Abstract (may include machine translation)
Behavior-disease models suggest that pandemics can be contained cost-effectively if individuals take
preventive actions when disease prevalence rises among their close contacts. However, assessing local
awareness behavior in real-world datasets remains a challenge. Through the analysis of mutation patterns
in clinical genetic sequence data, we propose an efficient approach to quantify the impact of local awareness
by identifying superspreading events and assigning containment scores to them.
We validate the proposed containment score as a proxy for local awareness in simulation experiments,
and find that it was correlated positively with policy stringency during the COVID-19 pandemic. Finally,
we observe a temporary drop in the containment score during the Omicron wave in the United Kingdom,
matching a survey experiment we carried out in Hungary during the corresponding period of the pandemic.
Our findings bring important insight into the field of awareness modeling through the analysis of large-scale
genetic sequence data, one of the most promising data sources in epidemics research.
preventive actions when disease prevalence rises among their close contacts. However, assessing local
awareness behavior in real-world datasets remains a challenge. Through the analysis of mutation patterns
in clinical genetic sequence data, we propose an efficient approach to quantify the impact of local awareness
by identifying superspreading events and assigning containment scores to them.
We validate the proposed containment score as a proxy for local awareness in simulation experiments,
and find that it was correlated positively with policy stringency during the COVID-19 pandemic. Finally,
we observe a temporary drop in the containment score during the Omicron wave in the United Kingdom,
matching a survey experiment we carried out in Hungary during the corresponding period of the pandemic.
Our findings bring important insight into the field of awareness modeling through the analysis of large-scale
genetic sequence data, one of the most promising data sources in epidemics research.
Original language | English |
---|---|
Publisher | arXiv |
DOIs | |
State | Published - 14 Jun 2024 |
Fingerprint
Dive into the research topics of 'Epidemic-induced local awareness behavior inferred from surveys and genetic sequence data'. Together they form a unique fingerprint.Datasets
-
Code for the paper: Epidemic-induced local awareness behavior inferred from surveys and genetic sequence data
Odor, G. (Creator), Code Ocean, 2025
DOI: 10.24433/co.1189503.v1, https://codeocean.com/capsule/0017019/tree/v1
Dataset