配体距离是预测 NMDA 受体致病性和功能的关键因素。

IF 3.1 2区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY
Ludovica Montanucci, Tobias Brünger, Nisha Bhattarai, Christian M Boßelmann, Sukhan Kim, James P Allen, Jing Zhang, Chiara Klöckner, Ilona Krey, Piero Fariselli, Patrick May, Johannes R Lemke, Scott J Myers, Hongjie Yuan, Stephen F Traynelis, Dennis Lal
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引用次数: 0

摘要

编码 N-甲基-D-天冬氨酸受体(NMDAR)亚基的基因 GRIN1、GRIN2A、GRIN2B 和 GRIN2D 的基因变异与严重的异质性神经和神经发育疾病有关,包括早发性癫痫、发育性和癫痫性脑病、智力障碍和自闭症谱系障碍。这些基因的错义变异可导致 NMDAR 功能的获得或丧失,从而需要相反的治疗方法。因此,预测错义变异的致病性和分子功能影响的计算方法对于治疗应用至关重要。我们收集了来自患者的 223 个错义变体、来自普通人群的 631 个对照变体,以及 160 个以电生理学读数为特征的错义变体,这些读数可显示它们是否能增强或减弱受体的功能。其中包括首次报告的 33 个变体的新功能数据。通过将这些变体映射到 NMDAR 蛋白结构上,我们发现致病/良性变体和增加/降低通道功能的变体在蛋白结构上分布不均,与激动剂和拮抗剂结合位点的配体的空间距离是变体致病性和分子功能后果的关键预测特征。利用与配体的距离,我们开发出了两种基于机器学习的 NMDA 变异预测器:一种致病性预测器(优于现有预测器)和第一种分子功能(增加/减少)预测器。我们的研究成果可直接应用于患者护理,提高遗传性神经发育障碍的诊断率,并通过分子疾病机理知识指导个性化治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ligand distances as key predictors of pathogenicity and function in NMDA receptors.

Genetic variants in the genes GRIN1, GRIN2A, GRIN2B, and GRIN2D, which encode subunits of the N-methyl-D-aspartate receptor (NMDAR), have been associated with severe and heterogeneous neurologic and neurodevelopmental disorders, including early onset epilepsy, developmental and epileptic encephalopathy, intellectual disability, and autism spectrum disorders. Missense variants in these genes can result in gain or loss of the NMDAR function, requiring opposite therapeutic treatments. Computational methods that predict pathogenicity and molecular functional effects of missense variants are therefore crucial for therapeutic applications. We assembled 223 missense variants from patients, 631 control variants from the general population, and 160 missense variants characterized by electrophysiological readouts that show whether they can enhance or reduce the function of the receptor. This includes new functional data from 33 variants reported here, for the first time. By mapping these variants onto the NMDAR protein structures, we found that pathogenic/benign variants and variants that increase/decrease the channel function were distributed unevenly on the protein structure, with spatial proximity to ligands bound to the agonist and antagonist binding sites being a key predictive feature for both variant pathogenicity and molecular functional consequences. Leveraging distances from ligands, we developed two machine-learning based predictors for NMDA variants: a pathogenicity predictor which outperforms currently available predictors and the first molecular function (increase/decrease) predictor. Our findings can have direct application to patient care by improving diagnostic yield for genetic neurodevelopmental disorders and by guiding personalized treatment informed by the knowledge of the molecular disease mechanism.

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来源期刊
Human molecular genetics
Human molecular genetics 生物-生化与分子生物学
CiteScore
6.90
自引率
2.90%
发文量
294
审稿时长
2-4 weeks
期刊介绍: Human Molecular Genetics concentrates on full-length research papers covering a wide range of topics in all aspects of human molecular genetics. These include: the molecular basis of human genetic disease developmental genetics cancer genetics neurogenetics chromosome and genome structure and function therapy of genetic disease stem cells in human genetic disease and therapy, including the application of iPS cells genome-wide association studies mouse and other models of human diseases functional genomics computational genomics In addition, the journal also publishes research on other model systems for the analysis of genes, especially when there is an obvious relevance to human genetics.
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