Mammographic Breast Positioning Assessment via Deep Learning
Toygar Tanyel, Nurper Denizoglu, Mustafa Ege Seker, Deniz Alis, Esma, Cerekci, Ercan Karaarslan, Erkin Aribal, Ilkay Oksuz

TL;DR
This paper presents a deep learning approach to quantitatively assess mammogram positioning quality, improving accuracy in landmark detection and classification, which is crucial for early breast cancer diagnosis.
Contribution
Introduces a novel deep learning methodology using attention and coordinate convolution modules for mammogram positioning assessment, with state-of-the-art accuracy and explainability.
Findings
CoordAtt UNet achieved 88.63% accuracy in positioning classification
Model recorded lowest mean errors in anatomical landmark detection
Increased accuracy with attention mechanisms and CoordConv modules
Abstract
Breast cancer remains a leading cause of cancer-related deaths among women worldwide, with mammography screening as the most effective method for the early detection. Ensuring proper positioning in mammography is critical, as poor positioning can lead to diagnostic errors, increased patient stress, and higher costs due to recalls. Despite advancements in deep learning (DL) for breast cancer diagnostics, limited focus has been given to evaluating mammography positioning. This paper introduces a novel DL methodology to quantitatively assess mammogram positioning quality, specifically in mediolateral oblique (MLO) views using attention and coordinate convolution modules. Our method identifies key anatomical landmarks, such as the nipple and pectoralis muscle, and automatically draws a posterior nipple line (PNL), offering robust and inherently explainable alternative to well-known…
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Taxonomy
TopicsDigital Radiography and Breast Imaging · AI in cancer detection · Wireless Body Area Networks
MethodsSoftmax · Attention Is All You Need · Focus · Convolution · CoordConv
