| Literature DB >> 28062392 |
Robert J Smith1, Patrick Crutchley1,2, H Andrew Schwartz1,2,3, Lyle Ungar1,4, Frances Shofer5, Kevin A Padrez1, Raina M Merchant1,5.
Abstract
BACKGROUND: Social media is emerging as an insightful platform for studying health. To develop targeted health interventions involving social media, we sought to identify the patient demographic and disease predictors of frequency of posting on Facebook.Entities:
Keywords: Facebook; depression; natural language processing; social media
Mesh:
Year: 2017 PMID: 28062392 PMCID: PMC5251170 DOI: 10.2196/jmir.6486
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Screenshots of data collection from the Facebook app. (A) illustrates the log-in page for the app, (B) illustrates a language description task for users, and (C) illustrates part of the consent and privacy process for the study.
Figure 2Steps in language correlation analyses (adapted from Schwartz et al [17]). Broadly, step 1 involves deriving independent language variables from the aggregated participant Facebook language data. In step 2, language topics are correlated with other participant characteristics. In step 3, world clouds and other figures are created to visualize the language-characteristic correlations.
Facebook posts in the 6-month period prior to enrollment and demographics of participants (N=695).
| Demographic | n | Mean (95% CI)a | ||
| Female | 514 | 27 (24-32) | .006 | |
| Male | 181 | 18 (15-23) | ||
| African American/black | 489 | 27 (24-32) | .04 | |
| White | 141 | 19 (14-25) | ||
| Other race | 65 | 20 (13-31) | ||
| 18-29 | 437 | 28 (24-33) | .02 | |
| 30-39 | 173 | 20 (16-26) | ||
| 40-49 | 60 | 23 (15-35) | ||
| >49 | 25 | 12 (6-23) | ||
| Q1 (874-4800) | 173 | 40 (31-51) | <.001 | |
| Q2 (483-873) | 175 | 22 (17-28) | ||
| Q3 (295-482) | 175 | 26 (21-34) | ||
| Q4 (13-294) | 171 | 16 (12-21) | ||
| ≥3 times daily | 154 | 51 (40-66) | <.001 | |
| 1-3 times daily | 161 | 42 (33-53) | ||
| Every few days | 176 | 25 (20-32) | ||
| Once per week or less | 204 | 9 (7-11) | ||
aAll analyses were performed using log10 of Facebook posts. Values transformed back for presentation purposes.
Figure 3Language of high- and low-frequency Facebook posters. (a) The blue text bubbles illustrate the language topics most positively correlated with participant posting frequency and (b) the green text bubbles illustrate the language topics most negatively correlated with participant posting frequency.
Prevalence of most common conditions from the electronic medical record within our participant sample (N=695).
| Condition | n (%) |
| Headaches | 272 (39.1) |
| Back pain disorders | 243 (35.0) |
| Anemia | 177 (25.5) |
| Depression | 134 (19.3) |
| Asthma | 134 (19.3) |
| Neoplasm | 108 (15.5) |
| Hypertension | 98 (14.1) |
| Diabetes | 66 (9.5) |
Unadjusted and adjusted (sex, race, age) meana Facebook posts in the 6 months prior to enrollment by presence or absence of highly prevalent International Classification of Diseases, Ninth Revision codes in the electronic medical record.
| Health condition | n | Unadjusted mean posts | Adjusted mean posts | |||
| Mean (95% CI) | Mean (95% CI) | |||||
| Positive | 120 | 38 (27-52) | .003 | 37 (27-49) | .005 | |
| Negative | 575 | 23 (20-26) | 23 (20-26) | |||
| Yes | 134 | 38 (29-50) | .001 | 38 (28-50) | .001 | |
| No | 561 | 22 (19-26) | 22 (19-26) | |||
| Yes | 134 | 34 (25-45) | .02 | 31 (23-41) | .11 | |
| No | 561 | 23 (20-26) | 23 (20-27) | |||
| Yes | 272 | 29 (24-35) | .05 | 28 (23-34) | .69 | |
| No | 423 | 22 (19-26) | 23 (19-27) | |||
| Yes | 177 | 23 (18-30) | .57 | 22 (17-29) | .36 | |
| No | 518 | 25 (22-29) | 26 (22-30) | |||
| Yes | 66 | 26 (17-40) | .73 | 29 (19-43) | .46 | |
| No | 629 | 25 (21-28) | 24 (21-28) | |||
| Yes | 98 | 26 (18-37) | .78 | 30 (21-42) | .27 | |
| No | 597 | 25 (21-28) | 24 (21-27) | |||
| Yes | 108 | 24 (17-34) | .94 | 26 (19-36) | .69 | |
| No | 587 | 25 (22-28) | 24 (21-28) | |||
| Yes | 243 | 25 (20-31) | .96 | 25 (20-31) | .96 | |
| No | 452 | 25 (21-29) | 25 (21-29) | |||
aAll analyses were performed using log10 of Facebook posts. Values transformed back for presentation purposes.
Figure 4Actual versus projected mean number of posts by perceived posting frequency.