Computational host range prediction – the good, the bad, and the ugly

IF 5.5 2区 医学 Q1 VIROLOGY
Virus Evolution Pub Date : 2023-12-21 DOI:10.1093/ve/vead083
Abigail A Howell, Cyril J Versoza, Susanne P Pfeifer
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引用次数: 0

Abstract

The rapid emergence and spread of antimicrobial resistance across the globe have prompted the usage of bacteriophages (i.e., viruses that infect bacteria) in a variety of applications ranging from agriculture to biotechnology and medicine. In order to effectively guide the application of bacteriophages in these multifaceted areas, information about their host ranges – that is the bacterial strains or species that a bacteriophage can successfully infect and kill – is essential. Utilizing 16 broad-spectrum (polyvalent) bacteriophages with experimentally validated host ranges, we here benchmark the performance of 11 recently developed computational host range prediction tools that provide a promising and highly scalable supplement to traditional, but laborious, experimental procedures. We show that machine- and deep-learning approaches offer the highest levels of accuracy and precision – however, their predominant predictions at the species- or genus-level render them ill-suited for applications outside of an ecosystems metagenomics framework. In contrast, only moderate sensitivity (<80%) could be reached at the strain-level, albeit at low levels of precision (<40%). Taken together, these limitations demonstrate that there remains room for improvement in the active scientific field of in silico host prediction to combat the challenge of guiding experimental designs to identify the most promising bacteriophage candidates for any given application.
计算宿主范围预测--好、坏、丑
抗菌药耐药性在全球范围内的迅速出现和蔓延促使噬菌体(即感染细菌的病毒)被广泛应用于农业、生物技术和医学等领域。为了有效指导噬菌体在这些多方面领域的应用,必须了解其宿主范围,即噬菌体能成功感染和杀死的细菌菌株或菌种。利用 16 种经实验验证宿主范围的广谱(多价)噬菌体,我们在此对最近开发的 11 种计算宿主范围预测工具的性能进行了基准测试。我们发现,机器学习和深度学习方法提供了最高水平的准确度和精确度--然而,它们主要在种或属一级进行预测,因此不适合生态系统元基因组学框架之外的应用。相比之下,在菌株水平上只能达到中等灵敏度(<80%),尽管精确度较低(<40%)。综上所述,这些局限性表明,硅学宿主预测这一活跃的科学领域仍有改进的余地,以应对指导实验设计的挑战,为任何特定应用确定最有前途的候选噬菌体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Virus Evolution
Virus Evolution Immunology and Microbiology-Microbiology
CiteScore
10.50
自引率
5.70%
发文量
108
审稿时长
14 weeks
期刊介绍: Virus Evolution is a new Open Access journal focusing on the long-term evolution of viruses, viruses as a model system for studying evolutionary processes, viral molecular epidemiology and environmental virology. The aim of the journal is to provide a forum for original research papers, reviews, commentaries and a venue for in-depth discussion on the topics relevant to virus evolution.
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