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A Label-free Mass Spectrometry Method to Predict Endogenous Protein Complex Composition

机译:一种无标签质谱法预测内源蛋白复合物组合物

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摘要

At least one third of soluble proteins are predicted to exist in a stable oligomeric state. However, the compositions of the vast majority are unknown. This paper describes a biochemical method to predict protein complex composition based on orthogonal chromatographic separations and label-free protein correlation profiling. The validated method predicts hundreds of novel homo- and heterooligomeric complexes, and provides a new way to analyze protein complexes in any organism with a well-annotated proteome. Information on the composition of protein complexes can accelerate mechanistic analyses of cellular systems. Protein complex composition identifies genes that function together and provides clues about regulation within and between cellular pathways. Cytosolic protein complexes control metabolic flux, signal transduction, protein abundance, and the activities of cytoskeletal and endomembrane systems. It has been estimated that one third of all cytosolic proteins in leaves exist in an oligomeric state, yet the composition of nearly all remain unknown. Subunits of stable protein complexes copurify, and combinations of mass-spectrometry-based protein correlation profiling and bioinformatic analyses have been used to predict protein complex subunits. Because of uncertainty regarding the power or availability of bioinformatic data to inform protein complex predictions across diverse species, it would be highly advantageous to predict composition based on elution profile data alone. Here we describe a mass spectrometry-based protein correlation profiling approach to predict the composition of hundreds of protein complexes based on biochemical data. Extracts were obtained from an intact organ and separated in parallel by size and charge under nondenaturing conditions. More than 1000 proteins with reproducible elution profiles across all replicates were subjected to clustering analyses. The resulting dendrograms were used to predict the composition of known and novel protein complexes, including many that are likely to assemble through self-interaction. An array of validation experiments demonstrated that this new method can drive protein complex discovery, guide hypothesis testing, and enable systems-level analyses of protein complex dynamics in any organism with a sequenced genome.
机译:预测至少三分之一的可溶性蛋白质以稳定的低聚状态存在。然而,绝大多数的组成是未知的。本文描述了一种生化方法,其基于正交色谱分离和无标记蛋白质相关性分析预测蛋白质复合物组合物。验证的方法预测了数百种新型的同源和助剂,并提供了一种用良好注释的蛋白质组分析任何生物体中蛋白质复合物的新方法。有关蛋白质复合物组成的信息可以加速细胞系统的机械分析。蛋白质复合物组合物鉴定在一起起作用的基因,并在细胞途径内和之间提供关于调节的线索。细胞溶质蛋白复合物控制代谢通量,信号转导,蛋白质丰度以及细胞骨骼和内膜系统的活性。据估计,叶中的三分之一的含有胞质蛋白质存在于低聚状态,但几乎所有仍然未知的组成。稳定蛋白质复合物的亚基共用,以及基于质谱的蛋白质相关性分析和生物信息分析的组合已被用于预测蛋白质复合亚基。由于关于生物信息数据的能力或可用性来告知各种物种的蛋白质复杂预测的不确定性,因此基于单独的洗脱谱数据预测组成是非常有利的。在这里,我们描述了一种基于质谱的蛋白质相关性分析方法,以预测基于生物化学数据的数百种蛋白质复合物的组成。从完整器官获得提取物,并在不明确条件下平行分离。在所有复制中具有可再现的洗脱曲线的超过1000个蛋白质进行聚类分析。所得到的树状图用于预测已知和新的蛋白质复合物的组成,包括许多可能通过自相互作用组装的许多。一系列验证实验表明,这种新方法可以驱动蛋白质复杂发现,指导假设检测,并使任何有机体中的蛋白质复合动力学的系统级分析能够进行测序的基因组。

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