An Innovative Framework for Breast Cancer Detection Using Pyramid Adaptive Atrous Convolution, Transformer Integration, and Multi-Scale Feature Fusion
Ehsan Sadeghi Pour, Mahdi Esmaeili, Morteza Romoozi

TL;DR
This paper introduces a novel deep learning framework combining Pyramid Adaptive Atrous Convolution, Transformer architecture, and Multi-Scale Feature Fusion to improve breast cancer detection accuracy in mammograms.
Contribution
The study presents an innovative model integrating PAAC, Transformers, and multi-scale features, outperforming existing methods in breast cancer detection accuracy.
Findings
Achieved 98.5% accuracy in cancer detection
Outperformed baseline models like BreastNet and Swin-Unet
Demonstrated high sensitivity and specificity in large datasets
Abstract
Breast cancer is one of the most common cancers among women worldwide, and its accurate and timely diagnosis plays a critical role in improving treatment outcomes. This thesis presents an innovative framework for detecting malignant masses in mammographic images by integrating the Pyramid Adaptive Atrous Convolution (PAAC) and Transformer architectures. The proposed approach utilizes Multi-Scale Feature Fusion to enhance the extraction of features from benign and malignant tissues and combines Dice Loss and Focal Loss functions to improve the model's learning process, effectively reducing errors in binary breast cancer classification and achieving high accuracy and efficiency. In this study, a comprehensive dataset of breast cancer images from INbreast, MIAS, and DDSM was preprocessed through data augmentation and contrast enhancement and resized to 227x227 pixels for model training.…
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Taxonomy
TopicsAI in cancer detection · Brain Tumor Detection and Classification · Infrared Thermography in Medicine
