Boehringer-Ingelheim/deep-learning-based-quantification-of-NAFLD-NASH
Automated liver NAFLD/NASH scoring
This tool helps researchers and pathologists automatically quantify the progression of NAFLD/NASH in human liver biopsies. By inputting microscopy images of Masson's Trichrome or Goldner stained liver tissue, it outputs continuous numerical scores for Steatosis, Ballooning, Inflammation, and Fibrosis, mirroring the pathologist-based Kleiner score. This is designed for researchers studying liver diseases.
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Use this if you need to objectively quantify liver biopsy features for NAFLD/NASH research, moving from subjective visual assessment to continuous numerical scores.
Not ideal if you require a diagnostic tool for clinical use, as this method is experimental and for research only.
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13
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Language
Jupyter Notebook
License
BSD-3-Clause
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Last pushed
Aug 02, 2024
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