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描述和评估在吸血蝙蝠中发现的新型病毒的人畜共患潜力。

Characterizing and Evaluating the Zoonotic Potential of Novel Viruses Discovered in Vampire Bats.

机构信息

Institute of Biodiversity, Animal Health and Comparative Medicine, College of Medical, Veterinary and Life Sciences, University of Glasgow, Glasgow G12 8QQ, UK.

MRC-University of Glasgow Centre for Virus Research, Glasgow G61 1QH, UK.

出版信息

Viruses. 2021 Feb 6;13(2):252. doi: 10.3390/v13020252.

Abstract

The contemporary surge in metagenomic sequencing has transformed knowledge of viral diversity in wildlife. However, evaluating which newly discovered viruses pose sufficient risk of infecting humans to merit detailed laboratory characterization and surveillance remains largely speculative. Machine learning algorithms have been developed to address this imbalance by ranking the relative likelihood of human infection based on viral genome sequences, but are not yet routinely applied to viruses at the time of their discovery. Here, we characterized viral genomes detected through metagenomic sequencing of feces and saliva from common vampire bats () and used these data as a case study in evaluating zoonotic potential using molecular sequencing data. Of 58 detected viral families, including 17 which infect mammals, the only known zoonosis detected was rabies virus; however, additional genomes were detected from the families , , , and , all of which contain human-infecting species. In phylogenetic analyses, novel vampire bat viruses most frequently grouped with other bat viruses that are not currently known to infect humans. In agreement, machine learning models built from only phylogenetic information ranked all novel viruses similarly, yielding little insight into zoonotic potential. In contrast, genome composition-based machine learning models estimated different levels of zoonotic potential, even for closely related viruses, categorizing one out of four detected hepeviruses and two out of three picornaviruses as having high priority for further research. We highlight the value of evaluating zoonotic potential beyond ad hoc consideration of phylogeny and provide surveillance recommendations for novel viruses in a wildlife host which has frequent contact with humans and domestic animals.

摘要

当代宏基因组测序的兴起改变了人们对野生动物中病毒多样性的认识。然而,评估哪些新发现的病毒具有足够感染人类的风险,值得进行详细的实验室特征描述和监测,在很大程度上仍具有推测性。机器学习算法已经被开发出来,通过基于病毒基因组序列对人类感染的相对可能性进行排序,从而解决这种不平衡问题,但在发现新病毒时,这些算法尚未得到常规应用。在这里,我们对从普通吸血蝙蝠的粪便和唾液中通过宏基因组测序检测到的病毒基因组进行了特征描述,并将这些数据作为一个案例研究,用于评估使用分子测序数据的人畜共患病潜力。在所检测到的 58 个病毒家族中,包括 17 个感染哺乳动物的家族,唯一被发现的人畜共患病是狂犬病病毒;然而,还从 、 、 、 和 家族中检测到了其他基因组,这些家族都包含感染人类的物种。在系统发育分析中,新型吸血蝙蝠病毒最常与其他蝙蝠病毒聚在一起,而这些蝙蝠病毒目前并不被认为感染人类。与这一结果一致,仅基于系统发育信息构建的机器学习模型对所有新型病毒的排名相似,几乎无法深入了解人畜共患病的潜力。相比之下,基于基因组组成的机器学习模型估计了不同水平的人畜共患病潜力,即使对于密切相关的病毒也是如此,将所检测到的四分之一的 hepeviruses 和三分之一的 picornaviruses 归类为具有高优先级的进一步研究。我们强调了在对进化枝进行特别考虑之外,评估人畜共患病潜力的价值,并为在野生动物宿主中具有与人类和家畜频繁接触的新型病毒提供了监测建议。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f67/7914986/5f91301a091e/viruses-13-00252-g001.jpg

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