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将感染持续时间依赖性传播纳入贝叶斯流行病模型。

Incorporating infectious duration-dependent transmission into Bayesian epidemic models.

作者信息

Ward Caitlin, Brown Grant D, Oleson Jacob J

机构信息

Department of Biostatistics, University of Iowa, Iowa City, Iowa, USA.

出版信息

Biom J. 2023 Mar;65(3):e2100401. doi: 10.1002/bimj.202100401. Epub 2022 Oct 26.

DOI:10.1002/bimj.202100401
PMID:36285663
Abstract

Compartmental models are commonly used to describe the spread of infectious diseases by estimating the probabilities of transitions between important disease states. A significant challenge in fitting Bayesian compartmental models lies in the need to estimate the duration of the infectious period, based on limited data providing only symptom onset date or another proxy for the start of infectiousness. Commonly, the exponential distribution is used to describe the infectious duration, an overly simplistic approach, which is not biologically plausible. More flexible distributions can be used, but parameter identifiability and computational cost can worsen for moderately sized or large epidemics. In this article, we present a novel approach, which considers a curve of transmissibility over a fixed infectious duration. The incorporation of infectious duration-dependent (IDD) transmissibility, which decays to zero during the infectious period, is biologically reasonable for many viral infections and fixing the length of the infectious period eases computational complexity in model fitting. Through simulation, we evaluate different functional forms of IDD transmissibility curves and show that the proposed approach offers improved estimation of the time-varying reproductive number. We illustrate the benefit of our approach through a new analysis of the 1995 outbreak of Ebola Virus Disease in the Democratic Republic of the Congo.

摘要

compartmental模型通常用于通过估计重要疾病状态之间转变的概率来描述传染病的传播。拟合贝叶斯 compartmental模型的一个重大挑战在于,需要基于仅提供症状出现日期或传染性开始的其他替代指标的有限数据来估计传染期的持续时间。通常,指数分布用于描述传染持续时间,这是一种过于简单的方法,在生物学上不太合理。可以使用更灵活的分布,但对于中等规模或大规模的疫情,参数可识别性和计算成本可能会变差。在本文中,我们提出了一种新颖的方法,该方法考虑了在固定传染期内的传播性曲线。纳入在传染期内衰减至零的传染期依赖性(IDD)传播性,对于许多病毒感染在生物学上是合理的,并且固定传染期的长度简化了模型拟合中的计算复杂性。通过模拟,我们评估了IDD传播性曲线的不同函数形式,并表明所提出的方法提供了对随时间变化的繁殖数的改进估计。我们通过对1995年刚果民主共和国埃博拉病毒病疫情的新分析来说明我们方法的好处。

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