Department of Computer Science, University of Liverpool, Liverpool, L69 3BX, UK.
Biosystems. 2022 Oct;220:104740. doi: 10.1016/j.biosystems.2022.104740. Epub 2022 Aug 4.
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% F score and 96.60% MCC at a higher classification level, and approximately 94.74% AUCPR, 87.41% F score and 80.79% MCC at a lower classification level.
流感病毒变异迅速,可能对公众健康构成威胁,尤其是对弱势群体。历史上,甲型流感病毒在不同物种之间引发了大流行。确定病毒的起源对于防止疫情的传播非常重要。最近,人们越来越感兴趣地使用机器学习算法为病毒序列提供快速准确的预测。在这项研究中,使用真实的测试数据集和各种评估指标在不同的分类水平上评估了机器学习算法。由于血凝素是免疫反应中的主要蛋白质,因此仅使用血凝素序列,并通过位置特异性评分矩阵和单词嵌入进行表示。结果表明,5-gram-Transformer 神经网络是预测病毒序列起源最有效的算法,在较高的分类水平上,AUCPR 约为 99.54%,F 分数约为 98.01%,MCC 约为 96.60%,在较低的分类水平上,AUCPR 约为 94.74%,F 分数约为 87.41%,MCC 约为 80.79%。