DeepCentering: fully automated crystal centering using deep learning for macromolecular crystallography

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Abstract

High-throughput protein crystallography using a synchrotron light source is an important method used in drug discovery. Beamline components for automated experiments including automatic sample changers have been utilized to accelerate the measurement of a number of macromolecular crystals. However, unlike cryo-loop centering, crystal centering involving automated crystal detection is a difficult process to automate fully. Here, DeepCentering, a new automated crystal centering system, is presented. DeepCentering works using a convolutional neural network, which is a deep learning operation. This system achieves fully automated accurate crystal centering without using X-ray irradiation of crystals, and can be used for fully automated data collection in high-throughput macromolecular crystallography.

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Ito, S., Ueno, G., & Yamamoto, M. (2019). DeepCentering: fully automated crystal centering using deep learning for macromolecular crystallography. Journal of Synchrotron Radiation, 26, 1361–1366. https://doi.org/10.1107/S160057751900434X

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