Early Detection and Classification of Breast Cancer Using Deep Learning Techniques
Mst. Mumtahina Labonno, D.M. Asadujjaman, Md. Mahfujur Rahman,, Abdullah Tamim, Mst. Jannatul Ferdous, Rafi Muttaki Mahi

TL;DR
This paper demonstrates that deep learning models, especially ResNet50, can accurately classify breast ultrasound images into benign, malignant, or normal, aiding early detection of breast cancer.
Contribution
The study compares multiple pretrained deep learning models and a custom CNN, achieving high accuracy in classifying breast cancer images for early diagnosis.
Findings
ResNet50 achieved 98.41% accuracy
Deep learning models outperform traditional methods
Effective early detection of breast cancer using AI
Abstract
Breast cancer is one of the deadliest cancers causing about massive number of patients to die annually all over the world according to the WHO. It is a kind of cancer that develops when the tissues of the breast grow rapidly and unboundly. This fatality rate can be prevented if the cancer is detected before it gets malignant. Using automation for early-age detection of breast cancer, Artificial Intelligence and Machine Learning technologies can be implemented for the best outcome. In this study, we are using the Breast Cancer Image Classification dataset collected from the Kaggle depository, which comprises 9248 Breast Ultrasound Images and is classified into three categories: Benign, Malignant, and Normal which refers to non-cancerous, cancerous, and normal images.This research introduces three pretrained model featuring custom classifiers that includes ResNet50, MobileNet, and VGG16,…
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Taxonomy
TopicsAI in cancer detection
Methods*Communicated@Fast*How Do I Communicate to Expedia?
