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Expert- and Nonexpert-friendly Framework for Deep Learning Image Segmentation Demonstrates Successes Across Applications in Vem, CryoEM, MicroCT and Fluorescence Microscopy.

Microscopy and microanalysis the official journal of Microscopy Society of America, Microbeam Analysis Society, Microscopical Society of Canada(2023)

Department of Biochemistry and Molecular Biol

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Abstract
Journal Article Expert- and Nonexpert-friendly Framework for Deep Learning Image Segmentation Demonstrates Successes Across Applications in vEM, CryoEM, MicroCT and Fluorescence Microscopy Get access Jessica Heebner, Jessica Heebner Department of Biochemistry and Molecular Biol, Penn State College of Medicine. Hershey, PA, USA Search for other works by this author on: Oxford Academic Google Scholar Benjamin Provencher, Benjamin Provencher Object Research Systems. Montréal, Canada Search for other works by this author on: Oxford Academic Google Scholar Nicolas Piché, Nicolas Piché Object Research Systems. Montréal, Canada Search for other works by this author on: Oxford Academic Google Scholar Mike Marsh Mike Marsh Object Research Systems. Montréal, Canada Search for other works by this author on: Oxford Academic Google Scholar Microscopy and Microanalysis, Volume 29, Issue Supplement_1, 1 August 2023, Pages 984–985, https://doi.org/10.1093/micmic/ozad067.492 Published: 22 July 2023
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