Image restoration of degraded time-lapse microscopy data mediated by near-infrared imaging

2024-01-04 | journal article

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​Image restoration of degraded time-lapse microscopy data mediated by near-infrared imaging​
Gritti, N.; Power, R. M.; Graves, A. & Huisken, J.​ (2024) 
Nature Methods,.​ DOI: https://doi.org/10.1038/s41592-023-02127-z 

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Authors
Gritti, Nicola; Power, Rory M.; Graves, Alyssa; Huisken, Jan
Abstract
Time-lapse fluorescence microscopy is key to unraveling biological development and function; however, living systems, by their nature, permit only limited interrogation and contain untapped information that can only be captured by more invasive methods. Deep-tissue live imaging presents a particular challenge owing to the spectral range of live-cell imaging probes/fluorescent proteins, which offer only modest optical penetration into scattering tissues. Herein, we employ convolutional neural networks to augment live-imaging data with deep-tissue images taken on fixed samples. We demonstrate that convolutional neural networks may be used to restore deep-tissue contrast in GFP-based time-lapse imaging using paired final-state datasets acquired using near-infrared dyes, an approach termed InfraRed-mediated Image Restoration (IR2). Notably, the networks are remarkably robust over a wide range of developmental times. We employ IR2 to enhance the information content of green fluorescent protein time-lapse images of zebrafish and Drosophila embryo/larval development and demonstrate its quantitative potential in increasing the fidelity of cell tracking/lineaging in developing pescoids. Thus, IR2 is poised to extend live imaging to depths otherwise inaccessible.
Issue Date
4-January-2024
Journal
Nature Methods 
Project
EXC 2067: Multiscale Bioimaging 
Working Group
RG Huisken 
External URL
https://mbexc.uni-goettingen.de/literature/publications/814
ISSN
1548-7091
eISSN
1548-7105
Language
English

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