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Enforcing Prediction Consistency Across Orthogonal Planes Significantly Improves Segmentation of FIB-SEM Image Volumes by 2D Neural Networks.

Published online by Cambridge University Press:  30 July 2020

Ryan Conrad
Affiliation:
National Cancer Institute, NIH & Frederick National Laboratory for Cancer Research, Frederick, Maryland, United States
Hanbin Lee
Affiliation:
National Cancer Institute, NIH & Frederick National Laboratory for Cancer Research, Frederick, Maryland, United States
Kedar Narayan
Affiliation:
National Cancer Institute, NIH & Frederick National Laboratory for Cancer Research, Frederick, Maryland, United States

Abstract

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Type
Advances in Modeling, Simulation, and Artificial Intelligence in Microscopy and Microanalysis for Physical and Biological Systems
Copyright
Copyright © Microscopy Society of America 2020

References

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We thank Adam Harned for acquiring the FIB-SEM datasets used throughout this work and Dr. Stanley Lipkowitz for providing the cell samples. This project has been funded in whole or in part with Federal funds from the National Cancer Institute, National Institutes of Health, under Contract No. 75N91019D00024. The content of this publication does not necessarily reflect the views or policies of the Department of Health and Human Services, nor does mention of trade names, commercial products, or organizations imply endorsement by the U.S. Government.Google Scholar