Brain Sciences (May 2024)

Machine Learning Model for Mild Cognitive Impairment Stage Based on Gait and MRI Images

  • Ingyu Park,
  • Sang-Kyu Lee,
  • Hui-Chul Choi,
  • Moo-Eob Ahn,
  • Ohk-Hyun Ryu,
  • Daehun Jang,
  • Unjoo Lee,
  • Yeo Jin Kim

DOI
https://doi.org/10.3390/brainsci14050480
Journal volume & issue
Vol. 14, no. 5
p. 480

Abstract

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In patients with mild cognitive impairment (MCI), a lower level of cognitive function is associated with a higher likelihood of progression to dementia. In addition, gait disturbances and structural changes on brain MRI scans reflect cognitive levels. Therefore, we aimed to classify MCI based on cognitive level using gait parameters and brain MRI data. Eighty patients diagnosed with MCI from three dementia centres in Gangwon-do, Korea, were recruited for this study. We defined MCI as a Clinical Dementia Rating global score of ≥0.5, with a memory domain score of ≥0.5. Patients were classified as early-stage or late-stage MCI based on their mini-mental status examination (MMSE) z-scores. We trained a machine learning model using gait and MRI data parameters. The convolutional neural network (CNN) resulted in the best classifier performance in separating late-stage MCI from early-stage MCI; its performance was maximised when feature patterns that included multimodal features (GAIT + white matter dataset) were used. The single support time was the strongest predictor. Machine learning that incorporated gait and white matter parameters achieved the highest accuracy in distinguishing between late-stage MCI and early-stage MCI.

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