1 | 0 | 0 |
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| Self-developed application | 2 | 0 | 2 | 0 |
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| Unknown community | 6 | 3 | 2 | 1 |
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| 1 | 0 | 1 | 0 | |
Summary of individual studies.
| Article | Platform | Region | Group | Data | Web-based social factors | Primary findings | Conceptual |
| Kang et al [ | United States | UNKa | 14,317 related tweets | Policy |
More negative tweets about the school meal policy have been detected. The main target negative opinions were campaign and food. | Data collection | |
| Fernandez-Luque et al [ | WhatsApp; Instagram | Qatar | Children | UNK (intervention study) | Gender, geo-cultural factors |
More active users tend to have better health outcomes. Females’ engagement with social media is higher. Nutritional advice in weight loss campaigns must consider religious and cultural traditions. | Intervention pathway |
| Lingetun et al [ | Blogs | United States | Pregnant women with obesity or overweight | 13 internet blogs | Gender |
Three main themes of overweight pregnant women’s blogs were identified: pregnancy as an excuse, perspectives on the pregnant body, and becoming a mother. | Data collection |
| May et al [ | United States | Adults | UNK (experiment study) | Social support, gender, stigma |
Investigated follow-back rates. The number of interactions and organic follows did not differ by weight status. Peers interacted more with each other than with professionals. Women need 5 weeks to build a web-based weight loss community on Twitter. | Ancillary resource | |
| Gore et al [ | United States | UNK | More than 25 million tweets | Geo-cultural factors |
Geological areas with lower obesity rates (1) have happier tweets and (2) have more frequently discussed food, particularly fruits and vegetables, and physical activities. | Data collection | |
| So et al [ | United States | UNK | 200,000 tweets | Social sharing, school environment, obesogenic environment, stigma |
Tweets that are emotionally evocative or humorous and express individual-level concerns for obesity were more frequently retweeted than their counterparts. | Data collection | |
| Kent et al [ | Facebook; Twitter | United States | UNK | 291 Facebook posts; 1091 tweets | Obesogenic environment |
This study aimed to understand the connection between obesity and cancer from Facebook and Twitter. They found that (1) most tweets focused on an associative or causal link between obesity and cancer, and (2) tweets contained more negative sentiment than Facebook posts. | Data collection |
| Harris et al [ | United States | Children with obesity | 1110 tweets | Source credibility, policy, school environment |
This study investigated the communication about obesity on Twitter, and they found that (1) more tweets focused on individual behavior than on policy or environment, and (2) government or educational tweets attract more attention, but the number of these tweets is less. | Data collection | |
| Kuebler et al [ | Yahoo! Answers | United States | Adults | 3926 users’ questions; 300 bullying questions | Gender, stigma, geo-cultural factors |
Most women asking whether they were fat or obese were not fat or obese. Users with obesity were significantly more likely to ask for advice about bullying than thinner users. People with obesity who reside in counties with higher BMI may have better physical and mental health than people with obesity who live in counties with lower BMI. | Data collection |
| Leggatt-Cook and Chamberla [ | Blogs | United States | Adults | 10 blogs | Social support |
Weight loss bloggers typically write about daily success and failures, report calorie consumption, and exercise output, and post photographs of their changing bodies. | Data collection |
| Mejova [ | United States | UNK | 1.5 million tweets | Source credibility, stigma |
Tweets afflicted with government or institution are likely to be retweeted more. The need to address the quality control of health information on social media is proposed. | Data collection | |
| Munk et al [ | United Kingdom | UNK | 82,449 geotagged posts | Obesogenic environment |
Sunday night is a good time to post on Instagram. There is no clear difference between thematic communities between high and low BMI areas. | Data collection | |
| Garimella et al [ | United States | UNK | 200,000 images | Geo-cultural |
Both user-provided and machine-generated image tags provide information that can be used to infer a county’s health statistics. | Data collection | |
| Culotta [ | United States | UNK | 1.4-M user profiles and 4.3 M tweets | Geo-cultural |
Six of 27 health statistics show a significant correlation with the linguistic analysis of the Twitter activity in the top 100 most populous counties in the United States. Twitter information, together with demographic information, improves the model’s performance. | Data collection | |
| Abbar et al [ | United States | UNK | 892,000 tweets | Geo-cultural |
The caloric values of the foods mentioned in the tweets were analyzed in relation to the state-wide obesity rate. | Data collection | |
| Weber and Mejova [ | United States | Overweight adults | 1339 profile images | Geo-cultural, stigma |
User profile pictures could be used to obtain the user’s weight information. | Data collection | |
| Pappa et al [ | United States | UNK | Posts and comments of 107,886 unique users | Social support, gender |
The 10 most-discussed semantic topics on posts in the LoseIt Reddit community were related to healthy food, clothing, calorie counting, workouts, looks, habits, support, and unhealthy food. | Data collection | |
| Loh et al [ | Facebook; Instagram; Twitter | United States | Children | UNK (intervention study) | Social support |
The study showed that social media and text messaging were innovative tools that should be included to increase the reach of multilevel community intervention. | Intervention pathway |
| Ling et al [ | United States | Children | UNK (intervention study) | Social support |
Participants in the survey mentioned that they enjoyed the Facebook platform because it provided new recipe and activity ideas and an opportunity to interact with other participants. | Intervention pathway | |
| He et al [ | China | Adults | UNK (intervention study) | Social support |
An intervention based on WeChat platform was effective on weight loss only for males. Females show more activities on WeChat, but they lost less weight during the study. | Intervention pathway | |
| Erdem and Sisik [ | YouTube | United States | Adults | 175 videos | Source credibility |
There are no significant associations between the number of likes, dislikes, or views and usefulness score. Videos uploaded by medical professionals typically contain more useful information. | Data collection |
| Jane et al [ | Australia | Adults with obesity or overweight | UNK (intervention study) | Social support |
This study shows that participants do not rely on each other in the same way that they would typically rely on their offline social connections. The Facebook group reported the greatest reductions in initial weight compared with the control group, which had no social media components. | Intervention pathway | |
| Fiks et al [ | United States | low-come mothers with a newborn | UNK (intervention study) | Social support |
Mothers of the intervention group were significantly less likely to pressure infants to finish food or give cereal in the bottle. | Intervention pathway | |
| Mejova et al [ | United States | UNK | 20,848,190 posts | Obesogenic environment, social sharing |
There is a link between obesity and the density of fast-food restaurants. Food sharing behavior is higher for high-obesity areas. | Data collection | |
| Cunha et al [ | United States | UNK | 70,949 posts and 922,245 comments | Social support |
Users receiving feedback on their posts have a higher probability of returning to the community. Returning users who received comments on their posts reported losing more weight. | Data collection | |
| Waring et al [ | United States | Women of childbearing age | UNK (intervention study) | Gender, social support |
Women of childbearing age are interested in a weight loss program that was delivered entirely via Twitter. | Intervention pathway | |
| Chomutare et al [ | UNK | United States | Women with obesity | 140 Women with obesity in an internet group | Gender, social support |
Women with high web-based participation levels lost more weight than do women with low participation levels. | Data collection |
| West et al [ | United States | Adults | UNK (intervention study) | Social support |
Students maintained their weight, with no significant difference between weight gain prevention intervention group and control group over 9 weeks. | Intervention pathway | |
| Aschbrenner et al [ | United States | Adults with serious mental illness | UNK (intervention study) | Social support |
This study shows that weight loss was significantly associated with perceived peer-group support. | Intervention pathway | |
| Merchant et al [ | United States | Adults | UNK (intervention study) | Social support |
In a Facebook group that involved weight-loss controlled trial, the following were noted: (1) Polls are the most popular posts followed by photos. (2) Participants visibly engaged with posts less over time. Of participants, 3.4% reported passively engaging with the Facebook page. | Intervention pathway | |
| Chen et al [ | HealthTogether | Switzerland | Adults | UNK (intervention study) | Social support |
Collaborating with buddies to compete in achieving fitness goals in a group was reported as motivating for dyads with strong ties. | Intervention pathway |
| Phan et al [ | Web-based social network | United States | Adults | UNK (experiment study) | Obesogenic environment |
By incorporating all the human behavior determinants and environmental events, the proposed novel deep learning model achieves more accurate results in predicting the future activity levels of users. | Ancillary resource |
| Savolainen [ | Blogs | Finland | UNK | 50 blogs | Social support |
Blogs provide an emotionally supportive forum that mainly serves to share opinions and information; they were seldom used for seeking information. | Data collection |
| Church et al [ | UNK | Adults | UNK (intervention study) | Social support |
Participants lose weight during the 6-week web-based clinical, emotional freedom techniques course and continue to lose weight in the following year, which indicates the long-term effects. | Intervention pathway | |
| Turner-McGrievy et al [ | United States | Vegan women with polycystic ovary syndrome | UNK (intervention study) | Social support |
The study result suggests that engagement with social media may be effective for short-term weight loss among vegan women with PCOSc. | Intervention pathway | |
| Lytle et al [ | Social support website | United States | 2-year college students | UNK (intervention study) | Social support, school environment |
The social networking encouraged intervention group, and the control group does not have a significant difference in BMI at the end of the 24-month intervention study. | Intervention pathway |
| Waring et al [ | United States | Postpartum women with overweight or obesity | UNK (intervention study) | Social support |
Facebook-based intervention is feasible for overweight and postpartum women with obesity in weight loss. However, research is further needed to determine how to engage participants in social networks better. | Intervention pathway | |
| Basch et al [ | YouTube | United States | UNK | 98 weight loss videos | Source credibility |
The number of videos about weight loss on YouTube from professionals is lacking. | Data collection |
| Webb et al [ | United States | UNK | 400 images | Social movement |
Health at every size–tagged posts contain more physically active portrayals and weight stigma than do posts from fitspiration-tagged images. | Data collection | |
| Taiminen [ | Facebook web-based forum | Finland | UNK | UNK (intervention study) | Social support |
Active participants in the web-based community showed a more positive perception of achieving their goals, followed instructions more precisely, and perceived to receive more emotional support than participants who are not active in the web-based community. | Intervention pathway |
| Hales et al [ | Social PODb | United States | Overweight adults | UNK (intervention study) | Social support |
The experiment group using a weight-loss mobile app lost significantly more weight than the comparison group. | Intervention pathway |
| Meitz et al [ | Germany | Children | UNK (intervention study) | Source credibility |
In a web-based media-embedded health campaign against childhood obesity, the following were noted: (1) participant’s self-relevance varies based on different source credibility perceptions and (2) provocative messages in the campaign may result in negative persuasion effects. | Intervention pathway | |
| Ghaznavi and Taylor [ | Twitter and Pinterest | UNK | UNK | 300 images | Social movements |
The study suggests thinspiration content promotes an objectified, sexual, extremely thin depiction of the thin ideal. Exposure to these contents has the potential harmful effects. | Data collection |
| Appleton et al [ | Web-based forums | Australia | UNK | 34 discussion threads | Social support |
Four major themes were detected in parents’ web-based discussion forums about children obesity: seeking advice, sharing advice, social support, and making a judgment. | Data collection |
| Karami et al [ | United States | UNK | 4.5 million tweets | Social movement |
Exercise and obesity, diabetes and obesity, diet, and obesity have a strong correlation with each other. The strongest correlation was found between exercise and obesity. | Data collection | |
| Swindle et al [ | United States | Parents | UNK (intervention study) | School environment |
Facebook is a feasible platform to provide nutrition education and facilitate parent’s engagement. | Intervention pathway | |
| De Brún et al [ | Web-based message boards | Ireland | UNK | 2872 obesity-relevant comments | Stigma |
The study analyzed obesity-related comments from multi-topic web-based message boards and determined that obesity stigma is pervasive, and the discussion of the issue is highly acceptable. | Data collection |
| Gregg et al [ | Web-based forums | United Kingdom | UNK | 1704 comments | Policy |
The study analyzed associated comments to the United Kingdom government about childhood obesity strategy and determined the comments are largely negative. | Data collection |
| Atanasova [ | Blogs | United Kingdom | UNK | 343 posts from 6 obesity blogs | Social support |
The content of blogs highlighted the conclusion that there are no one-size-fits-all solutions to obesity that work for everyone. | Data collection |
| Cohen et al [ | UNK | UNK | 630 posts | Social movements |
Body-positive posts depicted a broad range of body sizes and appearances. | Data collection |
aUNK: unknown.
bPOD: social pounds off digitally.
cPCOS: polycystic ovary syndrome.
Figure 3Socioecological model.