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Molecular Machines in the Synapse: Overlapping Protein Sets Control Distinct Steps in Neurosecretion

机译:突触中的分子机器:重叠的蛋白质组控制神经分泌中不同的步骤。

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Activity regulated neurotransmission shapes the computational properties of a neuron and involves the concerted action of many proteins. Classical, intuitive working models often assign specific proteins to specific steps in such complex cellular processes, whereas modern systems theories emphasize more integrated functions of proteins. To test how often synaptic proteins participate in multiple steps in neurotransmission we present a novel probabilistic method to analyze complex functional data from genetic perturbation studies on neuronal secretion. Our method uses a mixture of probabilistic principal component analyzers to cluster genetic perturbations on two distinct steps in synaptic secretion, vesicle priming and fusion, and accounts for the poor standardization between different studies. Clustering data from 121 perturbations revealed that different perturbations of a given protein are often assigned to different steps in the release process. Furthermore, vesicle priming and fusion are inversely correlated for most of those perturbations where a specific protein domain was mutated to create a gain-of-function variant. Finally, two different modes of vesicle release, spontaneous and action potential evoked release, were affected similarly by most perturbations. This data suggests that the presynaptic protein network has evolved as a highly integrated supramolecular machine, which is responsible for both spontaneous and activity induced release, with a group of core proteins using different domains to act on multiple steps in the release process.
机译:调节活动的神经传递影响神经元的计算特性,并涉及许多蛋白质的协同作用。经典,直观的工作模型通常将特定的蛋白质分配给这种复杂的细胞过程中的特定步骤,而现代系统理论则强调蛋白质的更多集成功能。为了测试突触蛋白多长时间参与神经传递的多个步骤,我们提出了一种新的概率方法,用于分析来自神经元分泌的遗传扰动研究中的复杂功能数据。我们的方法使用混合的概率主成分分析器将遗传扰动聚集在突触分泌,囊泡引发和融合的两个不同步骤上,并解释了不同研究之间标准化的欠佳。来自121个扰动的聚类数据显示,给定蛋白质的不同扰动通常分配给释放过程中的不同步骤。此外,对于大多数扰动,囊泡的启动和融合成反比,在这些扰动中,特定的蛋白质结构域发生突变,从而产生了功能增益变体。最后,大多数扰动对囊泡的两种不同释放方式,即自发释放和动作电位诱发释放都有相似的影响。该数据表明突触前蛋白网络已经发展成为高度集成的超分子机器,该机器负责自发和活性诱导的释放,一组核心蛋白使用不同的域在释放过程中作用于多个步骤。

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