Machine Learning-Based In Silico Prediction of the Inhibitory Activity of Chemical Substances Against Rat and Human Cytochrome P450s
Kaori Ambe,
Mizuki Nakamori,
Riku Tohno
et al.
Abstract:The prediction of cytochrome P450 inhibition by a computational (quantitative) structure−activity relationship approach using chemical structure information and machine learning would be useful for toxicity research as a simple and rapid in silico tool. However, there are few in silico models focusing on the species differences between rat and human in the P450s inhibition. This study aimed to establish in silico models to classify chemical substances as inhibitors or noninhibitors of various rat and human P45… Show more
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