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Bayesian reconstruction of transmission within outbreaks using genomic variants

机译:利用基因组变异对暴发内传播的贝叶斯重建

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摘要

Pathogen genome sequencing can reveal details of transmission histories and is a powerful tool in the fight against infectious disease. In particular, within-host pathogen genomic variants identified through heterozygous nucleotide base calls are a potential source of information to identify linked cases and infer direction and time of transmission. However, using such data effectively to model disease transmission presents a number of challenges, including differentiating genuine variants from those observed due to sequencing error, as well as the specification of a realistic model for within-host pathogen population dynamics. Here we propose a new Bayesian approach to transmission inference, BadTrIP (BAyesian epiDemiological TRansmission Inference from Polymorphisms), that explicitly models evolution of pathogen populations in an outbreak, transmission (including transmission bottlenecks), and sequencing error. BadTrIP enables the inference of host-to-host transmission from pathogen sequencing data and epidemiological data. By assuming that genomic variants are unlinked, our method does not require the computationally intensive and unreliable reconstruction of individual haplotypes. Using simulations we show that BadTrIP is robust in most scenarios and can accurately infer transmission events by efficiently combining information from genetic and epidemiological sources; thanks to its realistic model of pathogen evolution and the inclusion of epidemiological data, BadTrIP is also more accurate than existing approaches. BadTrIP is distributed as an open source package () for the phylogenetic software BEAST2. We apply our method to reconstruct transmission history at the early stages of the 2014 Ebola outbreak, showcasing the power of within-host genomic variants to reconstruct transmission events.
机译:病原体基因组测序可以揭示传播史的细节,并且是抵抗传染病的有力工具。特别地,通过杂合核苷酸碱基调用鉴定的宿主内病原体基因组变异体是潜在信息来源,可用于鉴定连锁病例并推断传播方向和时间。然而,有效地使用此类数据来模拟疾病传播提出了许多挑战,包括将真正的变异与由于测序错误而观察到的变异区分开,以及针对宿主内病原体种群动态的现实模型的规范。在这里,我们提出了一种新的贝叶斯传播推断方法,即BadTrIP(多态性的贝叶斯流行病学传播推断),该模型显式地模拟了病原体在爆发,传播(包括传播瓶颈)和测序错误中的进化。 BadTrIP支持从病原体测序数据和流行病学数据推断出宿主之间的传播。通过假设基因组变体是不相关的,我们的方法不需要单个单元型的计算密集和不可靠的重建。通过仿真我们可以看出,BadTrIP在大多数情况下都很健壮,并且可以通过有效地组合来自遗传和流行病学来源的信息来准确推断传播事件。由于其真实的病原体进化模型和流行病学数据的纳入,BadTrIP也比现有方法更准确。 BadTrIP作为系统发育软件BEAST2的开源软件包()分发。我们运用我们的方法在2014年埃博拉疫情爆发的早期阶段重建了传播历史,展示了宿主内部基因组变异体在重建传播事件中的作用。

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