Extended experimental inferential structure determination method in determining the structural ensembles of disordered protein states

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作者
James Lincoff
Mojtaba Haghighatlari
Mickael Krzeminski
João M. C. Teixeira
Gregory-Neal W. Gomes
Claudiu C. Gradinaru
Julie D. Forman-Kay
Teresa Head-Gordon
机构
[1] University of California,Department of Chemical and Biomolecular Engineering
[2] University of California,Pitzer Center for Theoretical Chemistry
[3] University of California,Department of Chemistry
[4] Molecular Structure and Function Program,Department of Biochemistry
[5] Hospital for Sick Children,Department of Chemical and Physical Sciences
[6] University of Toronto,Department of Bioengineering
[7] University of Toronto Mississauga,Cardiovascular Research Institute
[8] University of California,undefined
[9] University of California,undefined
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Communications Chemistry | / 3卷
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摘要
Proteins with intrinsic or unfolded state disorder comprise a new frontier in structural biology, requiring the characterization of diverse and dynamic structural ensembles. Here we introduce a comprehensive Bayesian framework, the Extended Experimental Inferential Structure Determination (X-EISD) method, which calculates the maximum log-likelihood of a disordered protein ensemble. X-EISD accounts for the uncertainties of a range of experimental data and back-calculation models from structures, including NMR chemical shifts, J-couplings, Nuclear Overhauser Effects (NOEs), paramagnetic relaxation enhancements (PREs), residual dipolar couplings (RDCs), hydrodynamic radii (Rh), single molecule fluorescence Förster resonance energy transfer (smFRET) and small angle X-ray scattering (SAXS). We apply X-EISD to the joint optimization against experimental data for the unfolded drkN SH3 domain and find that combining a local data type, such as chemical shifts or J-couplings, paired with long-ranged restraints such as NOEs, PREs or smFRET, yields structural ensembles in good agreement with all other data types if combined with representative IDP conformers.
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