| Literature DB >> 30664490 |
Dan Wu1,2,3,4, Weiming Tang1,2,3, Haidong Lu1,5, Tiange P Zhang1,6, Bolin Cao7, Jason J Ong4,8, Amy Lee1,2, Chuncheng Liu9, Wenting Huang1,2, Rong Fu2, Katherine Li10, Stephen W Pan11, Ye Zhang1,2,12, Hongyun Fu13, Chongyi Wei14, Joseph D Tucker1,2,4.
Abstract
BACKGROUND: The spread of healthy behaviors through social networks may be accelerated by influential individuals. Previous studies have used lay health influencers to prevent sexually transmitted infections (STIs) among internet-using men who have sex with men (MSM). However, there is a lack of understanding of the characteristics of this key subset of MSM.Entities:
Keywords: China; HIV; health promotion; internet; men who have sex with men; peer influence; social media; social networks; syphilis
Mesh:
Year: 2019 PMID: 30664490 PMCID: PMC6360381 DOI: 10.2196/10171
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Demographic characteristics of Web-based sexual health influencers and noninfluencers in a men who have sex with men cohort in China in 2016 to 2017.
| Demographic characteristics | Total (N=1031) | Noninfluencers (N=899) | Influencers (N=132) | ||
| .41 | |||||
| <20 | 174 (16.88) | 154 (17.1) | 20 (15.2) | ||
| 20-29 | 645 (62.56) | 555 (61.7) | 90 (68.2) | ||
| 30-39 | 170 (16.49) | 154 (17.1) | 16 (12.1) | ||
| ≥40 | 42 (4.07) | 36 (4.0) | 6 (4.5) | ||
| .27 | |||||
| Nonmigrants | 926 (89.82) | 811 (90.2) | 115 (87.1) | ||
| Migrants | 105 (10.18) | 88 (9.8) | 17 (12.9) | ||
| .96 | |||||
| Never married | 907 (87.97) | 790 (87.9) | 117 (88.6) | ||
| Currently married | 89 (8.63) | 78 (8.7) | 11 (8.3) | ||
| Divorced or widowed | 35 (3.40) | 31 (3.4) | 4 (3.0) | ||
| .17 | |||||
| High school or below | 364 (35.31) | 327 (36.4) | 37 (28.0) | ||
| Some college | 285 (27.64) | 245 (27.3) | 40 (30.3) | ||
| College or above | 382 (37.05) | 327 (36.4) | 55 (41.7) | ||
| .17 | |||||
| ≤2500 | 235 (22.79) | 202 (22.5) | 33 (25) | ||
| 2501-8500 | 544 (52.76) | 474 (52.7) | 70 (53.0) | ||
| 8501-14,000 | 159 (15.42) | 146 (16.2) | 13 (9.8) | ||
| >14,000 | 93 (9.02) | 77 (8.6) | 16 (12.1) | ||
| .86 | |||||
| Homosexual | 741 (71.87) | 647 (72.0) | 94 (71.2) | ||
| Bisexual | 252 (24.44) | 218 (24.2) | 34 (25.8) | ||
| Unsure | 38 (3.69) | 34 (3.8) | 4 (3.0) | ||
| Disclose sexual orientation to anyonea, n (%) | 680 (65.96) | 580 (64.5) | 100 (75.8) | .01 | |
| Disclose sexual orientation to health providersa, n (%) | 215 (20.85) | 178 (19.8) | 37 (28.0) | .03 | |
| Number of male sex partners in the last 3 months, mean (SD) | 1.14 (1.5) | 1.11 (1.5) | 1.32 (1.8) | .16 | |
| Mainly met male sex partners online in the last 12 monthsa,b, n (%) | 766 (74.30) | 669 (74.4) | 97 (73.5) | .82 | |
| Had a regular male partner in the last 3 monthsa,c, n (%) | 351 (34.04) | 307 (34.1) | 44 (33.3) | .85 | |
| Had a casual male partner in the last 3 monthsa,d, n (%) | 378 (36.66) | 315 (35.0) | 63 (47.7) | .005 | |
| Condomless sex with male partners in the last 3 monthsa, n (%) | 229 (22.21) | 203 (22.6) | 26 (19.7) | .46 | |
| HIV test in the last 3 monthsa,e, n (%) | 410 (39.77) | 337 (37.5) | 73 (55.3) | <.001 | |
| Syphilis test in the last 3 monthsa, n (%) | 172 (16.68) | 137 (15.2) | 35 (26.5) | .001 | |
| Self-reported influence on others’ adoption of an HIV test after their Web-based intervention (Many or quite a lot), n (%) | 80 (7.76) | 38 (4.2) | 42 (31.8) | <.001 | |
aThe response was yes for these variables.
bMainly met with male sexual partners through a website or social media platforms.
cRegular male partner was defined as the one who was in a stable relationship (over 3 months) that did not involve transactional sex.
dCasual male partner was defined as a male sexual partner that the participant did not consider to be his regular partner.
eEither facility-based testing or self-testing.
Exposure to the trial intervention reported by Web-based sexual health influencers and noninfluencers in a men who have sex with men cohort in China in 2016 to 2017.
| Binary outcomes | Total (N=1031) | Noninfluencers (N=899) | Influencers (N=132) | ||
| Have seen any images promoting HIV testing | 884 (85.74) | 759 (84.4) | 125 (94.7) | .002 | |
| Have seen any texts promoting HIV testing | 792 (76.82) | 672 (74.7) | 120 (90.9) | <.001 | |
| Have seen local testing sites information | 864 (83.80) | 749 (83.3) | 115 (87.1) | .27 | |
| Have seen a local crowdsourcing contest | 375 (36.37) | 312 (34.7) | 63 (47.7) | .004 | |
| Using Weibo to give or receive information | 154 (14.94) | 112 (12.5) | 42 (31.8) | <.001 | |
| Using WeChat to give or receive information | 360 (34.92) | 275 (30.6) | 85 (64.4) | <.001 | |
| Using QQ to give or receive information | 179 (17.36) | 125 (13.9) | 54 (40.9) | <.001 | |
| Using Blued to give or receive information | 211 (20.47) | 169 (18.8) | 42 (31.8) | .001 | |
Number of social media followers, HIV-relevant psychological profiles, and community engagement by Web-based sexual health influencers and noninfluencers in a men who have sex with men cohort in China in 2016 to 2017 (N=1031).
| Continuous outcomes | Noninfluencers | Influencers | |
| Number of Weibo followers, mean (SD) | 269 (1430) | 740 (5267) | .31 |
| Number of WeChat followers, mean (SD) | 168 (317) | 749 (4725) | .17 |
| Number of QQ followers, mean (SD) | 159 (334) | 238 (374) | .03 |
| Number of Blued followers, mean (SD) | 466 (2709) | 172 (418) | .003 |
| Anticipated HIV stigmaa, mean score (SD) | 2.9 (0.7) | 2.7 (0.8) | <.001 |
| HIV testing social normsb, mean score (SD) | 2.9 (0.4) | 2.8 (0.4) | .76 |
| HIV testing self-efficacyb, mean score (SD) | 3.1 (0.5) | 3.4 (0.5) | <.001 |
| Community engagementc, mean score (SD) | 2.5 (1.7) | 4.0 (1.6) | <.001 |
aMean scores of anticipated HIV stigma ranged from 1 to 4, and a higher score means a higher level of anticipated stigma.
bMean scores of HIV testing social norms and self-efficacy ranged from 1 to 4, and higher mean scores mean better perceived social norms and better self-efficacy.
cScore of community engagement ranged from 0 to 6, and a higher score means better community engagement in sexual health.
Association between Web-based sexual health influence and continuous outcomes in a men who have sex with men cohort in China in 2016 to 2017 (N=1031).
| Continuous outcomesa | Model 1b | Model 2c | ||
| Estimated mean difference (95% CI) | Estimated mean difference (95% CI) | |||
| Anticipated HIV stigma | −0.22 (−0.40 to −0.05) | .02 | −0.23 (−0.35 to −0.12) | <.001 |
| HIV testing social norms | −0.01 (−0.11 to 0.08) | .77 | −0.02 (−0.10 to 0.06) | .69 |
| HIV testing self-efficacy | 0.24 (0.07 to 0.41) | .01 | 0.25 (0.16 to 0.34) | <.001 |
| Community engagement | 1.48 (1.06 to 1.90) | <.001 | 1.50 (1.19 to 1.81) | <.001 |
aReference group is nonsexual health influencers.
bModel 1 was only adjusted for a previous intervention package to promote HIV testing among the cohort.
cModel 2 was additionally adjusted for age, education, income, and marital status.
Association between Web-based sexual health influence and binary outcomes in a men who have sex with men cohort in China in 2016 to 2017 (N=1031).
| Behavioral outcomesa | Model 1b | Model 2c | |||
| Estimated odds ratio (95% CI) | Estimated odds ratio (95% CI) | ||||
| Overall HIV testing | 2.12 (1.45-3.09) | <.001 | 2.16 (1.48-3.17) | <.001 | |
| HIV self-testing | 1.62 (1.09-2.42) | .02 | 1.64 (1.10-2.46) | .02 | |
| HIV facility-based testing | 2.59 (1.75-3.82) | <.001 | 2.66 (1.79-3.96) | <.001 | |
| Consistent condom use | 1.29 (0.78-2.12) | .32 | 1.33 (0.80-2.19) | .27 | |
| Syphilis testing | 1.94 (1.26-3.01) | <.01 | 1.99 (1.28-3.10) | <.01 | |
| Using Weibo to give or receive information | 1.88 (1.20-2.97) | <.001 | 1.90 (1.19-3.02) | <.01 | |
| Using WeChat to give or receive information | 3.56 (1.78-7.13) | <.001 | 3.79 (1.87-7.66) | <.001 | |
| Using QQ to give or receive information | 2.76 (1.71-4.45) | <.001 | 2.91 (1.79-4.75) | <.001 | |
| Using an app to give or receive information | 1.07 (0.68-1.69) | .76 | 1.04 (0.66-1.64) | .87 | |
| Many or quite a lot of people took a test | 6.81 (4.14-11.2) | <.001 | 7.62 (4.55-12.78) | <.001 | |
aReference group is nonsexual health influencers.
bModel 1 was only adjusted for a previous intervention package to promote HIV testing among the cohort.
cModel 2 was additionally adjusted for age, education, income, and marital status.
dSocial media engagement was defined as whether they reported using Weibo, WeChat, QQ, or a mobile app in the last 3 months to give or receive information about HIV testing, except for the information delivered by the trial.