A novel use of time separation technique to improve flat detector CT perfusion imaging in stroke patients
Vojt\v{e}ch Kulvait (1,2), Philip Hoelter (3), Robert Frysch (1), Hana, Haselji\'c (1), Arnd Doerfler (3), Georg Rose (1) ((1) Institute for Medical, Engineering, Research Campus STIMULATE, University of Magdeburg,, Magdeburg, Germany, (2) Institute of Materials Physics

TL;DR
This paper introduces a novel time separation technique using trigonometric basis functions to enhance flat detector CT perfusion imaging, enabling faster and more accurate stroke assessment with improved noise handling.
Contribution
The study presents a new model-based data processing approach with trigonometric dimension reduction for FDCTP, improving image quality and processing speed without prior shape assumptions.
Findings
Improved correlation coefficients for perfusion maps.
Enhanced noise robustness in simulated FDCTP data.
Processing time under 5 minutes from data to maps.
Abstract
CT perfusion imaging (CTP) is used in the diagnostic workup of acute ischemic stroke (AIS). CTP may be performed within the angio suite using flat detector CT (FDCT) to help reduce patient management time. In order to significantly improve FDCT perfusion (FDCTP) imaging, data-processing algorithms need to be able to compensate for the higher levels of noise, slow rotation speed, and a lower frame rate of current FDCT devices. We performed a realistic simulation of FDCTP acquisition based on CTP data from seven subjects. We used the time separation technique (TST) as a model-based approach for FDCTP data processing. We propose a novel dimension reduction in which we approximate the time attenuation curves by a linear combination of trigonometric functions. Our goal was to show that the TST can be used even without prior assumptions on the shape of the attenuation profiles. We first…
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