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基于连续优化的弹性网络的大规模多肽折叠新方法。

A novel approach for large-scale polypeptide folding based on elastic networks using continuous optimization.

机构信息

Mechanical Engineering, Indian Institute of Science, Bangalore 560012, India.

出版信息

J Theor Biol. 2010 Feb 7;262(3):488-97. doi: 10.1016/j.jtbi.2009.10.010. Epub 2009 Oct 13.

Abstract

We present a new computationally efficient method for large-scale polypeptide folding using coarse-grained elastic networks and gradient-based continuous optimization techniques. The folding is governed by minimization of energy based on Miyazawa-Jernigan contact potentials. Using this method we are able to substantially reduce the computation time on ordinary desktop computers for simulation of polypeptide folding starting from a fully unfolded state. We compare our results with available native state structures from Protein Data Bank (PDB) for a few de-novo proteins and two natural proteins, Ubiquitin and Lysozyme. Based on our simulations we are able to draw the energy landscape for a small de-novo protein, Chignolin. We also use two well known protein structure prediction software, MODELLER and GROMACS to compare our results. In the end, we show how a modification of normal elastic network model can lead to higher accuracy and lower time required for simulation.

摘要

我们提出了一种新的计算效率高的方法,用于使用粗粒度弹性网络和基于梯度的连续优化技术进行大规模多肽折叠。折叠受基于 Miyazawa-Jernigan 接触势的能量最小化控制。使用这种方法,我们能够在普通台式计算机上大大减少模拟多肽从完全展开状态开始折叠的计算时间。我们将我们的结果与来自蛋白质数据银行 (PDB) 的几个从头开始的蛋白质和两种天然蛋白质(泛素和溶菌酶)的可用天然状态结构进行了比较。基于我们的模拟,我们能够为一个小的从头开始的蛋白质,Chignolin,绘制能量景观。我们还使用了两个著名的蛋白质结构预测软件,MODELLER 和 GROMACS,来比较我们的结果。最后,我们展示了如何修改正常的弹性网络模型可以提高模拟的准确性和降低所需的时间。

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