Perfusion Imaging and Single Material Reconstruction in Polychromatic Photon Counting CT
Namhoon Kim, Ashwin Pananjady, Amir Pourmorteza, Sara Fridovich-Keil

TL;DR
This paper introduces VI-PRISM, a novel reconstruction algorithm for perfusion CT that accurately estimates contrast agent concentration at significantly reduced radiation doses, outperforming traditional methods.
Contribution
We adapt a variational inequality-based reconstruction algorithm for perfusion CT, demonstrating its effectiveness in low-dose, sparse-view scenarios for single material imaging.
Findings
VI-PRISM recovers iodine concentration with errors below 0.4 mg/ml.
It maintains high reconstruction quality even with 10x to 100x dose reduction.
VI-PRISM outperforms filtered back-projection in noise reduction and SNR.
Abstract
Background: Perfusion computed tomography (CT) images the dynamics of a contrast agent through the body over time, and is one of the highest X-ray dose scans in medical imaging. Recently, a theoretically justified reconstruction algorithm based on a monotone variational inequality (VI) was proposed for single material polychromatic photon-counting CT, and showed promising early results at low-dose imaging. Purpose: We adapt this reconstruction algorithm for perfusion CT, to reconstruct the concentration map of the contrast agent while the static background tissue is assumed known; we call our method VI-PRISM (VI-based PeRfusion Imaging and Single Material reconstruction). We evaluate its potential for dose-reduced perfusion CT, using a digital phantom with water and iodine of varying concentration. Methods: Simulated iodine concentrations range from 0.05 to 2.5 mg/ml. The simulated…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Medical Imaging Techniques and Applications · Advanced X-ray Imaging Techniques
