Detection of the Arterial Input Function Using DSC-MRI Data
- URL: http://arxiv.org/abs/2303.02516v1
- Date: Sat, 4 Mar 2023 22:30:38 GMT
- Title: Detection of the Arterial Input Function Using DSC-MRI Data
- Authors: Svitlana Alkhimova, Kateryna Sazonova
- Abstract summary: Accurate detection of arterial input function is a crucial step in obtaining perfusion hemodynamic parameters.
Several methods have been proposed to improve the reliability of arterial input function detection.
Methods most commonly used for semi- and fully automatic arterial input function detection are reviewed.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate detection of arterial input function is a crucial step in obtaining
perfusion hemodynamic parameters using dynamic susceptibility contrast-enhanced
magnetic resonance imaging. It is required as input for perfusion
quantification and has a great impact on the result of the deconvolution
operation. To improve the reproducibility and reliability of arterial input
function detection, several semi- or fully automatic methods have been
proposed. This study provides an overview of the current state of the field of
arterial input function detection. Methods most commonly used for semi- and
fully automatic arterial input function detection are reviewed, and their
advantages and disadvantages are listed.
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