4.4 Article

Comparison of different linear-combination modeling algorithms for short-TE proton spectra

期刊

NMR IN BIOMEDICINE
卷 34, 期 4, 页码 -

出版社

WILEY
DOI: 10.1002/nbm.4482

关键词

linear-combination modeling; MRS; short echo-time spectra

资金

  1. National Institute of Biomedical Imaging and Bioengineering [R01 EB016089 R01 EB023963]
  2. National Institute of Neurological Disorders and Stroke [R21A G060245]
  3. National Institute on Aging [K99 AG062230, R21 AG060245]
  4. NIH [R01NS106292, P41EB015909]

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Short-TE proton MRS is commonly used to study metabolism in the human brain by modeling data as linear combination of metabolite basis spectra. This study compared metabolite levels estimated by three different linear-combination modeling algorithms, showing moderate agreement for some metabolites but significant discrepancies for others. Correlations between algorithms were weak-to-moderate, and there was a significant correlation between local baseline amplitude and metabolite estimates.
Short-TE proton MRS is used to study metabolism in the human brain. Common analysis methods model the data as a linear combination of metabolite basis spectra. This large-scale multi-site study compares the levels of the four major metabolite complexes in short-TE spectra estimated by three linear-combination modeling (LCM) algorithms. 277 medial parietal lobe short-TE PRESS spectra (TE = 35 ms) from a recent 3 T multi-site study were preprocessed with the Osprey software. The resulting spectra were modeled with Osprey, Tarquin and LCModel, using the same three vendor-specific basis sets (GE, Philips and Siemens) for each algorithm. Levels of total N-acetylaspartate (tNAA), total choline (tCho), myo-inositol (mI) and glutamate + glutamine (Glx) were quantified with respect to total creatine (tCr). Group means and coefficient of variations of metabolite estimates agreed well for tNAA and tCho across vendors and algorithms, but substantially less so for Glx and mI, with mI systematically estimated as lower by Tarquin. The cohort mean coefficient of determination for all pairs of LCM algorithms across all datasets and metabolites was R-2 = 0.39, indicating generally only moderate agreement of individual metabolite estimates between algorithms. There was a significant correlation between local baseline amplitude and metabolite estimates (cohort mean R-2 = 0.10). While mean estimates of major metabolite complexes broadly agree between linear-combination modeling algorithms at group level, correlations between algorithms are only weak-to-moderate, despite standardized preprocessing, a large sample of young, healthy and cooperative subjects, and high spectral quality. These findings raise concerns about the comparability of MRS studies, which typically use one LCM software and much smaller sample sizes.

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