首页> 外文期刊>Drug metabolism and pharmacokinetics. >A framework for assessing inter-individual variability in pharmacokinetics using virtual human populations and integrating general knowledge of physical chemistry, biology, anatomy, physiology and genetics: A tale of 'bottom-up' vs 'top-down' recognition of covariates.
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A framework for assessing inter-individual variability in pharmacokinetics using virtual human populations and integrating general knowledge of physical chemistry, biology, anatomy, physiology and genetics: A tale of 'bottom-up' vs 'top-down' recognition of covariates.

机译:一个使用虚拟人群评估药代动力学个体间变异性并整合物理化学,生物学,解剖学,生理学和遗传学常识的框架:“从上至下”与“自上而下”对协变量的认识。

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摘要

An increasing number of failures in clinical stages of drug development have been related to the effects of candidate drugs in a sub-group of patients rather than the 'average' person. Expectation of extreme effects or lack of therapeutic effects in some subgroups following administration of similar doses requires a full understanding of the issue of variability and the importance of identifying covariates that determine the exposure to the drug candidates in each individual. In any drug development program the earlier these covariates are known the better. An important component of the drive to decrease this failure rate in drug development involves attempts to use physiologically-based pharmacokinetics 'bottom-up' modeling and simulation to optimize molecular features with respect to the absorption, distribution, metabolism and elimination (ADME) processes. The key element of this approach is the separation of information on the system (i.e. human body) from that of the drug (e.g. physicochemical characteristics determining permeability through membranes, partitioning to tissues, binding to plasma proteins or affinities toward certain enzymes and transporter proteins) and the study design (e.g. dose, route and frequency of administration, concomitant drugs and food). In this review, the classical 'top-down' approach in covariate recognition is compared with the 'bottom-up' paradigm. The determinants and sources of inter-individual variability in different stages of drug absorption, distribution, metabolism and excretion are discussed in detail. Further, the commonly known tools for simulating ADME properties are introduced.
机译:在药物开发的临床阶段中,越来越多的失败与患者亚组而非“普通”患者中候选药物的作用有关。在给予相似剂量后,对于某些亚组的极端疗效或缺乏治疗效果的期望,需要对可变性问题有充分的了解,并需要确定确定每个个体中候选药物暴露的协变量的重要性。在任何药物开发程序中,越早知道这些协变量越好。降低药物开发失败率的驱动力的重要组成部分涉及尝试使用基于生理学的药代动力学“自下而上”的建模和模拟来优化有关吸收,分布,代谢和消除(ADME)过程的分子特征。这种方法的关键要素是将系统(即人体)上的信息与药物上的信息分开(例如,物理化学特性决定了通过膜的渗透性,与组织的分配,与血浆蛋白的结合或对某些酶和转运蛋白的亲和力)以及研究设计(例如剂量,给药途径和频率,伴随的药物和食物)。在这篇综述中,将协变量识别中的经典“自上而下”方法与“自下而上”范式进行了比较。详细讨论了药物吸收,分布,代谢和排泄不同阶段个体间变异性的决定因素和来源。此外,介绍了用于模拟ADME属性的众所周知的工具。

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