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Idiosyncratic Drug-Induced Liver Injury (DILI) and Herb-Induced Liver Injury (HILI): Diagnostic Algorithm Based on the Quantitative Roussel Uclaf Causality Assessment Method (RUCAM)

机译:特质药物诱导的肝损伤(DiRI)和草药诱导的肝损伤(HILI):基于定量ROOSSEL UCLAF因果关系评估方法的诊断算法(RUCAM)

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摘要

Causality assessment in liver injury induced by drugs and herbs remains a debated issue, requiring innovation and thorough understanding based on detailed information. Artificial intelligence (AI) principles recommend the use of algorithms for solving complex processes and are included in the diagnostic algorithm of Roussel Uclaf Causality Assessment Method (RUCAM) to help assess causality in suspected cases of idiosyncratic drug-induced liver injury (DILI) and herb-induced liver injury (HILI). From 1993 until the middle of 2020, a total of 95,865 DILI and HILI cases were assessed by RUCAM, outperforming by case numbers any other causality assessment method. The success of RUCAM can be traced back to its quantitative features with specific data elements that are individually scored leading to a final causality grading. RUCAM is objective, user friendly, transparent, and liver injury specific, with an updated version that should be used in future DILI and HILI cases. Support of RUCAM was also provided by scientists from China, not affiliated to any network, in the results of a scientometric evaluation of the global knowledge base of DILI. They highlighted the original RUCAM of 1993 and their authors as a publication quoted the greatest number of times and ranked first in the category of the top 10 references related to DILI. In conclusion, for stakeholders involved in DILI and HILI, RUCAM seems to be an effective diagnostic algorithm in line with AI principles.
机译:药物和草药诱导的肝损伤因因果性评估仍然是一个讨论的问题,需要根据详细信息创新和彻底的理解。人工智能(AI)原则建议使用用于解决复杂过程的算法,并包括在ROUESEL UCLAF因果关系评估方法(RUCAM)的诊断算法中,以帮助评估疑似特质药物诱导肝损伤(DILI)和草药病例的因果关系诱导肝损伤(HILI)。从1993年到2020年代中期,通过Rucam评估了95,865个Dili和Hili病例,通过案例编号表现出任何其他因果评估方法。 Rucam的成功可以追溯到其定量特征,具有单独评分的特定数据元素导致最终因果区分级。 Rucam是客观的,用户友好,透明和肝损伤,具有更新的版本,应在未来的Diri和Hili案件中使用。中国的科学家们提供了来自中国的科学家,而不是任何网络的科学家提供的,这是对帝力的全球知识库的科学研究结果的结果。他们强调了1993年的原始Rucam及其作者作为出版物引用了最多的次数,并在与Dili相关的十大参考文献的类别中排名第一。总之,对于参与Dili和Hili的利益攸关方,Rucam似乎是一种有效的诊断算法,符合AI原则。

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