Cellpose: a generalist algorithm for cellular segmentation.
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IF: 47.990
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Cited by: 924
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Abstract

Many biological applications require the segmentation of cell bodies, membranes and nuclei from microscopy images. Deep learning has enabled great progress on this problem, but current methods are specialized for images that have large training datasets. Here we introduce a generalist, deep learning-based segmentation method called Cellpose, which can precisely segment cells from a wide range of image types and does not require model retraining or parameter adjustments. Cellpose was trained on a new dataset of highly varied images of cells, containing over 70,000 segmented objects. We also demonstrate a three-dimensional (3D) extension of Cellpose that reuses the two-dimensional (2D) model and does not require 3D-labeled data. To support community contributions to the training data, we developed software for manual labeling and for curation of the automated results. Periodically retraining the model on the community-contributed data will ensure that Cellpose improves constantly.

Keywords

Spatial Transcriptomics
PROCEDURE

MeSH terms

Algorithms
Animals
Cell Nucleus
Deep Learning
Female
Humans
Image Processing, Computer-Assisted
Male
Mice
Mice, Inbred C57BL
Neural Networks, Computer
Neurons
Software

Authors

Stringer, Carsen
Wang, Tim
Michaelos, Michalis
Pachitariu, Marius

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