Soft-Voting colorectal cancer risk prediction based on EHLI components

Informatics in Medicine Unlocked - Tập 33 - Trang 101070 - 2022
N. Qarmiche1, M. Chrifi Alaoui2, K. El Kinany3, K. El Rhazi3, N. Chaoui1
1Laboratory of Artificial Intelligence, Data Science and Emerging Systems, National School of Applied Sciences Fez, Sidi Mohamed Ben Abdellah University, Fez, Morocco
2Laboratory of Modelling and Mathematical Structures, Faculty of Science and Technology, Fez, Morocco
3Department of Epidemiology, Clinical Research and Community Health, Faculty of Medicine and Pharmacy of Fez, Sidi Mohamed Ben Abdellah University, Fez, Morocco

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