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在系统发育地理学中纳入个体旅行史、全球流动性和未采样的多样性:一项新冠病毒的案例研究

Accommodating individual travel history, global mobility, and unsampled diversity in phylogeography: a SARS-CoV-2 case study.

作者信息

Lemey Philippe, Hong Samuel, Hill Verity, Baele Guy, Poletto Chiara, Colizza Vittoria, O'Toole Áine, McCrone John T, Andersen Kristian G, Worobey Michael, Nelson Martha I, Rambaut Andrew, Suchard Marc A

机构信息

KU Leuven Department of Microbiology, Immunology and Transplantation, Rega Institute, Laboratory of Clinical and Evolutionary Virology, Leuven, Belgium.

Centre for Immunology, Infection and Evolution, University of Edinburgh, King's Buildings, Edinburgh, EH9 3FL, UK.

出版信息

bioRxiv. 2020 Jun 23:2020.06.22.165464. doi: 10.1101/2020.06.22.165464.

Abstract

Spatiotemporal bias in genome sequence sampling can severely confound phylogeographic inference based on discrete trait ancestral reconstruction. This has impeded our ability to accurately track the emergence and spread of SARS-CoV-2, which is the virus responsible for the COVID-19 pandemic. Despite the availability of staggering numbers of genomes on a global scale, evolutionary reconstructions of SARS-CoV-2 are hindered by the slow accumulation of sequence divergence over its relatively short transmission history. When confronted with these issues, incorporating additional contextual data may critically inform phylodynamic reconstructions. Here, we present a new approach to integrate individual travel history data in Bayesian phylogeographic inference and apply it to the early spread of SARS-CoV-2, while also including global air transportation data. We demonstrate that including travel history data for each SARS-CoV-2 genome yields more realistic reconstructions of virus spread, particularly when travelers from undersampled locations are included to mitigate sampling bias. We further explore the impact of sampling bias by incorporating unsampled sequences from undersampled locations in the analyses. 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. Although further research is needed to fully examine the performance of our new data integration approaches and to further improve them, they represent multiple new avenues for directly addressing the colossal issue of sample bias in phylogeographic inference.

摘要

基因组序列采样中的时空偏差会严重混淆基于离散性状祖先重建的系统发育地理学推断。这阻碍了我们准确追踪导致COVID-19大流行的病毒SARS-CoV-2的出现和传播的能力。尽管全球范围内有数量惊人的基因组可供使用,但SARS-CoV-2的进化重建受到其相对较短传播历史中序列差异缓慢积累的阻碍。面对这些问题时,纳入额外的背景数据可能对系统发育动力学重建至关重要。在这里,我们提出一种在贝叶斯系统发育地理学推断中整合个人旅行史数据的新方法,并将其应用于SARS-CoV-2的早期传播,同时还纳入全球航空运输数据。我们证明,纳入每个SARS-CoV-2基因组的旅行史数据能得出更符合实际的病毒传播重建结果,特别是当纳入来自采样不足地区的旅行者以减轻采样偏差时。我们还通过在分析中纳入来自采样不足地区的未采样序列来进一步探究采样偏差的影响。我们的重建结果强化了纳入旅行史数据所暗示的特定传播假设,但也提出了病毒迁移的替代途径,这些途径在流行病学背景下是合理的,但在当前采样工作中并不明显。尽管需要进一步研究来全面检验我们新的数据整合方法的性能并进一步改进它们,但它们代表了直接解决系统发育地理学推断中样本偏差这一巨大问题的多个新途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0d84/7315996/d4ba2865f3b0/nihpp-2020.06.22.165464-f0001.jpg

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