AutoQSAR: an automated machine learning tool for best-practice quantitative structure-activity relationship modeling

被引:106
|
作者
Dixon, Steven L. [1 ]
Duan, Jianxin [2 ]
Smith, Ethan [3 ]
Von Bargen, Christopher D. [1 ]
Sherman, Woody [1 ]
Repasky, Matthew P. [3 ]
机构
[1] Schrodinger Inc, 120 West 45th St, New York, NY 10036 USA
[2] Schrodinger GmbH, Dynamostr 13, D-68165 Mannheim, Baden Wurttembe, Germany
[3] Schrodinger Inc, 101 SW Main St, Portland, OR 97204 USA
关键词
binding affinity prediction; blood-brain barrier permeability; carcinogenicity; fish bioconcentration factor; mutagenicity; QSAR; solubility; QSAR MODEL; PREDICTION; 2D; FINGERPRINTS; VALIDATION;
D O I
10.4155/fmc-2016-0093
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Aim: We introduce AutoQSAR, an automated machine-learning application to build, validate and deploy quantitative structure-activity relationship (QSAR) models. Methodology/results: The process of descriptor generation, feature selection and the creation of a large number of QSAR models has been automated into a single workflow within AutoQSAR. The models are built using a variety of machine-learning methods, and each model is scored using a novel approach. Effectiveness of the method is demonstrated through comparison with literature QSAR models using identical datasets for six end points: protein-ligand binding affinity, solubility, blood-brain barrier permeability, carcinogenicity, mutagenicity and bioaccumulation in fish. Conclusion: AutoQSAR demonstrates similar or better predictive performance as compared with published results for four of the six endpoints while requiring minimal human time and expertise.
引用
收藏
页码:1825 / 1839
页数:15
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