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Classification of Huntington's Disease Stage with Features Derived from Structural and Diffusion-Weighted Imaging.

Rui LavradorFilipa JúlioCristina JanuárioMiguel Castelo-BrancoGina Caetano
Published in: Journal of personalized medicine (2022)
The purpose of this study was to classify Huntington's disease (HD) stage using support vector machines and measures derived from T1- and diffusion-weighted imaging. The effects of feature selection approach and combination of imaging modalities are assessed. Fourteen premanifest-HD individuals (Pre-HD; on average > 20 years from estimated disease onset), eleven early-manifest HD (Early-HD) patients, and eighteen healthy controls (HC) participated in the study. We compared three feature selection approaches: (i) whole-brain segmented grey matter (GM; voxel-based measure) or fractional anisotropy (FA) values; (ii) GM or FA values from subcortical regions-of-interest (caudate, putamen, pallidum); and (iii) automated selection of GM or FA values with the algorithm Relief-F. We assessed single- and multi-kernel approaches to classify combined GM and FA measures. Significant classifications were achieved between Early-HD and Pre-HD or HC individuals (accuracy: generally, 85% to 95%), and between Pre-HD and controls for the feature FA of the caudate ROI (74% accuracy). The combination of GM and FA measures did not result in higher performances. We demonstrate evidence on the high sensitivity of FA for the classification of the earliest Pre-HD stages, and successful distinction between HD stages.
Keyphrases
  • machine learning
  • deep learning
  • diffusion weighted imaging
  • magnetic resonance imaging
  • contrast enhanced
  • ejection fraction
  • multiple sclerosis
  • brain injury
  • patient reported outcomes
  • peritoneal dialysis