This document discusses the application of machine learning (ML) and artificial intelligence (AI) in the drug discovery and development lifecycle, highlighting their role in enhancing efficiency, reducing costs, and mitigating risks associated with clinical trials. It covers various ML algorithms used for target discovery, hit finding, lead optimization, preclinical studies, and drug monitoring, emphasizing how these technologies help streamline complex processes in the pharmaceutical industry. By analyzing several ML approaches and their implications for drug development, the paper illustrates the transformative potential of AI in improving healthcare outcomes.
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