2025
Frailty in motion: Amnestic mild cognitive impairment and Alzheimer’s disease cohorts display heterogeneity in multimorbidity classification and longitudinal transitions
Authors:
Bohn, L., Zheng, Y., McFall, G. P., Andrew, M. K., & Dixon, R. A.
Journal:
Journal of Alzheimer's Disease
Abstract
Background: Data-driven examination of multiple morbidities and deficits are informative for clinical and research applications in aging and dementia. Resulting profiles may change longitudinally according to dynamic alterations in extent, duration, and pattern of risk accumulation. Do such frailty-related changes include not only progression but also stability and reversion?
Objective: With cognitively impaired and dementia cohorts, we employed data-driven analytics to (a) detect the extent of heterogeneity in frailty-related multimorbidity and deficit burden subgroups and (b) identify key person characteristics predicting differential transition patterns.
Methods: We assembled baseline and 2-year follow-up data from the National Alzheimer’s Coordinating Center for amnestic mild cognitive impairment (aMCI) and Alzheimer’s disease (AD) cohorts. We applied factor analyses to 43 multimorbidity and deficit indicators. Latent Transition Analysis (LTA) was applied to the resulting domains in order to detect subgroups differing in transition patterns for multimorbidity and deficit burden. We characterized heterogeneity in change patterns by evaluating key person characteristics as differential predictors.
Results: Factor analyses revealed five domains at two time points. LTA showed that two latent burden subgroups at Time 1(Low, Moderate) differentiated into an additional two subgroups at Time 2 (adding Mild, Severe). Transition analyses detected heterogeneous changes, including progression, stability, and reversion. Baseline classifications and transitions varied according to clinical cohort, global cognition, sex, age, and education.
Conclusions: Heterogeneous frailty-related subgroup transitions can be (a) detected in aging adults living with aMCI and AD, (b) characterized as not only progression but also stability and reversion, and (c) predicted by precision characteristics.
Share

Receive the
latest news
Stay updated with the latest research developments from CCNA-CCNV. Our news section provides insights into cutting-edge studies, advancements in dementia care, and key findings in brain health research.




