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通过筛选多靶点配体寻找候选治疗药物:将CB2受体与CB1、PPARγ和5-HT4受体相结合

Candidate Therapeutics by Screening for Multitargeting Ligands: Combining the CB2 Receptor With CB1, PPARγ and 5-HT4 Receptors.

作者信息

El-Atawneh Shayma, Goldblum Amiram

机构信息

Molecular Modelling and Drug Design Lab, Institute for Drug Research and Fraunhofer Project Center for Drug Discovery and Delivery, Faculty of Medicine, The Hebrew University of Jerusalem, Jerusalem, Israel.

出版信息

Front Pharmacol. 2022 Feb 28;13:812745. doi: 10.3389/fphar.2022.812745. eCollection 2022.

Abstract

In recent years, the cannabinoid type 2 receptor (CB2R) has become a major target for treating many disease conditions. The old therapeutic paradigm of "one disease-one target-one drug" is being transformed to "complex disease-many targets-one drug." Multitargeting, therefore, attracts much attention as a promising approach. We thus focus on designing single multitargeting agents (MTAs), which have many advantages over combined therapies. Using our ligand-based approach, the "Iterative Stochastic Elimination" (ISE) algorithm, we produce activity models of agonists and antagonists for desired therapeutic targets and anti-targets. These models are used for sequential virtual screening and scoring large libraries of molecules in order to pick top-scored candidates for testing and . In this study, we built activity models for CB2R and other targets for combinations that could be used for several indications. Those additional targets are the cannabinoid 1 receptor (CB1R), peroxisome proliferator-activated receptor gamma (PPARγ), and 5-Hydroxytryptamine receptor 4 (5-HT4R). All these models have high statistical parameters and are reliable. Many more CB2R/CBIR agonists were found than combined CB2R agonists with CB1R antagonist activity (by 200 fold). CB2R agonism combined with PPARγ or 5-HT4R agonist activity may be used for treating Inflammatory Bowel Disease (IBD). Combining CB2R agonism with 5-HT4R generates more candidates (14,008) than combining CB2R agonism with agonists for the nuclear receptor PPARγ (374 candidates) from an initial set of ∼2.1 million molecules. Improved enrichment of true vs. false positives may be achieved by requiring a better ISE score cutoff or by performing docking. Those candidates can be purchased and tested experimentally to validate their activity. Further, we performed docking to CB2R structures and found lower statistical performance of the docking ("structure-based") compared to ISE modeling ("ligand-based"). Therefore, ISE modeling may be a better starting point for molecular discovery than docking.

摘要

近年来,2型大麻素受体(CB2R)已成为治疗多种疾病的主要靶点。“一种疾病-一个靶点-一种药物”的传统治疗模式正在转变为“复杂疾病-多个靶点-一种药物”。因此,多靶点药物作为一种有前景的方法备受关注。我们专注于设计单一的多靶点药物(MTAs),其相较于联合疗法具有诸多优势。利用基于配体的方法,即“迭代随机消除”(ISE)算法,我们生成了针对所需治疗靶点和反靶点的激动剂和拮抗剂活性模型。这些模型用于对大量分子库进行顺序虚拟筛选和评分,以便挑选得分最高的候选物进行测试。在本研究中,我们构建了CB2R以及其他可用于多种适应症组合的靶点的活性模型。那些额外的靶点是1型大麻素受体(CB1R)、过氧化物酶体增殖物激活受体γ(PPARγ)和5-羟色胺受体4(5-HT4R)。所有这些模型都具有较高的统计参数且可靠。发现的CB2R/CB1R激动剂比具有CB1R拮抗剂活性的CB2R激动剂组合多(200倍)。CB2R激动作用与PPARγ或5-HT4R激动剂活性相结合可用于治疗炎症性肠病(IBD)。从约210万个分子的初始集合中,将CB2R激动作用与5-HT4R相结合产生的候选物(14008个)比将CB2R激动作用与核受体PPARγ的激动剂相结合(374个候选物)更多。通过要求更好的ISE评分阈值或进行对接,可以实现真假阳性的更好富集。那些候选物可以购买并进行实验测试以验证其活性。此外,我们对CB2R结构进行了对接,发现与ISE建模(“基于配体”)相比,对接(“基于结构”)的统计性能较低。因此,ISE建模可能是比对接更好的分子发现起点。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/65e6/8918518/342bfde1aeaa/fphar-13-812745-g001.jpg

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