Zhang Chi, Liu Song, Zhou Yaoqi
Howard Hughes Medical Institute Center for Single Molecule Biophysics and Department of Physiology and Biophysics, State University of New York at Buffalo, 124 Sherman Hall, Buffalo, NY 14214, USA.
Protein Sci. 2004 Feb;13(2):391-9. doi: 10.1110/ps.03411904.
The conformations of loops are determined by the water-mediated interactions between amino acid residues. Energy functions that describe the interactions can be derived either from physical principles (physical-based energy function) or statistical analysis of known protein structures (knowledge-based statistical potentials). It is commonly believed that statistical potentials are appropriate for coarse-grained representation of proteins but are not as accurate as physical-based potentials when atomic resolution is required. Several recent applications of physical-based energy functions to loop selections appear to support this view. In this article, we apply a recently developed DFIRE-based statistical potential to three different loop decoy sets (RAPPER, Jacobson, and Forrest-Woolf sets). Together with a rotamer library for side-chain optimization, the performance of DFIRE-based potential in the RAPPER decoy set (385 loop targets) is comparable to that of AMBER/GBSA for short loops (two to eight residues). The DFIRE is more accurate for longer loops (9 to 12 residues). Similar trend is observed when comparing DFIRE with another physical-based OPLS/SGB-NP energy function in the large Jacobson decoy set (788 loop targets). In the Forrest-Woolf decoy set for the loops of membrane proteins, the DFIRE potential performs substantially better than the combination of the CHARMM force field with several solvation models. The results suggest that a single-term DFIRE-statistical energy function can provide an accurate loop prediction at a fraction of computing cost required for more complicate physical-based energy functions. A Web server for academic users is established for loop selection at the softwares/services section of the Web site http://theory.med.buffalo.edu/.
环的构象由氨基酸残基之间的水介导相互作用决定。描述这些相互作用的能量函数既可以从物理原理推导得出(基于物理的能量函数),也可以通过对已知蛋白质结构的统计分析得出(基于知识的统计势)。人们普遍认为,统计势适用于蛋白质的粗粒度表示,但在需要原子分辨率时不如基于物理的势准确。最近基于物理的能量函数在环选择中的一些应用似乎支持了这一观点。在本文中,我们将最近开发的基于DFIRE的统计势应用于三个不同的环诱饵集(RAPPER、Jacobson和Forrest-Woolf集)。结合用于侧链优化的旋转异构体库,基于DFIRE的势在RAPPER诱饵集(385个环靶点)中对于短环(2至8个残基)的性能与AMBER/GBSA相当。对于较长的环(9至12个残基),DFIRE更准确。在大型Jacobson诱饵集(788个环靶点)中将DFIRE与另一个基于物理的OPLS/SGB-NP能量函数进行比较时,也观察到了类似的趋势。在用于膜蛋白环的Forrest-Woolf诱饵集中,DFIRE势的表现明显优于CHARMM力场与几种溶剂化模型的组合。结果表明,单一的DFIRE统计能量函数可以以比更复杂的基于物理的能量函数所需计算成本小得多的代价提供准确的环预测。在网站http://theory.med.buffalo.edu/的软件/服务部分为学术用户建立了一个用于环选择的网络服务器。