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G‐LoSA: An efficient computational tool for local structure‐centric biological studies and drug design
Author(s) -
Lee Hui Sun,
Im Wonpil
Publication year - 2016
Publication title -
protein science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.353
H-Index - 175
eISSN - 1469-896X
pISSN - 0961-8368
DOI - 10.1002/pro.2890
Subject(s) - benchmark (surveying) , local structure , protein structure prediction , drug discovery , computational biology , structural alignment , structural biology , computer science , similarity (geometry) , protein structure , biological system , physics , artificial intelligence , biology , chemistry , bioinformatics , sequence alignment , geography , crystallography , peptide sequence , genetics , cartography , nuclear magnetic resonance , gene , image (mathematics)
Molecular recognition by protein mostly occurs in a local region on the protein surface. Thus, an efficient computational method for accurate characterization of protein local structural conservation is necessary to better understand biology and drug design. We present a novel local structure alignment tool, G-LoSA. G-LoSA aligns protein local structures in a sequence order independent way and provides a GA-score, a chemical feature-based and size-independent structure similarity score. Our benchmark validation shows the robust performance of G-LoSA to the local structures of diverse sizes and characteristics, demonstrating its universal applicability to local structure-centric comparative biology studies. In particular, G-LoSA is highly effective in detecting conserved local regions on the entire surface of a given protein. In addition, the applications of G-LoSA to identifying template ligands and predicting ligand and protein binding sites illustrate its strong potential for computer-aided drug design. We hope that G-LoSA can be a useful computational method for exploring interesting biological problems through large-scale comparison of protein local structures and facilitating drug discovery research and development. G-LoSA is freely available to academic users at http://im.compbio.ku.edu/GLoSA/.