A machine learning based framework for assisting pathologists in grading and counting of breast cancer cells

ICT Express - Tập 7 - Trang 440-444 - 2021
Sreeraj M.1, Jestin Joy2
1Department of Computer Science, Sree Ayyappa College, Alappuzha, Kerala, India
2Department of CSE, Federal Institute of Science And Technology(FISAT), Kerala, India

Tài liệu tham khảo

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