Scalable Cytometry Image Processing
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Scalable Cytometry Image Processing (SCIP) is an open-source tool that implements an image processing pipeline on top of Dask, a distributed computing framework written in Python. SCIP performs normalization, image segmentation and masking, and feature extraction.
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