bmdeep/SegPC2021
Multi-scale Regional Attention Deeplab3+: Multiple Myeloma Plasma Cells Segmentation in Microscopic Images
This project helps medical professionals and researchers analyze microscopic images for multiple myeloma plasma cells. By inputting raw microscopic images, it accurately identifies and outlines individual plasma cells, producing segmented images that highlight these specific cells. It is designed for pathologists, oncologists, and medical researchers studying multiple myeloma.
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Use this if you need to precisely segment and count multiple myeloma plasma cells in microscopic images for diagnostic support or research.
Not ideal if you are working with other types of cells or diseases, or if your images are from a different modality than standard microscopy.
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Language
Jupyter Notebook
License
MIT
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Last pushed
Aug 12, 2023
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