| Literature DB >> 24412731 |
Junru Wang1, Yan Li2, Xiaoqing Liu3, Qi Dai4, Yuhua Yao2, Pingan He5.
Abstract
Since introduction of PseAAs and functional domains, promising results have been achieved in protein structural class predication, but some challenges still exist in the representation of the PseAA structural correlation and structural domains. This paper proposed a high-accuracy prediction method using novel PseAA structural properties and secondary structural patterns, reflecting the long-range and local structural properties of the PseAAs and certain compact structural domains. The proposed prediction method was tested against the competing prediction methods with four experiments. The experiment results indicate that the proposed method achieved the best performance. Its overall accuracies for datasets 25 PDB, D640, FC699 and 1189 are 88.8%, 90.9%, 96.4% and 87.4%, which are 4.5%, 7.6%, 2% and 3.9% higher than the existing best-performing method. This understanding can be used to guide development of more powerful methods for protein structural class prediction. The software and supplement material are freely available at http://bioinfo.zstu.edu.cn/PseAA-SSP.Keywords: Local structural correlation; Long-range structural property; Protein structural class prediction; PseAAs; Support vector machine
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Year: 2014 PMID: 24412731 DOI: 10.1016/j.biochi.2013.12.021
Source DB: PubMed Journal: Biochimie ISSN: 0300-9084 Impact factor: 4.079