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3 March 2009Breast tissue classification in digital breast tomosynthesis images using texture features: a feasibility study
Mammographic breast density is a known breast cancer risk factor. Studies have shown the potential to automate breast
density estimation by using computerized texture-based segmentation of the dense tissue in mammograms. Digital
breast tomosynthesis (DBT) is a tomographic x-ray breast imaging modality that could allow volumetric breast density
estimation. We evaluated the feasibility of distinguishing between dense and fatty breast regions in DBT using
computer-extracted texture features. Our long-term hypothesis is that DBT texture analysis can be used to develop 3D
dense tissue segmentation algorithms for estimating volumetric breast density. DBT images from 40 women were
analyzed. The dense tissue area was delineated within each central source projection (CSP) image using a thresholding
technique (Cumulus, Univ. Toronto). Two (2.5cm)2 ROIs were manually selected: one within the dense tissue region
and another within the fatty region. Corresponding (2.5cm)3 ROIs were placed within the reconstructed DBT images.
Texture features, previously used for mammographic dense tissue segmentation, were computed. Receiver operating
characteristic (ROC) curve analysis was performed to evaluate feature classification performance. Different texture
features appeared to perform best in the 3D reconstructed DBT compared to the 2D CSP images. Fractal dimension was
superior in DBT (AUC=0.90), while contrast was best in CSP images (AUC=0.92). We attribute these differences to the
effects of tissue superimposition in CSP and the volumetric visualization of the breast tissue in DBT. Our results
suggest that novel approaches, different than those conventionally used in projection mammography, need to be
investigated in order to develop DBT dense tissue segmentation algorithms for estimating volumetric breast density.
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Despina Kontos, Rachelle Berger, Predrag R. Bakic, Andrew D. A. Maidment, "Breast tissue classification in digital breast tomosynthesis images using texture features: a feasibility study," Proc. SPIE 7260, Medical Imaging 2009: Computer-Aided Diagnosis, 726024 (3 March 2009); https://doi.org/10.1117/12.813812