首页> 外文期刊>Journal of risk research >GIS-based vulnerability analysis of the United States to COVID-19 occurrence
【24h】

GIS-based vulnerability analysis of the United States to COVID-19 occurrence

机译:基于GIS的脆弱性分析,对Covid-19发生

获取原文
获取原文并翻译 | 示例
           

摘要

The outbreak of COVID-19 in the United States has resulted in over 11.2 million cases and over 240 thousand deaths. COVID-19 has affected the society in unprecedented way with its socioeconomic impact yet to be determined. This study aimed at assessing the vulnerability of the US at the county-level to COVID-19 using the pandemic data from January to June of the year 2020. The study considered the following critical factors: population density, elderly population, racial/ethnic minority population, diabetics, income, and smoking adults. Pearson's correlation analysis was performed to validate the independence of the factors. Spatial correlations between the COVID-19 occurrence and the factors were examined using Jaccard similarity analysis, which revealed relatively high correlation. A vulnerability to COVID-19 map with a five-level Likert scale was created using Logistic Regression Analysis in ArcGIS. The map showed close agreement in seven representative states, which were selected based on COVID-19 cases including NY, CA, FL, TX, OH, NC, and MT with R-2 values between 0.684 and 0.731 with Root Mean Squared Error (RMSE) values between +/- 0.033 and +/- 0.057. Furthermore, vulnerability levels from 'High' to 'Very High' were obtained for the top ten counties with the highest COVID-19 cases with residual values less than or equal to 0.04. The method and resulted vulnerability map can aid in COVID-19 response planning, prevention programs and devising strategies for controlling COVID-19 and similar pandemics in the future.
机译:Covid-19在美国的爆发导致超过1120万个病例和超过24万人死亡。 Covid-19以前所未有的方式影响了社会,尚未确定其社会经济影响。本研究旨在评估美国在2020年1月至6月的大流行数据县级对Covid-19的脆弱性。该研究审议了以下关键因素:人口密度,老年人,种族/少数民族人口,糖尿病患者,收入和吸烟成人。进行Pearson的相关性分析以验证因素的独立性。使用Jaccard相似性分析检查CoVID-19发生和因子之间的空间相关性,揭示了相对高的相关性。使用ArcGIS中的Logistic回归分析创建了对Covid-19带有五级李克特量表的Covid-19映射的漏洞。该地图在七个代表性州展示了密切协议,该州是根据Covid-19案例选择的,包括NY,CA,FL,TX,OH,NC和MT,其中r-2值与0.684和0.731之间的R-2值,具有根均方误差(RMSE )+/- 0.033和+/- 0.057之间的值。此外,对于最高的Covid-19案例的前十个县获得了从“高”到“非常高”的漏洞水平,残留值小于或等于0.04。该方法和产生的漏洞地图可以帮助Covid-19响应计划,预防计划和未来控制Covid-19和类似流行病的制定策略。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号