Authors
Dheeb Albashish, Rizik Al-Sayyed, Azizi Abdullah, Mohammad Hashem Ryalat, Nedaa Ahmad Almansour
Publication date
2021/7/14
Conference
2021 International conference on information technology (ICIT)
Pages
805-810
Publisher
IEEE
Description
Deep learning (DL) technologies are becoming a buzzword these days, especially for breast histopathology image tasks, such as diagnosing, due to the high performance obtained in image classification. Among deep learning types, Convolutional Neural Networks (CNN) are the most common types of DL models utilized for medical image diagnosis and analysis. However, CNN suffers from high computation cost to be implemented and may require to adapt huge number of parameters. Thus, and in order to address this issue; several pre-trained models have been established with the predefined network architecture. In this study, a transfer learning model based on Visual Geometry Group with 16-layer deep model architecture (VGG16) is utilized to extract high-level features from the BreaKHis benchmark histopathological images dataset. Then, multiple machine learning models (classifiers) are used to handle …
Total citations
20212022202320241234330
Scholar articles
D Albashish, R Al-Sayyed, A Abdullah, MH Ryalat… - 2021 International conference on information …, 2021