Toussi Cyrus Ahmadi, Soheilifard Reza
Department of Mechanical Engineering, Hakim Sabzevari University, Sabzevar, Iran.
Phys Biol. 2017 Jan 23;13(6):066013. doi: 10.1088/1478-3975/13/6/066013.
Elastic network models have recently been used for studying low-frequency collective motions of proteins. These models simplify the complexity that arises from normal mode analysis by considering a simplified potential involving a few parameters. Two common parameters in most of the elastic network models are cutoff radius and force constant. Although the latter has been studied extensively and even elaborate new models were introduced, for the former usually an ad-hoc cutoff radius is considered. Moreover, the quality of the network models is usually assessed by evaluating their prediction against experimental B-factors. In this work, we consider various common elastic network models with different cutoff radii and assess them by their ability to predict conformational changes of proteins in complexes from unbound to bound state. This prediction is performed by perturbing the unbound structure using a number of low-frequency normal modes of its network model to optimally fit the bound structure. We evaluated a dataset of 30 proteins with distinct unbound and bound structures using this criterion. The results showed that, opposed to the common calibration process based on B-factors, a meaningful relationship exists between the quality of the prediction and model parameters. It was shown that the cutoff radius has a major role in this prediction and minimally connected network models, which use the shortest cutoff radius for which the network is stable, give the best results. It was also shown that by considering the first ten normal modes, the conformational changes can be predicted by about 25 percent. Hence, the evaluation process was extended to the case of considering the contribution of all normal modes in the prediction. The results indicated that minimally connected network models are superior, despite their simplicity, when any number of modes are considered in the prediction.
弹性网络模型最近被用于研究蛋白质的低频集体运动。这些模型通过考虑一个包含几个参数的简化势来简化正常模式分析中出现的复杂性。大多数弹性网络模型中的两个常见参数是截止半径和力常数。尽管后者已经得到了广泛研究,甚至还引入了精心设计的新模型,但对于前者,通常考虑的是一个临时的截止半径。此外,网络模型的质量通常通过根据实验B因子评估其预测来进行评估。在这项工作中,我们考虑了具有不同截止半径的各种常见弹性网络模型,并通过它们预测蛋白质复合物从游离态到结合态构象变化的能力来评估它们。这种预测是通过使用其网络模型的一些低频正常模式扰动游离结构以最佳拟合结合结构来进行的。我们使用这个标准评估了一个包含30种具有不同游离态和结合态结构的蛋白质的数据集。结果表明,与基于B因子的常见校准过程相反,预测质量与模型参数之间存在有意义的关系。结果表明,截止半径在这种预测中起主要作用,而最小连接网络模型使用网络稳定的最短截止半径,给出了最好的结果。还表明,通过考虑前十个正常模式,可以预测约25%的构象变化。因此,评估过程扩展到了考虑所有正常模式在预测中的贡献的情况。结果表明,最小连接网络模型尽管简单,但在预测中考虑任何数量的模式时都具有优势。