AI Article Synopsis

  • A study aimed to test whether texture analysis of MRI images can detect cerebral degeneration in patients with amyotrophic lateral sclerosis (ALS), despite traditional MRI scans showing no clear signs of degeneration.
  • High-resolution MRIs were taken from ALS patients and healthy controls, and lower resolutions were created to evaluate how resolution affects the analysis.
  • Results showed that texture analysis could differentiate between ALS patients and healthy individuals at certain resolutions, with optimal accuracy achieved when paired with expert visual assessments, suggesting texture analysis may serve as a valuable tool for identifying neuroimaging biomarkers in ALS.*

Article Abstract

Background: Evidence of cerebral degeneration is not apparent on routine brain MRI in amyotrophic lateral sclerosis (ALS). Texture analysis can detect change in images based on the statistical properties of voxel intensities. Our objective was to test the utility of texture analysis in detecting cerebral degeneration in ALS. A secondary objective was to determine whether the performance of texture analysis is dependent on image resolution.

Methods: High-resolution (0.5×0.5 mm2 in-plane) coronal T2-weighted MRI of the brain were acquired from 12 patients with ALS and 19 healthy controls on a 4.7 Tesla MRI system. Image data sets at lower resolutions were created by down-sampling to 1×1, 2×2, 3×3, and 4×4 mm2. Texture features were extracted from a slice encompassing the corticospinal tract at the different resolutions and tested for their discriminatory power and correlations with clinical measures. Subjects were also classified by visual assessment by expert reviewers.

Results: Texture features were different between ALS patients and healthy controls at 1×1, 2×2, and 3×3 mm2 resolutions. Texture features correlated with measures of upper motor neuron function and disability. Optimal classification performance was achieved when best-performing texture features were combined with visual assessment at 2×2 mm2 resolution (0.851 area under the curve, 83% sensitivity, 79% specificity).

Conclusions: Texture analysis can detect subtle abnormalities in MRI of ALS patients. The clinical yield of the method is dependent on image resolution. Texture analysis holds promise as a potential source of neuroimaging biomarkers in ALS.

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Source
http://dx.doi.org/10.1017/cjn.2018.267DOI Listing

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