论文标题
使用机器学习来开发新颖的Covid-19漏洞指数(C19VI)
Using Machine Learning to Develop a Novel COVID-19 Vulnerability Index (C19VI)
论文作者
论文摘要
Covid19现在是美国最主要的死亡原因之一。系统的健康,社会和经济差异使少数民族和经济贫困社区的风险高于其他群体。有一个即时要求建立可靠的县级漏洞的衡量标准,可以捕获脆弱社区和Covid19大流行的异质性。这项研究报告了COVID19漏洞指数(C19VI),用于识别和映射美国脆弱县。我们提出了一个基于森林机器学习的随机COVID19漏洞模型,使用CDC社会人口统计学和COVID19特定主题。还使用均匀性和趋势评估技术开发了创新的COVID19影响评估算法,以评估所有县和火车RF模型的大流行严重程度。开发的C19VI经过统计验证,并与CDC Covid19社区漏洞指数(CCVI)进行了比较。最后,使用C19VI以及人口普查数据,我们探讨了美国不同地区之间COVID19健康结果的种族不平等和经济差异。我们的C19VI指数表明,有18.30%的县属于非常高的脆弱性级别,高24.34%,中度为23.32%,低点为22.34%,低点为11.68%。此外,C19VI表明,有75.57%的种族少数民族和82.84%的经济贫困社区是很高或高的Covid19脆弱地区。提出的脆弱性建模方法既利用了统计分析的良好领域,也利用了机器学习的快速发展领域。 C19VI提供了一种准确,更可靠的方式来衡量美国县级脆弱性。该指数旨在帮助应急计划人员制定更有效的缓解策略,尤其是针对受影响不成比例的社区。
COVID19 is now one of the most leading causes of death in the United States. 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 both vulnerable communities and the COVID19 pandemic. This study reports a COVID19 Vulnerability Index (C19VI) for identification and mapping of vulnerable counties in the United States. We proposed a Random Forest machine learning based COVID19 vulnerability model using CDC sociodemographic and COVID19-specific themes. An innovative COVID19 Impact Assessment algorithm was also developed using homogeneity and trend assessment technique for evaluating severity of the pandemic in all counties and train RF model. Developed C19VI was statistically validated and compared with the CDC COVID19 Community Vulnerability Index (CCVI). Finally, using C19VI along with census data, we explored racial inequalities and economic disparities in COVID19 health outcomes amongst different regions in the United States. Our C19VI index indicates that 18.30% of the counties falls into very high vulnerability class, 24.34% in high, 23.32% in moderate, 22.34% in low, and 11.68% in very low. Furthermore, C19VI reveals that 75.57% of racial minorities and 82.84% of economically poor communities are very high or high COVID19 vulnerable regions. The proposed approach of vulnerability modeling takes advantage of both the well-established field of statistical analysis and the fast-evolving domain of machine learning. C19VI provides an accurate and more reliable way to measure county level vulnerability in the United States. This index aims at helping emergency planners to develop more effective mitigation strategies especially for the disproportionately impacted communities.