2012
DOI: 10.3174/ajnr.a3089
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Analysis of the Influence of 4D MR Angiography Temporal Resolution on Time-to-Peak Estimation Error for Different Cerebral Vessel Structures

Abstract: BACKGROUND AND PURPOSE:Time-resolved MRA imaging is a promising technique for blood flow evaluation in case of cerebrovascular malformations. Unfortunately, 4D MRA imaging is a trade-off between spatial and temporal resolution. The aim of this study was to investigate the influence of temporal resolution on the error associated with TTP estimation from indicator dilution curves derived from different vascular structures.

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Cited by 5 publications
(3 citation statements)
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“…The reference-based linear curve fitting approach enables a TTP estimation with a precision of 0.1 second given the temporal resolution of 0.5 seconds of the 4D MRA sequence. 37,38 The precision of TTP calculation can be seen in the depiction of intranidal flow patterns, which correlate well with in-and outflow characteristics as well as with the flow pattern displayed by digital subtraction angiography. 34 The exclusion of 10 patients in our study group due to insufficient image quality can be ascribed to artifacts that mainly occurred in the beginning of the study.…”
Section: Strokementioning
confidence: 91%
“…The reference-based linear curve fitting approach enables a TTP estimation with a precision of 0.1 second given the temporal resolution of 0.5 seconds of the 4D MRA sequence. 37,38 The precision of TTP calculation can be seen in the depiction of intranidal flow patterns, which correlate well with in-and outflow characteristics as well as with the flow pattern displayed by digital subtraction angiography. 34 The exclusion of 10 patients in our study group due to insufficient image quality can be ascribed to artifacts that mainly occurred in the beginning of the study.…”
Section: Strokementioning
confidence: 91%
“…Global segmentation of a neurovascular mask (Auto-Segmentation) Initially a universal threshold value was calculated to segment intravascular blood from surrounding cranial tissue (Figure 3A). All voxel intensities throughout the CTA, DSA, or TOF-MRA image were linearly divided into 𝑛 𝑏𝑖𝑛 = 50 bins from maximal to minimal voxel intensity, similar to Nyúl et al, 2000. Voxel intensity brightness, x, belonging to different tissue types, such as dim extravascular soft tissue versus bone versus bright intravascular blood, was estimated by a sum of lognormal distributions (Figure 3B) as previously performed for MRA images (Forkert et al, 2012):…”
Section: Methods and Calculationmentioning
confidence: 99%
“…All voxel intensities throughout the CTA, DSA, or TOF-MRA image were linearly divided into = 50 bins from maximal to minimal voxel intensity, similar to Nyúl et al, 2000. Voxel intensity brightness, x, belonging to different tissue types, such as dim extravascular soft tissue versus bone versus bright intravascular blood, was estimated by a sum of lognormal distributions ( Figure 3B) as previously performed for MRA images (Forkert et al, 2012): The images first undergo a global Auto-Segmentation to generate 2-3 tissue masks, the segmented neurovascular mask undergoes several Mask Processing steps, followed by a Centreline Estimation throughout the mask. Using the centreline, several Morphometry metrics are applied to measure geometrical properties of each voxel within the segmented vascular mask.…”
Section: Methods and Calculationmentioning
confidence: 99%