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.
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