Literature DB >> 35154871

Deep-3D microscope: 3D volumetric microscopy of thick scattering samples using a wide-field microscope and machine learning.

Bowen Li1, Shiyu Tan2, Jiuyang Dong3, Xiaocong Lian1, Yongbing Zhang4, Xiangyang Ji1,5, Ashok Veeraraghavan2,6.   

Abstract

Confocal microscopy is a standard approach for obtaining volumetric images of a sample with high axial and lateral resolution, especially when dealing with scattering samples. Unfortunately, a confocal microscope is quite expensive compared to traditional microscopes. In addition, the point scanning in confocal microscopy leads to slow imaging speed and photobleaching due to the high dose of laser energy. In this paper, we demonstrate how the advances in machine learning can be exploited to "teach" a traditional wide-field microscope, one that's available in every lab, into producing 3D volumetric images like a confocal microscope. The key idea is to obtain multiple images with different focus settings using a wide-field microscope and use a 3D generative adversarial network (GAN) based neural network to learn the mapping between the blurry low-contrast image stacks obtained using a wide-field microscope and the sharp, high-contrast image stacks obtained using a confocal microscope. After training the network with widefield-confocal stack pairs, the network can reliably and accurately reconstruct 3D volumetric images that rival confocal images in terms of its lateral resolution, z-sectioning and image contrast. Our experimental results demonstrate generalization ability to handle unseen data, stability in the reconstruction results, high spatial resolution even when imaging thick (∼40 microns) highly-scattering samples. We believe that such learning-based microscopes have the potential to bring confocal imaging quality to every lab that has a wide-field microscope.
© 2021 Optica Publishing Group under the terms of the Optica Open Access Publishing Agreement.

Entities:  

Year:  2021        PMID: 35154871      PMCID: PMC8803017          DOI: 10.1364/BOE.444488

Source DB:  PubMed          Journal:  Biomed Opt Express        ISSN: 2156-7085            Impact factor:   3.562


  25 in total

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10.  Noninvasive imaging beyond the diffraction limit of 3D dynamics in thickly fluorescent specimens.

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