1 research outputs found
Optimization and Validation of the DESIGNER dMRI preprocessing pipeline in white matter aging
Various diffusion MRI (dMRI) preprocessing pipelines are currently available
to yield more accurate diffusion parameters. Here, we evaluated accuracy and
robustness of the optimized Diffusion parameter EStImation with Gibbs and NoisE
Removal (DESIGNER) pipeline in a large clinical dMRI dataset and using ground
truth phantoms. DESIGNER has been modified to improve denoising and target
Gibbs ringing for partial Fourier acquisitions. We compared the revisited
DESIGNER (Dv2) (including denoising, Gibbs removal, correction for motion, EPI
distortion, and eddy currents) against the original DESIGNER (Dv1) pipeline,
minimal preprocessing (including correction for motion, EPI distortion, and
eddy currents only), and no preprocessing on a large clinical dMRI dataset of
524 control subjects with ages between 25 and 75 years old. We evaluated the
effect of specific processing steps on age correlations in white matter with
DTI and DKI metrics. We also evaluated the added effect of minimal Gaussian
smoothing to deal with noise and to reduce outliers in parameter maps compared
to DESIGNER (Dv2)'s noise removal method. Moreover, DESIGNER (Dv2)'s updated
noise and Gibbs removal methods were assessed using ground truth dMRI phantom
to evaluate accuracy. Results show age correlation in white matter with DTI and
DKI metrics were affected by the preprocessing pipeline, causing systematic
differences in absolute parameter values and loss or gain of statistical
significance. Both in clinical dMRI and ground truth phantoms, DESIGNER (Dv2)
pipeline resulted in the smallest number of outlier voxels and improved
accuracy in DTI and DKI metrics as noise was reduced and Gibbs removal was
improved. Thus, DESIGNER (Dv2) provides more accurate and robust DTI and DKI
parameter maps as compared to no preprocessing or minimal preprocessing