PREDICTION OF COMMUNITY TRANSMISSION LEVEL OF COVID-19 USING MACHINE LEARNING ALGORITHMS BASED ON THE CDC SOCIAL VULNERABILITY INDEX

S. Saei, Yibin Wang, M. Marufuzzaman, Nazanin Morshedlou, Haifeng Wang
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Abstract

Response to hazardous events is crucial in every community, whether natural or anthropogenic disasters. Social Vulnerability Index (SVI) helps people who need support. Social vulnerability refers to the number of adverse effects of external stress, including natural causes or disease outbreaks like the Coronavirus Disease 19 (COVID-19) pandemic on human health. The SVI dataset possesses California state of the US, subdivisions of counties of 15 features into four groups as related themes (i.e., socioeconomic status; household composition and disability; minority status and language; and housing type and transportation). In addition to the SVI dataset, the recent COVID-19 data tracker for each county posted by the Centers for Disease Control and Prevention (CDC) shows the new cases per 100,000 persons in the last seven days. The transmission values are low, moderate, substantial, and high. The impact of SVI on COVID-19 attracts the attention of researchers to find the relationships between SVI and COVID-19 incidence. This paper aims to incorporate SVI data and the incidence in the urban and rural areas of the United States using eight machine learning algorithms for COVID-19 transmission level classification. The experimental results show the proper prediction based on the community transmission level of COVID-19 by considering the features of SVI. Among all used machine learning methods, Random Forest achieved the best performance based on the percentage of various performance metrics accuracy and F1-score.
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基于CDC社会脆弱性指数的机器学习算法预测新冠肺炎社区传播水平
对危险事件作出反应对每个社区都至关重要,无论是自然灾害还是人为灾害。社会脆弱性指数(SVI)帮助需要支持的人。社会脆弱性是指外部压力(包括自然原因或COVID-19大流行等疾病暴发)对人类健康造成的不利影响的数量。SVI数据集拥有美国加利福尼亚州,15个县的细分特征分为四组作为相关主题(即社会经济地位;家庭构成和残疾;少数民族地位和语言;以及住房类型和交通方式)。除了SVI数据集之外,疾病控制和预防中心(CDC)最近发布的每个县的COVID-19数据跟踪器显示了过去七天内每10万人中的新病例。传输值有低、中等、实质性和高。SVI对COVID-19的影响引起了研究者的关注,寻找SVI与COVID-19发病率之间的关系。本文旨在利用8种机器学习算法对COVID-19传播水平进行分类,将SVI数据与美国城乡地区的发病率结合起来。实验结果表明,考虑SVI的特征,基于社区传播水平的COVID-19预测是正确的。在所有使用的机器学习方法中,基于各种性能指标准确率和f1分数的百分比,随机森林取得了最好的性能。
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