Model-based frequency-and-phase correction of 1H MRS data with 2D linear-combination modeling

Magn Reson Med. 2024 Nov;92(5):2222-2236. doi: 10.1002/mrm.30209. Epub 2024 Jul 10.

Abstract

Purpose: Retrospective frequency-and-phase correction (FPC) methods attempt to remove frequency-and-phase variations between transients to improve the quality of the averaged MR spectrum. However, traditional FPC methods like spectral registration struggle at low SNR. Here, we propose a method that directly integrates FPC into a 2D linear-combination model (2D-LCM) of individual transients ("model-based FPC"). We investigated how model-based FPC performs compared to the traditional approach, i.e., spectral registration followed by 1D-LCM in estimating frequency-and-phase drifts and, consequentially, metabolite level estimates.

Methods: We created synthetic in-vivo-like 64-transient short-TE sLASER datasets with 100 noise realizations at 5 SNR levels and added randomly sampled frequency and phase variations. We then used this synthetic dataset to compare the performance of 2D-LCM with the traditional approach (spectral registration, averaging, then 1D-LCM). Outcome measures were the frequency/phase/amplitude errors, the SD of those ground-truth errors, and amplitude Cramér Rao lower bounds (CRLBs). We further tested the proposed method on publicly available in-vivo short-TE PRESS data.

Results: 2D-LCM estimates (and accounts for) frequency-and-phase variations directly from uncorrected data with equivalent or better fidelity than the conventional approach. Furthermore, 2D-LCM metabolite amplitude estimates were at least as accurate, precise, and certain as the conventionally derived estimates. 2D-LCM estimation of FPC and amplitudes performed substantially better at low-to-very-low SNR.

Conclusion: Model-based FPC with 2D linear-combination modeling is feasible and has great potential to improve metabolite level estimation for conventional and dynamic MRS data, especially for low-SNR conditions, for example, long TEs or strong diffusion weighting.

Keywords: 2D linear‐combination model; frequency‐and‐phase correction; magnetic resonance spectroscopy; spectral registration.

MeSH terms

  • Algorithms*
  • Brain* / diagnostic imaging
  • Brain* / metabolism
  • Humans
  • Image Processing, Computer-Assisted / methods
  • Linear Models
  • Magnetic Resonance Imaging / methods
  • Proton Magnetic Resonance Spectroscopy / methods
  • Retrospective Studies
  • Signal-To-Noise Ratio*