Advancing Predictive Hepatotoxicity at the Intersection of Experimental, in Silico, and Artificial Intelligence Technologies.

Chem Res Toxicol

Department of Chemical and Biological Engineering and Department of Biological Sciences Center for Biotechnology and Interdisciplinary Studies , Rensselaer Polytechnic Institute, Troy , New York 12180 , United States.

Published: June 2018

AI Article Synopsis

  • - Adverse drug reactions, especially drug-induced liver injury (DILI), lead to significant drug failures in clinical trials and are a primary reason for drug withdrawals despite major investments in research.
  • - The challenges in predicting hepatotoxicity stem from a lack of understanding of the mechanisms that cause liver damage after drug metabolism, which hampers existing cellular assays, animal models, and computational strategies.
  • - This assessment reviews various predictive models, including in vitro (cell-based), in vivo (animal-based), and computational approaches, emphasizing the potential of improved methods, particularly using artificial intelligence, to enhance predictions of DILI and refine experimental techniques.

Article Abstract

Adverse drug reactions, particularly those that result in drug-induced liver injury (DILI), are a major cause of drug failure in clinical trials and drug withdrawals. Hepatotoxicity-mediated drug attrition occurs despite substantial investments of time and money in developing cellular assays, animal models, and computational models to predict its occurrence in humans. Underperformance in predicting hepatotoxicity associated with drugs and drug candidates has been attributed to existing gaps in our understanding of the mechanisms involved in driving hepatic injury after these compounds perfuse and are metabolized by the liver. Herein we assess in vitro, in vivo (animal), and in silico strategies used to develop predictive DILI models. We address the effectiveness of several two- and three-dimensional in vitro cellular methods that are frequently employed in hepatotoxicity screens and how they can be used to predict DILI in humans. We also explore how humanized animal models can recapitulate human drug metabolic profiles and associated liver injury. Finally, we highlight the maturation of computational methods for predicting hepatotoxicity, the untapped potential of artificial intelligence for improving in silico DILI screens, and how knowledge acquired from these predictions can shape the refinement of experimental methods.

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Source
http://dx.doi.org/10.1021/acs.chemrestox.8b00054DOI Listing

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