PURPOSE The aim of this work is to derive a theoretical framework for quantitative noise and temporal fidelity analysis of time-resolved k-space-based parallel imaging methods. THEORY An analytical formalism of noise distribution is derived extending the existing g-factor formulation for nontime-resolved generalized autocalibrating partially parallel acquisition (GRAPPA) to time-resolved k-space-based methods. The noise analysis considers temporal noise correlations and is further accompanied by a temporal filtering analysis. METHODS All methods are derived and presented for k-t-GRAPPA and PEAK-GRAPPA. A sliding window reconstruction and nontime-resolved GRAPPA are taken as a reference. Statistical validation is based on seri...
Purpose To assess the impact of colored noise on statistics in event-related functional MRI (fMRI) (...
In 2001, Krueger and Glover introduced a model describing the temporal SNR (tSNR) of an EPI time ser...
Noise is known to be one of the main sources of quality deterioration in magnetic resonance (MR) dat...
PURPOSE To propose and validate a g-factor formalism for k-t SENSE, k-t PCA and related k-t metho...
Purpose: In partially parallel imaging, most k-space-based reconstruction algorithms such as GRAPPA ...
This paper analyzes the famous GRAPPA algorithm, which is one of most widely used image reconstructi...
Abstract—The interpolation of missing spatial frequencies through the generalized auto-calibrating p...
Generalized autocalibrating partially parallel acquisition (GRAPPA) has been a widely used parallel ...
Two parallel imaging methods used for first-pass myocardial perfusion imaging were compared in terms...
A novel coefficient penalized regularization method for generalized autocalibrating partially parall...
To generate real-time, nongated, free-breathing cardiac images, the undersampled radial trajectory c...
Abstract—The amount of calibration data needed to produce images of adequate quality can prevent aut...
The interpolation of missing spatial frequencies through the generalized auto-calibrating partially ...
Current parallel imaging techniques for accelerated imaging require a fully encoded reference data s...
GRAPPA [1] has emerged to be a popular k-space-based parallel imaging reconstruction technique. GRAP...
Purpose To assess the impact of colored noise on statistics in event-related functional MRI (fMRI) (...
In 2001, Krueger and Glover introduced a model describing the temporal SNR (tSNR) of an EPI time ser...
Noise is known to be one of the main sources of quality deterioration in magnetic resonance (MR) dat...
PURPOSE To propose and validate a g-factor formalism for k-t SENSE, k-t PCA and related k-t metho...
Purpose: In partially parallel imaging, most k-space-based reconstruction algorithms such as GRAPPA ...
This paper analyzes the famous GRAPPA algorithm, which is one of most widely used image reconstructi...
Abstract—The interpolation of missing spatial frequencies through the generalized auto-calibrating p...
Generalized autocalibrating partially parallel acquisition (GRAPPA) has been a widely used parallel ...
Two parallel imaging methods used for first-pass myocardial perfusion imaging were compared in terms...
A novel coefficient penalized regularization method for generalized autocalibrating partially parall...
To generate real-time, nongated, free-breathing cardiac images, the undersampled radial trajectory c...
Abstract—The amount of calibration data needed to produce images of adequate quality can prevent aut...
The interpolation of missing spatial frequencies through the generalized auto-calibrating partially ...
Current parallel imaging techniques for accelerated imaging require a fully encoded reference data s...
GRAPPA [1] has emerged to be a popular k-space-based parallel imaging reconstruction technique. GRAP...
Purpose To assess the impact of colored noise on statistics in event-related functional MRI (fMRI) (...
In 2001, Krueger and Glover introduced a model describing the temporal SNR (tSNR) of an EPI time ser...
Noise is known to be one of the main sources of quality deterioration in magnetic resonance (MR) dat...