Machine learning-aided search for ligands of P2Y6 and other P2Y receptors.

IF 3 4区 医学 Q2 NEUROSCIENCES
Purinergic Signalling Pub Date : 2024-12-01 Epub Date: 2024-03-25 DOI:10.1007/s11302-024-10003-4
Ana C Puhl, Sarah A Lewicki, Zhan-Guo Gao, Asmita Pramanik, Vadim Makarov, Sean Ekins, Kenneth A Jacobson
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引用次数: 0

Abstract

The P2Y6 receptor, activated by uridine diphosphate (UDP), is a target for antagonists in inflammatory, neurodegenerative, and metabolic disorders, yet few potent and selective antagonists are known to date. This prompted us to use machine learning as a novel approach to aid ligand discovery, with pharmacological evaluation at three P2YR subtypes: initially P2Y6 and subsequently P2Y1 and P2Y14. Relying on extensive published data for P2Y6R agonists, we generated and validated an array of classification machine learning model using the algorithms deep learning (DL), adaboost classifier (ada), Bernoulli NB (bnb), k-nearest neighbors (kNN) classifier, logistic regression (lreg), random forest classifier (rf), support vector classification (SVC), and XGBoost (XGB) classifier models, and the common consensus was applied to molecular selection of 21 diverse structures. Compounds were screened using human P2Y6R-induced functional calcium transients in transfected 1321N1 astrocytoma cells and fluorescent binding inhibition at closely related hP2Y14R expressed in CHO cells. The hit compound ABBV-744, an experimental anticancer drug with a 6-methyl-7-oxo-6,7-dihydro-1H-pyrrolo[2,3-c]pyridine scaffold, had multifaceted interactions with the P2YR family: hP2Y6R inhibition in a non-surmountable fashion, suggesting that noncompetitive antagonism, and hP2Y1R enhancement, but not hP2Y14R binding inhibition. Other machine learning-selected compounds were either weak (experimental anti-asthmatic drug AZD5423 with a phenyl-1H-indazole scaffold) or inactive in inhibiting the hP2Y6R. Experimental drugs TAK-593 and GSK1070916 (100 µM) inhibited P2Y14R fluorescent binding by 50% and 38%, respectively, and all other compounds by < 20%. Thus, machine learning has led the way toward revealing previously unknown modulators of several P2YR subtypes that have varied effects.

Abstract Image

机器学习辅助搜索 P2Y6 和其他 P2Y 受体的配体。
P2Y6 受体由二磷酸尿苷(UDP)激活,是炎症、神经退行性疾病和代谢性疾病的拮抗剂靶点,但目前已知的强效选择性拮抗剂很少。这促使我们使用机器学习这种新方法来帮助发现配体,并对三种 P2YR 亚型进行药理学评估:最初是 P2Y6,随后是 P2Y1 和 P2Y14。根据已发表的 P2Y6R 激动剂的大量数据,我们使用深度学习 (DL)、adaboost 分类器 (ada)、Bernoulli NB (bnb)、k-近邻 (kNN) 分类器、逻辑回归 (lreg)、随机森林分类器 (rf)、支持向量分类器 (SVC) 和 XGBoost (XGB) 分类器模型等算法生成并验证了一系列分类机器学习模型,并将共识应用于 21 种不同结构的分子筛选。利用转染 1321N1 星形细胞瘤细胞中人 P2Y6R 诱导的功能性钙离子瞬态和在 CHO 细胞中表达的密切相关的 hP2Y14R 的荧光结合抑制作用筛选化合物。命中化合物ABBV-744是一种具有6-甲基-7-氧代-6,7-二氢-1H-吡咯并[2,3-c]吡啶支架的实验性抗癌药物,它与P2YR家族具有多方面的相互作用:以不可逾越的方式抑制hP2Y6R,表明其具有非竞争性拮抗作用;增强hP2Y1R,但不抑制hP2Y14R的结合。其他机器学习筛选出的化合物对 hP2Y6R 的抑制要么很弱(具有苯基-1H-吲唑支架的实验性抗哮喘药物 AZD5423),要么没有活性。实验药物 TAK-593 和 GSK1070916(100 µM)对 P2Y14R 荧光结合的抑制率分别为 50%和 38%,而所有其他化合物对 P2Y14R 荧光结合的抑制率均为 40%。
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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来源期刊
Purinergic Signalling
Purinergic Signalling 医学-神经科学
CiteScore
6.60
自引率
17.10%
发文量
75
审稿时长
6-12 weeks
期刊介绍: Nucleotides and nucleosides are primitive biological molecules that were utilized early in evolution both as intracellular energy sources and as extracellular signalling molecules. ATP was first identified as a neurotransmitter and later as a co-transmitter with all the established neurotransmitters in both peripheral and central nervous systems. Four subtypes of P1 (adenosine) receptors, 7 subtypes of P2X ion channel receptors and 8 subtypes of P2Y G protein-coupled receptors have currently been identified. Since P2 receptors were first cloned in the early 1990’s, there is clear evidence for the widespread distribution of both P1 and P2 receptor subtypes in neuronal and non-neuronal cells, including glial, immune, bone, muscle, endothelial, epithelial and endocrine cells.
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