GFscore:: A general nonlinear consensus scoring function for high-throughput docking

被引:39
作者
Betzi, Stephane
Suhre, Karsten
Chetrit, Bernard
Guerlesquin, Francoise
Morelli, Xavier
机构
[1] IBSM, CNRS, UPR 9036, BIP Lab, F-13402 Marseille 20, France
[2] IBSM, IGS Lab, CNRS, UPR 2589,Struct & Genom Informat Lab, FR-13288 Marseille, France
关键词
D O I
10.1021/ci0600758
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Most of the recent published works in the field of docking and scoring protein/ligand complexes have focused on ranking true positives resulting from a Virtual Library Screening (VLS) through the use of a specified or consensus linear scoring function. In this work, we present a methodology to speed up the High Throughput Screening (HTS) process, by allowing focused screens or for hitlist triaging when a prohibitively large number of hits is identified in the primary screen, where we have extended the principle of consensus scoring in a nonlinear neural network manner. This led us to introduce a nonlinear Generalist scoring Function, GFscore, which was trained to discriminate true positives from false positives in a data set of diverse chemical compounds. This original Generalist scoring Function is a combination of the five scoring functions found in the CScore package from Tripos Inc. GFscore eliminates up to 75% of molecules, with a confidence rate of 90%. The final result is a Hit Enrichment in the list of molecules to investigate during a research campaign for biological active compounds where the remaining 25% of molecules would be sent to in vitro screening experiments. GFscore is therefore a powerful tool for the biologist, saving both time and money.
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页码:1704 / 1712
页数:9
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