Machine Learning Prediction of On/Off Target-driven Clinical Adverse Events.
Albert CaoLuchen ZhangYingzi BuDuxin SunPublished in: Pharmaceutical research (2024)
Our approach provides a new insight into the mechanistic understanding of in vivo drug toxicity in relationship with drug on-/off-target interactions. The coupled ML models, once validated with larger datasets, may offer advantages to directly predict clinical AEs using in vitro/ex vivo and preclinical data, which will help to reduce drug development failure due to clinical toxicity.