Objective.While photon-counting computed tomography (PCCT) improves image quality and reduces radiation dose, artifacts induced by cardiac and respiratory motion is still a challenge. The purpose of this work is to evaluate the potential of an image-domain motion-artifact-correction method based on a deep-learning model that incorporates spectral information (material basis images).Approach.We simulated PCCT imaging of five XCAT phantoms, and used these for training two deep neural networks-one with and one without spectral information-to map two motion-corrupted virtual monoenergetic images to corresponding motion-free images. Using images from another simulated XCAT phantom, we calculated the CT number error on five regions of interest and 10 segmented organs. The method was also evaluated visually on clinical cardiac PCCT images. Stretch quantification of endocardial engraved zones was used to calculate regional wall motion and mechanical delay. The results were compared with the motion-free image using a paired t-test.Main results.Out of 45 regions and organs, the CT number accuracy is improved in 41 regions (91%). Among these, the best accuracy is obtained with spectral information in 25 regions (61%). Both models, in particular the one with spectral information, improves visual image quality in simulated and clinical images. The model significantly (PSignificance.Our approach, validated on simulated datasets, shows that quantitative cardiac CT imaging can be improved by deep-learning motion correction and that spectral information substantially improves performance.
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Ruihan Huang
Karin Larsson
Dennis Hein
Physics in Medicine and Biology
Emory University
Karolinska Institutet
Georgia Institute of Technology
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Huang et al. (Wed,) studied this question.
www.synapsesocial.com/papers/69a75d4fc6e9836116a271ca — DOI: https://doi.org/10.1088/1361-6560/ae3eee
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