NCRF
Metastasis detector
Detects cancer metastasis in whole slide images using deep learning and conditional random fields
Cancer metastasis detection with neural conditional random field (NCRF)
757 stars
37 watching
183 forks
Language: Python
last commit: about 1 year ago camelyon16conditional-random-fieldsdeep-learningpathologywhole-slide-imaging
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