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Combining automated peak tracking in SAR by NMR with structure-based backbone assignment from 15N-NOESY

机译:将NMR中SAR的自动峰跟踪与15N-NOESY的基于结构的主链分配相结合

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Background: Chemical shift mapping is an important technique in NMR-based drug screening for identifying the atoms of a target protein that potentially bind to a drug molecule upon the molecule's introduction in increasing concentrations. The goal is to obtain a mapping of peaks with known residue assignment from the reference spectrum of the unbound protein to peaks with unknown assignment in the target spectrum of the bound protein. Although a series of perturbed spectra help to trace a path from reference peaks to target peaks, a one-to-one mapping generally is not possible, especially for large proteins, due to errors, such as noise peaks, missing peaks, missing but then reappearing, overlapped, and new peaks not associated with any peaks in the reference. Due to these difficulties, the mapping is typically done manually or semi-automatically, which is not efficient for high-throughput drug screening.Results: We present PeakWalker, a novel peak walking algorithm for fast-exchange systems that models the errors explicitly and performs many-to-one mapping. On the proteins: hBclXL, UbcH5B, and histone H1, it achieves an average accuracy of over 95% with less than 1.5 residues predicted per target peak. Given these mappings as input, we present PeakAssigner, a novel combined structure-based backbone resonance and NOE assignment algorithm that uses just 15N-NOESY, while avoiding TOCSY experiments and 13C-labeling, to resolve the ambiguities for a one-to-one mapping. On the three proteins, it achieves an average accuracy of 94% or better.Conclusions: Our mathematical programming approach for modeling chemical shift mapping as a graph problem, while modeling the errors directly, is potentially a time- and cost-effective first step for high-throughput drug screening based on limited NMR data and homologous 3D structures. 2012 Jang et al.; licensee BioMed Central Ltd.
机译:背景:化学位移图谱是基于NMR的药物筛选中的一种重要技术,用于鉴定目标蛋白的原子,这些原子在浓度不断提高的分子引入后可能与药物分子结合。目的是获得从未结合蛋白的参考光谱到具有已知残基分配的峰到在结合蛋白的目标谱中具有未知分配的峰的映射。尽管一系列干扰光谱有助于跟踪从参考峰到目标峰的路径,但是通常无法进行一对一的映射,特别是对于大蛋白,这是由于误差(例如噪声峰,峰缺失,峰缺失,然后重新出现,重叠和不与参考中任何峰相关的新峰。由于这些困难,映射通常是手动或半自动完成的,对于高通量药物筛选而言效率不高。结果:我们提出了PeakWalker,这是一种用于快速交换系统的新颖的峰行走算法,该算法可对错误进行显式建模并执行多对一映射。在蛋白质:hBclXL,UbcH5B和组蛋白H1上,它的平均准确度超过95%,每个目标峰预测少于1.5个残基。以这些映射为输入,我们提出PeakAssigner,这是一种新颖的基于结构的骨干共振和NOE组合算法,仅使用15N-NOESY,同时避免了TOCSY实验和13C标签,从而解决了一对一映射的歧义。在这三种蛋白质上,它的平均准确度达到94%或更高。结论:我们的将化学位移映射建模为图形问题的数学编程方法,同时直接对错误进行建模,可能是节省时间和成本的第一步基于有限的NMR数据和同源3D结构进行高通量药物筛选。 2012 Jang等;被许可人BioMed Central Ltd.

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