Journal of chemical information and modeling | 2019

Imputation of Assay Bioactivity Data Using Deep Learning

 
 
 
 
 

Abstract


We describe a novel deep learning neural network method and its application to impute assay pIC50 values. Unlike conventional machine learning approaches, this method is trained on sparse bioactivity data as input, typical of that found in public and commercial databases, enabling it to learn directly from correlations between activities measured in different assays. In two case studies on public domain data sets we show that the neural network method outperforms traditional quantitative structure-activity relationship (QSAR) models and other leading approaches. Furthermore, by focusing on only the most confident predictions the accuracy is increased to R2 > 0.9 using our method, as compared to R2 = 0.44 when reporting all predictions.

Volume 59 3
Pages \n 1197-1204\n
DOI 10.1021/acs.jcim.8b00768
Language English
Journal Journal of chemical information and modeling

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