Flu-CNN: identifying host specificity of Influenza A virus using convolutional networks.

IF 4.3 3区 医学 Q2 GENETICS & HEREDITY
Mingda Hu, Nan Luo, Boqian Wang, Renjie Meng, Yunxiang Zhao, Zili Chai, Yuan Jin, Junjie Yue, Xin Wang, Wei Chen, Hongguang Ren
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引用次数: 0

Abstract

Influenza A viruses (IAVs) have historically posed significant public health threats, causing severe pandemics. Viral host specificity is typically constrained by host barriers, limiting the range of species that can be infected. However, these barriers are not absolute, and occasionally, cross-species transmission occurs, leading to human outbreaks. Early identification of changes in IAV host specificity is, therefore, critical. Despite advancements, identifying host susceptibility from genomic sequences during outbreaks remains challenging. Timely predictions are critical for effective real-time outbreak management and risk mitigation during the early stages of an epidemic. To address this, we proposed Flu-level Convolutional Neural Networks (Flu-CNN), a model designed to analyze genomic segments and identify IAV host specificity, with a particular focus on avian influenza viruses that could potentially infect humans. Extensive evaluations on large-scale genomic datasets containing 911,098 sequences show that Flu-CNN achieves an impressive 99% accuracy in determining host specificity from a single genomic segment, even for high-risk subtypes like H5N1, H7N9, and H9N2, which have a limited number of viral strains. Given its high level of accuracy, the model was applied to identify key mutations and assess the zoonotic potential of these strains. Furthermore, our study presents a pioneering approach for predicting IAV host specificity, offering novel insights into the evolutionary trajectory of these viruses. The model's significance extends beyond evolutionary analysis, playing a pivotal role in outbreak surveillance and contributing to efforts aimed at preventing the viral spread on a global scale.

流感- cnn:利用卷积网络识别甲型流感病毒的宿主特异性
甲型流感病毒(iav)历来对公共卫生构成重大威胁,造成严重的大流行。病毒宿主特异性通常受到宿主屏障的限制,从而限制了可感染的物种范围。然而,这些障碍不是绝对的,偶尔会发生跨物种传播,导致人间暴发。因此,及早发现IAV宿主特异性的变化至关重要。尽管取得了进展,但在疫情期间从基因组序列确定宿主易感性仍然具有挑战性。在流行病的早期阶段,及时预测对于有效的实时疫情管理和减轻风险至关重要。为了解决这个问题,我们提出了流感级卷积神经网络(Flu-CNN),这是一个旨在分析基因组片段和识别IAV宿主特异性的模型,特别关注可能感染人类的禽流感病毒。对包含911,098个序列的大规模基因组数据集的广泛评估表明,Flu-CNN在从单个基因组片段确定宿主特异性方面达到了令人印象深刻的99%的准确性,即使是对于H5N1、H7N9和H9N2等病毒株数量有限的高风险亚型也是如此。鉴于其高水平的准确性,该模型被用于识别关键突变并评估这些菌株的人畜共患潜力。此外,我们的研究提出了一种预测IAV宿主特异性的开创性方法,为这些病毒的进化轨迹提供了新的见解。该模型的意义超出了进化分析,它在疫情监测中发挥着关键作用,并有助于防止病毒在全球范围内传播。
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来源期刊
Human Genomics
Human Genomics GENETICS & HEREDITY-
CiteScore
6.00
自引率
2.20%
发文量
55
审稿时长
11 weeks
期刊介绍: Human Genomics is a peer-reviewed, open access, online journal that focuses on the application of genomic analysis in all aspects of human health and disease, as well as genomic analysis of drug efficacy and safety, and comparative genomics. Topics covered by the journal include, but are not limited to: pharmacogenomics, genome-wide association studies, genome-wide sequencing, exome sequencing, next-generation deep-sequencing, functional genomics, epigenomics, translational genomics, expression profiling, proteomics, bioinformatics, animal models, statistical genetics, genetic epidemiology, human population genetics and comparative genomics.
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