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High-Resolution Imaging of Single-Cell Behaviors in 3D Bacterial Biofilms using Lattice-Light Sheet Microscopy and Deep Learning-Based Image Processing

Published online by Cambridge University Press:  30 July 2021

Ji Zhang
Affiliation:
University of Virginia, United States
Yibo Wang
Affiliation:
University of Virginia, United States
Mingxing Zhang
Affiliation:
University of Virginia, United States
Alecia Achimovich
Affiliation:
University of Virginia, United States
Jie Wang
Affiliation:
University of Virginia, United States
Scott Acton
Affiliation:
University of Virginia, United States
Andreas Gahlmann
Affiliation:
University of Virginia, CHARLOTTESVILLE, Virginia, United States

Abstract

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Type
From Images to Insights: Working with Large Multi-modal Data in Cell Biological Imaging
Copyright
Copyright © The Author(s), 2021. Published by Cambridge University Press on behalf of the Microscopy Society of America

References

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