TL;DR
This study analyzes cost-effective strategies to reduce COVID-19 deaths by controlling the effective reproduction number using targeted testing and distancing, emphasizing the importance of timely interventions and the utility of $R_e$ as a real-time indicator.
Contribution
It introduces heuristic control strategies based on $R_e$ targeting COVID-19, comparing their cost-effectiveness and highlighting the importance of timely implementation and population-wide measures.
Findings
Targeting $R_e$ reduction is most cost-effective.
Early control measures significantly improve outcomes.
Strategies focusing on overall population distancing outperform high-risk prioritization.
Abstract
In epidemiology, the effective reproduction number is used to characterize the growth rate of an epidemic outbreak. In this paper, we investigate properties of for a modified SEIR model of COVID-19 in the city of Houston, TX USA, in which the population is divided into low-risk and high-risk subpopulations. The response of to two types of control measures (testing and distancing) applied to the two different subpopulations is characterized. A nonlinear cost model is used for control measures, to include the effects of diminishing returns. We propose three types of heuristic strategies for mitigating COVID-19 that are targeted at reducing , and we exhibit the tradeoffs between strategy implementation costs and number of deaths. We also consider two variants of each type of strategy: basic strategies, which consider only the effects of controls on , without…
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