Litcius/Paper detail

Supervised chemical graph mining improves drug-induced liver injury prediction

Sangsoo Lim, Young‐Kuk Kim, Jeonghyeon Gu, Sunho Lee, Wonseok Shin, Sun Kim

2022iScience21 citationsDOIOpen Access PDF

Abstract

Drug-induced liver injury (DILI) is the main cause of drug failure in clinical trials. The characterization of toxic compounds in terms of chemical structure is important because compounds can be metabolized to toxic substances in the liver. Traditional machine learning approaches have had limited success in predicting DILI, and emerging deep graph neural network (GNN) models are yet powerful enough to predict DILI. In this study, we developed a completely different approach, supervised subgraph mining (SSM), a strategy to mine explicit subgraph features by iteratively updating individual graph transitions to maximize DILI fidelity. Our method outperformed previous methods including state-of-the-art GNN tools in classifying DILI on two different datasets: DILIst and TDC-benchmark. We also combined the subgraph features by using SMARTS-based frequent structural pattern matching and associated them with drugs' ATC code.

Topics & Concepts

Liver injuryDrugDrug discoveryComputer scienceComputational biologyChemistryPharmacologyMedicineBiologyBiochemistryComputational Drug Discovery MethodsHepatitis C virus researchDrug-Induced Hepatotoxicity and Protection