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预测与药物代谢酶抑制或诱导相关的药物-药物相互作用。

Prediction of Drug-Drug Interactions Related to Inhibition or Induction of Drug-Metabolizing Enzymes.

机构信息

Institute of Biomedical Chemistry, Moscow, Russian Federation.

Pirogov Russian National Research Medical University, Moscow, RussiaN Federation.

出版信息

Curr Top Med Chem. 2019;19(5):319-336. doi: 10.2174/1568026619666190123160406.

DOI:10.2174/1568026619666190123160406
PMID:30674264
Abstract

Drug-drug interaction (DDI) is the phenomenon of alteration of the pharmacological activity of a drug(s) when another drug(s) is co-administered in cases of so-called polypharmacy. There are three types of DDIs: pharmacokinetic (PK), pharmacodynamic, and pharmaceutical. PK is the most frequent type of DDI, which often appears as a result of the inhibition or induction of drug-metabolising enzymes (DME). In this review, we summarise in silico methods that may be applied for the prediction of the inhibition or induction of DMEs and describe appropriate computational methods for DDI prediction, showing the current situation and perspectives of these approaches in medicinal and pharmaceutical chemistry. We review sources of information on DDI, which can be used in pharmaceutical investigations and medicinal practice and/or for the creation of computational models. The problem of the inaccuracy and redundancy of these data are discussed. We provide information on the state-of-the-art physiologically- based pharmacokinetic modelling (PBPK) approaches and DME-based in silico methods. In the section on ligand-based methods, we describe pharmacophore models, molecular field analysis, quantitative structure-activity relationships (QSAR), and similarity analysis applied to the prediction of DDI related to the inhibition or induction of DME. In conclusion, we discuss the problems of DDI severity assessment, mention factors that influence severity, and highlight the issues, perspectives and practical using of in silico methods.

摘要

药物-药物相互作用(DDI)是指当所谓的多药治疗中同时使用另一种药物时,药物的药理活性发生改变的现象。DDI 有三种类型:药代动力学(PK)、药效学和药物制剂学。PK 是最常见的 DDI 类型,通常是由于药物代谢酶(DME)的抑制或诱导引起的。在这篇综述中,我们总结了可用于预测 DME 抑制或诱导的计算方法,并描述了用于 DDI 预测的适当计算方法,展示了这些方法在药物化学和制药领域的现状和前景。我们回顾了可用于药物研究和医学实践的 DDI 信息来源,以及用于创建计算模型的信息来源。讨论了这些数据的不准确性和冗余性的问题。我们提供了有关基于生理的药代动力学建模(PBPK)方法和基于 DME 的计算方法的最新信息。在配体方法部分,我们描述了用于预测与 DME 抑制或诱导相关的 DDI 的药效基团模型、分子场分析、定量构效关系(QSAR)和相似性分析。在结论中,我们讨论了 DDI 严重程度评估的问题,提到了影响严重程度的因素,并强调了计算方法的问题、观点和实际应用。

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