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Accommodating individual travel history and unsampled diversity in Bayesian phylogeographic inference of SARS-CoV-2

机译:适应个人旅游历史和贝叶斯宫廷地理推理的个人旅游历史和脱模多样性SARS-COV-2

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Spatiotemporal bias in genome sampling can severely confound discrete trait phylogeographic inference. This has impeded our ability to accurately track the spread of SARS-CoV-2, the virus responsible for the COVID-19 pandemic, despite the availability of unprecedented numbers of SARS-CoV-2 genomes. Here, we present an approach to integrate individual travel history data in Bayesian phylogeographic inference and apply it to the early spread of SARS-CoV-2. We demonstrate that including travel history data yields i) more realistic hypotheses of virus spread and ii) higher posterior predictive accuracy compared to including only sampling location. We further explore methods to ameliorate the impact of sampling bias by augmenting the phylogeographic analysis with lineages from undersampled locations. Our reconstructions reinforce specific transmission hypotheses suggested by the inclusion of travel history data, but also suggest alternative routes of virus migration that are plausible within the epidemiological context but are not apparent with current sampling efforts. Spatiotemporal sampling gaps in existing pathogen genomic data limits their use in understanding epidemiological patterns. Here, the authors apply a phylogeographic approach with SARS-CoV-2 genomes to accurately reproduce pathogen spread by accounting for spatial biases and travel history of the individual.
机译:基因组采样中的时空偏差可能严重混淆离散性状的神话推理。这阻碍了我们能够准确地跟踪SARS-COV-2的扩散,这对Covid-19大流行负责的病毒,尽管有前所未有的SARS-COV-2基因组。在这里,我们提出了一种在贝叶斯语法出版中将个体旅行历史数据集成的方法,并将其应用于SARS-COV-2的早期扩散。我们证明包括旅游历史数据产生i)与包括仅包括采样位置相比,病毒传播的更现实的病毒假设和II)较高的后预测精度。我们进一步探索改善采样偏置的影响的方法,通过从未采样的位置增强谱系的Phyloge分析。我们的重建强化了包含旅行历史数据的特定传输假设,而且还提出了在流行病学环境中具有可言论的替代病毒迁移路线,但随着当前的抽样努力,并不明显。现有病原体基因组数据中的时空采样间隙限制了它们在理解流行病学模式中的使用。在这里,作者用SARS-COV-2基因组应用Phylogeach方法,以准确地通过算用于个体的空间偏差和旅行历史来准确地再现病原体。

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