Data-driven classification of cognitively normal and mild cognitive impairment subtypes predicts progression in the NACC dataset

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Abstract

INTRODUCTION: Data-driven neuropsychological methods can identify mild cognitive impairment (MCI) subtypes with stronger associations to dementia risk factors than conventional diagnostic methods. METHODS: Cluster analysis used neuropsychological data from participants without dementia (mean age = 71.6 years) in the National Alzheimer's Coordinating Center (NACC) Uniform Data Set (n = 26,255) and the “normal cognition” subsample (n = 16,005). Survival analyses examined MCI or dementia progression. RESULTS: Five clusters were identified: “Optimal” cognitively normal (oCN; 13.2%), “Typical” CN (tCN; 28.0%), Amnestic MCI (aMCI; 25.3%), Mixed MCI-Mild (mMCI-Mild; 20.4%), and Mixed MCI-Severe (mMCI-Severe; 13.0%). Progression to dementia differed across clusters (oCN < tCN < aMCI < mMCI-Mild  < Low-WM = Low-Memory < aMCI < naMCI). DISCUSSION: Our data-driven methods outperformed consensus diagnosis by providing more precise information about progression risk and revealing heterogeneity in cognition and progression risk within the NACC “normal cognition” group.

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Edmonds, E. C., Thomas, K. R., Rapcsak, S. Z., Lindemer, S. L., Delano-Wood, L., Salmon, D. P., & Bondi, M. W. (2024). Data-driven classification of cognitively normal and mild cognitive impairment subtypes predicts progression in the NACC dataset. Alzheimer’s and Dementia, 20(5), 3442–3454. https://doi.org/10.1002/alz.13793

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