Integrating docking scores and key interaction profiles to improve the accuracy of molecular docking: towards novel B-Raf(V600E) inhibitors

整合对接评分和关键相互作用特征以提高分子对接的准确性:探索新型B-Raf(V600E)抑制剂

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Abstract

A set of ninety-eight B-Raf(V600E) inhibitors was used for the development of a molecular docking based QSAR model using linear and non-linear regression models. The integration of docking scores and key interaction profiles significantly improved the accuracy of the QSAR models, providing reasonable statistical parameters (R(train)(2) = 0.935, R(test)(2) = 0.728 and Q(CV)(2) = 0.905). The established MD-SVR (molecular docking based SMV regression) model as well as model screening of a natural product database was carried out and two natural products (quercetin and myricetin) with good prediction activities were biologically evaluated. Both compounds exhibited promising B-Raf(V600E) inhibitory activities (ICQuercetin50 = 7.59 μM and ICMyricetin50 = 1.56 μM), suggesting a high reliability and good applicability of the established MD-SVR model in the future development of B-Raf(V600E) inhibitors with high efficacy.

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