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调查两种贝叶斯祖先状态重建模型在估计暴发期间沙门氏菌传播中的有效性。

Investigation of the validity of two Bayesian ancestral state reconstruction models for estimating Salmonella transmission during outbreaks.

机构信息

Quadram Institute, Norwich Research Park, Colney Lane, Norwich, United Kingdom.

Department of Biosystems Science and Engineering, ETH Zurich, Zurich, Switzerland.

出版信息

PLoS One. 2019 Jul 22;14(7):e0214169. doi: 10.1371/journal.pone.0214169. eCollection 2019.

Abstract

Ancestral state reconstruction models use genetic data to characterize a group of organisms' common ancestor. These models have been applied to salmonellosis outbreaks to estimate the number of transmissions between different animal species that share similar geographical locations, with animal host as the state. However, as far as we are aware, no studies have validated these models for outbreak analysis. In this study, salmonellosis outbreaks were simulated using a stochastic Susceptible-Infected-Recovered model, and the host population and transmission parameters of these simulated outbreaks were estimated using Bayesian ancestral state reconstruction models (discrete trait analysis (DTA) and structured coalescent (SC)). These models were unable to accurately estimate the number of transmissions between the host populations or the amount of time spent in each host population. The DTA model was inaccurate because it assumed the number of isolates sampled from each host population was proportional to the number of individuals infected within each host population. The SC model was inaccurate possibly because it assumed that each host population's effective population size was constant over the course of the simulated outbreaks. This study highlights the need for phylodynamic models that can take into consideration factors that influence the characteristics and behavior of outbreaks, e.g. changing effective population sizes, variation in infectious periods, intra-population transmissions, and disproportionate sampling of infected individuals.

摘要

祖先状态重建模型利用遗传数据来描述一组生物体的共同祖先。这些模型已被应用于沙门氏菌病爆发,以估计在具有相似地理位置的不同动物物种之间的传播次数,动物宿主为状态。然而,据我们所知,还没有研究验证这些模型用于爆发分析。在这项研究中,使用随机易感-感染-恢复模型模拟了沙门氏菌病爆发,并使用贝叶斯祖先状态重建模型(离散特征分析(DTA)和结构合并(SC))来估计这些模拟爆发的宿主种群和传播参数。这些模型无法准确估计宿主种群之间的传播次数或在每个宿主种群中花费的时间。DTA 模型不准确,因为它假设从每个宿主种群中采样的分离株数量与每个宿主种群中感染的个体数量成正比。SC 模型可能不准确,因为它假设每个宿主种群的有效种群大小在模拟爆发过程中保持不变。这项研究强调了需要能够考虑影响爆发特征和行为的因素的系统发育动力学模型,例如不断变化的有效种群大小、传染期的变化、种群内传播和感染个体的不成比例采样。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/87b2/6645465/faee3bb13941/pone.0214169.g001.jpg

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