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Exploration of the Dynamic Properties of Protein Complexes Predicted from Spatially Constrained Protein-Protein Interaction Networks

机译:从空间受限的蛋白质-蛋白质相互作用网络预测蛋白质复合物的动力学特性的探索

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摘要

Protein complexes are not static, but rather highly dynamic with subunits that undergo 1-dimensional diffusion with respect to each other. Interactions within protein complexes are modulated through regulatory inputs that alter interactions and introduce new components and deplete existing components through exchange. While it is clear that the structure and function of any given protein complex is coupled to its dynamical properties, it remains a challenge to predict the possible conformations that complexes can adopt. Protein-fragment Complementation Assays detect physical interactions between protein pairs constrained to ≤8 nm from each other in living cells. This method has been used to build networks composed of 1000s of pair-wise interactions. Significantly, these networks contain a wealth of dynamic information, as the assay is fully reversible and the proteins are expressed in their natural context. In this study, we describe a method that extracts this valuable information in the form of predicted conformations, allowing the user to explore the conformational landscape, to search for structures that correlate with an activity state, and estimate the abundance of conformations in the living cell. The generator is based on a Markov Chain Monte Carlo simulation that uses the interaction dataset as input and is constrained by the physical resolution of the assay. We applied this method to an 18-member protein complex composed of the seven core proteins of the budding yeast Arp2/3 complex and 11 associated regulators and effector proteins. We generated 20,480 output structures and identified conformational states using principle component analysis. We interrogated the conformation landscape and found evidence of symmetry breaking, a mixture of likely active and inactive conformational states and dynamic exchange of the core protein Arc15 between core and regulatory components. Our method provides a novel tool for prediction and visualization of the hidden dynamics within protein interaction networks.
机译:蛋白质复合物不是静态的,而是具有高度动态性的亚基,这些亚基彼此之间经历一维扩散。蛋白质复合物中的相互作用通过调节输入来调节,该输入改变相互作用并引入新的成分并通过交换消耗现有的成分。很明显,任何给定蛋白质复合物的结构和功能都与其动力学特性有关,但预测复合物可能采用的构象仍然是一个挑战。蛋白质片段互补分析可检测到在活细胞中相互限制为≤8 nm的蛋白质对之间的物理相互作用。此方法已用于构建由数千个成对交互构成的网络。值得注意的是,这些网络包含大量动态信息,因为该测定是完全可逆的,并且蛋白质在其自然环境中表达。在这项研究中,我们描述了一种以预测构象的形式提取此有价值的信息的方法,该方法使用户能够探索构象景观,搜索与活动状态相关的结构,并估计活细胞中构象的丰度。生成器基于马尔可夫链蒙特卡洛模拟,该模拟使用交互数据集作为输入,并受化验的物理分辨率限制。我们将此方法应用于18个成员的蛋白质复合物,该蛋白质复合物由发芽酵母Arp2 / 3复合物的七个核心蛋白以及11个相关的调节剂和效应蛋白组成。我们生成了20,480个输出结构,并使用主成分分析确定了构象状态。我们审视了构象态势,发现了对称性破坏,可能的活跃和不活跃构象状态以及核心蛋白和调节成分之间核心蛋白Arc15的动态交换的混合物。我们的方法为蛋白质相互作用网络中隐藏动态的预测和可视化提供了一种新颖的工具。

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