A General Method for Targeted Quantitative Cross-Linking Mass Spectrometry.

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作者:Chavez Juan D, Eng Jimmy K, Schweppe Devin K, Cilia Michelle, Rivera Keith, Zhong Xuefei, Wu Xia, Allen Terrence, Khurgel Moshe, Kumar Akhilesh, Lampropoulos Athanasios, Larsson MÃ¥rten, Maity Shuvadeep, Morozov Yaroslav, Pathmasiri Wimal, Perez-Neut Mathew, Pineyro-Ruiz Coriness, Polina Elizabeth, Post Stephanie, Rider Mark, Tokmina-Roszyk Dorota, Tyson Katherine, Vieira Parrine Sant'Ana Debora, Bruce James E
Chemical cross-linking mass spectrometry (XL-MS) provides protein structural information by identifying covalently linked proximal amino acid residues on protein surfaces. The information gained by this technique is complementary to other structural biology methods such as x-ray crystallography, NMR and cryo-electron microscopy[1]. The extension of traditional quantitative proteomics methods with chemical cross-linking can provide information on the structural dynamics of protein structures and protein complexes. The identification and quantitation of cross-linked peptides remains challenging for the general community, requiring specialized expertise ultimately limiting more widespread adoption of the technique. We describe a general method for targeted quantitative mass spectrometric analysis of cross-linked peptide pairs. We report the adaptation of the widely used, open source software package Skyline, for the analysis of quantitative XL-MS data as a means for data analysis and sharing of methods. We demonstrate the utility and robustness of the method with a cross-laboratory study and present data that is supported by and validates previously published data on quantified cross-linked peptide pairs. This advance provides an easy to use resource so that any lab with access to a LC-MS system capable of performing targeted quantitative analysis can quickly and accurately measure dynamic changes in protein structure and protein interactions.

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