Literature DB >> 33566760

DeepRegularizer: Rapid Resolution Enhancement of Tomographic Imaging Using Deep Learning.

DongHun Ryu, Dongmin Ryu, YoonSeok Baek, Hyungjoo Cho, Geon Kim, Young Seo Kim, Yongki Lee, Yoosik Kim, Jong Chul Ye, Hyun-Seok Min, YongKeun Park.   

Abstract

Optical diffraction tomography measures the three-dimensional refractive index map of a specimen and visualizes biochemical phenomena at the nanoscale in a non-destructive manner. One major drawback of optical diffraction tomography is poor axial resolution due to limited access to the three-dimensional optical transfer function. This missing cone problem has been addressed through regularization algorithms that use a priori information, such as non-negativity and sample smoothness. However, the iterative nature of these algorithms and their parameter dependency make real-time visualization impossible. In this article, we propose and experimentally demonstrate a deep neural network, which we term DeepRegularizer, that rapidly improves the resolution of a three-dimensional refractive index map. Trained with pairs of datasets (a raw refractive index tomogram and a resolution-enhanced refractive index tomogram via the iterative total variation algorithm), the three-dimensional U-net-based convolutional neural network learns a transformation between the two tomogram domains. The feasibility and generalizability of our network are demonstrated using bacterial cells and a human leukaemic cell line, and by validating the model across different samples. DeepRegularizer offers more than an order of magnitude faster regularization performance compared to the conventional iterative method. We envision that the proposed data-driven approach can bypass the high time complexity of various image reconstructions in other imaging modalities.

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Year:  2021        PMID: 33566760     DOI: 10.1109/TMI.2021.3058373

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  2 in total

1.  Rapid species identification of pathogenic bacteria from a minute quantity exploiting three-dimensional quantitative phase imaging and artificial neural network.

Authors:  Geon Kim; Daewoong Ahn; Minhee Kang; Jinho Park; DongHun Ryu; YoungJu Jo; Jinyeop Song; Jea Sung Ryu; Gunho Choi; Hyun Jung Chung; Kyuseok Kim; Doo Ryeon Chung; In Young Yoo; Hee Jae Huh; Hyun-Seok Min; Nam Yong Lee; YongKeun Park
Journal:  Light Sci Appl       Date:  2022-06-23       Impact factor: 20.257

Review 2.  Roadmap on Digital Holography-Based Quantitative Phase Imaging.

Authors:  Vinoth Balasubramani; Małgorzata Kujawińska; Cédric Allier; Vijayakumar Anand; Chau-Jern Cheng; Christian Depeursinge; Nathaniel Hai; Saulius Juodkazis; Jeroen Kalkman; Arkadiusz Kuś; Moosung Lee; Pierre J Magistretti; Pierre Marquet; Soon Hock Ng; Joseph Rosen; Yong Keun Park; Michał Ziemczonok
Journal:  J Imaging       Date:  2021-11-26
  2 in total

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