A tutorial on physiologically based pharmacokinetic approaches in lactation research

IF 3.1 3区 医学 Q2 PHARMACOLOGY & PHARMACY CPT: Pharmacometrics & Systems Pharmacology Pub Date : 2024-09-16 DOI:10.1002/psp4.13232
Amita Pansari, Xian Pan, Lisa M. Almond, Karen Rowland-Yeo
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Abstract

In breastfeeding mothers, managing medical conditions presents unique challenges, particularly concerning medication use and breastfeeding practices. The transfer of drugs into breast milk and subsequent exposure to nursing infants raises important considerations for drug safety and efficacy. Modeling approaches are increasingly employed to predict infant exposure levels, crucial for assessing drug safety during breastfeeding. Physiologically-based pharmacokinetic (PBPK) modeling provides a valuable tool for predicting drug exposure in lactating individuals and their infants. This tutorial offers an overview of PBPK modeling in lactation research, covering key concepts, prediction approaches, and best practices for model development and application. We delve into milk composition dynamics and its influence on drug transfer into breast milk, addressing modeling considerations, knowledge gaps, and future research directions. Practical examples and case studies illustrate PBPK modeling application in lactation studies. We demonstrate how prediction algorithms for Milk-to-Plasma (M/P) ratios within a PBPK framework can support scenarios lacking clinical lactation data or extend the utility of available lactation clinical data to support further untested clinical scenarios. This tutorial aims to assist researchers and clinicians in understanding and applying PBPK modeling to understand and support clinical scenarios in breastfeeding mothers. Advances in PBPK modeling techniques, along with ongoing research on lactation physiology and drug disposition, promise further insights into drug transfer during lactation.

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哺乳期研究中基于生理的药代动力学方法教程。
母乳喂养的母亲在管理病情方面面临着独特的挑战,尤其是在药物使用和母乳喂养实践方面。药物转移到母乳中并随后暴露于哺乳期婴儿的体内,对药物的安全性和有效性提出了重要的考虑。人们越来越多地采用建模方法来预测婴儿的药物暴露水平,这对评估哺乳期的药物安全性至关重要。基于生理学的药代动力学(PBPK)建模为预测哺乳期个体及其婴儿的药物暴露提供了宝贵的工具。本教程概述了哺乳期研究中的 PBPK 建模,涵盖了关键概念、预测方法以及模型开发和应用的最佳实践。我们将深入探讨乳汁成分动态及其对药物向乳汁转移的影响,探讨建模注意事项、知识差距和未来研究方向。实际例子和案例研究说明了 PBPK 模型在哺乳期研究中的应用。我们展示了在 PBPK 框架内的乳浆比 (M/P) 预测算法如何支持缺乏临床泌乳数据的情况,或如何扩展现有泌乳临床数据的效用,以支持更多未经测试的临床情况。本教程旨在帮助研究人员和临床医生了解并应用 PBPK 建模来理解和支持母乳喂养母亲的临床方案。PBPK 建模技术的进步以及对哺乳期生理学和药物处置的持续研究有望进一步揭示药物在哺乳期的转移。
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来源期刊
CiteScore
5.00
自引率
11.40%
发文量
146
审稿时长
8 weeks
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