Deep learning reconstruction of digital breast tomosynthesis images for accurate breast density and patient-specific radiation dose estimation
Jonas Teuwen, Nikita Moriakov, Christian Fedon, Marco Caballo, Ingrid, Reiser, Pedrag Bakic, Eloy Garc\'ia, Oliver Diaz, Koen Michielsen, Ioannis, Sechopoulos

TL;DR
This paper introduces DBToR, a deep learning-based reconstruction algorithm for digital breast tomosynthesis that accurately estimates breast density and patient-specific radiation dose, outperforming current methods.
Contribution
The study develops a novel deep learning reconstruction method, DBToR, that incorporates breast thickness information to improve density and dose estimation from DBT images.
Findings
High accuracy in breast density estimation (<+/-3%)
Significant improvement in dose estimation (<+/-20%)
Outperforms current state-of-the-art methods
Abstract
The two-dimensional nature of mammography makes estimation of the overall breast density challenging, and estimation of the true patient-specific radiation dose impossible. Digital breast tomosynthesis (DBT), a pseudo-3D technique, is now commonly used in breast cancer screening and diagnostics. Still, the severely limited 3rd dimension information in DBT has not been used, until now, to estimate the true breast density or the patient-specific dose. This study proposes a reconstruction algorithm for DBT based on deep learning specifically optimized for these tasks. The algorithm, which we name DBToR, is based on unrolling a proximal-dual optimization method. The proximal operators are replaced with convolutional neural networks and prior knowledge is included in the model. This extends previous work on a deep learning-based reconstruction model by providing both the primal and the dual…
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