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Protein unfolding behavior studied by elastic network model.

机译:通过弹性网络模型研究蛋白质的展开行为。

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Experimental and theoretical studies have showed that the native-state topology conceals a wealth of information about protein folding/unfolding. In this study, a method based on the Gaussian network model (GNM) is developed to study some properties of protein unfolding and explore the role of topology in protein unfolding process. The GNM has been successful in predicting atomic fluctuations around an energy minimum. However, in the GNM, the normal mode description is linear and cannot be accurate in studying protein folding/unfolding, which has many local minima in the energy landscape. To describe the nonlinearity of the conformational changes during protein unfolding, a method based on the iterative use of normal mode calculation is proposed. The protein unfolding process is mimicked through breaking the native contacts between the residues one by one according to the fluctuations of the distance between them. With this approach, the unfolding processes of two proteins, CI2 and barnase, are simulated. It is found that the sequence of protein unfolding events revealed by this method is consistent with that obtained from thermal unfolding by molecular dynamics and Monte Carlo simulations. The results indicate that this method is effective in studying protein unfolding. In this method, only the native contacts are considered, which implies that the native topology may play an important role in the protein unfolding process. The simulation results also show that the unfolding pathway is robust against the introduction of some noise, or stochastic characters. Furthermore, several conformations selected from the unfolding process are studied to show that the denatured state does not behave as a random coil, but seems to have highly cooperative motions, which may help and promote the polypeptide chain to fold into the native state correctly and speedily.
机译:实验和理论研究表明,本机拓扑隐藏了有关蛋白质折叠/展开的大量信息。在这项研究中,开发了一种基于高斯网络模型(GNM)的方法来研究蛋白质展开的某些特性,并探讨拓扑在蛋白质展开过程中的作用。 GNM已成功预测了最小能量附近的原子波动。但是,在GNM中,正常模式描述是线性的,在研究蛋白质折叠/展开时不能准确,因为蛋白质折叠/展开在能量方面具有许多局部最小值。为了描述蛋白质展开过程中构象变化的非线性,提出了一种基于迭代使用正态模态计算的方法。通过根据残基之间的距离的波动一一破坏残基之间的天然接触,来模拟蛋白质的展开过程。使用这种方法,可以模拟两种蛋白质(CI2和Barnase)的展开过程。发现通过该方法揭示的蛋白质展开事件的序列与通过分子动力学和蒙特卡洛模拟从热展开获得的序列一致。结果表明该方法对研究蛋白质的展开是有效的。在这种方法中,仅考虑天然接触,这意味着天然拓扑可能在蛋白质展开过程中起重要作用。仿真结果还表明,展开路径对于引入一些噪声或随机特征是鲁棒的。此外,研究了从展开过程中选择的几种构象,以表明变性状态并不表现为无规卷曲,但似乎具有高度协作的运动,这可能有助于促进多肽链正确快速地折叠成天然状态。 。

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