一顶帽子下的特殊DILI和RUCAM:全球视野

Livers Pub Date : 2023-08-19 DOI:10.3390/livers3030030
R. Teschke, G. Danan
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引用次数: 0

摘要

在世界范围内,药物都是用来治疗疾病的,但却有引起特异性药物性肝损伤(iDILI)的风险。最重要的困难是如何最好地建立因果关系。基于强有力的证据和人工智能(AI)原理,通过使用得分元素的定量算法来解决复杂的过程,Roussel Uclaf因果关系评估方法(RUCAM)在其原始和更新版本中取得了进展,现在通常被视为黄金标准。作为一种备受推崇的诊断算法,RUCAM在全球范围内使用,全球约有10万例iDILI病例使用RUCAM来评估因果关系,在病例数方面大大优于任何其他特定的因果关系评估工具。因此,RUCAM有助于建立涉及iDILI的全球顶级药物清单,并描述由各种药物引起的iDILI的临床和机制特征。此外,RUCAM最近被应用于接受2019冠状病毒病(COVID-19)感染治疗的iDILI病例或接受免疫检查点抑制剂(ICIs)治疗的癌症患者,以及在iDILI中寻找新的常规药物治疗方案。基于rucam的iDILI病例分析有助于支持免疫反应等发病步骤、人类白细胞抗原(HLA)基因型对选定药物的遗传易感性以及肠道微生物组的作用。为了实现数据收集、分析以及具体临床和发病表现的一致性,研究人员、监管机构和制药公司应将iDILI和更新后的RUCAM作为因果关系工具放在iDILI诊断和治疗的综述文章和临床指南的同一位置。
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Idiosyncratic DILI and RUCAM under One Hat: The Global View
Drugs are prescribed worldwide to treat diseases but with the risk of idiosyncratic drug-induced liver injury (iDILI). The most important difficulty is how best to establish causality. Based on strong evidence and principles of artificial intelligence (AI) to solve complex processes through quantitative algorithms using scored elements, progress was achieved with the Roussel Uclaf Causality Assessment Method (RUCAM) in its original and updated versions, often viewed now as the gold standard. As a highly appreciated diagnostic algorithm, the RUCAM is in global use with around 100,000 iDILI cases published worldwide using RUCAM to assess causality, largely outperforming any other specific causality assessment tool in terms of case numbers. Consequently, the RUCAM helps to establish a list of top-ranking drugs worldwide implicated in iDILI and to describe clinical and mechanistic features of iDILI caused by various drugs. In addition, the RUCAM was recently applied in iDILI cases of patients treated for coronavirus disease 2019 (COVID-19) infections or cancer patients treated with immune checkpoint inhibitors (ICIs), as well as in the search for new treatment options with conventional drugs in iDILI. Analyses of RUCAM-based iDILI cases are helpful to support pathogenetic steps like immune reactions, genetic predisposition as evidenced by human leucocyte antigens (HLA) genotypes for selected drugs, and the role of the gut microbiome. To achieve consistency in data collection, analysis, and specific clinical and pathogenetic presentation, researchers, regulatory agencies, and pharmaceutical firms should place iDILI and the updated RUCAM as the causality tool under one and the same hat in review articles and clinical guidelines for the diagnosis and treatment of iDILI.
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