SMpred: a support vector machine approach to identify structural motifs in protein structure without using evolutionary information

Kolatkar, Prasanna R. ; Martinetz, Thomas ; Sowdhamini, R. ; Suganthan, P. N. ; Kandaswamy, Krishna Kumar ; Pugalenthi, Ganesan (2010) SMpred: a support vector machine approach to identify structural motifs in protein structure without using evolutionary information Journal of Biomolecular Structure and Dynamics, 28 (3). pp. 405-414. ISSN 0739-1102

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Official URL: http://www.tandfonline.com/doi/abs/10.1080/0739110...

Related URL: http://dx.doi.org/10.1080/07391102.2010.10507369

Abstract

Knowledge of three dimensional structure is essential to understand the function of a protein. Although the overall fold is made from the whole details of its sequence, a small group of residues, often called as structural motifs, play a crucial role in determining the protein fold and its stability. Identification of such structural motifs requires sufficient number of sequence and structural homologs to define conservation and evolutionary information. Unfortunately, there are many structures in the protein structure databases have no homologous structures or sequences. In this work, we report an SVM method, SMpred, to identify structural motifs from single protein structure without using sequence and structural homologs. SMpred method was trained and tested using 132 proteins domains containing 581 motifs. SMpred method achieved 78.79% accuracy with 79.06% sensitivity and 78.53% specificity. The performance of SMpred was evaluated with MegaMotifBase using 188 proteins containing 1161 motifs. Out of 1161 motifs, SMpred correctly identified 1503 structural motifs reported in MegaMotifBase. Further, we showed that SMpred is useful approach for the length deviant superfamilies and single member superfamilies. This result suggests the usefulness of our approach for facilitating the identification of structural motifs in protein structure in the absence of sequence and structural homologs.

Item Type:Article
Source:Copyright of this article belongs to Taylor and Francis Group.
Keywords:Protein Folding; Structural Motifs; Support Vector Machine; Fingerprint; Protein Function
ID Code:97594
Deposited On:12 Mar 2013 11:17
Last Modified:12 Mar 2013 11:17

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