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利用羟基自由基蛋白足迹质谱数据进行罗塞塔蛋白结构预测。

Rosetta Protein Structure Prediction from Hydroxyl Radical Protein Footprinting Mass Spectrometry Data.

机构信息

Department of Chemistry and Biochemistry , Ohio State University , Columbus , Ohio 43210 , United States.

Department of Pharmaceutical Sciences , University of Maryland , Baltimore , Maryland 21201 , United States.

出版信息

Anal Chem. 2018 Jun 19;90(12):7721-7729. doi: 10.1021/acs.analchem.8b01624. Epub 2018 Jun 6.

Abstract

In recent years mass spectrometry-based covalent labeling techniques such as hydroxyl radical footprinting (HRF) have emerged as valuable structural biology techniques, yielding information on protein tertiary structure. These data, however, are not sufficient to predict protein structure unambiguously, as they provide information only on the relative solvent exposure of certain residues. Despite some recent advances, no software currently exists that can utilize covalent labeling mass spectrometry data to predict protein tertiary structure. We have developed the first such tool, which incorporates mass spectrometry derived protection factors from HRF labeling as a new centroid score term for the Rosetta scoring function to improve the prediction of protein tertiary structures. We tested our method on a set of four soluble benchmark proteins with known crystal structures and either published HRF experimental results or internally acquired data. Using the HRF labeling data, we rescored large decoy sets of structures predicted with Rosetta for each of the four benchmark proteins. As a result, the model quality improved for all benchmark proteins as compared to when scored with Rosetta alone. For two of the four proteins we were even able to identify atomic resolution models with the addition of HRF data.

摘要

近年来,基于质谱的共价标记技术(如羟基自由基足迹法(HRF))已经成为有价值的结构生物学技术,提供了有关蛋白质三级结构的信息。然而,这些数据不足以明确预测蛋白质结构,因为它们仅提供有关某些残基相对溶剂暴露的信息。尽管最近取得了一些进展,但目前还没有软件可以利用共价标记质谱数据来预测蛋白质三级结构。我们开发了第一个这样的工具,它将 HRF 标记的质谱衍生保护因子纳入 Rosetta 评分函数作为一个新的质心评分项,以提高蛋白质三级结构的预测能力。我们使用一组具有已知晶体结构的可溶性基准蛋白以及已发表的 HRF 实验结果或内部获得的数据来测试我们的方法。对于这四个基准蛋白中的每一个,我们都使用 HRF 标记数据重新对 Rosetta 预测的大型诱饵结构集进行评分。结果,与仅使用 Rosetta 评分相比,所有基准蛋白的模型质量都得到了提高。对于其中两个蛋白,我们甚至能够在添加 HRF 数据后确定原子分辨率模型。

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