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Protein dynamic communities from elastic network models align closely to the communities defined by molecular dynamics

机译:弹性网络模型中的蛋白质动态群落与分子动力学定义的群落紧密匹配

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摘要

Dynamic communities in proteins comprise the cohesive structural units that individually exhibit rigid body motions. These can correspond to structural domains, but are usually smaller parts that move with respect to one another in a protein’s internal motions, key to its functional dynamics. Previous studies emphasized their importance to understand the nature of ligand-induced allosteric regulation. These studies reported that mutations to key community residues can hinder transmission of allosteric signals among the communities. Usually molecular dynamic (MD) simulations (~ 100 ns or longer) have been used to identify the communities—a demanding task for larger proteins. In the present study, we propose that dynamic communities obtained from MD simulations can also be obtained alternatively with simpler models–the elastic network models (ENMs). To verify this premise, we compare the specific communities obtained from MD and ENMs for 44 proteins. We evaluate the correspondence in communities from the two methods and compute the extent of agreement in the dynamic cross-correlation data used for community detection. Our study reveals a strong correspondence between the communities from MD and ENM and also good agreement for the residue cross-correlations. Importantly, we observe that the dynamic communities from MD can be closely reproduced with ENMs. With ENMs, we also compare the community structures of stable and unstable mutant forms of T4 Lysozyme with its wild-type. We find that communities for unstable mutants show substantially poorer agreement with the wild-type communities than do stable mutants, suggesting such ENM-based community structures can serve as a means to rapidly identify deleterious mutants.
机译:蛋白质中的动态群落包括各自表现出刚体运动的内聚结构单元。它们可以对应于结构域,但通常是较小的部分,它们在蛋白质的内部运动中彼此相对移动,这是其功能动力学的关键。先前的研究强调它们对于了解配体诱导的变构调节性质的重要性。这些研究报告说,关键社区残基的突变会阻碍别构信号在社区之间的传递。通常使用分子动力学(MD)模拟(约100 ns或更长时间)来识别群落,这是较大蛋白的一项艰巨任务。在本研究中,我们建议还可以通过更简单的模型-弹性网络模型(ENM)来获得从MD模拟获得的动态社区。为了验证这一前提,我们比较了从MD和ENM获得的44种蛋白质的特定群落。我们通过两种方法评估社区中的对应关系,并计算用于社区检测的动态互相关数据中的一致性程度。我们的研究揭示了MD和ENM社区之间的强烈对应关系,并且对于残留物互相关性也达成了一致。重要的是,我们观察到MD的动态社区可以与ENM紧密复制。使用ENM,我们还比较了T4溶菌酶的稳定和不稳定突变体形式及其野生型的群落结构。我们发现,不稳定突变体的群落与稳定突变体相比,与野生型群落的一致性明显较差,这表明基于ENM的群落结构可作为快速鉴定有害突变体的手段。

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