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使用模拟退火对宏观取向蛋白质的 NMR 谱进行自动分配。

Automated assignment of NMR spectra of macroscopically oriented proteins using simulated annealing.

机构信息

Department of Chemistry, North Carolina State University, 2620 Yarbrough Drive, Raleigh, NC 27695-8204, United States.

Department of Chemistry, North Carolina State University, 2620 Yarbrough Drive, Raleigh, NC 27695-8204, United States.

出版信息

J Magn Reson. 2018 Aug;293:104-114. doi: 10.1016/j.jmr.2018.06.004. Epub 2018 Jun 17.

Abstract

An automated technique for the sequential assignment of NMR backbone resonances of oriented protein samples has been developed and tested based on N-N homonuclear exchange and spin-exchanged separated local-field spectra. By treating the experimental spectral intensity as a pseudopotential, the Monte-Carlo Simulated Annealing algorithm has been employed to seek lowest-energy assignment solutions over a large sampling space where direct enumeration would be unfeasible. The determined sequential assignments have been scored based on the positions of the crosspeaks resulting from the possible orders for the main peaks. This approach is versatile in terms of the parameters that can be specified to achieve the best-fit result. At a minimum the algorithm requires a continuous segment of the main-peak chemical shifts obtained from a uniformly labeled sample and a spin-exchanged experimental spectrum represented as a 2D matrix array. With selective labeling experiments, groups of chemical shifts corresponding to specific locations in the protein backbone can be fixed, thereby decreasing the sampling space. The output from the program consists of a list of top-score main peak assignments, which can be subjected to further scoring criteria until a consensus solution is found. The algorithm has first been tested on a synthetic spectrum with randomly generated chemical shifts and dipolar couplings for the main peaks. The original assignments have been successfully recovered for as many as 100 main peaks when residue-type information was used even in the presence of substantial spectral peak overlap. The algorithm was then applied to assigning two sets of experimental spectra to recover and confirm the previously established assignments in an automated fashion. For the 20-residue transmembrane domain of Pf1 coat protein reconstituted in magnetically aligned bicelles, the original assignment by Park et al. (2010) was recovered by the automated algorithm with additional input from 5 selectively labeled amino acid spectra. The second case considered was the 46 residue Pf1 bacteriophage from Thiriot et al. (2005) and Knox et al. (2010), of which 38 residues were fit. Automated fitting resulted in several possible assignments but not exactly the original assignment. By using a post-fitting filtering procedure based on the number of missed cross peaks and Pf1 helical structure, a consensus spectroscopic assignment is proposed covering 84% of the original assignment. While the automated assignment works best in spectra with well-resolved crosspeaks, it also tolerates substantial spectral crowding to yield reasonable assignments in the cases where ambiguity and degeneracy of possible assignment solutions are inevitable.

摘要

已经开发并测试了一种基于 N-N 同核交换和自旋交换分离局部场谱的用于定向蛋白质样品的 NMR 骨架共振的顺序分配的自动化技术。通过将实验谱强度视为伪势,已经采用蒙特卡罗模拟退火算法在直接枚举不可行的大采样空间中寻找最低能量分配解决方案。基于可能的主峰顺序产生的交叉峰的位置,对确定的顺序分配进行评分。这种方法在可以指定的参数方面具有通用性,以获得最佳拟合结果。在最低限度上,该算法需要从均匀标记的样品获得的主峰化学位移的连续段和表示为 2D 矩阵数组的自旋交换实验谱。通过选择性标记实验,可以固定对应于蛋白质骨架中特定位置的化学位移组,从而减小采样空间。程序的输出由主峰分配的最高得分列表组成,可以对其进行进一步的评分标准,直到找到共识解决方案。该算法首先在具有主峰的随机生成的化学位移和偶极耦合的合成谱上进行了测试。当使用残基类型信息时,即使在存在大量谱峰重叠的情况下,也可以成功恢复多达 100 个主峰的原始分配。然后,该算法被应用于分配两组实验谱以自动恢复和确认以前建立的分配。对于在磁定向双脂质体中重建的 Pf1 外壳蛋白的 20 残基跨膜结构域,Park 等人(2010 年)的原始分配由自动算法恢复,并且还使用 5 个选择性标记氨基酸谱的输入。考虑的第二个案例是 Thiriot 等人(2005 年)和 Knox 等人(2010 年)的 Pf1 噬菌体的 46 个残基,其中拟合了 38 个残基。自动拟合产生了几个可能的分配,但并不完全是原始分配。通过使用基于缺失交叉峰数量和 Pf1 螺旋结构的后拟合过滤过程,提出了一个共识光谱分配,涵盖了原始分配的 84%。虽然自动分配在具有良好分辨率的交叉峰的光谱中效果最好,但它也可以容忍大量的光谱拥挤,从而在可能的分配解决方案的模糊性和退化不可避免的情况下产生合理的分配。

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