AI Article Synopsis

  • This study investigates how different preprocessing pipelines for Diffusion Tensor Imaging (DTI) affect the estimation of nerve health metrics, addressing the issue of artifacts in echo-planar imaging.
  • Researchers acquired DTI data from healthy volunteers and applied various correction methods, finding that while preprocessing enhances image similarity, it also leads to significant variability in the measurements of nerve health indicators across different pipelines.
  • Ultimately, the study concludes that even though preprocessing improves certain aspects of image quality, the choice of pipeline can significantly affect crucial diffusion metrics, highlighting the need for careful methodology in DTI studies of peripheral nerves.

Article Abstract

Purpose: DTI characterizes tissue microstructure and provides proxy measures of nerve health. Echo-planar imaging is a popular method of acquiring DTI but is susceptible to various artifacts (e.g., susceptibility, motion, and eddy currents), which may be ameliorated via preprocessing. There are many pipelines available but limited data comparing their performance, which provides the rationale for this study.

Methods: DTI was acquired from the upper limb of heathy volunteers at 3T in blip-up and blip-down directions. Data were independently corrected using (i) FSL's TOPUP & eddy, (ii) FSL's TOPUP, (iii) DSI Studio, and (iv) TORTOISE. DTI metrics were extracted from the median, radial, and ulnar nerves and compared (between pipelines) using mixed-effects linear regression. The geometric similarity of corrected b = 0 images and the slice matched T1-weighted (T1w) images were computed using the Sörenson-Dice coefficient.

Results: Without preprocessing, the similarity coefficient of the blip-up and blip-down datasets to the T1w was 0·80 and 0·79, respectively. Preprocessing improved the geometric similarity by 1% with no difference between pipelines. Compared to TOPUP & eddy, DSI Studio and TORTOISE generated 2% and 6% lower estimates of fractional anisotropy, and 6% and 13% higher estimates of radial diffusivity, respectively. Estimates of anisotropy from TOPUP & eddy versus TOPUP were not different but TOPUP reduced radial diffusivity by 3%. The agreement of DTI metrics between pipelines was poor.

Conclusions: Preprocessing DTI from the upper limb improves geometric similarity but the choice of the pipeline introduces clinically important variability in diffusion parameter estimates from peripheral nerves.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10952179PMC
http://dx.doi.org/10.1002/mrm.29881DOI Listing

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