| Literature DB >> 24067326 |
Shuyan Ding1, Yan Li2, Zhuoxing Shi2, Shoujiang Yan2.
Abstract
Knowledge of protein secondary structural classes plays an important role in understanding protein folding patterns. In this paper, 25 features based on position-specific scoring matrices are selected to reflect evolutionary information. In combination with other 11 rational features based on predicted protein secondary structure sequences proposed by the previous researchers, a 36-dimensional representation feature vector is presented to predict protein secondary structural classes for low-similarity sequences. ASTRALtraining dataset is used to train and design our method, other three low-similarity datasets ASTRALtest, 25PDB and 1189 are used to test the proposed method. Comparisons with other methods show that our method is effective to predict protein secondary structural classes. Stand alone version of the proposed method (PSSS-PSSM) is written in MATLAB language and it can be downloaded from http://letsgob.com/bioinfo_PSSS_PSSM/.Keywords: Feature selection; Position-specific scoring matrix; Support vector machine
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Year: 2013 PMID: 24067326 DOI: 10.1016/j.biochi.2013.09.013
Source DB: PubMed Journal: Biochimie ISSN: 0300-9084 Impact factor: 4.079