Applying neural networks to classify influenza virus antigenic types and hosts

P. Attaluri, Zhengxin Chen, G. Lu
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引用次数: 17

Abstract

Influenza viruses continue to evolve rapidly and are responsible for seasonal epidemics and occasional, but catastrophic, pandemics. We recently demonstrated the use of decision tree and support vector machine methods in classifying pandemic swine flu viral strains with high accuracy. Here, we applied the technique of artificial neural networks for the prediction of important influenza virus antigenic types (H1, H3, and H5) and hosts (Human, Avian, and Swine), which fulfills a critical need for a computational system for influenza surveillance. A comprehensive experiment on different k-mers and different binary encoding types showed classification based upon frequencies of k-mer nucleotide strings performed better than transformed binary data of nucleotides. It has been found for the first time that the accuracy of virus classification varies from host to host and from gene segment to gene segment. In particular, compared to avian and swine viruses, human influenza viruses can be classified with high accuracy, which indicates influenza virus strains might have become well adapted to their human host and hence less variation occurs in human viruses. In addition, the accuracy of host classification varies from genome segment to segment, achieving the highest values when using the HA and NA segments for human host classification. This research, along with our previous studies, shows machine learning techniques play an indispensable role in virus classification.
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应用神经网络对流感病毒抗原类型和宿主进行分类
流感病毒继续迅速演变,造成季节性流行病和偶尔发生的灾难性大流行。我们最近展示了使用决策树和支持向量机方法对大流行性猪流感病毒株进行分类,准确率很高。在这里,我们应用人工神经网络技术来预测重要的流感病毒抗原类型(H1、H3和H5)和宿主(人、禽和猪),这满足了流感监测计算系统的关键需求。对不同k-mer和不同二进制编码类型的综合实验表明,基于k-mer核苷酸串频率的分类效果优于转换后的二进制核苷酸数据。首次发现病毒分类的准确性因宿主和基因片段的不同而不同。特别是,与禽流感和猪流感病毒相比,人类流感病毒的分类准确度很高,这表明流感病毒株可能已经很好地适应了它们的人类宿主,因此人类病毒的变异较少。此外,宿主分类的准确性因基因组片段而异,在使用HA和NA片段进行人类宿主分类时达到最高值。这项研究以及我们之前的研究表明,机器学习技术在病毒分类中发挥着不可或缺的作用。
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