Breast Ultrasound Computer-Aided Diagnosis Using Structure-Aware Triplet Path Networks
Erlei Zhang, Zi Yang, Stephen Seiler, Mingli Chen, Weiguo Lu, Xuejun, Gu

TL;DR
This paper introduces SATPN, a structure-aware triplet path network that combines classification and image reconstruction tasks to improve breast ultrasound diagnosis accuracy on small datasets.
Contribution
The paper proposes a novel SATPN model that integrates lesion structure features and dual tasks, enhancing diagnosis accuracy with limited training data.
Findings
SATPN achieved around 93.5% classification accuracy.
SATPN outperformed TPN and previous semi-supervised methods.
The approach effectively utilizes small datasets for accurate diagnosis.
Abstract
Breast ultrasound (US) is an effective imaging modality for breast cancer detec-tion and diagnosis. The structural characteristics of breast lesion play an im-portant role in Computer-Aided Diagnosis (CAD). In this paper, a novel struc-ture-aware triplet path networks (SATPN) was designed to integrate classifica-tion and two image reconstruction tasks to achieve accurate diagnosis on US im-ages with small training dataset. Specifically, we enhance clinically-approved breast lesion structure characteristics though converting original breast US imag-es to BIRADS-oriented feature maps (BFMs) with a distance-transformation coupled Gaussian filter. Then, the converted BFMs were used as the inputs of SATPN, which performed lesion classification task and two unsupervised stacked convolutional Auto-Encoder (SCAE) networks for benign and malignant image reconstruction tasks, independently. We…
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Taxonomy
TopicsAI in cancer detection · Image and Signal Denoising Methods · Digital Media Forensic Detection
