A SVM based approach to identification of Gram-negative bacterial secretion system proteins
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A SVM based approach is proposed to rapidly identify Gram-negative bacterial secretion system proteins. With the optimization feature set consisted of amino acid composition (AAC) and position specific scoring matrix (PSSM), this method adequately takes sequence and evolution information of proteins into account. Experiments show that this method has a good performance on prediction of Gram-negative bacterial secretion system proteins, which served as a useful complement to the study of bacterial secretion system.
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Cite this article as: YU Le-Zheng, ZHAO Liu-Qing, CHEN Man, LUO Jie-Si, LIU Feng-Juan. A SVM based approach to identification of Gram-negative bacterial secretion system proteins [J]. J Sichuan Univ: Nat Sci Ed, 2016, 53: 443.