Model-Based Perfusion Reconstruction with Time Separation Technique in Cone-Beam CT Dynamic Liver Perfusion Imaging
Hana Haselji\'c (1,2), Robert Frysch (1,2), Vojt\v{e}ch Kulvait (3),, Thomas Werncke (4,2), Inga Brusch (5), Oliver Speck (2), Jessica Schulz, (6,2), Michael Manhart (6), Georg Rose (1,2) ((1) Institute for Medical, Engineering, Otto von Guericke University Magdeburg, Germany

TL;DR
This paper presents a model-based perfusion reconstruction method using the time separation technique (TST) for cone-beam CT liver perfusion imaging, demonstrating improved noise handling and reduced required rotations, with potential clinical benefits.
Contribution
The study introduces a TST-based reconstruction approach that outperforms static methods and reduces the number of rotations needed, enhancing image quality and efficiency in cone-beam CT perfusion imaging.
Findings
TST with four basis functions preserves relevant perfusion information.
TST outperforms static reconstruction under high noise levels.
Eight rotations suffice for accurate perfusion maps, reducing dose and time.
Abstract
The success of embolisation, a minimally invasive treatment of liver cancer, could be evaluated in the operational room with cone-beam CT by acquiring a dynamic perfusion scan. The reconstruction algorithm must address the issues of low temporal sampling and higher noise levels inherent in cone-beam CT systems, compared to conventional CT. Therefore, a model-based perfusion reconstruction based on the time separation technique (TST) was applied. TST uses basis functions to model time attenuation curves. These functions are either analytical or based on prior knowledge, extracted using singular value decomposition from CT perfusion data. To explore how well the prior knowledge can model perfusion dynamics and what the potential limitations are, the dynamic CBCT perfusion scan was simulated under different noise levels. The TST method was compared to static reconstruction. It was…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · MRI in cancer diagnosis · Medical Imaging Techniques and Applications
