Predicting influenza antigenicity from Hemagglutintin sequence data based on a joint random forest method
Abstract Timely identification of emerging antigenic variants is critical to influenza vaccine design. The accuracy of a sequence-based antigenic prediction method relies on the choice of amino acids substitution matrices. In this study, we first compared a comprehensive 95 substitution matrices ref...
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Main Authors: | Yuhua Yao, Xianhong Li, Bo Liao, Li Huang, Pingan He, Fayou Wang, Jiasheng Yang, Hailiang Sun, Yulong Zhao, Jialiang Yang |
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Format: | article |
Language: | EN |
Published: |
Nature Portfolio
2017
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Online Access: | https://doaj.org/article/f8cb3b40e97f44c5835c20e89822d6b7 |
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