Abstract

Many methods exist for aligning and quantifying magnetic resonance spectroscopy (MRS) data to measure in vivo γ-aminobutyric acid (GABA). Research comparing the performance of these methods is scarce partly due to the lack of ground-truth measurements. The concentration of GABA is approximately two times higher in grey matter than in white matter. Here we use the proportion of grey matter within the MRS voxel as a proxy for ground-truth GABA concentration to compare the performance of four spectral alignment methods (i.e., retrospective frequency and phase drift correction) and six GABA signal modelling methods. We analyse a diverse dataset of 432 MEGA-PRESS scans targeting multiple brain regions and find that alignment to the creatine (Cr) signal produces GABA+ estimates that account for approximately twice as much of the variance in grey matter as the next best performing alignment method. Further, Cr alignment was the most robust, producing the fewest outliers. By contrast, all signal modelling methods, except for the single-Lorentzian model, performed similarly well. Our results suggest that variability in performance is primarily caused by differences in the zero-order phase estimated by each alignment method, rather than frequency, resulting from first-order phase offsets within subspectra. These results provide support for Cr alignment as the optimal method of processing MEGA-PRESS to quantify GABA. However, more broadly, they demonstrate a method of benchmarking quantification of in vivo metabolite concentration from other MRS sequences.

Highlights

  • Using a dataset of 432 GABA-edited magnetic resonance spectroscopy 3 (MRS) scans, targeting a range of brain regions, we compared four spectral alignment methods and six GABA signal modelling methods, all of which have been used in the literature

  • We found that alignment to the Cr signal provided GABA+ estimates that were most highly correlated with grey matter, accounting for 23% of the variance

  • We further found that Cr alignment produces the fewest outliers and the least Cho subtraction error

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Summary

INTRODUCTION

Γ-aminobutyric acid (GABA) is the primary inhibitory neurotransmitter within the human brain. The relationship between metabolites can be regionally variable (Rideaux, 2020) Another predictor of MRS-detected GABA is the fractional volume of grey matter within the voxel, as there are differing concentrations of GABA in grey matter and white matter Using the relationship between GABA and grey matter as an index for GABA estimation accuracy, here we combine two large datasets (totalling 432 differenceedited (MEGA-PRESS) scans) to compare the performance of different alignment and signal modelling methods. Our primary aim was to assess which alignment and signal modelling methods produces GABA estimates that account for the most variability in the grey matter volume fraction. Our secondary aims were to determine which methods produce the fewest outlier estimates, narrowest signal linewidth, and least (choline) subtraction artifacts

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