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VirulentHunter:基于深度学习的毒力因子预测器揭示了不同微生物环境中的致病性。

VirulentHunter: deep learning-based virulence factor predictor illuminates pathogenicity in diverse microbial contexts.

作者信息

Chen Chen, Xu Yong, Ouyang Jian, Xiong Xiangyi, Łabaj Paweł P, Chmielarczyk Agnieszka, Różańska Anna, Zhang Hao, Liu Keyang, Shi Tieliu, Wu Jun

机构信息

Center for Bioinformatics and Computational Biology, and The Institute of Biomedical Sciences, School of Life Sciences, East China Normal University, Dongchuan Road 500, Shanghai 200241, China.

School of Mathematics and Computer Science, Ningxia Normal University, College Road, Guyuan City, Ningxia 756099, China.

出版信息

Brief Bioinform. 2025 May 1;26(3). doi: 10.1093/bib/bbaf271.

Abstract

Virulence factors (VFs) are critical determinants of bacterial pathogenicity, but current homology-based identification methods often miss novel or divergent VFs, and many machine learning approaches neglect functional classification. Here, we present VirulentHunter, a novel deep learning framework that enable simultaneous VF identification and classification directly from protein sequences by leveraging the crucial step of fine-tuning pretrained protein language model. We curate a comprehensive VF database by integrating diverse public resources and expanding VF category annotations. Our benchmarking results demonstrate that VirulentHunter outperforms existing methods, particularly in identifying VFs lacking detectable homologs. Additionally, strain-level analysis using VirulentHunter highlights distinct pathogenicity profiles between Mycobacterium tuberculosis and Mycobacterium avium, revealing enrichment in VFs related to adherence, effector delivery systems, and immune modulation in M. tuberculosis, compared to biofilm formation and motility in M. avium. Furthermore, metagenomic profiling of gut microbiota from inflammatory bowel disease patient reveals a depletion of VFs associated with immune homeostasis. These results underscore the versatility of VirulentHunter as a powerful tool for VF analysis across diverse applications. To facilitate broader accessibility, we provide a freely accessible web service for VF prediction (http://www.unimd.org/VirulentHunter), accommodating protein sequences, genomes, and metagenomic data.

摘要

毒力因子(VFs)是细菌致病性的关键决定因素,但当前基于同源性的鉴定方法常常遗漏新的或有差异的毒力因子,并且许多机器学习方法忽略了功能分类。在此,我们提出了VirulentHunter,这是一种新型深度学习框架,它通过利用微调预训练蛋白质语言模型的关键步骤,能够直接从蛋白质序列中同时进行毒力因子鉴定和分类。我们通过整合多种公共资源并扩展毒力因子类别注释,精心构建了一个全面的毒力因子数据库。我们的基准测试结果表明,VirulentHunter优于现有方法,尤其是在鉴定缺乏可检测同源物的毒力因子方面。此外,使用VirulentHunter进行的菌株水平分析突出了结核分枝杆菌和鸟分枝杆菌之间不同的致病性特征,揭示了与结核分枝杆菌中黏附、效应物递送系统和免疫调节相关的毒力因子富集,而鸟分枝杆菌中则是生物膜形成和运动性相关毒力因子富集。此外,对炎症性肠病患者肠道微生物群的宏基因组分析揭示了与免疫稳态相关的毒力因子的消耗。这些结果强调了VirulentHunter作为一种强大工具在跨多种应用进行毒力因子分析方面的多功能性。为了便于更广泛的使用,我们提供了一个可免费访问的毒力因子预测网络服务(http://www.unimd.org/VirulentHunter),可处理蛋白质序列、基因组和宏基因组数据。

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