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Automating unambiguous NOE data usage in NVR for NMR protein structure-based assignments

机译:在NVR中自动为基于NMR蛋白质结构的分配自动使用明确的NOE数据

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Nuclear Magnetic Resonance (NMR) Spectroscopy is an important technique that allows determining protein structure in solution. An important problem in protein structure determination using NMR spectroscopy is the mapping of peaks to corresponding amino acids, also known as the assignment problem. Structure-Based Assignment (SBA) is an approach to solve this problem using a template structure that is homologous to the target. Our previously developed approach Nuclear Vector Replacement-Binary Integer Programming (NVR-BIP) computed the optimal solution for small proteins, but was unable to solve the assignments of large proteins. NVR-Ant Colony Optimization (ACO) extended the applicability of the NVR approach for such proteins. One of the input data utilized in these approaches is the Nuclear Overhauser Effect (NOE) data. NOE is an interaction observed between two protons if the protons are located close in space. These protons could be amide protons, protons attached to the alpha-carbon atom in the backbone of the protein, or side chain protons. NVR only uses backbone protons. In this paper, we reformulate the NVR-BIP model to distinguish the type of proton in NOE data and use the corresponding proton coordinates in the extended formulation. In addition, the threshold value over interproton distances is set in a standard manner for all proteins by extracting the NOE upper bound distance information from the data. We also convert NOE intensities into distance thresholds. Our new approach thus handles the NOE data correctly and without manually determined parameters. We accordingly adapt NVR-ACO solution methodology to these changes. Computational results show that our approaches obtain optimal solutions for small proteins. For the large proteins our ant colony optimization-based approach obtains promising results.
机译:核磁共振波谱学是一项重要的技术,可以确定溶液中的蛋白质结构。使用NMR光谱确定蛋白质结构的一个重要问题是峰到相应氨基酸的映射,这也称为分配问题。基于结构的分配(SBA)是一种使用与目标同源的模板结构来解决此问题的方法。我们以前开发的方法核矢量替换二进制整数编程(NVR-BIP)计算了小蛋白质的最佳解决方案,但无法解决大蛋白质的分配问题。 NVR-蚁群优化(ACO)扩展了NVR方法对此类蛋白质的适用性。这些方法中使用的输入数据之一是核过度疲劳效应(NOE)数据。 NOE是两个质子在空间靠近时观察到的相互作用。这些质子可以是酰胺质子,附着在蛋白质主链中α-碳原子上的质子或侧链质子。 NVR仅使用骨架质子。在本文中,我们重新制定了NVR-BIP模型,以区分NOE数据中的质子类型,并在扩展公式中使用相应的质子坐标。此外,通过从数据中提取NOE上限距离信息,以标准方式为所有蛋白质设置质子间距离的阈值。我们还将NOE强度转换为距离阈值。因此,我们的新方法可以正确处理NOE数据,而无需手动确定参数。因此,我们将NVR-ACO解决方案方法适应这些变化。计算结果表明,我们的方法获得了针对小蛋白质的最佳解决方案。对于大蛋白,我们基于蚁群优化的方法获得了可喜的结果。

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