Download PDFOpen PDF in browserRevolutionizing Pharmaceuticals: the Transformative Role of AI in Expedited Drug DiscoveryEasyChair Preprint 1195612 pages•Date: February 5, 2024AbstractThe pharmaceutical industry is experiencing a groundbreaking transformation with the integration of artificial intelligence (AI) into drug discovery processes. This paper explores the unprecedented advancements and the transformative role that AI plays in accelerating drug discovery, revolutionizing the way new therapeutic solutions are identified and developed. AI, particularly machine learning and deep learning algorithms, has emerged as a powerful tool in processing vast amounts of biological data, deciphering complex patterns, and predicting potential drug candidates. By analyzing genomics, proteomics, and other omics data, AI algorithms can uncover hidden correlations, identify potential drug targets, and predict the efficacy of drug candidates with remarkable speed and precision. This paper delves into specific AI-driven methodologies, such as virtual screening, de novo drug design, and predictive modeling, shedding light on how these techniques are reshaping the pharmaceutical landscape. Additionally, it examines case studies where AI has successfully expedited the drug discovery process, leading to the identification of novel compounds and significantly reducing time and costs traditionally associated with drug development. Keyphrases: Artificial Intelligence, De Novo Drug, Design, Pharmaceutical Industry, deep learning, drug discovery, machine learning, omics data, personalized medicine, predictive modeling, virtual screening
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