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Computational simulation of biological systems: Studies on protein folding and protein structure prediction.

机译:生物系统的计算仿真:蛋白质折叠和蛋白质结构预测的研究。

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Scientific understanding as well as the way of studying science has been greatly changed since the advent of computer modeling. Computer simulation has played a central role in bridging theoretical and experimental studies. In this work, computer simulations were applied to explore biological systems on both protein folding and protein structure prediction studies. In the first study, the folding mechanisms of two alanine based helical peptides (Fs-21 peptide and MABA bonded Fs-21 peptide) were investigated by all atom molecular dynamics simulations and compared with experimental results. Multi-phase folding processes were observed for both peptides. Temperature change affected the relative stability of different ensembles. Helix-turn-helix conformation was found to be the most populated state at 300K while the full helix became more stable at low temperature (273K). The turn structure was found to be stabilized mainly by hydrophobic interactions. In the second study, helix-coil transition theory was elaborately tested by both statistical and energetic methods based on simulations of alanine based peptides. A weighted Ising model was proposed, and the model-derived propagation constant agreed very well with the experimental results. Solvation effect and electrostatic interactions were found to be the two main contributors to helix-coil transition. The results challenged the classic helix-coil transition theory by proving that the single sequence assumption was not appropriate for helix-coil transition. Conformational sampling has been a long-standing issue in computational sciences. In the third study, we systematically tested the convergence of the Replica Exchange Molecular Dynamics method (REMD), which is a recently developed method for conformational sampling enhancement. The results suggested that REMD can significantly enhance the sampling efficiency and accurately reproduce the long-time MD results with high efficiency. However, fluctuations at low temperatures (300 K) indicated that REMD simulations did not converge within our simulation time (14 ns). Much longer REMD simulation time might be needed for the system to reach thermodynamic equilibrium than expected. Finding the optimal side chain packing is a common issue in structure prediction, protein design and protein docking. In the fourth study, a new method was presented. The method overcame the rough energy landscape problem and enabled all-atom MD simulation to be applied directly to protein structure refinement. The method showed very successful results on buried side-chain assignments, nearly 100% accuracy on all 6 randomly picked proteins was reached; the results also clearly demonstrated that the proposed method can significantly enhance conformational sampling. These encouraging results suggested prospective applications on many other protein related systems.
机译:自从计算机建模问世以来,科学的理解以及科学研究的方式已经发生了巨大的变化。计算机仿真在桥接理论和实验研究中发挥了核心作用。在这项工作中,计算机模拟被应用于蛋白质折叠和蛋白质结构预测研究的生物系统。在第一项研究中,通过所有原子分子动力学模拟研究了两种基于丙氨酸的螺旋肽(Fs-21肽和MABA键合的Fs-21肽)的折叠机制,并与实验结果进行了比较。两种肽均观察到多相折叠过程。温度变化影响了不同乐团的相对稳定性。发现螺旋-转-螺旋构象是在300K时人口最多的状态,而完整的螺旋在低温(273K)下变得更稳定。发现转弯结构主要通过疏水相互作用稳定。在第二项研究中,基于基于丙氨酸的肽的模拟,通过统计和能量方法对螺旋-螺旋转变理论进行了详尽的测试。提出了一个加权的伊辛模型,模型得出的传播常数与实验结果吻合得很好。发现溶剂化作用和静电相互作用是螺旋-螺旋转变的两个主要因素。结果证明了单序列假设不适用于螺旋-线圈过渡,从而挑战了经典的螺旋-线圈过渡理论。构象采样在计算科学中一直是一个长期存在的问题。在第三项研究中,我们系统地测试了副本交换分子动力学方法(REMD)的收敛性,该方法是最近开发的构象采样增强方法。结果表明,REMD可以显着提高采样效率,并能以高效率准确再现长时间的MD结果。但是,低温下(<300 K)的波动表明REMD仿真在我们的仿真时间内(14 ns)并未收敛。系统达到热力学平衡所需的REMD仿真时间可能比预期的要长得多。寻找最佳的侧链堆积是结构预测,蛋白质设计和蛋白质对接中的常见问题。在第四项研究中,提出了一种新方法。该方法克服了粗糙的能量格局问题,并使全原子MD模拟直接应用于蛋白质结构的细化。该方法在掩埋侧链分配方面显示出非常成功的结果,所有随机挑选的6种蛋白质的准确率均接近100%。结果还清楚地表明,所提出的方法可以显着增强构象采样。这些令人鼓舞的结果表明在许多其他蛋白质相关系统上的前瞻性应用。

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