Evaluation of non-pharmaceutical interventions and optimal strategies
for containing the COVID-19 pandemic
- URL: http://arxiv.org/abs/2202.13980v1
- Date: Mon, 28 Feb 2022 17:33:25 GMT
- Title: Evaluation of non-pharmaceutical interventions and optimal strategies
for containing the COVID-19 pandemic
- Authors: Xiao Zhou, Xiaohu Zhang, Paolo Santi, and Carlo Ratti
- Abstract summary: We investigate associations between policies, mobility patterns, and virus transmission.
Results highlight the power of state of emergency declaration and wearing face masks.
Our framework can be extended to inform policy makers of any country about best practices in pandemic response.
- Score: 14.807368322926227
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Given multiple new COVID-19 variants are continuously emerging,
non-pharmaceutical interventions are still primary control strategies to curb
the further spread of coronavirus. However, implementing strict interventions
over extended periods of time is inevitably hurting the economy. With an aim to
solve this multi-objective decision-making problem, we investigate the
underlying associations between policies, mobility patterns, and virus
transmission. We further evaluate the relative performance of existing COVID-19
control measures and explore potential optimal strategies that can strike the
right balance between public health and socio-economic recovery for individual
states in the US. The results highlight the power of state of emergency
declaration and wearing face masks and emphasize the necessity of pursuing
tailor-made strategies for different states and phases of epidemiological
transmission. Our framework enables policymakers to create more refined designs
of COVID-19 strategies and can be extended to inform policy makers of any
country about best practices in pandemic response.
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