论文标题

因果因素对连续美国共同19发生率的时空作用

Spatiotemporal effects of the causal factors on COVID-19 incidences in the contiguous United States

论文作者

Maiti, Arabinda, Zhang, Qi, Sannigrahi, Srikanta, Pramanik, Suvamoy, Chakraborti, Suman, Pilla, Francesco

论文摘要

自2019年12月以来,世界一直在见证了一个空前的全球大流行的巨大影响,称为严重急性呼吸综合症冠状病毒(SARS-COV-2)-COVID-19。到目前为止,已有38,619,674例确认病例和1,093,522例证实死亡,因为Covid-19造成的死亡。在美国(美国),案件和死亡记录为7,833,851和215,199。几项及时的研究讨论了混杂因素对美国Covid-19的伤亡的局部和全球影响。但是,这些研究中的大多数都没有考虑到这些因素之间以及这些因素之间的关联时间,这对于理解当前大流行的爆发至关重要。因此,这项研究采用了各种相关方法,包括本地和全球空间回归模型以及机器学习,以探索混杂因素对连续美国的COVID-19计数的因果影响。在县规模上,完全五个空间回归模型,空间滞后模型(SLM),普通最小二平方(OLS),空间误差模型(SEM),地理位置加权回归(GWR)和多尺度地理位置加权回归(MGWR),以考虑到县规模,以考虑规模对建模的规模效应。对于19日,发现种族,犯罪和收入因素是最强的协变量,并解释了最大模型差异。对于199年的死亡,(国内和国际)的移民和收入因素在解释Covid-19的空间差异中都起着至关重要的作用。在威斯康星州 - 印度 - 米奇根(Great Lake)地区以及德克萨斯州,加利福尼亚州,密西西比州和阿肯色州的几个地区,发现从GWR和MGWR模型得出的局部确定系数(R2)值非常高。

Since December 2019, the world has been witnessing the gigantic effect of an unprecedented global pandemic called Severe Acute Respiratory Syndrome Coronavirus (SARS-CoV-2) - COVID-19. So far, 38,619,674 confirmed cases and 1,093,522 confirmed deaths due to COVID-19 have been reported. In the United States (US), the cases and deaths are recorded as 7,833,851 and 215,199. Several timely researches have discussed the local and global effects of the confounding factors on COVID-19 casualties in the US. However, most of these studies considered little about the time varying associations between and among these factors, which are crucial for understanding the outbreak of the present pandemic. Therefore, this study adopts various relevant approaches, including local and global spatial regression models and machine learning to explore the causal effects of the confounding factors on COVID-19 counts in the contiguous US. Totally five spatial regression models, spatial lag model (SLM), ordinary least square (OLS), spatial error model (SEM), geographically weighted regression (GWR) and multiscale geographically weighted regression (MGWR), are performed at the county scale to take into account the scale effects on modelling. For COVID-19 cases, ethnicity, crime, and income factors are found to be the strongest covariates and explain the maximum model variances. For COVID-19 deaths, both (domestic and international) migration and income factors play a crucial role in explaining spatial differences of COVID-19 death counts across counties. The local coefficient of determination (R2) values derived from the GWR and MGWR models are found very high over the Wisconsin-Indiana-Michigan (the Great Lake) region, as well as several parts of Texas, California, Mississippi and Arkansas.

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