Arnautova Yelena A, Scheraga Harold A
Department of Chemistry and Chemical Biology, Baker Laboratory, Cornell University, Ithaca, New York 14853-1301, USA.
Biophys J. 2008 Sep;95(5):2434-49. doi: 10.1529/biophysj.108.133587. Epub 2008 May 23.
A novel method of parameter optimization is proposed. It makes use of large sets of decoys generated for six nonhomologous proteins with different architecture. Parameter optimization is achieved by creating a free energy gap between sets of nativelike and nonnative conformations. The method is applied to optimize the parameters of a physics-based scoring function consisting of the all-atom ECEPP05 force field coupled with an implicit solvent model (a solvent-accessible surface area model). The optimized force field is able to discriminate near-native from nonnative conformations of the six training proteins when used either for local energy minimization or for short Monte Carlo simulated annealing runs after local energy minimization. The resulting force field is validated with an independent set of six nonhomologous proteins, and appears to be transferable to proteins not included in the optimization; i.e., for five out of the six test proteins, decoys with 1.7- to 4.0-A all-heavy-atom root mean-square deviations emerge as those with the lowest energy. In addition, we examined the set of misfolded structures created by Park and Levitt using a four-state reduced model. The results from these additional calculations confirm the good discriminative ability of the optimized force field obtained with our decoy sets.
提出了一种新的参数优化方法。该方法利用为六种具有不同结构的非同源蛋白质生成的大量诱饵。通过在类天然构象集和非天然构象集之间创建自由能间隙来实现参数优化。该方法用于优化基于物理的评分函数的参数,该评分函数由全原子ECEPP05力场与隐式溶剂模型(溶剂可及表面积模型)耦合而成。当用于局部能量最小化或在局部能量最小化后进行短蒙特卡罗模拟退火运行时,优化后的力场能够区分六种训练蛋白质的近天然构象和非天然构象。所得力场用一组独立的六种非同源蛋白质进行了验证,并且似乎可以转移到优化中未包括的蛋白质;即,对于六种测试蛋白质中的五种,具有1.7至4.0埃全重原子均方根偏差的诱饵成为能量最低的诱饵。此外,我们使用四态简化模型检查了Park和Levitt创建的错误折叠结构集。这些额外计算的结果证实了我们用诱饵集获得的优化力场具有良好的判别能力。