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Enhancing AI Diagnostics: Autonomous Lesion Masking via Semi-Supervised Deep Learning

Authors :
Wei, Ting-Ruen
Hell, Michele
Le, Dang Bich Thuy
Vierra, Aren
Pang, Ran
Patel, Mahesh
Kang, Young
Yan, Yuling
Publication Year :
2024

Abstract

This study presents an unsupervised domain adaptation method aimed at autonomously generating image masks outlining regions of interest (ROIs) for differentiating breast lesions in breast ultrasound (US) imaging. Our semi-supervised learning approach utilizes a primitive model trained on a small public breast US dataset with true annotations. This model is then iteratively refined for the domain adaptation task, generating pseudo-masks for our private, unannotated breast US dataset. The dataset, twice the size of the public one, exhibits considerable variability in image acquisition perspectives and demographic representation, posing a domain-shift challenge. Unlike typical domain adversarial training, we employ downstream classification outcomes as a benchmark to guide the updating of pseudo-masks in subsequent iterations. We found the classification precision to be highly correlated with the completeness of the generated ROIs, which promotes the explainability of the deep learning classification model. Preliminary findings demonstrate the efficacy and reliability of this approach in streamlining the ROI annotation process, thereby enhancing the classification and localization of breast lesions for more precise and interpretable diagnoses.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.12450
Document Type :
Working Paper