AI Article Synopsis

  • The study aims to evaluate how different methods of MRI relaxometry and approaches to defining regions of interest (ROIs) can affect results in research on restless legs syndrome (RLS).
  • Using a 3.0-T MRI, researchers measured brain iron concentrations in 37 RLS patients and 40 controls through various metrics (R2, R2*, R2') and ROI methods.
  • Results showed inconsistencies: R2 did not correlate well with R2* and R2', and while fixed-shape ROIs indicated lower iron in RLS patients, semi-automated ROIs only showed significant differences in the red nucleus, highlighting the impact of methodology on findings.

Article Abstract

Purpose: Magnetic resonance imaging relaxometry studies differed on the relaxometry methods and their approaches to determining the regions of interest (ROIs) in restless legs syndrome (RLS) patients. These differences could account for the variable and inconsistent results found across these studies. The aim of this study was to assess the relationship between the different relaxometry methods and different ROI approaches using each of these methods on a single population of controls and RLS subjects.

Methods: A 3.0-T magnetic resonance imaging with the gradient-echo sampling of free induction decay and echo pulse sequence was used. The regional brain "iron concentrations" were determined using three relaxometry metrics (R2, R2*, and R2') through two different ROI methods. The substantia nigra (SN) was the primary ROI with red nucleus, caudate, putamen, and globus pallidus as the secondary ROIs.

Results: Thirty-seven RLS patients and 40 controls were enrolled. The iron concentration as determined by R2 did not correlate with either of the other two methods, while R2* and R2' showed strong correlations, particularly for the substantia nigra and red nucleus. In the fixed-shape ROI method, the RLS group showed a lower iron index compared to the control group in the substantia nigra and several other regions. With the semi-automated ROI method, however, only the red nucleus showed a significant difference between the two groups.

Conclusion: Both the relaxometry and ROI determination methods significantly influenced the outcome of studies that used these methods to estimate regional brain iron concentrations.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4525804PMC
http://dx.doi.org/10.2147/MDER.S83629DOI Listing

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