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偏向性配体药物发现中的挑战与机遇。

Challenges and Opportunities in Drug Discovery of Biased Ligands.

作者信息

Rodríguez-Espigares Ismael, Kaczor Agnieszka A, Stepniewski Tomasz Maciej, Selent Jana

机构信息

Department of Experimental and Health Sciences, Research Programme on Biomedical Informatics (GRIB), Hospital del Mar Medical Research Institute (IMIM), Pompeu Fabra University (UPF), Dr. Aiguader 88, E-08003, Barcelona, Spain.

Department of Synthesis and Chemical Technology of Pharmaceutical Substances with Computer Modelling Lab, Faculty of Pharmacy with Division of Medical Analytics, Medical University of Lublin, 4A Chodzki St., PL-20093, Lublin, Poland.

出版信息

Methods Mol Biol. 2018;1705:321-334. doi: 10.1007/978-1-4939-7465-8_14.

Abstract

The observation of biased agonism in G protein-coupled receptors (GPCRs) has provided new approaches for the development of more efficacious and safer drugs. However, in order to rationally design biased drugs, one must understand the molecular basis of this phenomenon. Computational approaches can help in exploring the conformational universe of GPCRs and detecting conformational states with relevance for distinct functional outcomes. This information is extremely valuable for the development of new therapeutic agents that promote desired conformational receptor states and responses while avoiding the ones leading to undesired side-effects.This book chapter intends to introduce the reader to powerful computational approaches for sampling the conformational space of these receptors, focusing first on molecular dynamics and the analysis of the produced data through methods such as dimensionality reduction, Markov State Models and adaptive sampling. Then, we show how to seek for compounds that target distinct conformational states via docking and virtual screening. In addition, we describe how to detect receptor-ligand interactions that drive signaling bias and comment current challenges and opportunities of presented methods.

摘要

对G蛋白偶联受体(GPCRs)中偏向激动作用的观察为开发更有效、更安全的药物提供了新方法。然而,为了合理设计偏向性药物,必须了解这一现象的分子基础。计算方法有助于探索GPCRs的构象空间,并检测与不同功能结果相关的构象状态。这些信息对于开发新的治疗药物极为有价值,这些药物可促进所需的受体构象状态和反应,同时避免导致不良副作用的构象状态。本章旨在向读者介绍用于对这些受体的构象空间进行采样的强大计算方法,首先关注分子动力学以及通过降维、马尔可夫状态模型和自适应采样等方法对产生的数据进行分析。然后,我们展示如何通过对接和虚拟筛选寻找靶向不同构象状态的化合物。此外,我们描述如何检测驱动信号偏向的受体-配体相互作用,并评论所介绍方法当前面临的挑战和机遇。

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