[基于真实数据的中药肝损伤风险发现策略与方法研究:以延胡索为例]。

Q3 Pharmacology, Toxicology and Pharmaceutics
Long-Xin Guo, Li Lin, Yun-Juan Gao, Min-Juan Long, Sheng-Kai Zhu, Ying-Jie Xu, Xu Zhao, Xiao-He Xiao
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引用次数: 0

摘要

近年来,与中药相关的不良反应/事件频发,尤其是与传统无毒中药相关的肝损伤,需要引起足够的重视。与传统无毒中药相关的肝损伤具有散发性和隐蔽性,且受多种因素的影响,给检测和鉴定带来了挑战。迫切需要制定一种策略和方法来早期发现和识别传统的无毒中药相关肝损伤。本研究以国家药物不良反应监测中心大数据为基础,综合运用报告优势比(ROR)、网络毒理学、计算化学等方法,系统研究中药相关性肝损伤风险信号识别与评价方法。采用优化后的ROR方法发现潜在的肝损伤风险中药,并采用网络毒理学和计算化学方法识别潜在的高风险中药。并结合典型临床病例进行分析证实。制定“大数据发现、干湿法识别、典型案例确认、精准风险防控”的综合策略,识别中医肝损伤风险。将延胡索确定为高风险中药,对其毒性相关物质及潜在毒性机制进行了分析。结果显示,肝损伤与四氢巴马汀、四氢小檗碱等成分有关,其潜在机制与肿瘤坏死因子信号通路、白细胞介素-17信号通路、Th17细胞分化等免疫炎症通路有关。本文创新性地将现实世界证据与计算毒理学方法相结合,为建立基于现实世界大数据的中医相关肝损伤风险发现与识别策略提供见解和技术支持,为指导临床安全合理用药提供创新思路和策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Study on strategies and methods for discovering risk of traditional Chinese medicine-related liver injury based on real-world data: an example of Corydalis Rhizoma].

In recent years, there have been frequent adverse reactions/events associated with traditional Chinese medicine(TCM), especially liver injury related to traditional non-toxic TCM, which requires adequate attention. Liver injury related to traditional non-toxic TCM is characterized by its sporadic and insidious nature and is influenced by various factors, making its detection and identification challenging. There is an urgent need to develop a strategy and method for early detection and recognition of traditional non-toxic TCM-related liver injury. This study was based on national adverse drug reaction monitoring center big data, integrating methodologies such as reporting odds ratio(ROR), network toxicology, and computational chemistry, so as to systematically research the risk signal identification and evaluation methods for TCM-related liver injury. The optimized ROR method was used to discover potential TCM with a risk of liver injury, and network toxicology and computational chemistry were used to identify potentially high-risk TCM. Additionally, typical clinical cases were analyzed for confirmation. An integrated strategy of "discovery via big data, identification via dry/wet method, confirmation via typical cases, and precise risk prevention and control" was developed to identify the risk of TCM-related liver injury. Corydalis Rhizoma was identified as a TCM with high risk, and its toxicity-related substances and potential toxicity mechanisms were analyzed. The results revealed that liver injury is associated with components such as tetrahydropalmatine and tetrahydroberberine, with potential mechanisms related to immune-inflammatory pathways such as the tumor necrosis factor signaling pathway, interleukin-17 signaling pathway, and Th17 cell differentiation. This paper innovatively integrated real-world evidence and computational toxicology methods, offering insights and technical support for establishing a risk discovery and identification strategy for TCM-related liver injury based on real-world big data, providing innovative ideas and strategies for guiding the safe and rational use of medication in clinical practices.

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来源期刊
Zhongguo Zhongyao Zazhi
Zhongguo Zhongyao Zazhi Pharmacology, Toxicology and Pharmaceutics-Pharmacology, Toxicology and Pharmaceutics (all)
CiteScore
1.50
自引率
0.00%
发文量
581
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