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Robust single-shot 3D fluorescence imaging in scattering media with a simulator-trained neural network

Imaging through scattering is a pervasive and difficult problem in many biological applications. The high background and the exponentially attenuated target signals due to scattering fundamentally limits the imaging depth of fluorescence microscopy. Light-field systems are favorable for high-speed v...

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Autores principales: Alido, Jeffrey, Greene, Joseph, Xue, Yujia, Hu, Guorong, Li, Yunzhe, Monk, Kevin J., DeBenedicts, Brett T., Davison, Ian G., Tian, Lei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cornell University 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10055497/
https://www.ncbi.nlm.nih.gov/pubmed/36994164
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author Alido, Jeffrey
Greene, Joseph
Xue, Yujia
Hu, Guorong
Li, Yunzhe
Monk, Kevin J.
DeBenedicts, Brett T.
Davison, Ian G.
Tian, Lei
author_facet Alido, Jeffrey
Greene, Joseph
Xue, Yujia
Hu, Guorong
Li, Yunzhe
Monk, Kevin J.
DeBenedicts, Brett T.
Davison, Ian G.
Tian, Lei
author_sort Alido, Jeffrey
collection PubMed
description Imaging through scattering is a pervasive and difficult problem in many biological applications. The high background and the exponentially attenuated target signals due to scattering fundamentally limits the imaging depth of fluorescence microscopy. Light-field systems are favorable for high-speed volumetric imaging, but the 2D-to-3D reconstruction is fundamentally ill-posed and scattering exacerbates the condition of the inverse problem. Here, we develop a scattering simulator that models low-contrast target signals buried in heterogeneous strong background. We then train a deep neural network solely on synthetic data to descatter and reconstruct a 3D volume from a single-shot light-field measurement with low signal-to-background ratio (SBR). We apply this network to our previously developed Computational Miniature Mesoscope and demonstrate the robustness of our deep learning algorithm on a 75 μm thick fixed mouse brain section and on bulk scattering phantoms with different scattering conditions. The network can robustly reconstruct emitters in 3D with a 2D measurement of SBR as low as 1.05 and as deep as a scattering length. We analyze fundamental tradeoffs based on network design factors and out-of-distribution data that affect the deep learning model’s generalizability to real experimental data. Broadly, we believe that our simulator-based deep learning approach can be applied to a wide range of imaging through scattering techniques where experimental paired training data is lacking.
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spelling pubmed-100554972023-03-30 Robust single-shot 3D fluorescence imaging in scattering media with a simulator-trained neural network Alido, Jeffrey Greene, Joseph Xue, Yujia Hu, Guorong Li, Yunzhe Monk, Kevin J. DeBenedicts, Brett T. Davison, Ian G. Tian, Lei ArXiv Article Imaging through scattering is a pervasive and difficult problem in many biological applications. The high background and the exponentially attenuated target signals due to scattering fundamentally limits the imaging depth of fluorescence microscopy. Light-field systems are favorable for high-speed volumetric imaging, but the 2D-to-3D reconstruction is fundamentally ill-posed and scattering exacerbates the condition of the inverse problem. Here, we develop a scattering simulator that models low-contrast target signals buried in heterogeneous strong background. We then train a deep neural network solely on synthetic data to descatter and reconstruct a 3D volume from a single-shot light-field measurement with low signal-to-background ratio (SBR). We apply this network to our previously developed Computational Miniature Mesoscope and demonstrate the robustness of our deep learning algorithm on a 75 μm thick fixed mouse brain section and on bulk scattering phantoms with different scattering conditions. The network can robustly reconstruct emitters in 3D with a 2D measurement of SBR as low as 1.05 and as deep as a scattering length. We analyze fundamental tradeoffs based on network design factors and out-of-distribution data that affect the deep learning model’s generalizability to real experimental data. Broadly, we believe that our simulator-based deep learning approach can be applied to a wide range of imaging through scattering techniques where experimental paired training data is lacking. Cornell University 2023-03-22 /pmc/articles/PMC10055497/ /pubmed/36994164 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Alido, Jeffrey
Greene, Joseph
Xue, Yujia
Hu, Guorong
Li, Yunzhe
Monk, Kevin J.
DeBenedicts, Brett T.
Davison, Ian G.
Tian, Lei
Robust single-shot 3D fluorescence imaging in scattering media with a simulator-trained neural network
title Robust single-shot 3D fluorescence imaging in scattering media with a simulator-trained neural network
title_full Robust single-shot 3D fluorescence imaging in scattering media with a simulator-trained neural network
title_fullStr Robust single-shot 3D fluorescence imaging in scattering media with a simulator-trained neural network
title_full_unstemmed Robust single-shot 3D fluorescence imaging in scattering media with a simulator-trained neural network
title_short Robust single-shot 3D fluorescence imaging in scattering media with a simulator-trained neural network
title_sort robust single-shot 3d fluorescence imaging in scattering media with a simulator-trained neural network
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10055497/
https://www.ncbi.nlm.nih.gov/pubmed/36994164
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