| Literature DB >> 24521015 |
Minjun Chen1, Halil Bisgin, Lillian Tong, Huixiao Hong, Hong Fang, Jürgen Borlak, Weida Tong.
Abstract
Drug-induced liver injury (DILI) is a frequent cause for the termination of drug development programs and a leading reason of drug withdrawal from the marketplace. Unfortunately, the current preclinical testing strategies, including the regulatory-required animal toxicity studies or simple in vitro tests, are insufficiently powered to predict DILI in patients reliably. Notably, the limited predictive power of such testing strategies is mostly attributed to the complex nature of DILI, a poor understanding of its mechanism, a scarcity of human hepatotoxicity data and inadequate bioinformatics capabilities. With the advent of high-content screening assays, toxicogenomics and bioinformatics, multiple end points can be studied simultaneously to improve prediction of clinically relevant DILIs. This review focuses on the current state of efforts in developing predictive models from diverse data sources for potential use in detecting human hepatotoxicity, and also aims to provide perspectives on how to further improve DILI prediction.Entities:
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Year: 2014 PMID: 24521015 DOI: 10.2217/bmm.13.146
Source DB: PubMed Journal: Biomark Med ISSN: 1752-0363 Impact factor: 2.851