Paper 13407-32
Developing breast dense tissue segmentation algorithm in digital breast tomosynthesis
19 February 2025 • 12:10 PM - 12:30 PM PST | Town & Country C
Abstract
Existing studies on segmenting dense tissue in Digital Breast Tomosynthesis (DBT) remain limited, largely due to the challenges posed by the complexity of multi-slice variations, blurring, and out-of-plane artifacts. This study introduced a fully automated dense tissue segmentation algorithm in DBT image using a fully convolutional network that can also be used to segment fatty tissue and breast area as well. We employed 20 DBT scans from 20 normal patients (BIRADS 1) from the Breast-Cancer-Screening-DBT dataset. For establishing ground truth, one radiologist segmented breast dense tissue, and breast area mask in every slice of each DBT volume. We preprocessed each DBT volume slice-by-slice. Finally, we constructed 3-channel RGB images (ground truth images) by assigning breast area, fatty and dense area into R, G, B channels. Using the DBT images and ground truth, we fine‐tuned the SegNet pretrained for segmenting breast density from 2D mammograms to segment both the breast and the fibroglandular areas in digital breast tomosynthesis (DBT) images. Using a test set, we achieved a dice score of 0.84±0.08. In the DBT, our model performed better than the other models.
Presenter
Univ. of Pittsburgh (United States)
Md-Belayat Hossain currently serves as an Assistant Professor in the Computer Science Department at Southern Illinois University (SIU), Carbondale, IL, since August 2024. Prior to joining SIU, he was a Postdoctoral Associate in the Radiology Department at the University of Pittsburgh, Pittsburgh, PA. His research interests include deep learning, machine learning, medical image processing, generative AI, and computer vision.