| Literature DB >> 32466764 |
Dhivya Karmegam1, Bagavandas Mappillairaju2.
Abstract
BACKGROUND: Natural disasters are known to take their psychological toll immediately, and over the long term, on those living through them. Messages posted on Twitter provide an insight into the state of mind of citizens affected by such disasters and provide useful data on the emotional impact on groups of people. In 2015, Chennai, the capital city of Tamil Nadu state in southern India, experienced unprecedented flooding, which subsequently triggered economic losses and had considerable psychological impact on citizens. The objectives of this study are to (i) mine posts to Twitter to extract negative emotions of those posting tweets before, during and after the floods; (ii) examine the spatial and temporal variations of negative emotions across Chennai city via tweets; and (iii) analyse associations in the posts between the emotions observed before, during and after the disaster.Entities:
Keywords: Disaster mental health; Emotional analysis; Geographic information system; Spatial statistics; Twitter
Mesh:
Year: 2020 PMID: 32466764 PMCID: PMC7254639 DOI: 10.1186/s12942-020-00214-4
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Fig. 1Study area, Chennai city (ward numbers and zone names displayed)
Total number and percentage of tweets that express negative emotions
| Disaster time period | Tweet count (percentage) | |||||
|---|---|---|---|---|---|---|
| Total ( | Negative emotion (combined index) | Anger | Disgust | Fear | Sad | |
| Before disaster (1 November to 20 November 2015) | 2050 | 349 (17.02%) | 174 (8.49%) | 75 (3.66%) | 46 (2.24%) | 196 (9.56%) |
| During disaster (21 November to 10 December 2015) | 1864 | 549 (29.45%) | 224 (12.04%) | 174 (9.33%) | 326 (17.49%) | 311 (16.68%) |
| After disaster (11 December to 30 December 2015) | 1782 | 203 (11.39%) | 62 (11.39%) | 71 (3.98%) | 39 (2.19%) | 135 (7.58%) |
Fig. 2Variation of rate of negative emotions with time
Mean differences and statistical significance of the negative emotion rates with respect to time
| Negative emotion | Time | Mean difference | Significance (99% confidence interval) |
|---|---|---|---|
| Anger | Before vs. during disaster | − 0.03836 | < 0.01 |
| During vs. after disaster | 0.08694 | < 0.01 | |
| After vs. before disaster | − 0.04859 | < 0.01 | |
| Disgust | Before vs. during disaster | − 0.06516 | < 0.01 |
| During vs. after disaster | 0.06292 | < 0.01 | |
| After vs. before disaster | 0.00225 | 0.886 | |
| Fear | Before vs. during disaster | − 0.15866 | < 0.01 |
| During vs. after disaster | 0.16104 | < 0.01 | |
| After vs. before disaster | − 0.00238 | 0.949 | |
| Sad | Before vs. during disaster | − 0.07404 | < 0.01 |
| During vs. after disaster | 0.08871 | < 0.01 | |
| After vs. before disaster | − 0.01468 | 0.193 |
Fixed effect model estimates (linear mixed model)
| Time Period | Estimate (co-efficient) | |
|---|---|---|
| (Intercept) | 0.1678 | 22.915 |
| During disaster | 0.1391 | 15.249 |
| After disaster | − 0.0583 | − 6.388 |
Fig. 3Distribution of negative emotion rates across Chennai
Fig. 4LISA cluster maps before, during and after the disaster period