Denoising Improves Cross-Scanner and Cross-Protocol Test-Retest Reproducibility of Higher-Order Diffusion Metrics
Benjamin Ades-Aron, Santiago Coelho, Gregory Lemberskiy, Jelle, Veraart, Steven Baete, Timothy M. Shepherd, Dmitry S. Novikov, Els Fieremans

TL;DR
This study demonstrates that denoising significantly improves the reproducibility and statistical power of higher-order diffusion MRI metrics across different scanners and protocols, facilitating clinical and research applications.
Contribution
It provides a comprehensive evaluation of denoising strategies for higher-order diffusion metrics, showing their effectiveness in enhancing reproducibility and harmonization across scanners and protocols.
Findings
Denoising reduces noise-induced bias and variance in diffusion metrics.
Denoising improves test-retest reproducibility, reducing variability from 15-20% to 5-10%.
Combining denoising with harmonization enhances intra-scanner reliability.
Abstract
The clinical translation of diffusion MRI (dMRI)-derived quantitative contrasts hinges on robust reproducibility, minimizing both same-scanner and cross-scanner variability. This study evaluates the reproducibility of higher-order diffusion metrics (beyond conventional diffusion tensor imaging), at the voxel and region-of-interest levels on magnitude and complex-valued dMRI data, using denoising with and without harmonization. We compared same-scanner, cross-scanner, and cross-protocol variability for a multi-shell dMRI protocol in 20 subjects. We first evaluated the effectiveness of denoising strategies for both magnitude and complex data to mitigate noise-induced bias and variance, to improve dMRI parametric maps and reproducibility. We examined the impact of denoising under different analysis approaches, comparing voxel-wise and region of interest (ROI)-based methods. We also…
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Taxonomy
TopicsNetwork Packet Processing and Optimization · VLSI and Analog Circuit Testing · Parallel Computing and Optimization Techniques
