Dive into Machine Learning Algorithms for Influenza Virus Host Prediction with Hemagglutinin Sequences

IF 1.2 Q3 Computer Science Bio-Algorithms and Med-Systems Pub Date : 2022-07-28 DOI:10.48550/arXiv.2207.13842
Yanhua Xu, D. Wojtczak
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引用次数: 7

Abstract

Influenza viruses mutate rapidly and can pose a threat to public health, especially to those in vulnerable groups. Throughout history, influenza A viruses have caused pandemics between different species. It is important to identify the origin of a virus in order to prevent the spread of an outbreak. Recently, there has been increasing interest in using machine learning algorithms to provide fast and accurate predictions for viral sequences. In this study, real testing data sets and a variety of evaluation metrics were used to evaluate machine learning algorithms at different taxonomic levels. As hemagglutinin is the major protein in the immune response, only hemagglutinin sequences were used and represented by position-specific scoring matrix and word embedding. The results suggest that the 5-grams-transformer neural network is the most effective algorithm for predicting viral sequence origins, with approximately 99.54% AUCPR, 98.01% F1 score and 96.60% MCC at a higher classification level, and approximately 94.74% AUCPR, 87.41% F1 score and 80.79% MCC at a lower classification level.
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深入研究用血凝素序列预测流感病毒宿主的机器学习算法
流感病毒变异迅速,可对公众健康构成威胁,特别是对弱势群体。纵观历史,甲型流感病毒曾在不同物种之间造成大流行。为了防止疫情的蔓延,确定病毒的来源是很重要的。最近,人们对使用机器学习算法为病毒序列提供快速准确的预测越来越感兴趣。在本研究中,使用真实测试数据集和各种评估指标来评估不同分类水平的机器学习算法。由于血凝素是免疫反应的主要蛋白,因此仅使用血凝素序列,并采用位置特异性评分矩阵和词嵌入表示。结果表明,5-g -transformer神经网络是预测病毒序列起源最有效的算法,在高分类水平上,AUCPR为99.54%,F1得分为98.01%,MCC为96.60%;在低分类水平上,AUCPR为94.74%,F1得分为87.41%,MCC为80.79%。
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来源期刊
Bio-Algorithms and Med-Systems
Bio-Algorithms and Med-Systems MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
3.80
自引率
0.00%
发文量
3
期刊介绍: The journal Bio-Algorithms and Med-Systems (BAMS), edited by the Jagiellonian University Medical College, provides a forum for the exchange of information in the interdisciplinary fields of computational methods applied in medicine, presenting new algorithms and databases that allows the progress in collaborations between medicine, informatics, physics, and biochemistry. Projects linking specialists representing these disciplines are welcome to be published in this Journal. Articles in BAMS are published in English. Topics Bioinformatics Systems biology Telemedicine E-Learning in Medicine Patient''s electronic record Image processing Medical databases.
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