Confirmatory Results
Evaluation of Deep Learning Strategies for Nucleus Segmentation in Fluorescence Images
Juan C. Caicedo, Jonathan Roth, Allen Goodman, View ORCID ProfileTim Becker, View ORCID ProfileKyle W. Karhohs, Claire McQuin, Shantanu Singh, View ORCID ProfileAnne E. Carpenter
doi: https://doi.org/10.1101/335216
Juan C. Caicedo
1Broad Institute of MIT and Harvard
Jonathan Roth
2Technical University of Munich
Allen Goodman
1Broad Institute of MIT and Harvard
Tim Becker
1Broad Institute of MIT and Harvard
Kyle W. Karhohs
1Broad Institute of MIT and Harvard
Claire McQuin
1Broad Institute of MIT and Harvard
Shantanu Singh
1Broad Institute of MIT and Harvard
Anne E. Carpenter
1Broad Institute of MIT and Harvard
Article usage
Posted May 31, 2018.
Evaluation of Deep Learning Strategies for Nucleus Segmentation in Fluorescence Images
Juan C. Caicedo, Jonathan Roth, Allen Goodman, Tim Becker, Kyle W. Karhohs, Claire McQuin, Shantanu Singh, Anne E. Carpenter
bioRxiv 335216; doi: https://doi.org/10.1101/335216
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