We use a distinctive methodology that leverages a fixed population of Twitter users located in France to gauge the mental health effects of repeated lockdown orders. To do so, we derive from our population a mental health indicator that measures the frequency of words expressing anger, anxiety and sadness. Our indicator did not reveal a statistically significant mental health response during the first lockdown, while the second lockdown triggered a sharp and persistent deterioration in all three emotions. Our estimates also show a more severe deterioration in mental health among women and younger users during the second lockdown. These results suggest that successive stay-at-home orders significantly worsen mental health across a large segment of the population. We also show that individuals who are closer to their social network were partially protected by this network during the first lockdown, but were no longer protected during the second, demonstrating the gravity of successive lockdowns for mental health.
Mental health effects of COVID-19 lockdowns: A Twitter-based analysis.
Sally Colella,Frédéric Dufourt,Vincent A. Hildebrand,Rémi Vivès
Published 2023 in Economics and Human Biology
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- Publication year
2023
- Venue
Economics and Human Biology
- Publication date
2023-09-01
- Fields of study
Medicine, Psychology
- Identifiers
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- Source metadata
Semantic Scholar, PubMed
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