Abstract

Breast density is a risk factor associated with the development of breast cancer. Usually, breast density is assessed on two dimensional (2D) mammograms using the American College of Radiology (ACR) classification. Magnetic resonance imaging (MRI) is a non-radiation based examination method, which offers a three dimensional (3D) alternative to classical 2D mammograms. We propose a new framework for automated breast density calculation on MRI data. Our framework consists of three steps. First, a recently developed method for simultaneous intensity inhomogeneity correction and breast tissue and parenchyma segmentation is applied. Second, the obtained breast component is extracted, and the breast-air and breast-body boundaries are refined. Finally, the fibroglandular/parenchymal tissue volume is extracted from the breast volume. The framework was tested on 37 randomly selected MR mammographies. All images were acquired on a 1.5T MR scanner using an axial, T1-weighted time-resolved angiography with stochastic trajectories sequence. The results were compared to manually obtained groundtruth. Dice's Similarity Coefficient (DSC) as well as Bland-Altman plots were used as the main tools for evaluation of similarity between automatic and manual segmentations. The average Dice's Similarity Coefficient values were and for breast and parenchymal volumes, respectively. Bland-Altman plots showed the mean bias () standard deviation equal for breast volumes and for parenchyma volumes. The automated framework produced sufficient results and has the potential to be applied for the analysis of breast volume and breast density of numerous data in clinical and research settings.

Highlights

  • The mammographic breast density is defined as the area of dense tissue on a mammogram divided by the total area of the imaged breast

  • The 3D breast density evaluation should reduce the measurement errors, which appear in 2D case

  • The first processing step was implemented on an NVIDIA parallel computing platform (CUDA) and the computations were run on NVIDIA Tesla C2070

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Summary

Introduction

The mammographic breast density is defined as the area of dense tissue on a mammogram divided by the total area of the imaged breast (percent mammographic density). Various casecontrol studies within large, prospective cohort studies from Europe, the United States and Canada showed a four to five times increase in breast cancer risk in women with dense breasts [2,3,4,5,6,7,8,9,10]. Breast density is evaluated on two dimensional (2D) X-ray mammograms, which introduces substantial measurement errors, since the breast is a three dimensional (3D) structure. The 3D breast density evaluation should reduce the measurement errors, which appear in 2D case. Full or partial automation of the 3D analysis of breast is required

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