TY - JOUR
T1 - Recent progress in machine learning approaches for predicting carcinogenicity in drug development
AU - Le, Nguyen Quoc Khanh
AU - Tran, Thi Xuan
AU - Nguyen, Phung Anh
AU - Ho, Trang Thi
AU - Nguyen, Van Nui
N1 - Publisher Copyright:
© 2024 Informa UK Limited, trading as Taylor & Francis Group.
PY - 2024
Y1 - 2024
N2 - Introduction: This review explores the transformative impact of machine learning (ML) on carcinogenicity prediction within drug development. It discusses the historical context and recent advancements, emphasizing the significance of ML methodologies in overcoming challenges related to data interpretation, ethical considerations, and regulatory acceptance. Areas covered: The review comprehensively examines the integration of ML, deep learning, and diverse artificial intelligence (AI) approaches in various aspects of drug development safety assessments. It explores applications ranging from early-phase compound screening to clinical trial optimization, highlighting the versatility of ML in enhancing predictive accuracy and efficiency. Expert opinion: Through the analysis of traditional approaches such as in vivo rodent bioassays and in vitro assays, the review underscores the limitations and resource intensity associated with these methods. It provides expert insights into how ML offers innovative solutions to address these challenges, revolutionizing safety assessments in drug development.
AB - Introduction: This review explores the transformative impact of machine learning (ML) on carcinogenicity prediction within drug development. It discusses the historical context and recent advancements, emphasizing the significance of ML methodologies in overcoming challenges related to data interpretation, ethical considerations, and regulatory acceptance. Areas covered: The review comprehensively examines the integration of ML, deep learning, and diverse artificial intelligence (AI) approaches in various aspects of drug development safety assessments. It explores applications ranging from early-phase compound screening to clinical trial optimization, highlighting the versatility of ML in enhancing predictive accuracy and efficiency. Expert opinion: Through the analysis of traditional approaches such as in vivo rodent bioassays and in vitro assays, the review underscores the limitations and resource intensity associated with these methods. It provides expert insights into how ML offers innovative solutions to address these challenges, revolutionizing safety assessments in drug development.
KW - Artificial intelligence
KW - carcinogenicity prediction
KW - computational toxicology
KW - drug development
KW - machine learning
KW - predictive modeling
KW - safety assessment
KW - toxicogenomics
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U2 - 10.1080/17425255.2024.2356162
DO - 10.1080/17425255.2024.2356162
M3 - Review article
C2 - 38742542
AN - SCOPUS:85194560693
SN - 1742-5255
VL - 20
SP - 621
EP - 628
JO - Expert Opinion on Drug Metabolism and Toxicology
JF - Expert Opinion on Drug Metabolism and Toxicology
IS - 7
ER -