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Accurate prediction of Gram-negative bacterial secreted protein types by fusing multiple statistical features from PSI-BLAST profile

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Gram-negative bacterial secreted proteins play different roles in invaded eukaryotic cells and cause various diseases. Prediction of Gram-negative bacterial secreted protein types is a meaningful and challenging task. In this paper, we develop a multiple statistical features extraction model based on the dipeptide composition (DPC) descriptor and the detrended moving-average auto-cross-correlation analysis (DMACA) descriptor by PSI-BLAST profile. A 610-dimensional feature vector was constructed on the training set, and the feature extraction model was denoted DPC-DMACA-PSSM. A support vector machine was then selected as a classifier, and the bias-free jackknife test method was used for evaluating the accuracy. Our predictor achieves favourable performance for overall accuracy on the test set and also outperforms the other published approaches. The results show that our approach offers a reliable tool for the identification of Gram-negative bacterial secreted protein types.

Keywords: Secreted protein; detrended moving-average auto-cross-correlation; dipeptide composition; position-specific scoring matrix; support vector machine

Document Type: Research Article

Affiliations: 1: School of Science, Xi’an Polytechnic University, Xi’an, 710048, PR China 2: School of Mathematics and Statistics, Xidian University, Xi’an, 710071, PR China 3: Department of Sciences, Dalian Nationalities University, Dalian, 116600, PR China

Publication date: 03 June 2018

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