通过基于可解释 ML 的 q-RASPR 方法对药物分子的内在膜渗透性进行建模,以获得更好的药代动力学和毒代动力学特性。

IF 2.3 3区 环境科学与生态学 Q3 CHEMISTRY, MULTIDISCIPLINARY
I Dasgupta, H Barik, S Gayen
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引用次数: 0

摘要

药物发现的成功在于对靶点的有效抑制和药物分子的最佳药代动力学和毒性动力学特性。膜通透性是决定药物分子吸收、分布、代谢和排泄的关键因素,从而决定药物的药代动力学和毒代动力学性质,对药物开发具有重要意义。在评估药物分子在细胞膜上的转运时,内在通透性(P0)比表观通透性(Papp)更为重要。由于它不依赖于外部/特定地点的因素,它提供了更一致的结果。在目前的工作中,我们的重点是利用线性和非线性算法构建基于机器学习(ML)的药物分子固有渗透性定量读-跨结构-性质关系(q-RASPR)模型。支持向量回归(SVR) q-RASPR模型预测能力最强(Q2F1 = 0.788, Q2F2 = 0.785, MAEtest = 0.637)。解释了重要描述符在最终模型中的作用,从而得到了本征渗透率的力学解释。总的来说,本研究揭示了q-RASPR框架的应用显著提高了传统QSPR模型在固有渗透性情况下的外部预测能力,从而更好地评估药物分子的总渗透性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling of intrinsic membrane permeability of drug molecules by explainable ML-based q-RASPR approach towards better pharmacokinetics and toxicokinetics properties.

Drug discovery's success lies in potent inhibition against a target and optimum pharmacokinetic and toxicokinetic properties of drug molecules. Membrane permeability is a crucial factor in determining the absorption, distribution, metabolism, and excretion of drug molecules, thereby determining the pharmacokinetic and toxicokinetic properties important for drug development. Intrinsic permeability (P0) is more crucial than apparent permeability (Papp) in assessing the transport of drug molecules across a membrane. It gives more consistent results due to its non-dependency on external/site-specific factors. In the present work, our focus is on the construction of a machine learning (ML)-based quantitative read-across structure-property relationship (q-RASPR) model of intrinsic permeability of drug molecules by utilizing both linear and non-linear algorithms. The Support Vector Regression (SVR) q-RASPR model was found to be the best model having superior predictive ability (Q2F1 = 0.788, Q2F2 = 0.785, MAEtest = 0.637). The contribution of important descriptors in the final model is explained to get a mechanistic interpretation of intrinsic permeability. Overall, the present study unveils the application of the q-RASPR framework for significant improvement of the external predictivity of the traditional QSPR model in the case of intrinsic permeability to get a better assessment of the total permeability of drug molecules.

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来源期刊
CiteScore
5.20
自引率
20.00%
发文量
78
审稿时长
>24 weeks
期刊介绍: SAR and QSAR in Environmental Research is an international journal welcoming papers on the fundamental and practical aspects of the structure-activity and structure-property relationships in the fields of environmental science, agrochemistry, toxicology, pharmacology and applied chemistry. A unique aspect of the journal is the focus on emerging techniques for the building of SAR and QSAR models in these widely varying fields. The scope of the journal includes, but is not limited to, the topics of topological and physicochemical descriptors, mathematical, statistical and graphical methods for data analysis, computer methods and programs, original applications and comparative studies. In addition to primary scientific papers, the journal contains reviews of books and software and news of conferences. Special issues on topics of current and widespread interest to the SAR and QSAR community will be published from time to time.
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