TL;DR
This paper introduces a Bayesian time-varying coefficient state-space model to analyze COVID-19 transmission dynamics, incorporating mobility data and local policies to better understand regional variations in infectiousness.
Contribution
The study develops a novel Bayesian compartment model with time-varying parameters that integrate mobility data, capturing heterogeneity in COVID-19 spread across regions.
Findings
Population mobility is highly correlated with transmission rates.
Mobility measures explain temporal variation in infectiousness.
Heterogeneous effects of policies on COVID-19 dynamics are revealed.
Abstract
The spread of COVID-19 has been greatly impacted by regulatory policies and behavior patterns that vary across counties, states, and countries. Population-level dynamics of COVID-19 can generally be described using a set of ordinary differential equations, but these deterministic equations are insufficient for modeling the observed case rates, which can vary due to local testing and case reporting policies and non-homogeneous behavior among individuals. To assess the impact of population mobility on the spread of COVID-19, we have developed a novel Bayesian time-varying coefficient state-space model for infectious disease transmission. The foundation of this model is a time-varying coefficient compartment model to recapitulate the dynamics among susceptible, exposed, undetected infectious, detected infectious, undetected removed, detected non-infectious, detected recovered, and detected…
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