Deep Learning Implementation in the Classification of Breast Medical Images
Deep Learning Implementation in the Classification of Breast Medical Images is a scholarly work, published in 2024 in ''Bulletin of Faculty of Science Zagazig University''. The main subjects of the publication include deep learning, radiomics, artificial intelligence, medical imaging, pattern recognition, and computer science. Breast cancer is one of the prime purposes of ending women's life.For this purpose, mammogram analysis is an active manner that helps radiologists in the detection of breast cancer early.This paper uses deep learning models to classify mammographic images.The support vector machine (SVM) with deep learning features of a mammogram helps to classify breast tissue based on image processing techniques.Based on the values of these features of a digital mammogram, both deep learning models and SVM try to classify the breast tissue into basic categories normal, and abnormal given in the database (mini-MIAS database).Data augmentation mechanisms have been applied to increase the training set size to avoid overfitting.After making a comparison of some models, it became clear that the best result of the classification is 97.77 % by using the VGG model.These results will be useful in making medical classification images more accurate.By this method, a radiologist can detect if the breast has cancer or not.