HADS-Net:A Hybrid Attention-Augmented Dual-Stream Network with Physics-Informed Augmentation for Breast Ultrasound Image Classification
Chinedu Emmanuel Mbonu, Blessing Nwamaka Iduh, Joseph Ikechukwu Odo, Doris Chinedu Asogwa

TL;DR
HADS-Net is a dual-stream deep learning model that combines physics-informed augmentation and attention mechanisms to improve breast ultrasound image classification accuracy.
Contribution
It introduces a novel dual-stream architecture with physics-based augmentation and cross-attention fusion for enhanced ultrasound image analysis.
Findings
Achieves 96.58% accuracy on BUSI dataset
Macro ROC-AUC of 0.9978 demonstrates high discriminative power
No malignant lesion misclassified as normal, indicating high reliability
Abstract
Accurate classification of breast ultrasound images into benign, malignant, and normal categories is a critical clinical task complicated by speckle noise, acoustic shadowing, and inter-class visual ambiguity. Existing deep learning methods rely on single-stream architectures with generic augmentation that ignores ultrasound acquisition physics, and no prior method dedicates a stream to the lesion boundary features identified as the most diagnostically significant visual cue. We propose HADS-Net, a Hybrid Attention-Augmented Dual-Stream Network exploiting global texture and local boundary cues through two parallel pathways. Stream 1 applies physics-informed augmentation simulating speckle noise, acoustic shadowing, and gain variation before extracting features via pretrained EfficientNet-B3 projected to 512 dimensions. Stream 2 extracts Sobel edge maps processed by a lightweight CNN…
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