medRxiv : the preprint server for health sciences

Aging's role in Alzheimer's diagnosis: Insights from brain age prediction features

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Abstract

Neuroimaging features are more strongly correlated with aging than neuropsychological features, which show greater discriminative power for classifying Alzheimer's disease.

  • BrainAge models optimized for age prediction produce less accurate classifications for Alzheimer's disease.
  • Models designed for Alzheimer's disease classification have reduced accuracy in predicting biological age.
  • The trade-off in model performance indicates challenges in distinguishing aging effects from disease-related changes.
  • Feature selection is crucial for minimizing age-related biases in BrainAge models.
  • BrainAge offers a continuous measure applicable across clinical stages, unlike classification methods that require specific labels.

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