THE INTERPLAY BETWEEN CLUSTERS, COVARIATES, AND SPATIAL PRIORS IN SPATIAL MODELLING OF COVID-19 IN SOUTH SULAWESI PROVINCE, INDONESIA

A. Aswi, M. Tiro, S. Sudarmin, Sukarna Sukarna, S. Cramb
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引用次数: 1

Abstract

A number of previous studies on Covid-19 have used Bayesian spatial Conditional Autoregressive (CAR) models. However, basic CAR models are at risk of over-smoothing if adjacent areas genuinely differ in risk. More complex forms, such as localised CAR models, allow for sudden disparities, but have rarely been applied to modelling Covid-19, and never with covariates. This study aims to evaluate the most suitable Bayesian spatial CAR localised models in modelling the number of Covid-19 cases with and without covariates, examine the impact of covariates and spatial priors on the identified clusters and which factors affect the Covid-19 risk in South Sulawesi Province. Data on the number of confirmed cases of Covid-19 (19 March 2020 -25 February 2022) were analyzed using the Bayesian spatial CAR localised model with a different number of clusters and priors. The results show that the Bayesian spatial CAR localised model with population density included fits the data better than a corresponding model without covariates. There was a positive correlation between the Covid-19 risk and population density. The interplay between covariates, spatial priors, and clustering structure influenced the performance of models. Makassar city and Bone have the highest and the lowest relative risk (RR) of Covid-19 respectively.
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印度尼西亚南苏拉威西省COVID-19空间模型中聚类、协变量和空间先验之间的相互作用
以前关于新冠肺炎的许多研究都使用了贝叶斯空间条件自回归(CAR)模型。然而,如果相邻区域的风险确实不同,基本CAR模型就有过度平滑的风险。更复杂的形式,如局部CAR模型,允许突然的差异,但很少应用于建模新冠肺炎,也从未使用协变量。本研究旨在评估最适合的贝叶斯空间CAR局部模型,用于建模有协变量和无协变量的新冠肺炎病例数,检查协变量和空间先验对已识别集群的影响,以及哪些因素影响南苏拉威西省新冠肺炎风险。新冠肺炎确诊病例数(2020年3月19日至2022年2月25日)的数据使用贝叶斯空间CAR定位模型进行分析,该模型具有不同数量的聚类和先验。结果表明,包含人口密度的贝叶斯空间CAR局部模型比没有协变量的相应模型更适合数据。新冠肺炎风险与人口密度呈正相关。协变量、空间先验和聚类结构之间的相互作用影响了模型的性能。望加锡市和波恩市的新冠肺炎相对风险(RR)分别最高和最低。
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