University of Tsukuba, Japan
More and more attention has been paid to the toxicity study of traditional Chinese medicine. With the accumulation of toxicity knowledge of a large number of compounds, it provides a reliable basis for toxicity prediction. The method of computational toxicology will be more widely used in elucidating the material basis and mechanism of toxicity of traditional Chinese medicine. In order to understand and master the application of computer prediction model in toxicology research and toxicity component prediction of traditional Chinese medicine, the concept of computer toxicology was introduced briefly, the challenges faced by computer prediction model in toxicity component prediction of traditional Chinese medicine were analyzed, and the application of computer prediction model in toxicity component prediction of traditional Chinese medicine was also discussed.
Computer Toxicology, Prediction Model, Traditional Chinese Medicine, Toxicity
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