Integrated multi-omic characterizations of the synapse reveal RNA processing factors and ubiquitin ligases associated with neurodevelopmental disorders.

IF 7.7 Cell systems Pub Date : 2025-04-16 Epub Date: 2025-03-06 DOI:10.1016/j.cels.2025.101204
Yuan Mei, Maya L Gosztyla, Xinzhu Tan, Lara E Dozier, Brent Wilkinson, Justin McKetney, John Lee, Michael Chen, Dorothy Tsai, Hema Kopalle, Marina A Gritsenko, Nicolas Hartel, Nicholas A Graham, Ilse Flores, Stephen K Gilmore-Hall, Shuhao Xu, Charlotte A Marquez, Sophie N Liu, Dylan Fong, Jing Chen, Kate Licon, Derek Hong, Sarah N Wright, Jason F Kreisberg, Alexi Nott, Richard D Smith, Wei-Jun Qian, Danielle L Swaney, Lilia M Iakoucheva, Nevan J Krogan, Gentry N Patrick, Yang Zhou, Guoping Feng, Marcelo P Coba, Gene W Yeo, Trey Ideker
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Abstract

The molecular composition of the excitatory synapse is incompletely defined due to its dynamic nature across developmental stages and neuronal populations. To address this gap, we apply proteomic mass spectrometry to characterize the synapse in multiple biological models, including the fetal human brain and human induced pluripotent stem cell (hiPSC)-derived neurons. To prioritize the identified proteins, we develop an orthogonal multi-omic screen of genomic, transcriptomic, interactomic, and structural data. This data-driven framework identifies proteins with key molecular features intrinsic to the synapse, including characteristic patterns of biophysical interactions and cross-tissue expression. The multi-omic analysis captures synaptic proteins across developmental stages and experimental systems, including 493 synaptic candidates supported by proteomics. We further investigate three such proteins that are associated with neurodevelopmental disorders-Cullin 3 (CUL3), DEAD-box helicase 3 X-linked (DDX3X), and Y-box binding protein-1 (YBX1)-by mapping their networks of physically interacting synapse proteins or transcripts. Our study demonstrates the potential of an integrated multi-omic approach to more comprehensively resolve the synaptic architecture.

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突触的综合多组学特征揭示了与神经发育障碍相关的RNA加工因子和泛素连接酶。
兴奋性突触的分子组成由于其在发育阶段和神经元群体中的动态性质而不完全确定。为了解决这一差距,我们应用蛋白质组质谱法来表征多种生物模型中的突触,包括胎儿人脑和人类诱导多能干细胞(hiPSC)衍生的神经元。为了确定确定的蛋白质的优先级,我们开发了基因组、转录组、相互作用组和结构数据的正交多组筛选。这个数据驱动的框架识别具有突触固有的关键分子特征的蛋白质,包括生物物理相互作用和跨组织表达的特征模式。多组学分析捕获了发育阶段和实验系统中的突触蛋白,包括蛋白质组学支持的493个突触候选蛋白。我们进一步研究了三种与神经发育障碍相关的蛋白质——cullin 3 (CUL3)、DEAD-box解旋酶3x -linked (DDX3X)和Y-box binding protein-1 (YBX1)——通过绘制它们的物理相互作用突触蛋白或转录物网络。我们的研究展示了综合多组学方法更全面地解决突触结构的潜力。
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