EPySeg: a coding-free solution for automated segmentation of epithelia using deep learning

Epithelia are dynamic tissues that self-remodel during their development. During morphogenesis, the tissue-scale organization of epithelia is obtained through a sum of individual contributions of the cells constituting the tissue. Therefore, understanding any morphogenetic event first requires a tho...

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Veröffentlicht in:Development (Cambridge) 2020-12, Vol.147 (24)
Hauptverfasser: Aigouy, Benoit, Cortes, Claudio, Liu, Shanda, Prud'Homme, Benjamin
Format: Artikel
Sprache:eng
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Zusammenfassung:Epithelia are dynamic tissues that self-remodel during their development. During morphogenesis, the tissue-scale organization of epithelia is obtained through a sum of individual contributions of the cells constituting the tissue. Therefore, understanding any morphogenetic event first requires a thorough segmentation of its constituent cells. This task, however, usually involves extensive manual correction, even with semi-automated tools. Here, we present EPySeg, an open-source, coding-free software that uses deep learning to segment membrane-stained epithelial tissues automatically and very efficiently. EPySeg, which comes with a straightforward graphical user interface, can be used as a Python package on a local computer, or on the cloud via Google Colab for users not equipped with deep-learning compatible hardware. By substantially reducing human input in image segmentation, EPySeg accelerates and improves the characterization of epithelial tissues for all developmental biologists.
ISSN:0950-1991
1477-9129
DOI:10.1242/dev.194589