Using Machine Learning To Develop A Novel Covid-19 Vulnerability Index(C19vi)

SCIENCE OF THE TOTAL ENVIRONMENT(2021)

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摘要
COVID-19 is now one of the most leading causes of death in the United States (US). Systemic health, social and economic disparities have put the minorities and economically poor communities at a higher risk than others. There is an immediate requirement to develop a reliable measure of county-level vulnerabilities that can capture the heterogeneity of vulnerable communities. This study reports a COVID-19 Vulnerability Index (C19VI) for identifying and mapping vulnerable counties. We proposed a Random Forest machine learning-based vulnerability model using CDC's socio demographic and COVID-19-specific themes. An innovative 'COVID-19 Impact Assessment' algorithm was also developed for evaluating severity of the pandemic and to train the vulnerability model. Developed C19VI was statistically validated and compared with the CDC COVID-19 Community Vulnerability Index(CCVI). Finally, using C19VI and the census data, we explored racial inequalities and economic disparities in COVID-19 health outcomes. Our index indicates that 575 counties (45million people) fall into the 'veryhigh' vulnerability class, 765 counties (66 million people) in the 'high' vulnerability class, and 1435 counties(204 million people) in the 'moderate' or 'low' vulnerability class. Only 367 counties (20 million people) were found as 'verylow' vulnerable areas. Furthermore, C19VI reveals that 524 counties with a racial minority population higher than 13% and 420 counties with poverty higher than 20% are in the 'veryhigh' or 'high' vulnerability classes. The C19VI aims at helping public health officials and disaster management agencies to develop effective mitigation strategies especially for the disproportionately impacted communities. (C) 2021 Elsevier B.V. All rights reserved.
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关键词
COVID-19, Vulnerability modeling, Machine learning, Racial minority, Disproportionate COVID-19
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