The importance of drug toxicity assessment lies in ensuring
the
safety and efficacy of the pharmaceutical compounds. Predicting toxicity
is crucial in drug development and risk assessment. This study compares
the performance of GPT-4 and GPT-4o with traditional deep-learning
and machine-learning models, WeaveGNN, MorganFP-MLP, SVC, and KNN,
in predicting molecular toxicity, focusing on bone, neuro, and reproductive
toxicity. The results indicate that GPT-4 is comparable to deep-learning
and machine-learning models in certain areas. We utilized GPT-4 combined
with molecular docking techniques to study the cardiotoxicity of three
specific targets, examining traditional Chinese medicinal materials
listed as both food and medicine. This approach aimed to explore the
potential cardiotoxicity and mechanisms of action. The study found
that components in Black Sesame, Ginger, Perilla, Sichuan Pagoda Tree
Fruit, Galangal, Turmeric, Licorice, Chinese Yam, Amla, and Nutmeg
exhibit toxic effects on cardiac target Cav1.2. The docking results
indicated significant binding affinities, supporting the hypothesis
of potential cardiotoxic effects.This research highlights the potential
of ChatGPT in predicting molecular properties and its significance
in medicinal chemistry, demonstrating its facilitation of a new research
paradigm: with a data set, high-accuracy learning models can be generated
without requiring computational knowledge or coding skills, making
it accessible and easy to use.