Yang Lei, Song Guang, Jernigan Robert L
Bioinformatics and Computational Biology Program, Department of Biochemistry, Biophysics and Molecular Biology, L. H. Baker Center for Bioinformatics and Biological Statistics, Iowa State University, Ames, IA 50011, USA.
Proc Natl Acad Sci U S A. 2009 Jul 28;106(30):12347-52. doi: 10.1073/pnas.0902159106. Epub 2009 Jul 14.
Elastic network models (ENMs) are entropic models that have demonstrated in many previous studies their abilities to capture overall the important internal motions, with comparisons having been made against crystallographic B-factors and NMR conformational variabilities. ENMs have become an increasingly important tool and have been widely used to comprehend protein dynamics, function, and even conformational changes. However, reliance upon an arbitrary cutoff distance to delimit the range of interactions has presented a drawback for these models, because the optimal cutoff values can differ somewhat from protein to protein and can lead to quirks such as some shuffling in the order of the normal modes when applied to structures that differ only slightly. Here, we have replaced the requirement for a cutoff distance and introduced the more physical concept of inverse power dependence for the interactions, with a set of elastic network models that are parameter-free, with the distance cutoff removed. For small fluctuations about the native forms, the power dependence is the inverse square, but for larger deformations, the power dependence may become inverse 6th or 7th power. These models maintain and enhance the simplicity and generality of the original ENMs, and at the same time yield better predictions of crystallographic B-factors (both isotropic and anisotropic) and of the directions of conformational transitions. Thus, these parameter-free ENMs can be models of choice whenever elastic network models are used.
弹性网络模型(ENMs)是一种熵模型,在许多先前的研究中已证明其能够整体捕捉重要的内部运动,并与晶体学B因子和核磁共振构象变异性进行了比较。ENMs已成为一种越来越重要的工具,并被广泛用于理解蛋白质动力学、功能甚至构象变化。然而,依赖任意截止距离来界定相互作用范围给这些模型带来了一个缺点,因为最佳截止值在不同蛋白质之间可能会有所不同,并且当应用于仅略有差异的结构时,可能会导致一些怪癖,例如正常模式顺序的一些混乱。在这里,我们取代了对截止距离的要求,并引入了更具物理意义的相互作用逆幂依赖概念,提出了一组无参数的弹性网络模型,去除了距离截止。对于围绕天然形式的小波动,幂依赖是平方反比,但对于较大变形,幂依赖可能变为六次或七次反比。这些模型保持并增强了原始ENMs的简单性和通用性,同时对晶体学B因子(各向同性和各向异性)以及构象转变方向产生更好的预测。因此,每当使用弹性网络模型时,这些无参数的ENMs都可以成为首选模型。