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Protein Structure Prediction with Mass Spectrometry Data
Annual Review of Physical Chemistry ( IF 14.7 ) Pub Date : 2022-04-20 , DOI: 10.1146/annurev-physchem-082720-123928
Sarah E Biehn 1 , Steffen Lindert 1
Affiliation  

Knowledge of protein structure is crucial to our understanding of biological function and is routinely used in drug discovery. High-resolution techniques to determine the three-dimensional atomic coordinates of proteins are available. However, such methods are frequently limited by experimental challenges such as sample quantity, target size, and efficiency. Structural mass spectrometry (MS) is a technique in which structural features of proteins are elucidated quickly and relatively easily. Computational techniques that convert sparse MS data into protein models that demonstrate agreement with the data are needed. This review features cutting-edge computational methods that predict protein structure from MS data such as chemical cross-linking, hydrogen–deuterium exchange, hydroxyl radical protein footprinting, limited proteolysis, ion mobility, and surface-induced dissociation. Additionally, we address future directions for protein structure prediction with sparse MS data.

中文翻译:


利用质谱数据预测蛋白质结构

蛋白质结构的知识对于我们理解生物功能至关重要,并且通常用于药物发现。可以使用高分辨率技术来确定蛋白质的三维原子坐标。然而,此类方法经常受到样本数量、目标大小和效率等实验挑战的限制。结构质谱法 (MS) 是一种可以快速且相对容易地阐明蛋白质结构特征的技术。需要将稀疏 MS 数据转换为证明与数据一致的蛋白质模型的计算技术。这篇综述采用了从 MS 数据预测蛋白质结构的尖端计算方法,例如化学交联、氢-氘交换、羟基自由基蛋白质足迹、有限蛋白水解、离子淌度、和表面诱导的解离。此外,我们还探讨了使用稀疏 MS 数据预测蛋白质结构的未来方向。

更新日期:2022-04-21
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