Department of Pharmaceutical Sciences, Center for Pharmacogenetics, University of Pittsburgh, Pittsburgh, PA 15261, United States.
UPMC Hillman Cancer Institute, University of Pittsburgh, Pittsburgh, PA 15261, United States.
Toxicol Sci. 2024 Sep 1;201(1):14-25. doi: 10.1093/toxsci/kfae078.
Drug-induced liver injury (DILI) is the most common trigger for acute liver failure and the leading cause of attrition in drug development. In this study, we developed an in silico framework to screen drug-induced hepatocellular toxicity (INSIGHT) by integrating the post-treatment transcriptomic data from both rodent models and primary human hepatocytes. We first built an early prediction model using logistic regression with elastic net regularization for 123 compounds and established the INSIGHT framework that can screen for drug-induced hepatotoxicity. The 235 signature genes identified by INSIGHT were involved in metabolism, bile acid synthesis, and stress response pathways. Applying the INSIGHT to an independent transcriptomic dataset treated by 185 compounds predicted that 27 compounds show a high DILI risk, including zoxazolamine and emetine. Further integration with cell image data revealed that predicted compounds with high DILI risk can induce abnormal morphological changes in the endoplasmic reticulum and mitochondrion. Clustering analysis of the treatment-induced transcriptomic changes delineated distinct DILI mechanisms induced by these compounds. Our study presents a computational framework for a mechanistic understanding of long-term liver injury and the prospective prediction of DILI risk.
药物性肝损伤(DILI)是急性肝衰竭的最常见诱因,也是药物研发过程中淘汰药物的主要原因。在这项研究中,我们通过整合来自啮齿动物模型和原代人肝细胞的治疗后转录组数据,开发了一种用于筛选药物诱导的肝细胞毒性(INSIGHT)的计算框架。我们首先使用具有弹性网络正则化的逻辑回归为 123 种化合物构建了早期预测模型,并建立了可以筛选药物肝毒性的 INSIGHT 框架。通过 INSIGHT 鉴定的 235 个特征基因参与了代谢、胆汁酸合成和应激反应途径。将 INSIGHT 应用于由 185 种化合物处理的独立转录组数据集,预测 27 种化合物具有较高的 DILI 风险,包括佐唑胺和依米丁。与细胞图像数据的进一步整合表明,预测具有高 DILI 风险的化合物可诱导内质网和线粒体的异常形态变化。对治疗诱导的转录组变化的聚类分析描绘了这些化合物诱导的不同 DILI 机制。我们的研究提出了一种计算框架,用于对长期肝损伤的机制理解和 DILI 风险的前瞻性预测。