PLoS ONE (Jan 2023)

Identification of preclinical dementia according to ATN classification for stratified trial recruitment: A machine learning approach.

  • Ivan Koychev,
  • Evgeniy Marinov,
  • Simon Young,
  • Sophia Lazarova,
  • Denitsa Grigorova,
  • Dean Palejev

DOI
https://doi.org/10.1371/journal.pone.0288039
Journal volume & issue
Vol. 18, no. 10
p. e0288039

Abstract

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IntroductionThe Amyloid/Tau/Neurodegeneration (ATN) framework was proposed to identify the preclinical biological state of Alzheimer's disease (AD). We investigated whether ATN phenotype can be predicted using routinely collected research cohort data.Methods927 EPAD LCS cohort participants free of dementia or Mild Cognitive Impairment were separated into 5 ATN categories. We used machine learning (ML) methods to identify a set of significant features separating each neurodegeneration-related group from controls (A-T-(N)-). Random Forest and linear-kernel SVM with stratified 5-fold cross validations were used to optimize model whose performance was then tested in the ADNI database.ResultsOur optimal results outperformed ATN cross-validated logistic regression models by between 2.2% and 8.3%. The optimal feature sets were not consistent across the 4 models with the AD pathologic change vs controls set differing the most from the rest. Because of that we have identified a subset of 10 features that yield results very close or identical to the optimal.DiscussionOur study demonstrates the gains offered by ML in generating ATN risk prediction over logistic regression models among pre-dementia individuals.