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生长适配分子动力学(G2FMD):一种用于蛋白质侧链分配和优化的从头算方法。

Grow to Fit Molecular Dynamics (G2FMD): an ab initio method for protein side-chain assignment and refinement.

作者信息

Zhang Wei, Duan Yong

机构信息

Department of Chemistry and Biochemistry, University of Delaware, Newark, DE 19716, USA.

出版信息

Protein Eng Des Sel. 2006 Feb;19(2):55-65. doi: 10.1093/protein/gzj001. Epub 2006 Jan 9.

Abstract

The rough energy landscapes and tight packing of protein interiors are two of the critical factors that have prevented the wide application of physics-based models in protein side-chain assignment and protein structure prediction in general. Complementing the rotamer-based methods, we propose an ab initio method that utilizes molecular mechanics simulations for protein side-chain assignment and refinement. By reducing the side-chain size, a smooth energy landscape was obtained owing to the increased distances between the side chains. The side chains then gradually grow back during molecular dynamics simulations while adjusting to their surrounding driven by the interaction energies. The method overcomes the barriers due to tight packing that limit conformational sampling of physics-based models. A key feature of this approach is that the resulting structures are free from steric collisions and allow the application of all-atom models in the subsequent refinement. Tests on a small set of proteins showed nearly 100% accuracy on both chi1 and chi2 of buried residues and 94% of them were within 20 degrees from the native conformation, 79% were within 10 degrees and 42% were within 5 degrees . However, the accuracy decreased when exposed side chains were involved. Further improvement and application of the method and the possible reasons that affect the accuracy on the exposed side chains are discussed.

摘要

蛋白质内部粗糙的能量景观和紧密堆积是阻碍基于物理的模型在蛋白质侧链分配和一般蛋白质结构预测中广泛应用的两个关键因素。作为基于旋转异构体方法的补充,我们提出了一种从头算方法,该方法利用分子力学模拟进行蛋白质侧链分配和优化。通过减小侧链大小,由于侧链之间距离增加,获得了平滑的能量景观。然后,在分子动力学模拟过程中,侧链在相互作用能的驱动下逐渐重新生长,同时适应其周围环境。该方法克服了由于紧密堆积导致的障碍,这些障碍限制了基于物理的模型的构象采样。这种方法的一个关键特征是,所得结构没有空间碰撞,并且允许在后续优化中应用全原子模型。对一小部分蛋白质的测试表明,埋藏残基的chi1和chi2的准确率接近100%,其中94%与天然构象的偏差在20度以内,79%在10度以内,42%在5度以内。然而,当涉及暴露的侧链时,准确率会下降。本文讨论了该方法的进一步改进和应用以及影响暴露侧链准确率的可能原因。

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