Exploring Predictors of Social Media Use for Health and Wellness during COVID-19 among Adults in the US: A Social Cognitive Theory Application
Abstract
:1. Introduction
1.1. Background
1.2. Theoretical Background
1.2.1. Personal Factors
Demographics
Health Perception
Self-Efficacy
1.2.2. Environmental Factors
2. Materials and Methods
2.1. Data Sources and Sampling Methodology
2.2. Measures and Instrumentation
Independent Variables: Personal and Environmental Factors
2.3. Statistical Analyses
2.4. The Characteristics of the Study’s Participants
3. Results
3.1. Use of Social Media across the Different Demographic Groups
3.2. Perception of Social Media Use for Health-Related Purposes
4. Discussion
4.1. Demographics
4.2. Health Perception
4.3. Social Isolation
4.4. Sense of Meaning and Purpose in Life
4.5. Study Contribution
4.6. Study Limitations
5. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Variables of the Study
Category | Code of the Variable | Variable | Question | Responses |
Social media use during the last 12 months | Soc_MedVisited | Visiting social media | In the last 12 months, how often did you visit a social media site? | “Daily,” “sometimes a month,” “less than once a month.” |
SocMed_SharedPers | Using SM to share personal health information | In the last 12 months, how often did you share personal health information on social media? | “Daily,” “sometimes a month,” “less than once a month.” | |
SocMed_SharedGen | Using SM to share general health information | In the last 12 months, how often did you share general health-related information on social media (for example, a news article)? | “Daily,” “sometimes a month,” “less than once a month.” | |
SocMed_Interacted | Using SM to interact with people with similar health issues | In the last 12 months, how often did you interact with people with similar health or medical issues on social media or online forums? | “Daily,” “sometimes a month,” “less than once a month.” | |
SocMed_WatchedVid | Using SM to watch health-related videos | In the last 12 months, how often did you watch a health-related video on a social media site (for example, YouTube)? | “Daily,” “sometimes a month,” “less than once a month.” | |
Perceptions of social media use for health-related purposes | SocMed_MakeDecisions | Using SM information to make decisions about their health | How much do you agree or disagree—I can use information from social media to make decisions about my health. | “Strongly agree,” “agree,” “somewhat disagree,” and “strongly disagree.” |
SocMed_DiscussHCP | using SM information in discussions with their healthcare providers | How much do you agree or disagree—I can use information from social media in discussions with my healthcare provider. | “Strongly agree,” “agree,” “somewhat disagree,” and “strongly disagree.” | |
SocMed_TrueFalse | Finding it hard to tell if SM information is true or false | How much do you agree or disagree—I find it hard to tell whether health information on social media is true or false. | “Strongly agree,” “agree,” “somewhat disagree,” and “strongly disagree.” | |
SocMed_SameViews | People on SM have the same views about health as them | How much do you agree or disagree? Most people in my social media networks have the same views about health as I do. | “Strongly agree,” “agree,” “somewhat disagree,” and “strongly disagree.” | |
MisleadingHealthInformation | Health-related information on SM being misleading. | How much health information do you see on social media that you think is false or misleading? | “Strongly agree,” “agree,” “somewhat disagree,” and “strongly disagree.” | |
Personal factors | Age | Age categories | What is your age? | “18–34”,“35–49”,“50–64”,“65 or more” |
Race | Race categories | What is your race? | “White”, “Black”, “Hispanic”, “Other” | |
Education | Education categories | What is the highest degree you obtained? | “Some high school or less,” “High school graduate,” “Some college,” “College graduate or more” | |
Income | Income categories | What is your yearly income? | “Less than 20K”, “20k to 35k”, “35k to 50k”, “50k to 75k”, “75k or more” | |
Gender | Gender categories | What is your gender? | “Female”, “Male” | |
general health | Health Perception | In general, how would you describe your health? | “Bad”, “good”, “fair” | |
SelfEfficacy | One’s ability to take care of their health | Overall, how confident are you about taking good care of your health? | “Bad”, “good”, “fair” | |
Environmental factors | FeelIsolated | Feeling isolated | I feel isolated from others | “Yes,” “No,” “Somehow” |
FeelLeftOut | Feeling left out | I feel left out | “Yes,” “No,” “Somehow” | |
FeeLPeopleBarelyLKnow | Feel that people barely know them | I feel that people barely know me | “Yes,” “No,” “Somehow” | |
FeelPeopleNotWithMe | Feel that people are around but not with them | I feel that people are around me but not with me | “Yes,” “No,” “Somehow” | |
PROMIS Social Isolation | Feeling isolated from people | The score of the previous four questions | “Yes,” “No,” “Somehow” | |
LifeHasMeaning | Feeling that life has a meaning | My life has meaning | “Yes,” “No,” “Somehow” | |
LifeHasPurpose | Feeling that life has a purpose | My life has a purpose | “Yes,” “No,” “Somehow” | |
ClearSenseDirection | Having a clear sense of direction in life | I have a clear sense of direction in my life | “Yes,” “No,” “Somehow” | |
PROMIS Meaning and Purpose in Life | Having a meaning and purpose to life | The score of the previous questions | “Yes,” “No,” “Somehow” |
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Variable | N | % | |
---|---|---|---|
Age | 18–34 | 939 | 15.02% |
35–49 | 1249 | 19.98% | |
50–64 | 1834 | 29.33% | |
65 or more | 2230 | 35.67% | |
Gender | Male | 2411 | 38.56% |
Female | 3841 | 61.44% | |
Race | White | 3350 | 53.58% |
Black | 1048 | 16.76% | |
Hispanic | 1382 | 22.10% | |
Other | 472 | 7.55% | |
Education | Less than high school | 387 | 6.19% |
High school graduate | 1099 | 17.58% | |
Some college | 1884 | 30.13% | |
College graduate or more | 2882 | 46.10% | |
Income | Less than 20k | 969 | 15.50% |
20k to 35k | 837 | 13.39% | |
35k to 50k | 998 | 15.96% | |
50k to 75k | 1243 | 19.88% | |
75k or more | 2205 | 35.27% | |
WorkFullTime | No | 3218 | 51.47% |
Yes | 3034 | 48.53% | |
GeneralHealth | Bad | 156 | 2.50% |
Fair | 936 | 14.97% | |
Good | 5160 | 82.53% | |
Self-efficacy | Bad | 337 | 5.39% |
Somehow | 1421 | 22.73% | |
Good | 4494 | 71.88% |
SocMed MakeDecisions | SocMed DiscussHCP | SocMed TrueFalse | SocMed SameViews | Misleading Health Information | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
p | OR | p | OR | p | OR | p | OR | p | OR | |||
Personal Factors | ||||||||||||
Demographics | Age | 18–34 | ||||||||||
35–49 | 0.406 | 0.9 [0.72–1.14] | 0.015 * | 0.76 [0.62–0.95] | 0.218 | 1.33 [0.94–1.12] | <0.001 *** | 0.8 [0.56–0.67] | <0.001 *** | 0.68 [0.29–0.44] | ||
50–64 | 0.002 ** | 0.7 [0.56–0.88] | 0.003 ** | 0.73 [0.59–0.9] | <0.001 *** | 1.54 [1.09–1.3] | <0.001 *** | 0.76 [0.54–0.64] | <0.001 *** | 0.23 [0.11–0.16] | ||
65 or more | <0.001 *** | 0.52 [0.4–0.67] | <0.001 *** | 0.63 [0.5–0.79] | <0.001 *** | 2.36 [1.62–1.95] | <0.001 *** | 0.61 [0.42–0.5] | <0.001 *** | 0.11 [0.05–0.08] | ||
Gender | Male | |||||||||||
Female | 0.355 | 1.08 [0.92–1.27] | 0.052 | 1.16 [1.01–1.35] | 0.856 | 1.11 [0.88–0.99] | 0.194 | 1.21 [0.96–1.08] | 0.146 | 1.64 [1.25–1.43] | ||
Race | White | |||||||||||
Black | <0.001 *** | 1.57 [1.27–1.93] | 0.001 | 1.38 [1.14–1.68] | 0.170 | 0.88 [0.65–0.76] | 0.071 | 1.01 [0.74–0.86] | 0.063 | 1.29 [0.86–1.05] | ||
Hispanic | 0.004 ** | 1.35 [1.1–1.65] | 0.205 | 1.13 [0.94–1.36] | 0.250 | 0.97 [0.73–0.84] | <0.001 *** | 0.87 [0.65–0.75] | 0.460 | 1.11 [0.79–0.94] | ||
Other | <0.001 *** | 1.8 [1.39–2.35] | 0.001 | 1.52 [1.2–1.95] | 0.643 | 1.17 [0.77–0.95] | 0.125 | 1.05 [0.69–0.85] | 0.440 | 1.51 [0.84–1.12] | ||
Education | <High School | |||||||||||
High school graduate | 0.105 | 0.75 [0.53–1.06] | 0.165 | 0.79 [0.56–1.1] | <0.001 *** | 1.99 [1.22–1.55] | 0.836 | 1.36 [0.78–1.03] | 0.012 * | 1.61 [0.95–1.23] | ||
Some college | 0.607 | 0.91 [0.66–1.28] | 0.753 | 1.05 [0.76–1.45] | <0.001 *** | 2.32 [1.44–1.82] | 0.95 | 1.3 [0.76–0.99] | <0.001 *** | 3.04 [1.79–2.34] | ||
College Graduate | 0.668 | 1.07 [0.77–1.51] | 0.267 | 1.2 [0.87–1.67] | <0.001 *** | 2.98 [1.21–4.55] | 0.263 | 1.54 [0.89–1.17] | <0.001 *** | 3.27 [1.89–2.48] | ||
Income Levels | Less than 20K | |||||||||||
20k to 35k | 0.396 | 0.89 [0.67–1.17] | 0.950 | 0.8 [0.61–1.04] | 0.111 | 1.44 [0.96–1.17] | 0.809 | 1.28 [0.83–1.03] | 0.069 | 1.54 [0.98–1.23] | ||
35k to 50k | 0.474 | 0.9 [0.69–1.19] | 0.200 | 0.73 [0.57–0.95] | 0.480 | 1.49 [1–1.22] | 0.524 | 1.33 [0.87–1.07] | 0.070 | 1.68 [1.07–1.34] | ||
50k to 75k | 0.411 | 0.89 [0.68–1.17] | 0.246 | 0.86 [0.67–1.11] | 0.220 | 1.76 [1.18–1.43] | 0.170 | 1.59 [1.05–1.28] | 0.082 | 2.17 [1.36–1.72] | ||
75k or more | 0.290 | 0.74 [0.56–0.97] | 0.36 | 0.77 [0.6–0.98] | 0.670 | 1.67 [1.13–1.36] | 0.190 | 1.57 [1.04–1.28] | 0.095 | 2.5 [1.57–1.97] | ||
Health-Beliefs & Attitudes | General Health | Bad | ||||||||||
Fair | 0.886 | 0.96 [0.57–1.63] | 0.064 | 1.13 [0.67–1.9] | 0.406 | 1.25 [0.58–0.85] | 0.550 | 1.33 [0.58–0.88] | 0.413 | 1.29 [0.54–0.84] | ||
Good | 0.913 | 0.97 [0.57–1.65] | 0.04 * | 1.26 [0.75–2.12] | 0.838 | 1.53 [0.71–1.04] | 0.569 | 1.7 [0.75–1.13] | 0.620 | 1.39 [0.58–0.9] | ||
Self Efficacy | Bad | |||||||||||
Somehow | 0.852 | 0.96 [0.66–1.4] | 0.614 | 1.11 [0.76–1.59] | 0.940 | 1.31 [0.75–0.99] | 0.261 | 1.45 [0.8–1.08] | 0.363 | 1.64 [0.83–1.17] | ||
Good | 0.450 | 1.01 [0.69–1.48] | 0.013 | 1.32 [0.92–1.89] | 0.227 | 1.26 [0.71–0.95] | 0.352 | 1.57 [0.85–1.16] | 0.722 | 1.51 [0.75–1.06] | ||
Environmental Factors (Psycho-social) | ||||||||||||
Social Isolation | Feeling Isolated | No | ||||||||||
Somehow | 0.553 | 1.13 [0.75–1.69] | 0.039 * | 0.97 [0.77–1.22] | 0.026 * | 1.08 [0.74–0.9] | 0.012 * | 1.53 [1.06–1.27] | 0.006 ** | 1.8 [1.1–1.4] | ||
Yes | 0.010 * | 1.39 [1.08–1.78] | 0.041 * | 0.85 [0.59–1.24] | 0.032 * | 1.16 [0.63–0.85] | 0.036 * | 1.59 [0.84–1.16] | 0.006 ** | 1.68 [0.73–1.12] | ||
Feeling left out | No | |||||||||||
Somehow | 0.094 | 0.99 [0.66–1.48] | 0.015 | 1.31 [0.9–1.91] | 0.042 * | 1.31 [0.93–1.11] | 0.039 * | 1.28 [0.91–1.07] | 0.892 | 1.26 [0.82–1.01] | ||
Yes | 0.017 * | 1.17 [0.93–1.48] | 0.019 * | 1.15 [0.93–1.41] | 0.025 * | 1.44 [0.77–1.05] | 0.074 | 1.45 [0.77–1.05] | 0.528 | 1.34 [0.57–0.87] | ||
Feeling People Barely Know Me | No | |||||||||||
Somehow | 0.131 | 1.31 [0.92–1.85] | 0.036 | 1.4 [1.02–1.93] | 0.354 | 1.28 [0.92–1.08] | 0.650 | 1.14 [0.82–0.96] | 0.074 | 2 [0.97–1.39] | ||
Yes | 0.033 * | 1.27 [1.02–1.6] | 0.014 * | 1.28 [1.05–1.58] | 0.662 | 1.23 [0.72–0.94] | 0.447 | 1.18 [0.69–0.9] | 0.033 * | 1.56 [1.02–1.26] | ||
Feeling People Not With Me | No | |||||||||||
Somehow | 0.087 | 1.97 [1.67–3.41] | 0.061 | 0.94 [0.75–1.18] | 0.069 | 1.25 [0.86–1.04] | 0.053 | 1.13 [0.78–0.94] | 0.305 | 1.12 [0.69–0.88] | ||
Yes | 0.027 * | 1.75 [1.58–2.97] | 0.039 * | 0.86 [0.6–1.22] | 0.078 | 1.28 [0.72–0.96] | 0.028 * | 1.14 [0.63–0.85] | 0.625 | 1.34 [0.62–0.9] | ||
PROMIS Social Isolation | No | |||||||||||
Somehow | 0.090 | 1.23 [0.75–1.51] | 0.005 ** | 1.31 [1.08–1.59] | 0.449 | 1.22 [0.92–1.05] | 0.001 ** | 1.46 [1.1–1.26] | 0.003 ** | 1.42 [1.02–1.2] | ||
Yes | 0.088 | 1.38 [0.74–2.54] | 0.009 ** | 1.08 [1.12–1.92] | 0.407 | 1.95 [0.76–1.22] | 0.010 * | 2.82 [1.11–1.79] | 0.005 ** | 3.36 [0.95–1.79] | ||
Purpose and Meaning in Life | Life Has Meaning | No | ||||||||||
Somehow | 0.075 | 0.9 [0.51–1.58] | 0.092 | 1.02 [0.64–1.65] | 0.009 ** | 2.47 [1.14–1.68] | 0.014 * | 2.00 [0.91–1.35] | 0.716 | 1.82 [0.66–1.09] | ||
Yes | 0.046 * | 0.81 [0.48–1.37] | 0.065 | 0.89 [0.53–1.49] | 0.010 * | 2.14 [0.93–1.4] | 0.009 ** | 2.22 [0.93–1.43] | 0.166 | 2.52 [0.85–1.46] | ||
Life Has Purpose | No | |||||||||||
Somehow | 0.013 * | 1.51 [0.91–2.51] | 0.038 * | 1.22 [0.78–1.92] | 0.064 | 1.57 [0.76–1.09] | 0.229 | 1.15 [0.56–0.8] | 0.014 * | 0.89 [0.34–0.54] | ||
Yes | 0.023 * | 1.43 [0.83–2.46] | 0.019 * | 1.39 [0.85–2.27] | 0.074 | 1.39 [0.63–0.93] | 0.227 | 1.17 [0.52–0.78] | 0.016 * | 1.11 [0.39–0.66] | ||
Clear Sense of Direction | No | |||||||||||
Somehow | 0.020 * | 0.72 [0.55–0.95] | 0.046 * | 0.91 [0.72–1.16] | 0.076 | 1.18 [0.8–0.97] | 0.061 | 1.47 [0.99–1.21] | 0.022 * | 1.53 [0.9–1.17] | ||
Yes | 0.041 * | 1.2 [0.78–1.85] | 0.029 | 1.23 [0.83–1.85] | 0.019 * | 1.77 [0.89–1.26] | 0.033 * | 2.01 [1.03–1.45] | 0.032 * | 2.03 [0.8–1.27] | ||
PROMIS Meaning and Purpose in Life | No | |||||||||||
Somehow | 0.046 * | 0.87 [0.53–2.1] | 0.280 | 1.4 [0.75–2.63] | 0.020 * | 2.23 [0.81–1.35] | 0.590 | 1.44 [0.53–0.87] | 0.030 * | 2.43 [0.51–1.61] | ||
Yes | 0.048 * | 0.89 [0.51–2.16] | 0.360 | 1.36 [0.7–2.62] | 0.006 ** | 1.94 [0.68–1.14] | 0.430 | 1.39 [0.47–0.8] | 0.040 * | 1.92 [0.48–0.86] | ||
R-squared | 0.55 | 0.41 | 0.62 | 0.56 | 0.44 |
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Elkefi, S. Exploring Predictors of Social Media Use for Health and Wellness during COVID-19 among Adults in the US: A Social Cognitive Theory Application. Healthcare 2024, 12, 39. https://doi.org/10.3390/healthcare12010039
Elkefi S. Exploring Predictors of Social Media Use for Health and Wellness during COVID-19 among Adults in the US: A Social Cognitive Theory Application. Healthcare. 2024; 12(1):39. https://doi.org/10.3390/healthcare12010039
Chicago/Turabian StyleElkefi, Safa. 2024. "Exploring Predictors of Social Media Use for Health and Wellness during COVID-19 among Adults in the US: A Social Cognitive Theory Application" Healthcare 12, no. 1: 39. https://doi.org/10.3390/healthcare12010039
APA StyleElkefi, S. (2024). Exploring Predictors of Social Media Use for Health and Wellness during COVID-19 among Adults in the US: A Social Cognitive Theory Application. Healthcare, 12(1), 39. https://doi.org/10.3390/healthcare12010039