Title of article :
Molecular Descriptors for Effective Classification of Biologically Active Compounds Based on Principal Component Analysis Identified by a Genetic Algorithm
Author/Authors :
Bajorath، Jurgen نويسنده , , Xue، Ling نويسنده ,
Issue Information :
دوماهنامه با شماره پیاپی سال 2000
Pages :
-800
From page :
801
To page :
0
Abstract :
We have evaluated combinations of 111 descriptors that were calculated from two-dimensional representations of molecules to classify 455 compounds belonging to seven biological activity classes using a method based on principal component analysis. The analysis was facilitated by application of a genetic algorithm. Using scoring functions that related the number of compounds in pure classes (i.e., compounds with the same biological activity), singletons, and mixed classes, effective descriptor sets were identified. A combination of only four molecular descriptors accounting for aromatic character, hydrogen bond acceptors, estimated polar van der Waals surface area, and a single structural key gave overall best results. At this performance level, ~91% of the compounds occurred in pure classes and mixed classes were absent. The results indicate that combinations of only a few critical descriptors are preferred to partition compounds according to their biological activity, at least in the test cases studied here.
Keywords :
FISH , immunostimulant , Glucans , diet
Journal title :
Journal of Chemical Information and Computer Sciences
Serial Year :
2000
Journal title :
Journal of Chemical Information and Computer Sciences
Record number :
40848
Link To Document :
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