病毒基因组特征预测正痘病毒宿主。

Katie K Tseng, Heather Koehler, Daniel J Becker, Rory Gibb, Colin J Carlson, Maria Del Pilar Fernandez, Stephanie N Seifert
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引用次数: 0

摘要

正痘病毒(opv),包括天花和痘的病原体,在世界各地的人群中导致了毁灭性的疫情。然而,天花疫苗接种也可提供针对相关口服脊髓灰质炎病毒的交叉保护,停止接种天花疫苗已在更大范围内降低了全球对口服脊髓灰质炎病毒的免疫力。我们应用结合宿主生态和病毒基因组特征的机器学习模型来预测可能的opv储存库。我们证明,结合病毒基因组特征和宿主生态性状提高了潜在OPV宿主预测的准确性,突出了宿主-病毒分子相互作用在预测潜在宿主物种中的重要性。我们确定了东南亚部分地区、赤道非洲和亚马逊地区潜在口服脊髓灰质炎病毒宿主丰富的地理区域热点,揭示了预计潜在口服脊髓灰质炎病毒宿主物种数量较多的地区与天花疫苗接种覆盖率最低的地区之间的高度重叠,表明人畜共患口服脊髓灰质炎病毒出现或建立的风险较高。我们的研究结果可用于野生动物监测,特别是与m痘建立超出其历史范围的担忧有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Viral genomic features predict Orthopoxvirus reservoir hosts.

Orthopoxviruses (OPVs), including the causative agents of smallpox and mpox have led to devastating outbreaks in human populations worldwide. However, the discontinuation of smallpox vaccination, which also provides cross-protection against related OPVs, has diminished global immunity to OPVs more broadly. We apply machine learning models incorporating both host ecological and viral genomic features to predict likely reservoirs of OPVs. We demonstrate that incorporating viral genomic features in addition to host ecological traits enhanced the accuracy of potential OPV host predictions, highlighting the importance of host-virus molecular interactions in predicting potential host species. We identify hotspots for geographic regions rich with potential OPV hosts in parts of southeast Asia, equatorial Africa, and the Amazon, revealing high overlap between regions predicted to have a high number of potential OPV host species and those with the lowest smallpox vaccination coverage, indicating a heightened risk for the emergence or establishment of zoonotic OPVs. Our findings can be used to target wildlife surveillance, particularly related to concerns about mpox establishment beyond its historical range.

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