Shorter SPECT Scans Using Self-supervised Coordinate Learning to Synthesize Skipped Projection Views
Zongyu Li, Yixuan Jia, Xiaojian Xu, Jason Hu, Jeffrey A., Fessler, Yuni K. Dewaraja

TL;DR
This paper introduces a self-supervised neural radiance field-based method to synthesize skipped SPECT projection views, enabling shorter scan times without sacrificing quantitative accuracy, especially useful in low-count and multi-bed imaging scenarios.
Contribution
The study presents a novel self-supervised coordinate learning approach adapted from NeRF to synthesize under-sampled SPECT views, eliminating the need for extensive training data.
Findings
Outperformed linear interpolation and partial views in RCNR.
Enabled scan time reduction by factors of 2, 4, or 8.
Maintained quantitative accuracy in clinical SPECT reconstructions.
Abstract
Purpose: This study addresses the challenge of extended SPECT imaging duration under low-count conditions, as encountered in Lu-177 SPECT imaging, by developing a self-supervised learning approach to synthesize skipped SPECT projection views, thus shortening scan times in clinical settings. Methods: We employed a self-supervised coordinate-based learning technique, adapting the neural radiance field (NeRF) concept in computer vision to synthesize under-sampled SPECT projection views. For each single scan, we used self-supervised coordinate learning to estimate skipped SPECT projection views. The method was tested with various down-sampling factors (DFs=2, 4, 8) on both Lu-177 phantom SPECT/CT measurements and clinical SPECT/CT datasets, from 11 patients undergoing Lu-177 DOTATATE and 6 patients undergoing Lu-177 PSMA-617 radiopharmaceutical therapy. Results: For SPECT reconstructions,…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Image Processing Techniques and Applications · Medical Image Segmentation Techniques
