2022
DOI: 10.3389/fonc.2022.827136
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Simultaneous Image Reconstruction and Element Decomposition for Iodine Contrast Agent Visualization in Multienergy Element-Resolved Cone Beam CT

Abstract: Iodine contrast agent is widely used in liver cancer radiotherapy at CT simulation stage to enhance detectability of tumor. However, its application in cone beam CT (CBCT) for image guidance before treatment delivery is still limited because of poor image quality and excessive dose of contrast agent during multiple treatment fractions. We previously developed a multienergy element-resolved (MEER) CBCT framework that included x-ray projection data acquisition on a conventional CBCT platform in a kVp-switching m… Show more

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“…Reducing the concentration of contrast agents and enhancing image reconstruction quality are therefore the two essential tasks to accomplish before a contrast agent can be widely applied for CBCT to achieve better patient setup accuracy. Wang et al (2022) proposed that these two tasks could be tackled by using the sparsity-dictionary approach, which is able to simultaneously reconstruct images of elemental composition, electron density, and linear attenuations of different energy levels. The results illustrated its capability in producing virtual multi-energy CBCT images.…”
Section: Multi-contrast Decomposition With Mectmentioning
confidence: 99%
“…Reducing the concentration of contrast agents and enhancing image reconstruction quality are therefore the two essential tasks to accomplish before a contrast agent can be widely applied for CBCT to achieve better patient setup accuracy. Wang et al (2022) proposed that these two tasks could be tackled by using the sparsity-dictionary approach, which is able to simultaneously reconstruct images of elemental composition, electron density, and linear attenuations of different energy levels. The results illustrated its capability in producing virtual multi-energy CBCT images.…”
Section: Multi-contrast Decomposition With Mectmentioning
confidence: 99%