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Insights into mechanisms and severity of drug-induced liver injury via computational systems toxicology approach

机译:通过计算系统毒理学方法探讨药物诱导肝损伤的机制和严重程度

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摘要

Liver is the central place for drug metabolism. Drug-induced liver injury (DILI) is hence inevitable, and has become one of the leading causes for drug failure in development and drug withdrawal from the market. Due to lack of reliable preclinical and in vivo toxicology test conditions, it is time-consuming, laborious and costly to interpret the mechanisms of DILI through bioassays. In this paper, we developed a computational systems toxicology approach to investigate the molecular mechanisms of DILI. Totally 1478 DILI compounds were collected, together with 1067 known targets for 896 DILI compounds. Then, 173 new potential targets of these compounds were predicted by our bSDTNBI (balanced substructure-drug-target network-based inference) method. After network analysis, 145 primary genes were found to relate with hepatotoxicity and have higher expression in liver, among which 26 genes were predicted by our method, such as CYP2E1, GSTA1, EPHX1, ADH1B, ADH1C, ALDH2, F7, and IL2. A scoring function, DILI-Score, was further proposed to assess the hepatotoxic severity of a given compound. Finally, as case studies, we analyzed the mechanisms of DILI from the perspective of off-targets, and found out the pivotal genes for liver injuries induced by tyrosine kinase inhibitors and TAK-875. This work would be helpful for better understanding mechanisms of DILI and provide clues for reducing risk of DILI.
机译:肝脏是药物代谢的中央处。因此,药物诱导的肝损伤(DILI)是不可避免的,并且已成为来自市场的发育和药物退出的药物失败的主要原因之一。由于缺乏可靠的临床前和体内毒理学测试条件,通过生物测定来解释Dili的机制是耗时的,费力且成本昂贵。在本文中,我们开发了一种计算系统毒理学方法,以研究DILI的分子机制。收集完全1478个Dili化合物,将867个已知靶为896个Dili化合物。然后,通过我们的BSDTNBI(平衡的亚结构 - 药物 - 目标网络的推断)预先预测173个新的这些化合物的潜在靶标。在网络分析之后,发现145个初级基因与肝毒性相关并具有更高的肝脏表达,其中通过我们的方法预测了26个基因,例如CYP2E1,GSTA1,EPH11,ADH1B,ADH1C,ALDH2,F7和IL2。进一步提出了评分功能,DiRi-得分评估给定化合物的肝毒性严重程度。最后,作为案例研究,我们从偏离靶向角度分析了DILI的机制,发现酪氨酸激酶抑制剂和TAK-875诱导的肝损伤的枢轴基因。这项工作对于更好地理解Dili的理解机制并提供减少帝力风险的线索。

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