基于相似性和邻域的感染数据动态模型:揭示 COVID-19 感染风险的复杂性

IF 2.1 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Helena Baptista , Jorge M. Mendes , Ying C. MacNab
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引用次数: 0

摘要

在研究连续传播的传染病时,了解时空风险依赖性和相关性至关重要。通过分析从 2020 年 3 月 3 日首次报告病例到 2021 年 4 月 22 日在葡萄牙大陆 278 个城市收集到的每周 COVID-19 病例数据,我们证明了感染风险的复杂性因疫情的严重程度而异,这表明单一的模型定义不足以解释多方面的潜在现象。本研究采用了一个动态、条件指定的高斯马尔可夫随机场模型,在贝叶斯分层模型框架内,通过地区级协变量的相似性来描述 COVID-19 感染风险的依赖关系,并对每个可识别的疫潮进行了说明。结果表明,基于邻域矩阵的静态邻域条件自回归模型并不一定能捕捉到该疾病复杂的时空性质。此外,在某些情况下,最佳拟合动态模型不一定是最佳预测模型,这可能导致在流行病情况下资源分配不当。准确的预测有助于为难以测量的影响提供决策依据,从而挽救生命。采用拟议的新方法所产生的信息,对于相关当局保护那些处于更不利的经济或其他条件下的人来说,至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Similarity- and neighbourhood-based dynamic models for infection data: Uncovering the complexities of the COVID-19 infection risks

Understanding spatial and temporal risk dependencies and correlation is crucial when studying infectious diseases which spread out in consecutive waves. By analysing weekly COVID-19 case data collected from the disease’s first reported case on March 3, 2020, to April 22, 2021, in 278 municipalities in Mainland Portugal, we demonstrate that the complexity of infection risks varies based on the outbreak’s severity, suggesting that a single model definition is insufficient to explain the multifaceted underlying phenomena. This study employs a dynamic, conditionally specified Gaussian Markov random field model with a novel approach to characterise COVID-19 infection risk dependencies through the similarity of areal-level covariates within a Bayesian hierarchical model framework that accounts for each identifiable wave. The results indicate that the neighbourhood-based conditional autoregressive model, which is static and based on an adjacency-based neighbourhood matrix, do not necessarily captures the disease’s complex spatial–temporal nature. Furthermore, the best-fitting dynamic model may not necessarily be the best predicting model in certain situations, which can lead to inadequate resource allocation in epidemic situations. Accurate forecasting can help inform decisions regarding difficult-to-measure impacts, potentially saving lives. Implementing the proposed novel approach would have produced information that would have been overwhelmingly critical to the respective authorities in protecting those in more unfavourable economic or other conditions.

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来源期刊
Spatial and Spatio-Temporal Epidemiology
Spatial and Spatio-Temporal Epidemiology PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
5.10
自引率
8.80%
发文量
63
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