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Deep Learning–Assisted Multiphoton Microscopy to Reduce Light Exposure and Expedite Imaging in Tissues With High and Low Light Sensitivity

Authors :
Yuntian Xue
Pierre Baldi
William C. Tang
Magdalene J. Seiler
Mihaela Balu
Andrew W. Browne
Stephen McAleer
Alexander Fast
Source :
Translational vision science & technology, vol 10, iss 12, Translational Vision Science & Technology
Publication Year :
2021
Publisher :
Association for Research in Vision and Ophthalmology (ARVO), 2021.

Abstract

Purpose Two-photon excitation fluorescence (2PEF) reveals information about tissue function. Concerns for phototoxicity demand lower light exposure during imaging. Reducing excitation light reduces the quality of the image by limiting fluorescence emission. We applied deep learning (DL) super-resolution techniques to images acquired from low light exposure to yield high-resolution images of retinal and skin tissues. Methods We analyzed two methods: a method based on U-Net and a patch-based regression method using paired images of skin (550) and retina (1200), each with low- and high-resolution paired images. The retina dataset was acquired at low and high laser powers from retinal organoids, and the skin dataset was obtained from averaging 7 to 15 frames or 70 frames. Mean squared error (MSE) and the structural similarity index measure (SSIM) were outcome measures for DL algorithm performance. Results For the skin dataset, the patches method achieved a lower MSE (3.768) compared with U-Net (4.032) and a high SSIM (0.824) compared with U-Net (0.783). For the retinal dataset, the patches method achieved an average MSE of 27,611 compared with 146,855 for the U-Net method and an average SSIM of 0.636 compared with 0.607 for the U-Net method. The patches method was slower (303 seconds) than the U-Net method (

Details

ISSN :
21642591
Volume :
10
Database :
OpenAIRE
Journal :
Translational Vision Science & Technology
Accession number :
edsair.doi.dedup.....149caf6406d3840a0099baac6d806bfb
Full Text :
https://doi.org/10.1167/tvst.10.12.30