Classification and prediction of cognitive trajectories of cognitively unimpaired individuals

Kim, Young Ju and Kim, Si Eun and Hahn, Alice and Jang, Hyemin and Kim, Jun Pyo and Kim, Hee Jin and Na, Duk L. and Chin, Juhee and Seo, Sang Won (2023) Classification and prediction of cognitive trajectories of cognitively unimpaired individuals. Frontiers in Aging Neuroscience, 15. ISSN 1663-4365

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Abstract

Objectives: Efforts to prevent Alzheimer’s disease (AD) would benefit from identifying cognitively unimpaired (CU) individuals who are liable to progress to cognitive impairment. Therefore, we aimed to develop a model to predict cognitive decline among CU individuals in two independent cohorts.

Methods: A total of 407 CU individuals from the Alzheimer’s Disease Neuroimaging Initiative (ADNI) and 285 CU individuals from the Samsung Medical Center (SMC) were recruited in this study. We assessed cognitive outcomes by using neuropsychological composite scores in the ADNI and SMC cohorts. We performed latent growth mixture modeling and developed the predictive model.

Results: Growth mixture modeling identified 13.8 and 13.0% of CU individuals in the ADNI and SMC cohorts, respectively, as the “declining group.” In the ADNI cohort, multivariable logistic regression modeling showed that increased amyloid-β (Aβ) uptake (β [SE]: 4.852 [0.862], p < 0.001), low baseline cognitive composite scores (β [SE]: −0.274 [0.070], p < 0.001), and reduced hippocampal volume (β [SE]: −0.952 [0.302], p = 0.002) were predictive of cognitive decline. In the SMC cohort, increased Aβ uptake (β [SE]: 2.007 [0.549], p < 0.001) and low baseline cognitive composite scores (β [SE]: −4.464 [0.758], p < 0.001) predicted cognitive decline. Finally, predictive models of cognitive decline showed good to excellent discrimination and calibration capabilities (C-statistic = 0.85 for the ADNI model and 0.94 for the SMC model).

Conclusion: Our study provides novel insights into the cognitive trajectories of CU individuals. Furthermore, the predictive model can facilitate the classification of CU individuals in future primary prevention trials.

Item Type: Article
Subjects: STM Open Academic > Medical Science
Depositing User: Unnamed user with email admin@eprint.stmopenacademic.com
Date Deposited: 20 Apr 2023 09:16
Last Modified: 27 Sep 2023 07:01
URI: http://publish.sub7journal.com/id/eprint/49

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