The Spatial Association of Demographic and Population Health Characteristics with COVID-19 Prevalence Across Districts in India

IF 3.3 3区 地球科学 Q1 GEOGRAPHY Geographical Analysis Pub Date : 2022-05-30 DOI:10.1111/gean.12336
Sarbeswar Praharaj, Harsimran Kaur, Elizabeth Wentz
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引用次数: 3

Abstract

In less-developed countries, the lack of granular data limits the researcher's ability to study the spatial interaction of different factors on the COVID-19 pandemic. This study designs a novel database to examine the spatial effects of demographic and population health factors on COVID-19 prevalence across 640 districts in India. The goal is to provide a robust understanding of how spatial associations and the interconnections between places influence disease spread. In addition to the linear Ordinary Least Square regression model, three spatial regression models—Spatial Lag Model, Spatial Error Model, and Geographically Weighted Regression are employed to study and compare the variables explanatory power in shaping geographic variations in the COVID-19 prevalence. We found that the local GWR model is more robust and effective at predicting spatial relationships. The findings indicate that among the demographic factors, a high share of the population living in slums is positively associated with a higher incidence of COVID-19 across districts. The spatial variations in COVID-19 deaths were explained by obesity and high blood sugar, indicating a strong association between pre-existing health conditions and COVID-19 fatalities. The study brings forth the critical factors that expose the poor and vulnerable populations to severe public health risks and highlight the application of geographical analysis vis-a-vis spatial regression models to help explain those associations.

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人口和人口健康特征与印度各区COVID-19流行的空间关系
在欠发达国家,缺乏细粒度数据限制了研究人员研究COVID-19大流行中不同因素的空间相互作用的能力。本研究设计了一个新的数据库,用于研究人口和人口健康因素对印度640个地区COVID-19流行率的空间影响。目标是提供对空间关联和地方之间的相互联系如何影响疾病传播的有力理解。在线性普通最小二乘回归模型的基础上,采用空间滞后模型、空间误差模型和地理加权回归3种空间回归模型,研究并比较了各变量对新冠肺炎疫情地理变异的解释能力。我们发现局部GWR模型在预测空间关系方面具有更强的鲁棒性和有效性。研究结果表明,在人口因素中,居住在贫民窟的人口比例高与各区更高的COVID-19发病率呈正相关。肥胖和高血糖可以解释COVID-19死亡人数的空间差异,这表明先前的健康状况与COVID-19死亡人数之间存在很强的关联。该研究提出了使贫困和弱势群体面临严重公共卫生风险的关键因素,并强调了相对于空间回归模型的地理分析的应用,以帮助解释这些关联。
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来源期刊
CiteScore
8.70
自引率
5.60%
发文量
40
期刊介绍: First in its specialty area and one of the most frequently cited publications in geography, Geographical Analysis has, since 1969, presented significant advances in geographical theory, model building, and quantitative methods to geographers and scholars in a wide spectrum of related fields. Traditionally, mathematical and nonmathematical articulations of geographical theory, and statements and discussions of the analytic paradigm are published in the journal. Spatial data analyses and spatial econometrics and statistics are strongly represented.
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