Abstract

BackgroundAbnormal activation of human nuclear hormone receptors disrupts endocrine systems and thereby affects human health. There have been machine learning-based models to predict androgen receptor agonist activity. However, the models were constructed based on limited numerical features such as molecular descriptors and fingerprints.ResultIn this study, instead of the numerical features, 2-D chemical structure images of compounds were used to build an androgen receptor toxicity prediction model. The images may provide unknown features that were not represented by conventional numerical features. As a result, the new strategy resulted in a construction of highly accurate prediction model: Mathews correlation coefficient (MCC) of 0.688, positive predictive value (PPV) of 0.933, sensitivity of 0.519, specificity of 0.998, and overall accuracy of 0.981 in 10-fold cross-validation. Validation on a test dataset showed MCC of 0.370, sensitivity of 0.211, specificity of 0.991, PPV of 0.882, and overall accuracy of 0.801. Our chemical image-based prediction model outperforms conventional models based on numerical features.ConclusionOur constructed prediction model successfully classified molecular images into androgen receptor agonists or inactive compounds. The result indicates that 2-D molecular mimetic diagram would be used as another feature to construct molecular activity prediction models.

Highlights

  • Introduction to methodology and encoding rulesJ Chem Inf Comput Sci. 1988;28(1):31–6. 17

  • The result indicates that 2-D molecular mimetic diagram would be used as another feature to construct molecular activity prediction models

  • Androgen receptor (AR)-induced cellular functions are vital for early development and physiological regulations [2], excessive AR activation triggered by xenobiotic agonists accelerates diseases severity such as androgen insensitivity syndrome (AIS) and prostate cancer [3]

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Summary

Introduction

Introduction to methodology and encoding rulesJ Chem Inf Comput Sci. 1988;28(1):31–6. 17. AR-induced cellular functions are vital for early development and physiological regulations [2], excessive AR activation triggered by xenobiotic agonists accelerates diseases severity such as androgen insensitivity syndrome (AIS) and prostate cancer [3]. For this reason, AR is one of targets for testing drug toxicity, and drug candidates should be assayed for potential AR-mediated toxicity. To tackle down the limitation, computational AR-dependent toxicity prediction methods have been developed to save time and cost Their accuracies are not enough to completely replace experiments and they need to be improved further

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