epithelia

Description

FishFeats: napari plugin to perform quantification of multimodal labeling at the single-cell level in 3D tissues.

FishFeats allows to perform together in the same pipeline several analysis to quantify epithelia cells in 3D tissue, analysing cell morphology, nuclei, immuno-staining or RNA expression. The plugin allows flexibility to let the user choose the relevant step for a specific biological question.

 

Description

EPySeg is a package for segmenting 2D epithelial tissues. EPySeg also ships with a graphical user interface that allows for building, training and running deep learning models.

Training can be done with or without data augmentation (2D-xy and 3D-xyz data augmentation are supported). EPySeg relies on the segmentation_models library. EPySeg source code is available here. Cloud version available here.

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Description

DeXtrusion is a machine learning based python pipeline to detect cell extrusions in epithelial tissues movies. It can also detect cell divisions and SOPs, and can easily be trained to detect other dynamic events.

DeXtrusion takes as input a movie of an epithelium and outputs the spatio-temporal location of cell extrusion events or other event as cell divisions. The movie is discretized into small overlapping rolling windows which are individually classified for event detection by a trained neural network. Results are then put together in event probability map for the whole movie or as spatio-temporal points indicating each event.

DeXtrusion probability map
Description

BioImage.IO -- a collaborative effort to bring AI models to the bioimaging community. 

  • Integrated with Fiji, ilastik, ImJoy and more
  • Try model instantly with BioEngine
  • Contribute your models via Github

This is a database of pretrained deep Learning models. 

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