The history and future of population pharmacokinetic analysis in drug development.

IF 1.3 4区 医学 Q4 PHARMACOLOGY & PHARMACY
Xenobiotica Pub Date : 2024-07-01 Epub Date: 2024-08-21 DOI:10.1080/00498254.2023.2291792
Nathan Teuscher
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引用次数: 0

Abstract

The analysis of pharmacokinetic data has been in a constant state of evolution since the introduction of the term pharmacokinetics. Early work focused on mechanistic understanding of the absorption, distribution, metabolism and excretion of drug products.The introduction of non-linear mixed effects models to perform population pharmacokinetic analysis initiated a paradigm shift. The application of these models represented a major shift in evaluating variability in pharmacokinetic parameters across a population of subjects.While technological advancements in computing power have fueled the growth of population pharmacokinetics in drug development efforts, there remain many challenges in reducing the time required to incorporate these learnings into a model-informed development process. These challenges exist because of expanding datasets, increased number of diagnostics, and more complex mathematical models.New machine learning tools may be potential solutions for these challenges. These new methodologies include genetic algorithms for model selection, machine learning algorithms for covariate selection, and deep learning models for pharmacokinetic and pharmacodynamic data. These new methods promise the potential for less bias, faster analysis times, and the ability to integrate more data.While questions remain regarding the ability of these models to extrapolate accurately, continued research in this area is expected to address these questions.

药物开发中群体药代动力学分析的历史与未来。
1.自药代动力学一词问世以来,药代动力学数据分析一直处于不断发展变化之中。早期的工作侧重于从机理上理解药物的吸收、分布、代谢和排泄。 2. 引入非线性混合效应模型来进行群体药代动力学分析,开启了范式的转变。这些模型的应用代表了评估受试者群体药代动力学参数变异性的重大转变。 3. 虽然计算能力方面的技术进步促进了药物开发工作中群体药代动力学的发展,但在缩短将这些知识纳入以模型为依据的开发流程所需的时间方面仍存在许多挑战。这些挑战的存在是由于数据集不断扩大、诊断数量增加以及数学模型更加复杂4。 新的机器学习工具可能是应对这些挑战的潜在解决方案。这些新方法包括用于模型选择的遗传算法、用于协变量选择的机器学习算法以及用于药代动力学和药效学数据的深度学习模型。这些新方法有望减少偏差,缩短分析时间,并能整合更多数据。 5 虽然这些模型的准确推断能力仍存在问题,但该领域的持续研究有望解决这些问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Xenobiotica
Xenobiotica 医学-毒理学
CiteScore
3.80
自引率
5.60%
发文量
96
审稿时长
2 months
期刊介绍: Xenobiotica covers seven main areas, including:General Xenobiochemistry, including in vitro studies concerned with the metabolism, disposition and excretion of drugs, and other xenobiotics, as well as the structure, function and regulation of associated enzymesClinical Pharmacokinetics and Metabolism, covering the pharmacokinetics and absorption, distribution, metabolism and excretion of drugs and other xenobiotics in manAnimal Pharmacokinetics and Metabolism, covering the pharmacokinetics, and absorption, distribution, metabolism and excretion of drugs and other xenobiotics in animalsPharmacogenetics, defined as the identification and functional characterisation of polymorphic genes that encode xenobiotic metabolising enzymes and transporters that may result in altered enzymatic, cellular and clinical responses to xenobioticsMolecular Toxicology, concerning the mechanisms of toxicity and the study of toxicology of xenobiotics at the molecular levelXenobiotic Transporters, concerned with all aspects of the carrier proteins involved in the movement of xenobiotics into and out of cells, and their impact on pharmacokinetic behaviour in animals and manTopics in Xenobiochemistry, in the form of reviews and commentaries are primarily intended to be a critical analysis of the issue, wherein the author offers opinions on the relevance of data or of a particular experimental approach or methodology
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