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- Title
A statistical framework for evaluating convolutional neural networks. Application to colon cancer.
- Authors
Popa, Liliana
- Abstract
Explore the efficiency of two convolutional neural networks in helping physicians in establishing colon cancer diagnosis from histopathological image scans. Methods: The dataset used in this study contains 357 histopathological image slides that ranged from benign cases to colon cancer grade three. The slides were collected by doctors at the Emergency Hospital of Craiova, Romania. The study proposes a statistical framework that studies the performances of two convolutional neural networks AlexNet and GoogleNet. Results: AlexNet has revealed a competitive accuracy in comparison with GoogleNet. To prove the robustness of the AlexNet in fair terms, we have performed a thorough statistical analysis of its performance. Conclusions: On this particular dataset which contains histopathological image scans regarding colon cancer, the convolutional neural network AlexNet proved to be superior to GoogleNet.
- Subjects
ROMANIA; CRAIOVA (Romania); CONVOLUTIONAL neural networks; COLON cancer; COLON cancer diagnosis; PHYSICIANS; HISTOPATHOLOGY
- Publication
Annals of the University of Craiova. Mathematics & Computer Science Series, 2021, Vol 48, Issue 1, p159
- ISSN
1223-6934
- Publication type
Article
- DOI
10.52846/ami.v48i1.1449