AICAN-Research/H2G-Net
🚀 H2G-Net: Segmentation of breast cancer region from whole slide images
This helps pathologists and researchers accurately identify breast cancer regions within very large digital images of tissue samples (whole slide images). You input a whole slide image, and it outputs a precise segmentation, or outline, of the cancerous areas. It is designed for medical professionals involved in cancer diagnosis and research.
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Use this if you need to quickly and accurately delineate breast cancer tumor regions from gigapixel histopathological images to aid diagnosis or quantitative analysis.
Not ideal if you need to analyze different types of cancer or other tissue anomalies, as it is specifically trained for breast cancer segmentation.
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Jul 21, 2025
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