生理药代动力学模型在肾脏组织应用研究的可视化分析
1.湖南中医药大学研究生院,湖南 长沙 410208;
2.长沙市第三医院药学部,湖南 长沙 410015;
3.抗耐药微生物药物湖南省重点实验室,湖南 长沙 410015;收稿日期: 2025-03-18
修回日期: 2025-06-23
录用日期: 2025-11-15
网络出版日期: 2026-02-11
基金资助
抗耐药微生物药物湖南省重点实验室项目(2023TP1013)
Visualization Analysis of the Development of Physiologically Based Pharmacokinetic Models in Renal Tissue Applications
Received date: 2025-03-18
Revised date: 2025-06-23
Accepted date: 2025-11-15
Online published: 2026-02-11
目的:通过文献计量学研究,多维度分析生理药代动力学(PBPK)模型在肾脏组织的研究现状和发展趋势,为临床上利用PBPK模型处理肾脏相关问题提供新的见解。方法:系统检索Web of Science核心合集数据库,纳入时间跨度为2004年1月1日至2024年12月31日有关生理药代动力学(PBPK)模型在肾脏领域应用的相关文献。采用文献计量学方法,运用VOSviewer、CiteSpace、Scimago Graphica和Pajek等多款可视化分析工具,对相关文献的国家/地区分布、发文机构、来源期刊、作者合作关系及关键词共现关系进行深入分析,并构建相应的知识图谱。结果:本研究共纳入780篇文献,2004—2024年的发文量逐年增长;发文量前3的国家分别为美国,中国和英国。发文量最多的作者为Glatting G(20篇)。Certara UK Ltd(37篇)和Drug Metabolism and Disposition(43篇)分别为该领域发文量最多的机构与期刊。关键词分析发现肾脏清除、肾毒性、药物暴露、风险评估、组织分布等一直是备受关注的研究热点,前沿主要集中于药物间相互作用及药效学,用药安全,慢性肾病等。结论:2004—2024年,PBPK模型在肾脏组织中的应用研究热度整体呈上升趋势,模型在药物间相互作用、用药安全、慢性肾病等方面的应用是今后主要的研究方向与热点。
李佳锴
,
童焕
,
袁芳
,
王鹏凯
,
李昕
.
生理药代动力学模型在肾脏组织应用研究的可视化分析
Objective: To conduct a bibliometric analysis, providing a multidimensional assessment of the research status and development trends in the application of physiologically based pharmacokinetic (PBPK) models to renal tissue. This aims to offer novel insights for the clinical utilization of PBPK models in addressing kidney-related issues.Methods: The Web of Science core collection database was systematically searched for articles on the application of PBPK model in the field of kidney from January 1, 2004 to December 31, 2024. Bibliometric methods were employed, utilizing visualization tools (VOSviewer, CiteSpace, Scimago Graphica, Pajek) to conduct an in-depth analysis of country/region distribution, institutions, journals, author cooperation, and keyword co-occurrence. Corresponding knowledge maps were constructed.Results: This study included 780 articles. The annual number of published articles exhibited a consistent upward trend from 2004 to 2024. In terms of the number of published articles, the top three countries were the United States, China, and the United Kingdom; the most prolific author was Glatting G (20 articles); Certara UK Ltd (37 articles) and Drug Metabolism and Disposition (43 articles) were the most prolific institution and journal in this field. Keyword analysis revealed enduring research hotspots including renal clearance, nephrotoxicity, drug exposure, risk assessment, and tissue distribution. Current research frontiers primarily focus on drug-drug interactions, pharmacodynamics, medication safety, and chronic kidney disease.Conclusion: Research interest in the application of PBPK models to renal tissue has steadily increased between 2004 and 2024. Future research directions and hotspots are anticipated to center on applications in drug-drug interactions, medication safety, and chronic kidney disease.
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