4.0 Article

Quantifying stability of parameter estimates for in vivo nearly incompressible transversely-isotropic brain MR elastography

Journal

Publisher

IOP Publishing Ltd
DOI: 10.1088/2057-1976/ac5ebe

Keywords

MR elastography; anisotropy; brain; in vivo; data quality metric; octahedral shear strain; material property reconstruction

Funding

  1. NIH [R01-EB027577]

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In this study, a new data quality metric for magnetic resonance elastography (MRE) was developed based on a generalized calculation method. The metric can quickly and reliably predict the accuracy of material property reconstructions and shows promise for point-of-care evaluation of data quality.
Easily computable quality metrics for measured medical data at point-of-care are important for imaging technologies involving offline reconstruction. Accordingly, we developed a new data quality metric for in vivo transversely-isotropic (TI) magnetic resonance elastography (MRE) based on a generalization of the widely accepted octahedral shear-strain calculation. The metric uses MRE displacement data and an estimate of the TI property field to yield a 'stability map' which predicts regions of low versus high accuracy in the resulting material property reconstructions. We can also calculate an average TI parameter stability (TIPS) score over all voxels in a region of interest for a given measurement to indicate how reliable the recovered mechanical property estimate for the region is expected to be. The calculation is rapid and places little demand on computing resources compared to the computationally intensive material property reconstruction from non-linear inversion (TI-NLI) of displacement fields, making it ideal for point-of-care evaluation of data quality. We test the predictions of the stability map for both simulated phantoms and in vivo human brain data. We used a range of different displacement datasets from vibrations applied in the anterior-posterior (AP), left-right (LR) and combined AP + LR directions. The TIPS and variability maps (noise sensitivity or variation from the mean of repeated MRE scans) were consistently anti-correlated. Notably, Spearman correlation coefficients vertical bar R vertical bar >0.6 were found between variability and TIPS score for individual white matter tracts with in vivo data. These observations demonstrate the reliability and promise of this data quality metric to screen data rapidly in realistic clinical MRE applications.

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