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基于理化参数的药物主要清除途径的计算机分类。

In silico classification of major clearance pathways of drugs with their physiochemical parameters.

机构信息

Graduate School of Pharmaceutical Sciences, The University of Tokyo, Bunkyo-ku, Tokyo, Japan.

出版信息

Drug Metab Dispos. 2010 Aug;38(8):1362-70. doi: 10.1124/dmd.110.032789. Epub 2010 Apr 27.

DOI:10.1124/dmd.110.032789
PMID:20423955
Abstract

Predicting major clearance pathways of drugs is important in understanding their pharmacokinetic properties in clinical use, such as drug-drug interactions and genetic polymorphisms, and their subsequent pharmacological/toxicological effects. In this study, we established an in silico classification method to predict the major clearance pathways of drugs by identifying the boundaries of physicochemical parameters in empirical decisions for each clearance pathway. It requires only four physicochemical parameters [charge, molecular weight (MW), lipophilicity (log D), and protein unbound fraction in plasma (f(up))] that were predicted from their molecular structures without performing any benchwork experiments. The training dataset consisted of 141 approved drugs whose major clearance pathways were determined to be metabolism by CYP3A4, CYP2C9, and CYP2D6, hepatic uptake by OATPs, or renal excretion in an unchanged form. After grouping by charge, each drug was plotted in a three-dimensional space according to three axes of MW, log D, and f(up). Then, rectangular boxes for each clearance pathway were drawn mathematically under the criterion of "maximizing F value (harmonic mean of precision and recall) with minimum volume," yielding to a precision of 88%, which was confirmed through two types of validation: leave-one-out method and validation using a new dataset. With further modification toward multiple pathways and/or other pathways, not only would this in silico classification system be useful for industrial scientists at the early stage of drug development, which can lead to the selection of candidate compounds with optimal pharmacokinetic properties, but also for regulators in evaluating new drugs and giving regulatory requirements that are pharmacokinetically reasonable.

摘要

预测药物的主要清除途径对于了解其在临床应用中的药代动力学特性(如药物-药物相互作用和遗传多态性)及其随后的药理/毒理效应非常重要。在这项研究中,我们建立了一种基于计算的分类方法,通过识别每个清除途径的经验决策中理化参数的边界,来预测药物的主要清除途径。它只需要四个理化参数[电荷、分子量(MW)、亲脂性(log D)和血浆中未结合的蛋白分数(f(up)],这些参数可以从分子结构中预测出来,而无需进行任何实验工作。训练数据集由 141 种已批准的药物组成,这些药物的主要清除途径被确定为 CYP3A4、CYP2C9 和 CYP2D6 代谢、OATPs 肝摄取或原形肾排泄。按电荷分组后,根据 MW、log D 和 f(up)的三个轴,将每种药物绘制在三维空间中。然后,根据“最大化 F 值(精度和召回率的调和平均值)与最小体积”的标准,以数学方式为每个清除途径绘制矩形框,得到 88%的精度,通过两种验证方法得到了验证:留一法和使用新数据集进行验证。通过对多种途径和/或其他途径进行进一步修改,该计算分类系统不仅对药物开发早期的工业科学家有用,可以帮助选择具有最佳药代动力学特性的候选化合物,而且对评估新药的监管机构也有用,可以给出合理的药代动力学监管要求。

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