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#62. Predicting Toxicity

#62. Predicting Toxicity

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In this episode, we investigate the significant evolution of AI-driven toxicity prediction, detailing how the field has shifted from simple statistical models to sophisticated deep learning and multimodal systems. It highlights a variety of computational tools, distinguishing between modern machine learning platforms like ProTox 3.0 and established regulatory-facing frameworks such as the OECD QSAR Toolbox. We emphasize that while these technologies accelerate drug discovery and chemical safety assessments, their reliability varies greatly depending on the specific biological endpoint and data quality. Furthermore, we advocate for a rigorous validation workflow that combines structural analysis with biological response data and expert human judgment. Ultimately, we explore the field's future, noting the emerging role of large language models and the ongoing challenge of translating in silico results into human-relevant safety outcomes. Produced by Dr. Jake Chen.

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