Department of Biochemistry, University of Washington, Seattle, Washington 98195, USA.
Protein Sci. 2010 Mar;19(3):494-506. doi: 10.1002/pro.327.
Metal ions play an essential role in stabilizing protein structures and contributing to protein function. Ions such as zinc have well-defined coordination geometries, but it has not been easy to take advantage of this knowledge in protein structure prediction efforts. Here, we present a computational method to predict structures of zinc-binding proteins given knowledge of the positions of zinc-coordinating residues in the amino acid sequence. The method takes advantage of the "atom-tree" representation of molecular systems and modular architecture of the Rosetta3 software suite to incorporate explicit metal ion coordination geometry into previously developed de novo prediction and loop modeling protocols. Zinc cofactors are tethered to their interacting residues based on coordination geometries observed in natural zinc-binding proteins. The incorporation of explicit zinc atoms and their coordination geometry in both de novo structure prediction and loop modeling significantly improves sampling near the native conformation. The method can be readily extended to predict protein structures bound to other metal and/or small chemical cofactors with well-defined coordination or ligation geometry.
金属离子在稳定蛋白质结构和促进蛋白质功能方面发挥着重要作用。锌等离子具有明确的配位几何形状,但在蛋白质结构预测工作中利用这一知识并不容易。在这里,我们提出了一种计算方法,可根据氨基酸序列中锌配位残基的位置预测锌结合蛋白的结构。该方法利用分子系统的“原子树”表示和 Rosetta3 软件套件的模块化架构,将显式金属离子配位几何形状纳入先前开发的从头预测和环建模协议中。锌辅助因子根据天然锌结合蛋白中观察到的配位几何形状与相互作用的残基连接在一起。在从头预测结构和环建模中显式包含锌原子及其配位几何形状,可显著改善接近天然构象的采样。该方法可以很容易地扩展到预测与具有明确定义的配位或键合几何形状的其他金属和/或小分子辅助因子结合的蛋白质结构。