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A unifying Bayesian framework for merging X-ray diffraction data

Author

Listed:
  • Kevin M. Dalton

    (Harvard University)

  • Jack B. Greisman

    (Harvard University)

  • Doeke R. Hekstra

    (Harvard University
    Harvard University)

Abstract

Novel X-ray methods are transforming the study of the functional dynamics of biomolecules. Key to this revolution is detection of often subtle conformational changes from diffraction data. Diffraction data contain patterns of bright spots known as reflections. To compute the electron density of a molecule, the intensity of each reflection must be estimated, and redundant observations reduced to consensus intensities. Systematic effects, however, lead to the measurement of equivalent reflections on different scales, corrupting observation of changes in electron density. Here, we present a modern Bayesian solution to this problem, which uses deep learning and variational inference to simultaneously rescale and merge reflection observations. We successfully apply this method to monochromatic and polychromatic single-crystal diffraction data, as well as serial femtosecond crystallography data. We find that this approach is applicable to the analysis of many types of diffraction experiments, while accurately and sensitively detecting subtle dynamics and anomalous scattering.

Suggested Citation

  • Kevin M. Dalton & Jack B. Greisman & Doeke R. Hekstra, 2022. "A unifying Bayesian framework for merging X-ray diffraction data," Nature Communications, Nature, vol. 13(1), pages 1-13, December.
  • Handle: RePEc:nat:natcom:v:13:y:2022:i:1:d:10.1038_s41467-022-35280-8
    DOI: 10.1038/s41467-022-35280-8
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    1. Doeke R. Hekstra & K. Ian White & Michael A. Socolich & Robert W. Henning & Vukica Šrajer & Rama Ranganathan, 2016. "Electric-field-stimulated protein mechanics," Nature, Nature, vol. 540(7633), pages 400-405, December.
    2. A. Meents & M. O. Wiedorn & V. Srajer & R. Henning & I. Sarrou & J. Bergtholdt & M. Barthelmess & P. Y. A. Reinke & D. Dierksmeyer & A. Tolstikova & S. Schaible & M. Messerschmidt & C. M. Ogata & D. J, 2017. "Pink-beam serial crystallography," Nature Communications, Nature, vol. 8(1), pages 1-12, December.
    3. Henry N. Chapman & Petra Fromme & Anton Barty & Thomas A. White & Richard A. Kirian & Andrew Aquila & Mark S. Hunter & Joachim Schulz & Daniel P. DePonte & Uwe Weierstall & R. Bruce Doak & Filipe R. N, 2011. "Femtosecond X-ray protein nanocrystallography," Nature, Nature, vol. 470(7332), pages 73-77, February.
    4. David M. Blei & Alp Kucukelbir & Jon D. McAuliffe, 2017. "Variational Inference: A Review for Statisticians," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 112(518), pages 859-877, April.
    5. Michihiro Suga & Fusamichi Akita & Michihiro Sugahara & Minoru Kubo & Yoshiki Nakajima & Takanori Nakane & Keitaro Yamashita & Yasufumi Umena & Makoto Nakabayashi & Takahiro Yamane & Takamitsu Nakano , 2017. "Light-induced structural changes and the site of O=O bond formation in PSII caught by XFEL," Nature, Nature, vol. 543(7643), pages 131-135, March.
    6. Jan Kern & Rosalie Tran & Roberto Alonso-Mori & Sergey Koroidov & Nathaniel Echols & Johan Hattne & Mohamed Ibrahim & Sheraz Gul & Hartawan Laksmono & Raymond G. Sierra & Richard J. Gildea & Guangye H, 2014. "Taking snapshots of photosynthetic water oxidation using femtosecond X-ray diffraction and spectroscopy," Nature Communications, Nature, vol. 5(1), pages 1-11, September.
    7. Max O. Wiedorn & Dominik Oberthür & Richard Bean & Robin Schubert & Nadine Werner & Brian Abbey & Martin Aepfelbacher & Luigi Adriano & Aschkan Allahgholi & Nasser Al-Qudami & Jakob Andreasson & Steve, 2018. "Megahertz serial crystallography," Nature Communications, Nature, vol. 9(1), pages 1-11, December.
    8. Yanyong Kang & X. Edward Zhou & Xiang Gao & Yuanzheng He & Wei Liu & Andrii Ishchenko & Anton Barty & Thomas A. White & Oleksandr Yefanov & Gye Won Han & Qingping Xu & Parker W. de Waal & Jiyuan Ke & , 2015. "Crystal structure of rhodopsin bound to arrestin by femtosecond X-ray laser," Nature, Nature, vol. 523(7562), pages 561-567, July.
    9. Charles R. Harris & K. Jarrod Millman & Stéfan J. Walt & Ralf Gommers & Pauli Virtanen & David Cournapeau & Eric Wieser & Julian Taylor & Sebastian Berg & Nathaniel J. Smith & Robert Kern & Matti Picu, 2020. "Array programming with NumPy," Nature, Nature, vol. 585(7825), pages 357-362, September.
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