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research article

Comparison of non-parametric T2 relaxometry methods for myelin water quantification

Canales Rodriguez, Erick Jorge  
•
Pizzolato, Marco  
•
Piredda, Gian Franco
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January 8, 2021
Medical Image Analysis

Multi-component T2 relaxometry allows probing tissue microstructure by assessing compartment-specific T2 relaxation times and water fractions, including the myelin water fraction. Non-negative least squares (NNLS) with zero-order Tikhonov regularization is the conventional method for estimating smooth T2 distributions. Despite the improved estimation provided by this method compared to non-regularized NNLS, the solution is still sensitive to the underlying noise and the regularization weight. This is especially relevant for clinically achievable signal-to-noise ratios. In the literature of inverse problems, various well-established approaches to promote smooth solutions, including first-order and second-order Tikhonov regularization, and different criteria for estimating the regularization weight have been proposed, such as L-curve, Generalized Cross-Validation, and Chi-square residual fitting. However, quantitative comparisons between the available reconstruction methods for computing the T2 distribution, and between different approaches for selecting the optimal regularization weight, are lacking. In this study, we implemented and evaluated ten reconstruction algorithms, resulting from the individual combinations of three penalty terms with three criteria to estimate the regularization weight, plus non-regularized NNLS. Their performance was evaluated both in simulated data and real brain MRI data acquired from healthy volunteers through a scan-rescan repeatability analysis. Our findings demonstrate the need for regularization. As a result of this work, we provide a list of recommendations for selecting the optimal reconstruction algorithms based on the acquired data. Moreover, the implemented methods were packaged in a freely distributed toolbox to promote reproducible research, and to facilitate further research and the use of this promising quantitative technique in clinical practice.

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Type
research article
DOI
10.1016/j.media.2021.101959
Author(s)
Canales Rodriguez, Erick Jorge  
Pizzolato, Marco  
Piredda, Gian Franco
Hilbert, Tom  
Kunz, Nicolas
Pot, Caroline
Yu, Thomas
Salvador, Raymond
Pomarol-Clotet, Edith
Kober, Tobias  
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Date Issued

2021-01-08

Published in
Medical Image Analysis
Volume

69

Article Number

101959

Subjects

T2 relaxometry

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Myelin water imaging

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Tikhonov regularization

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Non-negative least squares

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Tissue microstructure

Note

This is an Open Access article under the terms of the Creative Commons Attribution License

Editorial or Peer reviewed

REVIEWED

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LTS5  
Available on Infoscience
March 4, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/175658
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