Kim Jaegil, Straub John E, Keyes Thomas
Department of Chemistry, Boston University, Boston, Massachusetts 02215, USA.
J Chem Phys. 2007 Apr 7;126(13):135101. doi: 10.1063/1.2711812.
Recently the authors proposed a novel sampling algorithm, "statistical temperature molecular dynamics" (STMD) [J. Kim et al., Phys. Rev. Lett. 97, 050601 (2006)], which combines ingredients of multicanonical molecular dynamics and Wang-Landau sampling. Exploiting the relation between the statistical temperature and the density of states, STMD generates a flat energy distribution and efficient sampling with a dynamic update of the statistical temperature, transforming an initial constant estimate to the true statistical temperature T(U), with U being the potential energy. Here, the performance of STMD is examined in the Lennard-Jones fluid with diverse simulation conditions, and in the coarse-grained, off-lattice BLN 46-mer and 69-mer protein models, exhibiting rugged potential energy landscapes with a high degree of frustration. STMD simulations combined with inherent structure (IS) analysis allow an accurate determination of protein thermodynamics down to very low temperatures, overcoming quasiergodicity, and illuminate the transitions occurring in folding in terms of the energy landscape. It is found that a thermodynamic signature of folding is significantly suppressed by accurate sampling, due to an incoherent contribution from low-lying non-native IS in multifunneled landscapes. It is also shown that preferred accessibility to such IS during the collapse transition is intimately related to misfolding or poor foldability.
最近,作者提出了一种新的采样算法——“统计温度分子动力学”(STMD)[J. Kim等人,《物理评论快报》97, 050601 (2006)],该算法结合了多正则分子动力学和王-兰道采样的要素。利用统计温度与态密度之间的关系,STMD生成了一个平坦的能量分布,并通过动态更新统计温度实现了高效采样,将初始的常数估计值转变为真实的统计温度T(U),其中U为势能。在此,我们在不同模拟条件下的 Lennard-Jones 流体以及具有崎岖势能面且高度受挫的粗粒度、非晶格BLN 46聚体和69聚体蛋白质模型中检验了STMD的性能。结合固有结构(IS)分析的STMD模拟能够精确测定直至极低温度下的蛋白质热力学,克服准遍历性,并从能量景观的角度阐明折叠过程中发生的转变。研究发现,由于多漏斗景观中低能非天然IS的非相干贡献,精确采样会显著抑制折叠的热力学特征。研究还表明,在塌缩转变过程中对这类IS的优先可达性与错误折叠或折叠性差密切相关。