D-MASTER: Mask Annealed Transformer for Unsupervised Domain Adaptation in Breast Cancer Detection from Mammograms
Tajamul Ashraf, Krithika Rangarajan, Mohit Gambhir, Richa Gabha,, Chetan Arora

TL;DR
This paper introduces D-MASTER, a transformer-based framework for unsupervised domain adaptation in breast cancer detection from mammograms, significantly improving detection sensitivity across diverse datasets by adaptively masking and refining pseudo-labels.
Contribution
The paper proposes a novel transformer-based autoencoder with adaptive masking and confidence refinement for unsupervised domain adaptation in mammogram analysis, addressing challenges of small regions of interest.
Findings
9-13% sensitivity improvement over state-of-the-art on benchmark datasets
Significant reduction in false positives per image
Provides annotated dataset for further research
Abstract
We focus on the problem of Unsupervised Domain Adaptation (\uda) for breast cancer detection from mammograms (BCDM) problem. Recent advancements have shown that masked image modeling serves as a robust pretext task for UDA. However, when applied to cross-domain BCDM, these techniques struggle with breast abnormalities such as masses, asymmetries, and micro-calcifications, in part due to the typically much smaller size of region of interest in comparison to natural images. This often results in more false positives per image (FPI) and significant noise in pseudo-labels typically used to bootstrap such techniques. Recognizing these challenges, we introduce a transformer-based Domain-invariant Mask Annealed Student Teacher autoencoder (D-MASTER) framework. D-MASTER adaptively masks and reconstructs multi-scale feature maps, enhancing the model's ability to capture reliable target domain…
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Taxonomy
TopicsAI in cancer detection
MethodsFocus
