Frontiers in Aging Neuroscience (May 2024)

Deep learning model for individualized trajectory prediction of clinical outcomes in mild cognitive impairment

  • Wonsik Jung,
  • Si Eun Kim,
  • Si Eun Kim,
  • Jun Pyo Kim,
  • Jun Pyo Kim,
  • Jun Pyo Kim,
  • Hyemin Jang,
  • Hyemin Jang,
  • Chae Jung Park,
  • Hee Jin Kim,
  • Hee Jin Kim,
  • Hee Jin Kim,
  • Duk L. Na,
  • Duk L. Na,
  • Duk L. Na,
  • Sang Won Seo,
  • Sang Won Seo,
  • Sang Won Seo,
  • Sang Won Seo,
  • Sang Won Seo,
  • Sang Won Seo,
  • Heung-Il Suk

DOI
https://doi.org/10.3389/fnagi.2024.1356745
Journal volume & issue
Vol. 16

Abstract

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ObjectivesAccurately predicting when patients with mild cognitive impairment (MCI) will progress to dementia is a formidable challenge. This work aims to develop a predictive deep learning model to accurately predict future cognitive decline and magnetic resonance imaging (MRI) marker changes over time at the individual level for patients with MCI.MethodsWe recruited 657 amnestic patients with MCI from the Samsung Medical Center who underwent cognitive tests, brain MRI scans, and amyloid-β (Aβ) positron emission tomography (PET) scans. We devised a novel deep learning architecture by leveraging an attention mechanism in a recurrent neural network. We trained a predictive model by inputting age, gender, education, apolipoprotein E genotype, neuropsychological test scores, and brain MRI and amyloid PET features. Cognitive outcomes and MRI features of an MCI subject were predicted using the proposed network.ResultsThe proposed predictive model demonstrated good prediction performance (AUC = 0.814 ± 0.035) in five-fold cross-validation, along with reliable prediction in cognitive decline and MRI markers over time. Faster cognitive decline and brain atrophy in larger regions were forecasted in patients with Aβ (+) than with Aβ (−).ConclusionThe proposed method provides effective and accurate means for predicting the progression of individuals within a specific period. This model could assist clinicians in identifying subjects at a higher risk of rapid cognitive decline by predicting future cognitive decline and MRI marker changes over time for patients with MCI. Future studies should validate and refine the proposed predictive model further to improve clinical decision-making.

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