Kondrashov Dmitry A, Cui Qiang, Phillips George N
Department of Biochemistry, University of Wisconsin-Madison, Madison, Wisconsin, USA.
Biophys J. 2006 Oct 15;91(8):2760-7. doi: 10.1529/biophysj.106.085894. Epub 2006 Aug 4.
Simple coarse-grained models, such as the Gaussian network model, have been shown to capture some of the features of equilibrium protein dynamics. We extend this model by using atomic contacts to define residue interactions and introducing more than one interaction parameter between residues. We use B-factors from 98 ultra-high resolution (<or=1.0 A) x-ray crystal structures to optimize the interaction parameters. The average correlation between Gaussian network-model fluctuation predictions and the B-factors is 0.64 for the data set, consistent with a previous large-scale study. By separating residue interactions into covalent and noncovalent, we achieve an average correlation of 0.74, and addition of ligands and cofactors further improves the correlation to 0.75. However, further separating the noncovalent interactions into nonpolar, polar, and mixed yields no significant improvement. The addition of simple chemical information results in better prediction quality without increasing the size of the coarse-grained model.
简单的粗粒度模型,如高斯网络模型,已被证明能够捕捉平衡蛋白质动力学的一些特征。我们通过使用原子接触来定义残基相互作用,并在残基之间引入多个相互作用参数来扩展该模型。我们使用来自98个超高分辨率(≤1.0 Å)X射线晶体结构的B因子来优化相互作用参数。对于该数据集,高斯网络模型波动预测与B因子之间的平均相关性为0.64,这与之前的大规模研究一致。通过将残基相互作用分为共价和非共价相互作用,我们实现了平均相关性为0.74,添加配体和辅因子进一步将相关性提高到0.75。然而,将非共价相互作用进一步分为非极性、极性和混合相互作用并没有显著改善。添加简单的化学信息在不增加粗粒度模型大小的情况下提高了预测质量。