Deep learning structural insights into heterotrimeric alternatively spliced P2X7 receptors.

IF 3 4区 医学 Q2 NEUROSCIENCES
Purinergic Signalling Pub Date : 2024-08-01 Epub Date: 2023-11-30 DOI:10.1007/s11302-023-09978-3
Sophie K F De Salis, Jake Zheng Chen, Kristen K Skarratt, Stephen J Fuller, Thomas Balle
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引用次数: 0

Abstract

P2X7 receptors (P2X7Rs) are membrane-bound ATP-gated ion channels that are composed of three subunits. Different subunit structures may be expressed due to alternative splicing of the P2RX7 gene, altering the receptor's function when combined with the wild-type P2X7A subunits. In this study, the application of the deep-learning method, AlphaFold2-Multimer (AF2M), for the generation of trimeric P2X7Rs was validated by comparing an AF2M-generated rat wild-type P2X7A receptor with a structure determined by cryogenic electron microscopy (cryo-EM) (Protein Data Bank Identification: 6U9V). The results suggested AF2M could firstly, accurately predict the structures of P2X7Rs and secondly, accurately identify the highest quality model through the ranking system. Subsequently, AF2M was used to generate models of heterotrimeric alternatively spliced P2X7Rs consisting of one or two wild-type P2X7A subunits in combination with one or two P2X7B, P2X7E, P2X7J, and P2X7L splice variant subunits. The top-ranking models were deemed valid based on AF2M's confidence measures, stability in molecular dynamics simulations, and consistent flexibility of the conserved regions between the models. The structure of the heterotrimeric receptors, which were missing key residues in the ATP binding sites and carboxyl terminal domains (CTDs) compared to the wild-type receptor, help to explain their observed functions. Overall, the models produced in this study (available as supplementary material) unlock the possibility of structure-based studies into the heterotrimeric P2X7Rs.

Abstract Image

异三聚体选择性剪接P2X7受体的深度学习结构洞察。
P2X7受体(P2X7Rs)是由三个亚基组成的膜结合atp门控离子通道。由于P2RX7基因的选择性剪接,不同的亚基结构可能会表达,当与野生型P2X7A亚基结合时,受体的功能会发生改变。在本研究中,通过比较AF2M生成的大鼠野生型P2X7A受体与低温电子显微镜(cryo-EM)确定的结构(Protein Data Bank Identification: 6U9V),验证了深度学习方法AlphaFold2-Multimer (AF2M)在三聚体P2X7Rs生成中的应用。结果表明,AF2M可以准确预测P2X7Rs的结构,其次,通过排序系统准确识别出质量最高的模型。随后,利用AF2M生成由一个或两个野生型P2X7A亚基与一个或两个P2X7B、P2X7E、P2X7J和P2X7L剪接变体亚基组合而成的异源三聚体选择性剪接P2X7Rs模型。根据AF2M的置信度、分子动力学模拟的稳定性以及模型之间保守区域的一致灵活性,认为排名靠前的模型是有效的。与野生型受体相比,异三聚体受体在ATP结合位点和羧基末端结构域(CTDs)中缺少关键残基,其结构有助于解释其观察到的功能。总的来说,本研究中产生的模型(可作为补充材料)开启了对异三聚体P2X7Rs进行基于结构研究的可能性。
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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