Abstract
Drug-induced liver injury (DILI) is the principal reason for failure in developing drug candidates. It is the most common reason to withdraw from the market after a drug has been approved for clinical use. In this context, data from animal models, liver function tests, and chemical properties could complement each other to understand DILI events better and prevent them. Since the chemical space concept improves decision-making drug design related to the prediction of structure–property relationships, side effects, and polypharmacology drug activity (uniquely mentioning the most recent advances), it is an attractive approach to combining different phenomena influencing DILI events (e.g., individual “chemical spaces”) and exploring all events simultaneously in an integrated analysis of the DILI-relevant chemical space. However, currently, no systematic methods allow the fusion of a collection of different chemical spaces to collect different types of data on a unique chemical space representation, namely “consensus chemical space.” This study is the first report that implements data fusion to consider different criteria simultaneously to facilitate the analysis of DILI-related events. In particular, the study highlights the importance of analyzing together in vitro and chemical data (e.g., topology, bond order, atom types, presence of rings, ring sizes, and aromaticity of compounds encoded on RDKit fingerprints). These properties could be aimed at improving the understanding of DILI events.
Subject
Molecular Biology,Biochemistry
Reference42 articles.
1. Safety data and withdrawal of hepatotoxic drugs;Babai;Therapies,2021
2. Impact of Physicochemical Properties on dose and hepatotoxicity of oral drugs;Leeson;Chem. Res. Toxicol.,2018
3. Three-Level Hepatotoxicity prediction system based on adverse hepatic effects;Liu;Mol. Pharm.,2019
4. He, S., Ye, T., Wang, R., Zhang, C., Zhang, X., Sun, G., and Sun, X. (2019). An in silico model for predicting drug-Induced hepatotoxicity. Int. J. Mol. Sci., 20.
5. Drug-induced liver injury severity and toxicity (DILIst): Binary classification of 1279 drugs by human hepatotoxicity;Thakkar;Drug Discov. Today,2020
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