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引用次数: 0
摘要
摘要 2019 年,世界面临着一场意想不到的严重全球健康危机--冠状病毒病(COVID-19)的爆发,对人类生活的各个方面产生了重大影响。本案例研究以孟加拉国为重点,旨在揭示影响病毒在 64 个地区不均衡传播的复杂空间模式和潜在风险因素。为了分析空间模式,我们采用了 Moran I 和 Geary C 两种技术来研究空间自相关性。在探索空间异质性时,通过吉布斯抽样,采用了两个非空间模型(泊松-伽马模型和泊松-对数正态模型)和三个空间模型(条件自回归模型、卷积模型和勒鲁模型)。Leroux 模型符合偏差信息准则和 Watanabe-Akaike 信息准则的最低值标准,成为最佳选择。回归分析表明,湿度、人口密度和城市化等因素与 COVID-19 病例的增加有关,而老龄化指数似乎阻碍了病毒的传播。研究成果提供了一个综合框架,可适应 COVID-19 在孟加拉国不断演变的性质。它将有影响的因素分为不同的群组,使政府机构、政策制定者和医疗保健专业人员能够做出明智的决策,以控制流行病和应对未来的传染病。
Spatial analysis of COVID-19 risk factors: a case study in Bangladesh
In 2019, the world grappled with an unexpected and severe global health crisis—the Coronavirus disease (COVID-19) outbreak, which significantly impacted various aspects of human life. This case study, focusing on Bangladesh, aimed to uncover the complex spatial patterns and potential risk factors influencing the virus’s uneven spread across 64 districts. To analyze spatial patterns, two techniques, namely Moran I and Geary C, were employed to study spatial autocorrelation. Hotspots and coldspots were identified using local Moran I, while spatial hotspots were pinpointed using local Getis Ord G. Exploring spatial heterogeneity involved implementing two non-spatial models (Poisson–Gamma and Poisson-Lognormal) and three spatial models (Conditional Autoregressive model, Convolution model, and Leroux model) through Gibbs sampling. The Leroux model emerged as the optimal choice, meeting criteria based on the lowest values of deviance information criterion and Watanabe–Akaike information criterion. Regression analysis revealed that factors such as humidity, population density, and urbanization were associated with an increase in COVID-19 cases, while the aging index appeared to hinder the virus’s spread. The research outcomes provide a comprehensive framework adaptable to the evolving nature of COVID-19 in Bangladesh. It categorizes influential factors into distinct clusters, enabling government agencies, policymakers, and healthcare professionals to make informed decisions for controlling the pandemic and addressing future infectious diseases.
期刊介绍:
Associated with the International Association for Aerobiology, Aerobiologia is an international medium for original research and review articles in the interdisciplinary fields of aerobiology and interaction of human, plant and animal systems on the biosphere. Coverage includes bioaerosols, transport mechanisms, biometeorology, climatology, air-sea interaction, land-surface/atmosphere interaction, biological pollution, biological input to global change, microbiology, aeromycology, aeropalynology, arthropod dispersal and environmental policy. Emphasis is placed on respiratory allergology, plant pathology, pest management, biological weathering and biodeterioration, indoor air quality, air-conditioning technology, industrial aerobiology and more.
Aerobiologia serves aerobiologists, and other professionals in medicine, public health, industrial and environmental hygiene, biological sciences, agriculture, atmospheric physics, botany, environmental science and cultural heritage.