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DeXtrusion: automatic recognition of epithelial cell extrusion through machine learning <i>in vivo</i>

Alexis Villars, Gaëlle Letort, Léo Valon, Romain Levayer

2023Development22 citationsDOIOpen Access PDF

Abstract

Accurately counting and localising cellular events from movies is an important bottleneck of high-content tissue/embryo live imaging. Here, we propose a new methodology based on deep learning that allows automatic detection of cellular events and their precise xyt localisation on live fluorescent imaging movies without segmentation. We focused on the detection of cell extrusion, the expulsion of dying cells from the epithelial layer, and devised DeXtrusion: a pipeline based on recurrent neural networks for automatic detection of cell extrusion/cell death events in large movies of epithelia marked with cell contour. The pipeline, initially trained on movies of the Drosophila pupal notum marked with fluorescent E-cadherin, is easily trainable, provides fast and accurate extrusion predictions in a large range of imaging conditions, and can also detect other cellular events, such as cell division or cell differentiation. It also performs well on other epithelial tissues with reasonable re-training. Our methodology could easily be applied for other cellular events detected by live fluorescent microscopy and could help to democratise the use of deep learning for automatic event detections in developing tissues.

Topics & Concepts

BiologyPipeline (software)BottleneckLive cell imagingSegmentationArtificial intelligenceDeep learningCell biologyCellCell divisionFully automaticCell typeComputer visionComputer scienceEngineeringEmbedded systemGeneticsMechanical engineeringProgramming languageCell Image Analysis TechniquesAdvanced Fluorescence Microscopy TechniquesCellular Mechanics and Interactions
DeXtrusion: automatic recognition of epithelial cell extrusion through machine learning <i>in vivo</i> | Litcius