利用隐马尔可夫模型对人类与非人类流感病毒株进行分类和分型

F. F. Sherif, Y. Kadah, M. El-Hefnawi
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引用次数: 2

摘要

流感是最重要的新发和再发传染病之一,在社区(流行病)和全球(大流行)造成高发病率和死亡率。在这里,人类与非人类流感的分类,以及人类流感病毒株病毒的亚型是基于Profile隐马尔可夫模型进行的。确定流感病毒亚型的经典方法主要依赖抗原测定,这既耗时又不完全准确。所介绍的技术更便宜,更快,但通常仍然可以产生很高的准确性。对所有人类HA亚型(H1, H2, H3和H5)和NA亚型(N1和N2)进行多个序列比对,然后使用HMMER套件对每个组进行profile- hmm模型生成,校准和评估。所有HA和NA模型的亚型分型准确率均达到100%,而宿主分类(人类与非人类)的准确率根据HA亚型在55.5%至97.5%之间。
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Classification of human vs. non-human, and subtyping of human influenza viral strains using Profile Hidden Markov Models
Influenza is one of the most important emerging and reemerging infectious diseases, causing high morbidity and mortality in communities (epidemic) and worldwide (pandemic). Here, Classification of human vs. non-human influenza, and subtyping of human influenza viral strains virus is done based on Profile Hidden Markov Models. The classical ways of determining influenza viral subtypes depend mainly on antigenic assays, which is time-consuming and not fully accurate. The introduced technique is much cheaper and faster, yet usually can still yield high accuracy. Multiple sequence alignments were done for all human HA subtypes (H1, H2, H3 and H5), and NA subtypes (N1 and N2), followed by profile-HMMs models generation, calibration and evaluation using the HMMER suite for each group. Subtyping accuracy of all HA and NA models achieved 100%, while host classification (human vs. non-human) has accuracies varied between (55.5% and 97.5%) according to HA subtype.
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