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Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis

Background: The presence of brain amyloid-beta positivity is associated with cognitive impairment and dementia, but whether there are specific aspects of cognition that are most linked to amyloid-beta is unclear. Analysis of neuropsychological test data presents challenges since a single test often...

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Autores principales: Carr, Sarah J.A., Jaeger, Judith, Bian, Shijia, He, Ping, Maserejian, Nancy, Wang, Wenting, Maruff, Paul, Enayetallah, Ahmed, Wang, Yanming, Chen, Zhengyi, Lerner, Alan, Tatsuoka, Curtis
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6753225/
https://www.ncbi.nlm.nih.gov/pubmed/31572291
http://dx.doi.org/10.3389/fneur.2019.00976
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author Carr, Sarah J.A.
Jaeger, Judith
Bian, Shijia
He, Ping
Maserejian, Nancy
Wang, Wenting
Maruff, Paul
Enayetallah, Ahmed
Wang, Yanming
Chen, Zhengyi
Lerner, Alan
Tatsuoka, Curtis
author_facet Carr, Sarah J.A.
Jaeger, Judith
Bian, Shijia
He, Ping
Maserejian, Nancy
Wang, Wenting
Maruff, Paul
Enayetallah, Ahmed
Wang, Yanming
Chen, Zhengyi
Lerner, Alan
Tatsuoka, Curtis
author_sort Carr, Sarah J.A.
collection PubMed
description Background: The presence of brain amyloid-beta positivity is associated with cognitive impairment and dementia, but whether there are specific aspects of cognition that are most linked to amyloid-beta is unclear. Analysis of neuropsychological test data presents challenges since a single test often requires drawing upon multiple cognitive functions to perform well. It can thus be imprecise to link performance on a given test to a specific cognitive function. Our objective was to provide insight into how cognitive functions are associated with brain amyloid-beta positivity among samples consisting of cognitively normal and mild cognitively impaired (MCI) subjects, by using partially ordered set models (POSETs). Methods: We used POSET classification models of neuropsychological test data to classify samples to detailed cognitive profiles using ADNI2 and AIBL data. We considered 3 gradations of episodic memory, cognitive flexibility, verbal fluency, attention and perceptual motor speed, and performed group comparisons of cognitive functioning stratified by amyloid positivity (yes/no) and age (<70, 70–80, 81–90 years). We also employed random forest methods stratified by age to assess the effectiveness of cognitive testing in predicting amyloid positivity, in addition to demographic variables, and APOE4 allele count. Results: In ADNI2, differences in episodic memory and attention by amyloid were found for <70, and 70–80 years groups. In AIBL, episodic memory differences were found in the 70–80 years age group. In both studies, no cognitive differences were found in the 81–90 years group. The random forest analysis indicates that variable importance in classification depends on age. Cognitive testing that targets an intermediate level of episodic memory and delayed recall, in addition to APOE4 allele count, are the most important variables in both studies. Conclusions: In the ADNI2 and AIBL samples, the associations between specific cognitive abilities and brain amyloid-beta positivity depended on age, but in general episodic memory was most consistently predictive of brain amyloid-beta positivity. Random forest methods and OOB error rates establish the feasibility of predicting the presence of brain beta-amyloid using cognitive testing, APOE4 genotyping and demographic variables.
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spelling pubmed-67532252019-09-30 Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis Carr, Sarah J.A. Jaeger, Judith Bian, Shijia He, Ping Maserejian, Nancy Wang, Wenting Maruff, Paul Enayetallah, Ahmed Wang, Yanming Chen, Zhengyi Lerner, Alan Tatsuoka, Curtis Front Neurol Neurology Background: The presence of brain amyloid-beta positivity is associated with cognitive impairment and dementia, but whether there are specific aspects of cognition that are most linked to amyloid-beta is unclear. Analysis of neuropsychological test data presents challenges since a single test often requires drawing upon multiple cognitive functions to perform well. It can thus be imprecise to link performance on a given test to a specific cognitive function. Our objective was to provide insight into how cognitive functions are associated with brain amyloid-beta positivity among samples consisting of cognitively normal and mild cognitively impaired (MCI) subjects, by using partially ordered set models (POSETs). Methods: We used POSET classification models of neuropsychological test data to classify samples to detailed cognitive profiles using ADNI2 and AIBL data. We considered 3 gradations of episodic memory, cognitive flexibility, verbal fluency, attention and perceptual motor speed, and performed group comparisons of cognitive functioning stratified by amyloid positivity (yes/no) and age (<70, 70–80, 81–90 years). We also employed random forest methods stratified by age to assess the effectiveness of cognitive testing in predicting amyloid positivity, in addition to demographic variables, and APOE4 allele count. Results: In ADNI2, differences in episodic memory and attention by amyloid were found for <70, and 70–80 years groups. In AIBL, episodic memory differences were found in the 70–80 years age group. In both studies, no cognitive differences were found in the 81–90 years group. The random forest analysis indicates that variable importance in classification depends on age. Cognitive testing that targets an intermediate level of episodic memory and delayed recall, in addition to APOE4 allele count, are the most important variables in both studies. Conclusions: In the ADNI2 and AIBL samples, the associations between specific cognitive abilities and brain amyloid-beta positivity depended on age, but in general episodic memory was most consistently predictive of brain amyloid-beta positivity. Random forest methods and OOB error rates establish the feasibility of predicting the presence of brain beta-amyloid using cognitive testing, APOE4 genotyping and demographic variables. Frontiers Media S.A. 2019-09-13 /pmc/articles/PMC6753225/ /pubmed/31572291 http://dx.doi.org/10.3389/fneur.2019.00976 Text en Copyright © 2019 Carr, Jaeger, Bian, He, Maserejian, Wang, Maruff, Enayetallah, Wang, Chen, Lerner and Tatsuoka. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neurology
Carr, Sarah J.A.
Jaeger, Judith
Bian, Shijia
He, Ping
Maserejian, Nancy
Wang, Wenting
Maruff, Paul
Enayetallah, Ahmed
Wang, Yanming
Chen, Zhengyi
Lerner, Alan
Tatsuoka, Curtis
Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis
title Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis
title_full Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis
title_fullStr Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis
title_full_unstemmed Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis
title_short Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis
title_sort associating cognition with amyloid status using partially ordered set analysis
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6753225/
https://www.ncbi.nlm.nih.gov/pubmed/31572291
http://dx.doi.org/10.3389/fneur.2019.00976
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