2024
DOI: 10.3389/fddsv.2024.1336025
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Machine learning in toxicological sciences: opportunities for assessing drug toxicity

Lusine Tonoyan,
Arno G. Siraki

Abstract: Machine learning (ML) in toxicological sciences is growing exponentially, which presents unprecedented opportunities and brings up important considerations for using ML in this field. This review discusses supervised, unsupervised, and reinforcement learning and their applications to toxicology. The application of the scientific method is central to the development of a ML model. These steps involve defining the ML problem, constructing the dataset, transforming the data and feature selection, choosing and tra… Show more

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