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Content-Aware Image Restoration: Pushing the Limits of Fluorescence Microscopy

Authors :
Marino Zerial
Loic Royer
Pavel Tomancak
Benjamin Wilhelm
Michele Solimena
Uwe Schmidt
Akanksha Jain
Ricardo Henriques
Martin Weigert
Alexandr Dibrov
Tobias Boothe
Jochen C. Rink
Deborah Schmidt
Mauricio Rocha-Martins
Eugene W. Myers
Siân Culley
Fabián Segovia-Miranda
Coleman Broaddus
Florian Jug
Andreas Müller
Caren Norden
Source :
Nature Methods, Nat. Methods 15, 1090-1097 (2018)
Publication Year :
2017
Publisher :
Cold Spring Harbor Laboratory, 2017.

Abstract

Fluorescence microscopy is a key driver of discoveries in the life sciences, with observable phenomena being limited by the optics of the microscope, the chemistry of the fluorophores, and the maximum photon exposure tolerated by the sample. These limits necessitate trade-offs between imaging speed, spatial resolution, light exposure, and imaging depth. In this work we show how content-aware image restoration based on deep learning extends the range of biological phenomena observable by microscopy. We demonstrate on eight concrete examples how microscopy images can be restored even if 60-fold fewer photons are used during acquisition, how near isotropic resolution can be achieved with up to tenfold under-sampling along the axial direction, and how tubular and granular structures smaller than the diffraction limit can be resolved at 20-times-higher frame rates compared to state-of-the-art methods. All developed image restoration methods are freely available as open source software in Python, FIJI, and KNIME. Content-aware image restoration (CARE) uses deep learning to improve microscopy images. CARE bypasses the trade-offs between imaging speed, resolution, and maximal light exposure that limit fluorescence imaging to enable discovery.

Details

Language :
English
Database :
OpenAIRE
Journal :
Nature Methods, Nat. Methods 15, 1090-1097 (2018)
Accession number :
edsair.doi.dedup.....7b36df9e07ec16ee68139cd8557fde4e
Full Text :
https://doi.org/10.1101/236463