Abstract
Comparative Molecular Field Analysis (CoMFA) is a mainstream and down-to-earth 3D QSAR technique in the coverage of drug discovery and development. Even though CoMFA is remarkable for high predictive capacity, the intrinsic data-dependent characteristic still makes this methodology certainly be handicapped by noise. Its well known that the default settings in CoMFA can bring about predictive QSAR models, in the meanwhile optimized parameters was proven to provide more predictive results. Accordingly, so far numerous endeavors have been accomplished to ameliorate the CoMFA models robustness and predictive accuracy by considering various factors, including molecular conformation and alignment, field descriptors and grid spacing. Herein, we would like to make a comprehensive survey of the conceivable descriptors and their contribution to the CoMFA models predictive ability.
Keywords: CoMFA, conformation, alignment, fields, grid spacing, predictive QSAR models, Coulombic potentials, probe atom, receptor-ligand interactions, steric
Current Medicinal Chemistry
Title: How to Generate Reliable and Predictive CoMFA Models
Volume: 18 Issue: 6
Author(s): Lei Zhang, Keng-Chang Tsai, Lupei Du, Hao Fang, Minyong Li and Wenfang Xu
Affiliation:
Keywords: CoMFA, conformation, alignment, fields, grid spacing, predictive QSAR models, Coulombic potentials, probe atom, receptor-ligand interactions, steric
Abstract: Comparative Molecular Field Analysis (CoMFA) is a mainstream and down-to-earth 3D QSAR technique in the coverage of drug discovery and development. Even though CoMFA is remarkable for high predictive capacity, the intrinsic data-dependent characteristic still makes this methodology certainly be handicapped by noise. Its well known that the default settings in CoMFA can bring about predictive QSAR models, in the meanwhile optimized parameters was proven to provide more predictive results. Accordingly, so far numerous endeavors have been accomplished to ameliorate the CoMFA models robustness and predictive accuracy by considering various factors, including molecular conformation and alignment, field descriptors and grid spacing. Herein, we would like to make a comprehensive survey of the conceivable descriptors and their contribution to the CoMFA models predictive ability.
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Cite this article as:
Zhang Lei, Tsai Keng-Chang, Du Lupei, Fang Hao, Li Minyong and Xu Wenfang, How to Generate Reliable and Predictive CoMFA Models, Current Medicinal Chemistry 2011; 18 (6) . https://dx.doi.org/10.2174/092986711794927702
DOI https://dx.doi.org/10.2174/092986711794927702 |
Print ISSN 0929-8673 |
Publisher Name Bentham Science Publisher |
Online ISSN 1875-533X |
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