Deep Learning-based Initialization of Iterative Reconstruction for Breast Tomosynthesis
Koen Michielsen, Nikita Moriakov, Jonas Teuwen, Ioannis Sechopoulos

TL;DR
This paper introduces a hybrid approach combining low-resolution deep learning-based initialization with high-resolution iterative reconstruction for breast tomosynthesis, improving image quality and reducing errors.
Contribution
It proposes a novel method that uses deep learning for initialization to enhance iterative reconstruction in breast imaging, addressing resolution and ghosting issues.
Findings
Lower mean squared error with initialization
Improved breast outline and skin depiction
Enhanced reconstruction quality
Abstract
Reconstruction of digital breast tomosynthesis is a challenging problem due to the limited angle data available in such systems. Due to memory limitations, deep learning-based methods can help improve these reconstructions, but can not (yet) attain sufficiently high resolution. In addition to this practical issue, questions remain on the possibility of such models introducing 'ghost' information from the training data that is not compatible with the projection data. To take advantage of some of the benefits of deep learning-based reconstructions while avoiding these limitations, we propose to use the low resolution deep learning-based reconstruction as an initialization of a regular high resolution iterative method. The network was trained using digital phantoms, some based on a mathematical model and some derived from patient dedicated breast CT scans. The output of this network was…
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Taxonomy
TopicsDigital Radiography and Breast Imaging · Medical Imaging Techniques and Applications · AI in cancer detection
