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

Author:

Aigouy Benoit1ORCID,Cortes Claudio1,Liu Shanda2,Prud'Homme Benjamin1

Affiliation:

1. Aix Marseille Univ, CNRS, IBDM, Marseille, France

2. Max Planck Institute for Plant Breeding Research, Köln, Germany

Abstract

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 implies 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.

Funder

Max Planck Core

Fondation Leducq

Centre National de la Recherche Scientifique

France-BioImaging/PICsL infrastructure

European Research Council

Seventh Framework Programme

Publisher

The Company of Biologists

Subject

Developmental Biology,Molecular Biology

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5. LinkNet: Exploiting encoder representations for efficient semantic segmentation;Chaurasia,2017

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