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Cellpose 2.0: how to train your own model
BiologyNature Methods

Cellpose 2.0: how to train your own model

M. Pachitariu and C. Stringer

Cellpose 2.0 revolutionizes biological segmentation with its innovative assembly of pretrained models and a user-friendly human-in-the-loop approach, allowing researchers to customize models efficiently. This exciting development by Marius Pachitariu and Carsen Stringer at HHMI promises to enhance accuracy while minimizing the need for extensive annotation.... show more
Abstract
Pretrained neural network models for biological segmentation can provide good out-of-the-box results for many image types. However, such models do not allow users to adapt the segmentation style to their specific needs and can perform suboptimally for test images that are very different from the training images. Here we introduce Cellpose 2.0, a new package that includes an ensemble of diverse pretrained models as well as a human-in-the-loop pipeline for rapid prototyping of new custom models. We show that models pretrained on the Cellpose dataset can be fine-tuned with only 500–1,000 user-annotated regions of interest (ROI) to perform nearly as well as models trained on entire datasets with up to 200,000 ROI. A human-in-the-loop approach further reduced the required user annotation to 100–200 ROI, while maintaining high-quality segmentations. We provide software tools such as an annotation graphical user interface, a model zoo and a human-in-the-loop pipeline to facilitate the adoption of Cellpose 2.0.
Publisher
Nature Methods
Published On
Dec 01, 2022
Authors
Marius Pachitariu, Carsen Stringer
Tags
biological segmentationpretrained modelsCellpose 2.0custom modelshuman-in-the-loopmodel zoosoftware tools
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