Mechanism-based integrated assay systems for the prediction of drug-induced liver injury

Moemi Kawaguchi, Takumi Nukaga, Shuichi Sekine, Akinori Takemura, Takeshi Susukida, Shiho Oeda, Atsushi Kodama, Morihiko Hirota, Hirokazu Kouzuki, Kousei Ito*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

12 Scopus citations

Abstract

Drug-induced liver injury (DILI) can cause hepatic failure and result in drug withdrawal from the market. It has host-related and compound-dependent mechanisms. Preclinical prediction of DILI risk is very challenging and safety assessments based on animals inadequately forecast human DILI risk. In contrast, human-derived in vitro cell culture-based models could improve DILI risk prediction accuracy. Here, we developed and validated an innovative method to assess DILI risk associated with various compounds. Fifty-four marketed and withdrawn drugs classified as DILI risks of “most concern”, “less concern”, and “no concern” were tested using a combination of four assays addressing mitochondrial injury, intrahepatic lipid accumulation, inhibition of bile canalicular network formation, and bile acid accumulation. Using the inhibitory potencies of the drugs evaluated in these in vitro tests, an algorithm with the highest available DILI risk prediction power was built by artificial neural network (ANN) analysis. It had an overall forecasting accuracy of 73%. We excluded the intrahepatic lipid accumulation assay to avoid overfitting. The accuracy of the algorithm in terms of predicting DILI risks was 62% when it was constructed by ANN but only 49% when it was built by the point-added scoring method. The final algorithm based on three assays made no DILI risk prediction errors such as “most concern “ instead of “no concern” and vice-versa. Our mechanistic approach may accurately predict DILI risks associated with numerous candidate drugs.

Original languageEnglish
Article number114958
JournalToxicology and Applied Pharmacology
Volume394
DOIs
StatePublished - 2020/05/01

Keywords

  • Animal Testing Alternative
  • Artificial Neural Network Analysis
  • Cholestasis
  • Drug-Induced Liver Injury
  • Hepatotoxicity
  • Mitochondria

ASJC Scopus subject areas

  • Toxicology
  • Pharmacology

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