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Protocol for analyzing protein ensemble structures from chemical cross-links using DynaXL.


ABSTRACT: Chemical cross-linking coupled with mass spectroscopy (CXMS) is a powerful technique for investigating protein structures. CXMS has been mostly used to characterize the predominant structure for a protein, whereas cross-links incompatible with a unique structure of a protein or a protein complex are often discarded. We have recently shown that the so-called over-length cross-links actually contain protein dynamics information. We have thus established a method called DynaXL, which allow us to extract the information from the over-length cross-links and to visualize protein ensemble structures. In this protocol, we present the detailed procedure for using DynaXL, which comprises five steps. They are identification of highly confident cross-links, delineation of protein domains/subunits, ensemble rigid-body refinement, and final validation/assessment. The DynaXL method is generally applicable for analyzing the ensemble structures of multi-domain proteins and protein-protein complexes, and is freely available at www.tanglab.org/resources.

SUBMITTER: Gong Z 

PROVIDER: S-EPMC5719800 | biostudies-literature | 2017

REPOSITORIES: biostudies-literature

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Protocol for analyzing protein ensemble structures from chemical cross-links using DynaXL.

Gong Zhou Z   Liu Zhu Z   Dong Xu X   Ding Yue-He YH   Dong Meng-Qiu MQ   Tang Chun C  

Biophysics reports 20171120 4


Chemical cross-linking coupled with mass spectroscopy (CXMS) is a powerful technique for investigating protein structures. CXMS has been mostly used to characterize the predominant structure for a protein, whereas cross-links incompatible with a unique structure of a protein or a protein complex are often discarded. We have recently shown that the so-called over-length cross-links actually contain protein dynamics information. We have thus established a method called DynaXL, which allow us to ex  ...[more]

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