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Article type: Research Article
Authors: Yang, Jingjinga; * | Oveisgharan, Shahramb | Liu, Xizhuc | Wilson, Robert S.b | Bennett, David A.b | Buchman, Aron S.b
Affiliations: [a] Center for Computational and Quantitative Genetics, Department of Human Genetics, Emory University School of Medicine, Atlanta, GA, USA | [b] Rush Alzheimer’s Disease Center, Rush University Medicine Center, Chicago, IL, USA | [c] Quantitative Theory and Methods Program, College of Arts and Sciences, Emory University, Atlanta, GA, USA
Correspondence: [*] Correspondence to: Jingjing Yang, PhD, Center for Computational and Quantitative Genetics, Department of Human Genetics, Emory University School of Medicine, 615 Michael St, Atlanta, GA, 30322, USA. Tel.: 404 727 3481; E-mail: jingjing.yang@emory.edu.
Abstract: Background:Alzheimer’s disease (AD) is a progressive disorder without a cure. Develop risk prediction models for detecting presymptomatic AD using non-cognitive measures is necessary to enable early interventions. Objective:Examine if non-cognitive metrics alone can be used to construct risk models to identify adults at risk for AD dementia and cognitive impairment. Methods:Clinical data from older adults without dementia from the Memory and Aging Project (MAP, n = 1,179) and Religious Orders Study (ROS, n = 1,103) were analyzed using Cox proportional hazard models to develop risk prediction models for AD dementia and cognitive impairment. Models using only non-cognitive covariates were compared to models that added cognitive covariates. All models were trained in MAP, tested in ROS, and evaluated by the AUC of ROC curve. Results:Models based on non-cognitive covariates alone achieved AUC (0.800,0.785) for predicting AD dementia (3.5) years from baseline. Including additional cognitive covariates improved AUC to (0.916,0.881). A model with a single covariate of composite cognition score achieved AUC (0.905,0.863). Models based on non-cognitive covariates alone achieved AUC (0.717,0.714) for predicting cognitive impairment (3.5) years from baseline. Including additional cognitive covariates improved AUC to (0.783,0.770). A model with a single covariate of composite cognition score achieved AUC (0.754,0.730). Conclusion:Risk models based on non-cognitive metrics predict both AD dementia and cognitive impairment. However, non-cognitive covariates do not provide incremental predictivity for models that include cognitive metrics in predicting AD dementia, but do in models predicting cognitive impairment. Further improved risk prediction models for cognitive impairment are needed.
Keywords: Alzheimer’s disease, cognitive aging, cohort study, Cox proportional hazard model, mild cognitive impairment
DOI: 10.3233/JAD-220446
Journal: Journal of Alzheimer's Disease, vol. 89, no. 4, pp. 1249-1262, 2022
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