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纳入农场层面协变量的口蹄疫疫情传播网络重建。

Transmission network reconstruction for foot-and-mouth disease outbreaks incorporating farm-level covariates.

机构信息

Melbourne Veterinary School, Faculty of Veterinary and Agricultural Sciences, The University of Melbourne, Parkville, Victoria, Australia.

Viral Disease and Epidemiology Research Division, National Institute of Animal Health, National Agriculture Research Organization, Tsukuba, Ibaraki, Japan.

出版信息

PLoS One. 2020 Jul 15;15(7):e0235660. doi: 10.1371/journal.pone.0235660. eCollection 2020.

Abstract

Transmission network modelling to infer 'who infected whom' in infectious disease outbreaks is a highly active area of research. Outbreaks of foot-and-mouth disease have been a key focus of transmission network models that integrate genomic and epidemiological data. The aim of this study was to extend Lau's systematic Bayesian inference framework to incorporate additional parameters representing predominant species and numbers of animals held on a farm. Lau's Bayesian Markov chain Monte Carlo algorithm was reformulated, verified and pseudo-validated on 100 simulated outbreaks populated with demographic data Japan and Australia. The modified model was then implemented on genomic and epidemiological data from the 2010 outbreak of foot-and-mouth disease in Japan, and outputs compared to those from the SCOTTI model implemented in BEAST2. The modified model achieved improvements in overall accuracy when tested on the simulated outbreaks. When implemented on the actual outbreak data from Japan, infected farms that held predominantly pigs were estimated to have five times the transmissibility of infected cattle farms and be 49% less susceptible. The farm-level incubation period was 1 day shorter than the latent period, the timing of the seeding of the outbreak in Japan was inferred, as were key linkages between clusters and features of farms involved in widespread dissemination of this outbreak. To improve accessibility the modified model has been implemented as the R package 'BORIS' for use in future outbreaks.

摘要

传染病暴发中推断“谁传染了谁”的传播网络建模是一个非常活跃的研究领域。口蹄疫暴发一直是整合基因组和流行病学数据的传播网络模型的重点。本研究旨在扩展 Lau 的系统贝叶斯推断框架,纳入代表主要物种和农场存栏动物数量的额外参数。对 Lau 的贝叶斯马尔可夫链蒙特卡罗算法进行了重新制定、验证和伪验证,使用日本和澳大利亚的人口统计学数据模拟了 100 次暴发。修改后的模型随后应用于日本 2010 年口蹄疫暴发的基因组和流行病学数据,并将结果与 BEAST2 中实施的 SCOTTI 模型进行比较。在模拟暴发中进行测试时,该修改后的模型在整体准确性方面取得了提高。当应用于日本实际暴发数据时,估计主要饲养猪的感染农场的传染性是感染牛场的五倍,易感性降低 49%。农场级潜伏期比潜伏期短 1 天,日本暴发的播种时间被推断出来,集群之间的关键联系以及参与该暴发广泛传播的农场的特征也被推断出来。为了提高可访问性,该修改后的模型已作为 R 包“BORIS”实施,用于未来的暴发。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0f2a/7363093/2f433d915d83/pone.0235660.g001.jpg

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