Effect of Singular Value Decomposition Algorithms on Removing Injection Variability in 2D Quantitative Angiography of Intracranial Aneurysms
Intraoperative 2D quantitative angiography (QA) for intracranial aneurysms (IAs) has accuracy challenges due to the variability of hand injections. Despite the success of singular value decomposition (SVD) algorithms in reducing biases in computed tomography perfusion (CTP), their application in 2D...
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Zusammenfassung: | Intraoperative 2D quantitative angiography (QA) for intracranial aneurysms
(IAs) has accuracy challenges due to the variability of hand injections.
Despite the success of singular value decomposition (SVD) algorithms in
reducing biases in computed tomography perfusion (CTP), their application in 2D
QA has not been extensively explored. This study seeks to bridge this gap by
investigating the potential of SVD-based deconvolution methods in 2D QA,
particularly in addressing the variability of injection durations. The study
included three internal carotid aneurysm (ICA) cases. Virtual angiograms were
generated using Computational Fluid Dynamics (CFD) for three physiologically
relevant inlet velocities to simulate contrast media injection durations.
Time-density curves (TDCs) were produced for both the inlet and aneurysm dome.
Various SVD variants, including standard SVD (sSVD) with and without classical
Tikhonov regularization, block-circulant SVD (bSVD), and oscillation index SVD
(oSVD), were applied to virtual angiograms. The method was applied on virtual
angiograms to recover the aneurysmal dome impulse response function (IRF) and
extract flow related parameters such as Peak Height PHIRF, Area Under the Curve
AUCIRF, and Mean transit time MTT. Furthermore, we found that SVD can
effectively reduce QA parameter variability across various injection durations,
enhancing the potential of QA analysis parameters in neurovascular disease
diagnosis and treatment. Implementing SVD-based deconvolution techniques in QA
analysis can enhance the precision and reliability of neurovascular diagnostics
by effectively reducing the impact of injection duration on hemodynamic
parameters. |
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DOI: | 10.48550/arxiv.2411.03655 |