Andrea R Zammit1,2, Graciela Muniz-Terrera3, Mindy J Katz1,2, Charles B Hall1,2,4, Ali Ezzati1,2, David A Bennett5, Richard B Lipton1,2,3. 1. Saul B. Korey Department of Neurology, Albert Einstein College of Medicine, Bronx, NY, USA. 2. Einstein Aging Study, Albert Einstein College of Medicine, Bronx, NY, USA. 3. The University of Edinburgh, Scotland, UK. 4. Department of Epidemiology and Population Health, Albert Einstein College of Medicine, Bronx, NY, USA. 5. Rush Alzheimer's Disease Center, Rush University Medical Center, Chicago, IL, USA.
Abstract
BACKGROUND: In a previous report, we used latent class analysis (LCA) to identify natural subgroups of older adults in the Einstein Aging Study (EAS) based on neuropsychological performance. These subgroups differed in demographics, genetic profile, and prognosis. Herein, we assess the generalizability of these findings to an independent sample, the Rush Memory and Aging Project (MAP), which used an overlapping, but distinct neuropsychological battery. OBJECTIVE: Our aim was to identify the association of natural subgroups based on neuropsychological performance in the MAP cohort with incident dementia and compare them with the associations identified in the EAS. METHODS: MAP is a community-dwelling cohort of older adults living in the northeastern Illinois, Chicago. Latent class models were applied to baseline scores of 10 neuropsychological measures across 1,662 dementia-free MAP participants. Results were compared to prior findings from the EAS. RESULTS: LCA resulted in a 5-class model: Mixed-Domain Impairment (n = 71, 4.3%), Memory-specific-Impairment (n = 274, 16.5%), Average (n = 767, 46.1%), Frontal Impairment (n = 222, 13.4%), and a class of Superior Cognition (n = 328, 19.7%). Similar to the EAS, the Mixed-Domain Impairment, the Memory-Specific Impairment, and the Frontal Impairment classes had higher risk of incident Alzheimer's disease when compared to the Average class. By contrast, the Superior Cognition had a lower risk of Alzheimer's disease when compared to the Average class. CONCLUSIONS: Natural cognitive subgroups in MAP are similar to those identified in EAS. These similarities, despite study differences in geography, sampling strategy, and cognitive tests, suggest that LCA is capable of identifying classes that are not limited to a single sample or a set of cognitive tests.
BACKGROUND: In a previous report, we used latent class analysis (LCA) to identify natural subgroups of older adults in the Einstein Aging Study (EAS) based on neuropsychological performance. These subgroups differed in demographics, genetic profile, and prognosis. Herein, we assess the generalizability of these findings to an independent sample, the Rush Memory and Aging Project (MAP), which used an overlapping, but distinct neuropsychological battery. OBJECTIVE: Our aim was to identify the association of natural subgroups based on neuropsychological performance in the MAP cohort with incident dementia and compare them with the associations identified in the EAS. METHODS: MAP is a community-dwelling cohort of older adults living in the northeastern Illinois, Chicago. Latent class models were applied to baseline scores of 10 neuropsychological measures across 1,662 dementia-free MAPparticipants. Results were compared to prior findings from the EAS. RESULTS: LCA resulted in a 5-class model: Mixed-Domain Impairment (n = 71, 4.3%), Memory-specific-Impairment (n = 274, 16.5%), Average (n = 767, 46.1%), Frontal Impairment (n = 222, 13.4%), and a class of Superior Cognition (n = 328, 19.7%). Similar to the EAS, the Mixed-Domain Impairment, the Memory-Specific Impairment, and the Frontal Impairment classes had higher risk of incident Alzheimer's disease when compared to the Average class. By contrast, the Superior Cognition had a lower risk of Alzheimer's disease when compared to the Average class. CONCLUSIONS: Natural cognitive subgroups in MAP are similar to those identified in EAS. These similarities, despite study differences in geography, sampling strategy, and cognitive tests, suggest that LCA is capable of identifying classes that are not limited to a single sample or a set of cognitive tests.
Entities:
Keywords:
Alzheimer’s disease; dementia; latent class analysis; neuropsychological profiles
Authors: Andrea R Zammit; Charles B Hall; Richard B Lipton; Mindy J Katz; Graciela Muniz-Terrera Journal: J Int Neuropsychol Soc Date: 2018-01-10 Impact factor: 2.892
Authors: Lei Yu; Michael W Lutz; Jose M Farfel; Robert S Wilson; Daniel K Burns; Ann M Saunders; Philip L De Jager; Lisa L Barnes; Julie A Schneider; David A Bennett Journal: Alzheimers Dement Date: 2017-06-15 Impact factor: 21.566
Authors: Robert S Wilson; Kristin R Krueger; Patricia A Boyle; David A Bennett Journal: J Neurol Neurosurg Psychiatry Date: 2010-08-27 Impact factor: 10.154
Authors: Laura B Zahodne; Melanie M Wall; Nicole Schupf; Richard Mayeux; Jennifer J Manly; Yaakov Stern; Adam M Brickman Journal: J Neurol Date: 2015-08-11 Impact factor: 4.849
Authors: D A Bennett; R S Wilson; J A Schneider; D A Evans; L A Beckett; N T Aggarwal; L L Barnes; J H Fox; J Bach Journal: Neurology Date: 2002-07-23 Impact factor: 9.910
Authors: Lisa Delano-Wood; Mark W Bondi; Joshua Sacco; Norm Abeles; Amy J Jak; David J Libon; Andrea Bozoki Journal: J Int Neuropsychol Soc Date: 2009-11 Impact factor: 2.892
Authors: Andrea R Zammit; Charles B Hall; David A Bennett; Ali Ezzati; Mindy J Katz; Graciela Muniz-Terrera; Richard B Lipton Journal: Alzheimers Dement Date: 2019-08-13 Impact factor: 21.566
Authors: Ali Ezzati; Andrea R Zammit; Christian Habeck; Charles B Hall; Richard B Lipton Journal: Brain Imaging Behav Date: 2020-10 Impact factor: 3.978
Authors: Kathryn N Devlin; Laura Brennan; Laura Saad; Tania Giovannetti; Roy H Hamilton; David A Wolk; Sharon X Xie; Dawn Mechanic-Hamilton Journal: J Alzheimers Dis Date: 2022 Impact factor: 4.472
Authors: Andrew J Petkus; Diana Younan; Xinhui Wang; Daniel P Beavers; Mark A Espeland; Margaret Gatz; Tara Gruenewald; Joel D Kaufman; Helena C Chui; Joshua Millstein; Stephen R Rapp; JoAnn E Manson; Susan M Resnick; Gregory A Wellenius; Eric A Whitsel; Keith Widaman; Jiu-Chiuan Chen Journal: J Alzheimers Dis Date: 2021 Impact factor: 4.160
Authors: Andrea R Zammit; David A Bennett; Charles B Hall; Richard B Lipton; Mindy J Katz; Graciela Muniz-Terrera Journal: J Alzheimers Dis Date: 2020 Impact factor: 4.472
Authors: Ali Ezzati; Christos Davatzikos; David A Wolk; Charles B Hall; Christian Habeck; Richard B Lipton Journal: Alzheimers Dement (N Y) Date: 2022-03-14
Authors: Daniel E Gustavson; Jeremy A Elman; Mark Sanderson-Cimino; Carol E Franz; Matthew S Panizzon; Amy J Jak; Chandra A Reynolds; Michael C Neale; Michael J Lyons; William S Kremen Journal: Alzheimers Dement (Amst) Date: 2020-04-11