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Vestibular contribution to path integration deficits in 'at-genetic-risk' for Alzheimer's disease.

Gillian CoughlanWilliam PlumbPeter ZhukovskyMin Hane AungMichael Hornberger
Published in: PloS one (2023)
Path integration changes may precede a clinical presentation of Alzheimer's disease by several years. Studies to date have focused on how spatial cell changes affect path integration in preclinical AD. However, vestibular input is also critical for intact path integration. Here, we developed the vestibular rotation task that requires individuals to manually point an iPad device in the direction of their starting point following rotational movement, without any visual cues. Vestibular features were derived from the sensor data using feature selection. Machine learning models illustrate that the vestibular features accurately classified Apolipoprotein E ε3ε4 carriers and ε3ε3 carrier controls (mean age 62.7 years), with 65% to 79% accuracy depending on task trial. All machine learning models produced a similar classification accuracy. Our results demonstrate the cross-sectional role of the vestibular system in Alzheimer's disease risk carriers. Future investigations should examine if vestibular functions explain individual phenotypic heterogeneity in path integration among Alzheimer's disease risk carriers.
Keyphrases
  • machine learning
  • hearing loss
  • cognitive decline
  • cross sectional
  • deep learning
  • big data
  • clinical trial
  • artificial intelligence
  • gene expression
  • stem cells
  • current status
  • electronic health record
  • phase ii