Filling of incomplete sinograms from sparse PET detector configurations using a residual U-Net
Klara Leffler, Luigi Tommaso Luppino, Samuel Kuttner, Karin S\"oderkvist, Jan Axelsson

TL;DR
This paper introduces a deep learning method using a residual U-Net to restore incomplete sinograms in sparse PET systems, improving image quality and enabling cost-effective total body PET scanners.
Contribution
The study presents a novel deep learning approach to fill missing sinogram data in sparse PET configurations, enhancing image reconstruction quality.
Findings
Successfully recovers missing sinogram data with low error
Outperforms traditional interpolation methods
Demonstrates potential for cost-effective PET scanner design
Abstract
Long axial field-of-view PET scanners offer increased field-of-view and sensitivity compared to traditional PET scanners. However, a significant cost is associated with the densely packed photodetectors required for the extended-coverage systems, limiting clinical utilisation. To mitigate the cost limitations, alternative sparse system configurations have been proposed, allowing an extended field-of-view PET design with detector costs similar to a standard PET system, albeit at the expense of image quality. In this work, we propose a deep sinogram restoration network to fill in the missing sinogram data. Our method utilises a modified Residual U-Net, trained on clinical PET scans from a GE Signa PET/MR, simulating the removal of 50% of the detectors in a chessboard pattern (retaining only 25% of all lines of response). The model successfully recovers missing counts, with a mean absolute…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Embedded Systems Design Techniques
