一种高效的蛋白质骨架核磁共振波峰分配分支结合算法

Guohui Lin, Dong Xu, Zhi-Zhong Chen, Tao Jiang, Jianjun Wen, Ying Xu
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引用次数: 22

摘要

核磁共振分配是解核磁共振蛋白结构的关键步骤之一。分配过程将共振峰与目标蛋白序列的单个残基联系起来,为建立原子间残基内和残基间的空间关系提供了先决条件。作业过程既乏味又耗时,可能要花好几个星期。虽然有许多计算机程序来协助分配过程,但许多核磁共振实验室仍然手工完成分配以确保质量。本文提出了一种新的计算方法,基于我们最近的工作自动化分配过程,特别是骨干共振峰分配过程。我们将分配问题表述为一个有约束的加权二部匹配问题。然而,在大多数情况下,这个问题是np困难的,我们提出了一个基于分支定界算法的有效解决方案,该算法具有有效的边界技术和贪婪过滤算法,以减少搜索空间。我们对来自14种蛋白质的70个(伪)真实NMR数据的实验结果表明,新解决方案比最近引入的(穷举)两层算法运行得快得多,并且比两层算法恢复更正确的峰分配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient branch-and-bound algorithm for the assignment of protein backbone NMR peaks
NMR resonance assignment is one of the key steps in solving an NMR protein structure. The assignment process links resonance peaks to individual residues of the target protein sequence, providing the prerequisite for establishing intra- and inter-residue spatial relationships between atoms. The assignment process is tedious and time-consuming, which could take many weeks. Though there exist a number of computer programs to assist the assignment process, many NMR labs are still doing the assignments manually to ensure quality. This paper presents a new computational method based on our recent work towards automating the assignment process, particularly the process of backbone resonance peak assignment. We formulate the assignment problem as a constrained weighted bipartite matching problem. While the problem, in the most general situation, is NP-hard, we present an efficient solution based on a branch-and-bound algorithm with effective bounding techniques and a greedy filtering algorithm for reducing the search space. Our experimental results on 70 instances of (pseudo) real NMR data derived from 14 proteins demonstrate that the new solution runs much faster than a recently introduced (exhaustive) two-layer algorithm and recovers more correct peak assignments than the two-layer algorithm.
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