Novel approach to evolutionary neural network based descriptor selection and QSAR model development

被引:0
|
作者
Željko Debeljak
Viktor Marohnić
Goran Srečnik
Marica Medić-Šarić
机构
[1] Osijek Clinical Hospital,Medicinal Biochemistry Department
[2] AVL-AST,Analytical Development Department
[3] PLIVA d.d.,Department of Medicinal Chemistry, Faculty of Pharmacy and Biochemistry
[4] University of Zagreb,undefined
来源
Journal of Computer-Aided Molecular Design | 2005年 / 19卷
关键词
benzodiazepines; descriptor selection; evolutionary neural networks; QSAR; wrappers;
D O I
暂无
中图分类号
学科分类号
摘要
Capability of evolutionary neural network (ENN) based QSAR approach to direct the descriptor selection process towards stable descriptor subset (DS) composition characterized by acceptable generalization, as well as the influence of description stability on QSAR model interpretation have been examined. In order to analyze the DS stability and QSAR model generalization properties multiple random dataset partitions into training and test set were made. Acceptability criteria proposed by Golbraikh et al. [J. Comput.-Aided Mol. Des., 17 (2003) 241] have been chosen for selection of highly predictive QSAR models from a set of all models produced by ENN for each dataset splitting. All QSAR models that pass Golbraikh’s filter generated by ENN for each dataset partition were collected. Two final DS forming principles were compared. Standard principle is based on selection of descriptors characterized by highest frequencies among all descriptors that appear in the pool [J. Chem. Inf. Comput. Sci., 43 (2003) 949]. Search across the model pool for DS that are stable against multiple dataset subsampling i.e. universal DS solutions is the basis of novel approach. Based on described principles benzodiazepine QSAR has been proposed and evaluated against results reported by others in terms of final DS composition and model predictive performance.
引用
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页码:835 / 855
页数:20
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