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Noise reduction and mask removal neural network for X-ray single-particle imaging

Free-electron lasers could enable X-ray imaging of single biological macromolecules and the study of protein dynamics, paving the way for a powerful new imaging tool in structural biology, but a low signal-to-noise ratio and missing regions in the detectors, colloquially termed ‘masks’, affect data...

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Autores principales: Bellisario, Alfredo, Maia, Filipe R. N. C., Ekeberg, Tomas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: International Union of Crystallography 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8805166/
https://www.ncbi.nlm.nih.gov/pubmed/35145358
http://dx.doi.org/10.1107/S1600576721012371
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author Bellisario, Alfredo
Maia, Filipe R. N. C.
Ekeberg, Tomas
author_facet Bellisario, Alfredo
Maia, Filipe R. N. C.
Ekeberg, Tomas
author_sort Bellisario, Alfredo
collection PubMed
description Free-electron lasers could enable X-ray imaging of single biological macromolecules and the study of protein dynamics, paving the way for a powerful new imaging tool in structural biology, but a low signal-to-noise ratio and missing regions in the detectors, colloquially termed ‘masks’, affect data collection and hamper real-time evaluation of experimental data. In this article, the challenges posed by noise and masks are tackled by introducing a neural network pipeline that aims to restore diffraction intensities. For training and testing of the model, a data set of diffraction patterns was simulated from 10 900 different proteins with molecular weights within the range of 10–100 kDa and collected at a photon energy of 8 keV. The method is compared with a simple low-pass filtering algorithm based on autocorrelation constraints. The results show an improvement in the mean-squared error of roughly two orders of magnitude in the presence of masks compared with the noisy data. The algorithm was also tested at increasing mask width, leading to the conclusion that demasking can achieve good results when the mask is smaller than half of the central speckle of the pattern. The results highlight the competitiveness of this model for data processing and the feasibility of restoring diffraction intensities from unknown structures in real time using deep learning methods. Finally, an example is shown of this preprocessing making orientation recovery more reliable, especially for data sets containing very few patterns, using the expansion–maximization–compression algorithm.
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spelling pubmed-88051662022-02-09 Noise reduction and mask removal neural network for X-ray single-particle imaging Bellisario, Alfredo Maia, Filipe R. N. C. Ekeberg, Tomas J Appl Crystallogr Research Papers Free-electron lasers could enable X-ray imaging of single biological macromolecules and the study of protein dynamics, paving the way for a powerful new imaging tool in structural biology, but a low signal-to-noise ratio and missing regions in the detectors, colloquially termed ‘masks’, affect data collection and hamper real-time evaluation of experimental data. In this article, the challenges posed by noise and masks are tackled by introducing a neural network pipeline that aims to restore diffraction intensities. For training and testing of the model, a data set of diffraction patterns was simulated from 10 900 different proteins with molecular weights within the range of 10–100 kDa and collected at a photon energy of 8 keV. The method is compared with a simple low-pass filtering algorithm based on autocorrelation constraints. The results show an improvement in the mean-squared error of roughly two orders of magnitude in the presence of masks compared with the noisy data. The algorithm was also tested at increasing mask width, leading to the conclusion that demasking can achieve good results when the mask is smaller than half of the central speckle of the pattern. The results highlight the competitiveness of this model for data processing and the feasibility of restoring diffraction intensities from unknown structures in real time using deep learning methods. Finally, an example is shown of this preprocessing making orientation recovery more reliable, especially for data sets containing very few patterns, using the expansion–maximization–compression algorithm. International Union of Crystallography 2022-02-01 /pmc/articles/PMC8805166/ /pubmed/35145358 http://dx.doi.org/10.1107/S1600576721012371 Text en © Alfredo Bellisario et al. 2022 https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution (CC-BY) Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original authors and source are cited.
spellingShingle Research Papers
Bellisario, Alfredo
Maia, Filipe R. N. C.
Ekeberg, Tomas
Noise reduction and mask removal neural network for X-ray single-particle imaging
title Noise reduction and mask removal neural network for X-ray single-particle imaging
title_full Noise reduction and mask removal neural network for X-ray single-particle imaging
title_fullStr Noise reduction and mask removal neural network for X-ray single-particle imaging
title_full_unstemmed Noise reduction and mask removal neural network for X-ray single-particle imaging
title_short Noise reduction and mask removal neural network for X-ray single-particle imaging
title_sort noise reduction and mask removal neural network for x-ray single-particle imaging
topic Research Papers
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8805166/
https://www.ncbi.nlm.nih.gov/pubmed/35145358
http://dx.doi.org/10.1107/S1600576721012371
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