| Literature DB >> 35713945 |
Jimin Oh1, Stephen Bonett2, Elissa C Kranzler3, Bruno Saconi2, Robin Stevens4.
Abstract
BACKGROUND: Youth and young adults continue to experience high rates of HIV and are also frequent users of social media. Social media platforms such as Twitter can bolster efforts to promote HIV prevention for these individuals, and while HIV-related messages exist on Twitter, little is known about the impact or reach of these messages for this population.Entities:
Keywords: HIV; HIV prevention; LASSO; Twitter; digital health; public health; social media; young adults
Mesh:
Year: 2022 PMID: 35713945 PMCID: PMC9250060 DOI: 10.2196/32718
Source DB: PubMed Journal: JMIR Public Health Surveill ISSN: 2369-2960
Figure 1Receiver operating curve and area under the curve for models predicting tweet endorsement (A) and engagement (B).
Descriptive statistics for user-level and message-level characteristics (n=8010).
|
| Value | |
|
| ||
|
| Yes | 4096 (51.14) |
|
| No | 3914 (48.86) |
|
| ||
|
| Midwest | 663 (8.28) |
|
| Northeast | 2962 (36.98) |
|
| South | 2014 (25.14) |
|
| West | 2371 (29.60) |
|
| ||
|
| English | 7976 (99.58) |
|
| Not English | 34 (0.42) |
|
| ||
|
| Yes | 959 (11.97) |
|
| No | 7051 (88.03) |
|
| ||
|
| Daytime (9 AM to 5 PM) | 4411 (55.07) |
|
| Evening (5 PM to midnight) | 2146 (26.79) |
|
| Night (midnight to 9 AM) | 1453 (18.14) |
|
| ||
|
| 2009 | 30 (0.37) |
|
| 2010 | 6 (0.07) |
|
| 2011 | 62 (0.77) |
|
| 2012 | 62 (0.77) |
|
| 2013 | 158 (1.97) |
|
| 2014 | 346 (4.32) |
|
| 2015 | 1174 (14.66) |
|
| 2016 | 2472 (30.86) |
|
| 2017 | 3700 (46.19) |
|
| ||
|
| Yes | 2049 (25.58) |
|
| No | 5961 (74.42) |
|
| ||
|
| Yes | 1438 (17.95) |
|
| No | 6572 (82.05) |
| Agea (years), median (IQR) | 18.72 (17.13-21.64) | |
| Follower count, median (IQR) | 591 (241-1179) | |
| Friend count, median (IQR) | 435 (273-800) | |
| Message length, median (IQR) | 94 (71-121) | |
aAge is a predicted age, computed based on tweet and user characteristics using machine learning algorithms developed by Sap et al [29].
Summary of logistic regression analysis for variables predicting endorsement and engagement of Twitter users (n=8010).
| Predictor | Endorsement, aORa (95% CI) | Engagement, aOR (95% CI) | ||||
|
| ||||||
|
| Age | —b | 0.92 (0.90-0.94) | |||
|
| Follower count (100 counts) | 1.01 (1.00-1.01) | 1.01 (1.00-1.01) | |||
|
| Personal user count | 3.27 (2.75-3.89) | 1.77 (1.52-2.05) | |||
|
| ||||||
|
|
| |||||
|
|
| Northeast | 1.46 (1.31-1.99) | 1.69 (1.32-2.15) | ||
|
|
| South | 0.85 (0.82-1.25) | 1.16 (0.91-1.48) | ||
|
|
| West | 1.06 (0.71-1.08) | 0.68 (0.53-0.88) | ||
|
|
| |||||
|
|
| Night | — | 1.08 (0.90-1.31) | ||
|
|
| Daytime | — | 1.36 (1.17-1.59) | ||
|
| Message length (10 words) | — | 1.04 (1.02-1.06) | |||
|
| Reply | — | 0.45 (0.36-0.57) | |||
|
| Year | 1.30 (1.23-1.38) | — | |||
|
| Message: norm | — | 1.62 (1.15-2.29) | |||
|
| Message: research, education, news | 0.77 (0.65-0.92) | — | |||
|
| Message: STI | 0.59 (0.47-0.74) | 0.61 (0.47-0.78) | |||
aaOR: adjusted odds ratio.
bNot applicable.
cReference group: Midwest.
dReference group: evening.