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A shape-based machine learning tool for drug design.

作者信息

Jain A N, Dietterich T G, Lathrop R H, Chapman D, Critchlow R E, Bauer B E, Webster T A, Lozano-Perez T

机构信息

Arris Pharmaceutical Corporation, South San Francisco, CA 94080, USA.

出版信息

J Comput Aided Mol Des. 1994 Dec;8(6):635-52. doi: 10.1007/BF00124012.

Abstract

Building predictive models for iterative drug design in the absence of a known target protein structure is an important challenge. We present a novel technique, Compass, that removes a major obstacle to accurate prediction by automatically selecting conformations and alignments of molecules without the benefit of a characterized active site. The technique combines explicit representation of molecular shape with neural network learning methods to produce highly predictive models, even across chemically distinct classes of molecules. We apply the method to predicting human perception of musk odor and show how the resulting models can provide graphical guidance for chemical modifications.

摘要

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