Exploratory data analysis of the dependencies between skin permeability, molecular weight and log P.

D. Kilian, H. J. Lemmer, M. Gerber, J. D. du Preez, J. du Plessis
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引用次数: 1

Abstract

Molecular weight and log P remain the most frequently used physicochemical properties in models that predict skin permeability. However, several reports over the past two decades have suggested that predictions made by these models may not be sufficiently accurate. In this study, exploratory data analysis of the probabilistic dependencies between molecular weight, log P and log Kp was performed on a dataset constructed from the combination of several popular datasets. The results suggest that, in general, molecular weight and log P are poorly correlated to log Kp. However, after employing several exploratory data analysis techniques, regions within the dataset of statistically significant dependence were identified. As an example of the applicability of the information extracted from the exploratory data analyses, a multiple linear regression model was constructed, bounded by the ranges of dependence. This model gave reasonable approximations to log Kp values obtained from skin permeability studies of selected non-steroidal ant-inflammatory drugs (NSAIDs) administered from a buffer solution and a lipid-based drug delivery system. A method of testing whether a given drug falls within the regions of statistical dependence was also presented. Knowing the ranges within which molecular weight and log P are statistically related to log Kp can supplement existing methods of screening, risk analysis or early drug development decision making to add confidence to predictions made regarding skin permeability.
皮肤通透性、分子量与log P相关性的探索性数据分析。
在预测皮肤渗透性的模型中,分子量和对数P仍然是最常用的物理化学性质。然而,过去二十年的几份报告表明,这些模型做出的预测可能不够准确。在本研究中,对分子量、log P和log Kp之间的概率依赖关系进行了探索性数据分析,该数据集是由几个流行数据集组合而成的。结果表明,在一般情况下,分子量和log P与log Kp相关性较差。然而,在采用几种探索性数据分析技术后,确定了数据集中具有统计显著依赖性的区域。为了验证从探索性数据分析中提取的信息的适用性,构建了一个以依赖范围为界的多元线性回归模型。该模型给出了从缓冲溶液和脂质给药系统中选择的非甾体抗炎药(NSAIDs)的皮肤渗透性研究中获得的对数Kp值的合理近似。还提出了一种检验给定药物是否属于统计依赖性区域的方法。了解分子量和对数P与对数Kp在统计上相关的范围,可以补充现有的筛选、风险分析或早期药物开发决策方法,从而增加对皮肤渗透性预测的信心。
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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