模拟美国相邻县的2019年严重急性呼吸综合征冠状病毒(SARS-CoV-19)发病率:空间视角

Olawale Oluwafemi, Oluseyi Oladepo
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摘要

摘要本研究调查了在大流行的前604天内,美国相邻各县的COVID-19发病率和死亡率的空间分布。数据集来自美国亚特兰大埃默里大学,其中包括社会经济变量和健康结果变量(N = 3106)。OLS估计占回归平原的31%(校正R2 = 0.31), AIC值为9263,异方差Breusch-Pagan检验为472.4,多重共线性条件数为74.25。该结果需要在GeoDa 1.18软件上进行空间自回归模型。使用ArcGIS 10.7绘制残差图和选取的显著变量图。一般来说,空间滞后模型(SLM)和空间误差模型(SEM)模型占回归平原的很大比例。而模型的效率是SLM的顺序(AIC: 8264.4; BreucshPagan测试:584.4;R2 = 0.56) > SEM (AIC: 8282.0;brech - pagan测试:697.2;R2 = 0.56)。在这种情况下,最不具预测性的模型是SEM。男性、黑人、贫困以及城市和农村假人对回归平原的重大贡献表明,COVID-19的传播更多地是社会经济和农村/城市条件的函数,而不是健康结果的函数。尽管如此,糖尿病和肥胖与COVID-19发病率呈正相关。然而,基于数据集,相关性相对较低。本研究进一步得出结论,决策者和卫生从业人员在减少COVID-19疾病传播时应考虑空间特性、城乡迁移和资源获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Severe Acute Respiratory Syndrome Coronavirus 2019 (SARS-CoV-19) Incidence across Conterminous US Counties: A Spatial Perspective
Abstract. This study examines the spatial distribution of COVID-19 incidence and mortality rates across the counties in the conterminous US in the first 604 days of the pandemic. The dataset was acquired from Emory University, Atlanta, United States, which includes socio-economic variables and health outcomes variables (N = 3106). OLS estimates accounted for 31% of the regression plain (adjusted R2 = 0.31) with AIC value of 9263, and Breusch-Pagan test for heteroskedasticity indicated 472.4, and multicollinearity condition number of 74.25. This result necessitated spatial autoregressive models, which were performed on GeoDa 1.18 software. ArcGIS 10.7 was used to map the residuals and selected significant variables. Generally, the Spatial Lag Model (SLM) and Spatial Error Model (SEM) models accounted for substantial percentages of the regression plain. While the efficiency of the models is the order of SLM (AIC: 8264.4: BreucshPagan test: 584.4; Adj. R2 = 0.56) > SEM (AIC: 8282.0; Breucsh-Pagan test: 697.2; Adj. R2 = 0.56). In this case, the least predictive model is SEM. The significant contribution of male, black race, poverty and urban and rural dummies to the regression plain indicated that COVID-19 transmission is more of a function of socio-economic, and rural/urban conditions rather than health outcomes. Although, diabetes and obesity showed a positive relationship with COVID-19 incidence. However, the relationship was relatively low based on the dataset. This study further concludes that the policymakers and health practitioners should consider spatial peculiarities, rural-urban migration and access to resources in reducing the transmission of COVID-19 disease.
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