The role of different sampling methods in improving biological activity prediction using deep belief network

(2017) The role of different sampling methods in improving biological activity prediction using deep belief network. Journal of Computational Chemistry. pp. 195-203. ISSN 0192-8651

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Abstract

Thousands of molecules and descriptors are available for a medicinal chemist thanks to the technological advancements in different branches of chemistry. This fact as well as the correlation between them has raised new problems in quantitative structure activity relationship studies. Proper parameter initialization in statistical modeling has merged as another challenge in recent years. Random selection of parameters leads to poor performance of deep neural network (DNN). In this research, deep belief network (DBN) was applied to initialize DNNs. DBN is composed of some stacks of restricted Boltzmann machine, an energy-based method that requires computing log likelihood gradient for all samples. Three different sampling approaches were suggested to solve this gradient. In this respect, the impact of DBN was applied based on the different sampling approaches mentioned above to initialize the DNN architecture in predicting biological activity of all fifteen Kaggle targets that contain more than 70k molecules. The same as other fields of processing research, the outputs of these models demonstrated significant superiority to that of DNN with random parameters. (c) 2016 Wiley Periodicals, Inc.

Item Type: Article
Keywords: statistical modeling biological activity prediction deep neural network initialization deep belief network drug-like molecules nets
Divisions: Faculty of Pharmacy and Pharmaceutical Sciences > گروه شیمی دارویی
School of Advanced Technologies in Medicine > Department of Bioelectrics and Biomedical Engineering
Page Range: pp. 195-203
Journal or Publication Title: Journal of Computational Chemistry
Journal Index: ISI
Volume: 38
Number: 4
Identification Number: https://doi.org/10.1002/jcc.24671
ISSN: 0192-8651
Depositing User: مهندس مهدی شریفی
URI: http://eprints.mui.ac.ir/id/eprint/817

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