利用机器学习预测与肝脏相关的体外终点,支持药物性肝损伤的早期检测。

IF 3.7 3区 医学 Q2 CHEMISTRY, MEDICINAL
Marina Garcia de Lomana, Domenico Gadaleta, Marian Raschke, Robert Fricke, Floriane Montanari
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引用次数: 0

摘要

本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Liver-Related In Vitro Endpoints with Machine Learning to Support Early Detection of Drug-Induced Liver Injury.

Drug-induced liver injury (DILI) is a major cause of drug development failures and postmarket drug withdrawals, posing significant challenges to public health and pharmaceutical research. The biological mechanisms leading to DILI are highly complex and the adverse reaction is often difficult to foresee. Hence, mechanistic insights into DILI, as well as machine learning models to predict molecular events that trigger adverse outcomes, pharmacokinetics and pharmacodynamics in the liver, are essential tools for understanding and preventing DILI. In this study, we collected a comprehensive data set of 28 in vitro endpoints related to liver toxicity and function, as well as data specific to DILI, to explore the potential of multi-task learning for their prediction. We demonstrate the benefits of ensemble modeling and provide an uncertainty estimation based on the standard deviation of the predictions to define an applicability domain for the models. Available assays at Bayer for two of the endpoints (Bile salt export pump (BSEP) inhibition and phospholipidosis) were run on a set of public compounds and used for further evaluation (data provided in the Supporting Information). Additionally, we conducted an in-depth data analysis of the relationships among the different endpoints, as well as with DILI. The presented models can be used to derive a "Virtual Liver Safety Profile" showcasing the predicted activity of a compound on the selected endpoints to support the prioritization of assays and the elucidation of modes of action.

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来源期刊
CiteScore
7.90
自引率
7.30%
发文量
215
审稿时长
3.5 months
期刊介绍: Chemical Research in Toxicology publishes Articles, Rapid Reports, Chemical Profiles, Reviews, Perspectives, Letters to the Editor, and ToxWatch on a wide range of topics in Toxicology that inform a chemical and molecular understanding and capacity to predict biological outcomes on the basis of structures and processes. The overarching goal of activities reported in the Journal are to provide knowledge and innovative approaches needed to promote intelligent solutions for human safety and ecosystem preservation. The journal emphasizes insight concerning mechanisms of toxicity over phenomenological observations. It upholds rigorous chemical, physical and mathematical standards for characterization and application of modern techniques.
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