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Identification of biological activity profiles using substructural analysis and genetic algorithms.

作者信息

Gillet V J, Willett P, Bradshaw J

机构信息

Department of Information Studies, University of Sheffield, Western Bank, United Kingdom.

出版信息

J Chem Inf Comput Sci. 1998 Mar-Apr;38(2):165-79. doi: 10.1021/ci970431+.

DOI:10.1021/ci970431+
PMID:9538517
Abstract

A substructural analysis approach is used to calculate biological activity profiles, which contain weights that describe the differential occurrences of generic features (specifically, the numbers of hydrogen-bond donors and acceptors, the numbers of rotatable bonds and aromatic rings, the molecular weights, and the 2 kappa alpha descriptors) in active molecules taken from the World Drug Index and in (presumed) inactive molecules taken from the SPRESI database. Even with such simple structural descriptors, the profiles discriminate effectively between active and inactive compounds. The effectiveness of the approach is further increased by using a genetic algorithm for the calculation of the weights comprising a profile. The methods have been successfully applied to a number of different data sets.

摘要

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