Gaillard Thomas, Panel Nicolas, Simonson Thomas
Department of Biology, Laboratoire de Biochimie (CNRS UMR7654), Ecole Polytechnique, Palaiseau, 91128, France.
Proteins. 2016 Jun;84(6):803-19. doi: 10.1002/prot.25030. Epub 2016 Apr 6.
The prediction of protein side chain conformations from backbone coordinates is an important task in structural biology, with applications in structure prediction and protein design. It is a difficult problem due to its combinatorial nature. We study the performance of an "MMGBSA" energy function, implemented in our protein design program Proteus, which combines molecular mechanics terms, a Generalized Born and Surface Area (GBSA) solvent model, with approximations that make the model pairwise additive. Proteus is not a competitor to specialized side chain prediction programs due to its cost, but it allows protein design applications, where side chain prediction is an important step and MMGBSA an effective energy model. We predict the side chain conformations for 18 proteins. The side chains are first predicted individually, with the rest of the protein in its crystallographic conformation. Next, all side chains are predicted together. The contributions of individual energy terms are evaluated and various parameterizations are compared. We find that the GB and SA terms, with an appropriate choice of the dielectric constant and surface energy coefficients, are beneficial for single side chain predictions. For the prediction of all side chains, however, errors due to the pairwise additive approximation overcome the improvement brought by these terms. We also show the crucial contribution of side chain minimization to alleviate the rigid rotamer approximation. Even without GB and SA terms, we obtain accuracies comparable to SCWRL4, a specialized side chain prediction program. In particular, we obtain a better RMSD than SCWRL4 for core residues (at a higher cost), despite our simpler rotamer library. Proteins 2016; 84:803-819. © 2016 Wiley Periodicals, Inc.
根据主链坐标预测蛋白质侧链构象是结构生物学中的一项重要任务,在结构预测和蛋白质设计中都有应用。由于其组合性质,这是一个难题。我们研究了在我们的蛋白质设计程序Proteus中实现的“MMGBSA”能量函数的性能,该函数结合了分子力学项、广义玻恩和表面积(GBSA)溶剂模型以及使模型成对加和的近似方法。由于成本原因,Proteus并非专门的侧链预测程序的竞争对手,但它允许进行蛋白质设计应用,其中侧链预测是重要步骤,而MMGBSA是一种有效的能量模型。我们预测了18种蛋白质的侧链构象。首先分别预测侧链,蛋白质的其余部分保持其晶体学构象。接下来,一起预测所有侧链。评估了各个能量项的贡献并比较了各种参数化方法。我们发现,通过适当选择介电常数和表面能系数,GB和SA项对单个侧链预测有益。然而,对于所有侧链的预测,成对加和近似带来的误差超过了这些项带来的改进。我们还展示了侧链最小化对减轻刚性旋转异构体近似的关键作用。即使没有GB和SA项,我们也能获得与专门的侧链预测程序SCWRL4相当的准确性。特别是,尽管我们的旋转异构体库更简单,但对于核心残基,我们获得了比SCWRL4更好的均方根偏差(RMSD)(成本更高)。《蛋白质》2016年;84:803 - 819。© 2016威利期刊公司