Litcius/Paper detail

Intelligent breast cancer diagnosis with two-stage using mammogram images

Muhammad Yaqub, Jinchao Feng, Nazish Aijaz, Shahzad Ahmed, Atif Mehmood, Hao Jiang, Lan He

2024Scientific Reports26 citationsDOIOpen Access PDF

Abstract

Breast cancer (BC) significantly contributes to cancer-related mortality in women, underscoring the criticality of early detection for optimal patient outcomes. Mammography is a key tool for identifying and diagnosing breast abnormalities; however, accurately distinguishing malignant mass lesions remains challenging. To address this issue, we propose a novel deep learning approach for BC screening utilizing mammography images. Our proposed model comprises three distinct stages: data collection from established benchmark sources, image segmentation employing an Atrous Convolution-based Attentive and Adaptive Trans-Res-UNet (ACA-ATRUNet) architecture, and BC identification via an Atrous Convolution-based Attentive and Adaptive Multi-scale DenseNet (ACA-AMDN) model. The hyperparameters within the ACA-ATRUNet and ACA-AMDN models are optimized using the Modified Mussel Length-based Eurasian Oystercatcher Optimization (MML-EOO) algorithm. The performance is evaluated using a variety of metrics, and a comparative analysis against conventional methods is presented. Our experimental results reveal that the proposed BC detection framework attains superior precision rates in early disease detection, demonstrating its potential to enhance mammography-based screening methodologies.

Topics & Concepts

Computer scienceArtificial intelligenceBreast cancerMammographyBenchmark (surveying)Breast cancer screeningSegmentationPattern recognition (psychology)Machine learningCancerMedicineGeodesyInternal medicineGeographyAI in cancer detectionRadiomics and Machine Learning in Medical ImagingCOVID-19 diagnosis using AI