| Literature DB >> 29426815 |
Mohsen Farhadloo1,2, Kenneth Winneg2, Man-Pui Sally Chan1, Kathleen Hall Jamieson2, Dolores Albarracin1.
Abstract
BACKGROUND: Recent outbreaks of Zika virus around the world led to increased discussions about this issue on social media platforms such as Twitter. These discussions may provide useful information about attitudes, knowledge, and behaviors of the population regarding issues that are important for public policy.Entities:
Keywords: Twitter; Zika; public health; public policy; topic modeling
Year: 2018 PMID: 29426815 PMCID: PMC5889815 DOI: 10.2196/publichealth.8186
Source DB: PubMed Journal: JMIR Public Health Surveill ISSN: 2369-2960
Attitudes, knowledge, and behavior questions.
| Category and survey item | Survey question | |
| ZI-22 | If there were cases of people getting infected with Zika virus in your city or town, would you approve or disapprove of special spraying at the ground level against mosquitoes to prevent the spread of the Zika virus (on a scale 1=strongly disapprove to 5=strongly approve)? | |
| ZI-23 | If there were cases of people getting infected with the Zika virus in your city or town, would you approve or disapprove of special spraying from the air against mosquitoes to prevent the spread of the Zika virus (on a scale 1=strongly disapprove to 5=strongly approve)? | |
| ZG-03b | How do scientists think someone can get the Zika virus? By sitting next to someone who has the Zika virus (on a scale 1=not likely at all to 4=very likely). | |
| ZG-03c | How do scientists think someone can get the Zika virus? By being bitten by a mosquito that has already bitten someone who has the Zika virus (on a scale 1=not likely at all to 4=very likely). | |
| ZG-05 | How accurate is it to say that a pregnant woman who is infected with the Zika virus is more likely to have a baby with an unusually small head and brain (on a scale 1=not accurate at all to 4=very accurate)? | |
| ZG-47 | If there were a vaccine that protected you from getting Zika how likely, if at all, is it that you would get the vaccine (on a scale 1=not likely at all to 4=very likely)? | |
| ZG-54 | In the past 3 months, have you done anything to protect yourself from getting Zika (on a scale 0 to 1)? | |
| GM-20 | In the past week, how many days, if any, did you discuss the effects of the Zika virus with family or friends (on a scale 0 to 7)? | |
Figure 1Flow of data processing and analyses.
Figure 2The perplexity formula used to compare the probability models. The log-likelihood of a set of held-out documents can be calculated and used for comparing the models.
Figure 3Comparison of weighting schemes (binary, term occurrence, and term frequency–inverse document frequency [tfidf]) for a vocabulary size of 8200. Perplexity of the held-out test set is the lowest for the term occurrence weighting scheme.
Top 10 words of some of the topics of the trained latent Dirichlet allocation (LDA) models used to examine the association with the survey items. Terms that could be used to label a topic are italicized.
| Topic number | Top 10 terms |
| 4-LDA100 | |
| 57-LDA100 | |
| 63-LDA100 | |
| 96-LDA100 | mosquito, virus, zika, |
| 2-LDA150 | virus, zika, mosquito, |
| 12-LDA150 | virus, cdcgov, zika, via, test, |
| 15-LDA150 | virus, |
| 73-LDA150 | zika, virus, |
| 120-LDA150 | zika, virus, mosquito, |
| 149-LDA150 | virus, |
| 10-LDA200 | zika, virus, amp, |
| 37-LDA200 | zika, virus, |
| 39-LDA200 | mcilroy, rory, zika, virus, |
| 87-LDA200 | mosquito, virus, |
| 104-LDA200 | zika, virus, |
| 135-LDA200 | virus, zika, |
| 165-LDA200 | |
| 197-LDA200 | virus, zika, |
Figure 4Probability of topics (circle markers) and survey items (square markers) over time. Using the trained model, the probability of each topic can be calculated in each week. The survey items at each week are the average of the participants' responses. Survey items missing in some weeks were not asked of the respondents in those weeks. Left: Attitude toward ground spraying (survey) compared with congress funding (Twitter) (197/LDA200). Right: Knowledge about microcephaly (survey) compared with Zika protection and travel (Twitter) (149/LDA150). LDA: latent Dirichlet allocation.
Summary of topic correlates for survey items. LDA: latent Dirichlet allocation.
| Category, survey item, and topic | Correlation ( | ||
| “Congress funding” (197/LDA200) | .88 (<.001) | ||
| “Zika protection and travel” (149/LDA150) | .68 (<.001) | ||
| “Congress funding” (197/LDA200) | .92 (<.001) | ||
| “Zika in Miami” (87/LDA200) | .67 (<.001) | ||
| “Zika protection and travel” (149/LDA150) | .52 (<.001) | ||
| “Congress funding” (99/LDA100) | .51 (<.001) | ||
| “Microcephaly” (96/LDA100) | .43 (<.001) | ||
| “Blood transfusion tech” (73/LDA150) | –.68 (<.001) | ||
| “Zika” (57/LDA100) | .65 (<.001) | ||
| “Insect repellent” (37/LDA200) | .59 (<.001) | ||
| “Zika” (57/LDA100) | .47 (<.001) | ||
| “Insect repellent” (37/LDA200) | .45 (<.001) | ||
| “Congress funding” (197/LDA200) | .44 (<.001) | ||
| “Zika protection and travel” (149/LDA150) | .30 (<.001) | ||
Figure 5Word cloud of topics that showed significant correlation with survey items. LDA: latent Dirichlet allocation.