4.7 Article

Coarse-Grained Diffraction Template Matching Model to Retrieve Multiconformational Models for Biomolecule Structures from Noisy Diffraction Patterns

期刊

JOURNAL OF CHEMICAL INFORMATION AND MODELING
卷 60, 期 6, 页码 2803-2818

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acs.jcim.0c00131

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资金

  1. JSPS KAKENHI [JP26870852, JP16K07331]
  2. Japan Science and Technology Agency
  3. MEXT
  4. FOCUS Establishing Supercomputing Center of Excellence project
  5. Kyoto University, through the High Performance Computing Infrastructure System Research Project [hp140121, hp170036, hp180011, hp180123, hp190105, hp200053]

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Biomolecular imaging using X-ray free-electron lasers (XFELs) has been successfully applied to serial femtosecond crystallography. However, the application of single-particle analysis for structure determination using XFELs with 100 nm or smaller biomolecules has two practical problems: the incomplete diffraction data sets for reconstructing 3D assembled structures and the heterogeneous conformational states of samples. A new diffraction template matching method is thus presented here to retrieve a plausible 3D structural model based on single noisy target diffraction patterns, assuming candidate structures. Two concepts are introduced here: prompt candidate diffraction, generated by enhanced sampled coarse-grain (CG) candidate structures, and efficient molecular orientation searching for matching based on Bayesian optimization. A CG model-based diffraction-matching protocol is proposed that achieves a 100-fold speed increase compared to exhaustive diffraction matching using an all-atom model. The conditions that enable multiconformational analysis were also investigated by simulated diffraction data for various conformational states of chromatin and ribosomes. The proposed method can enable multiconformational analysis, with a structural resolution of at least 20 angstrom for 270-800 angstrom flexible biomolecules, in experimental single-particle structure analyses that employ XFELs.

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