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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Main Authors: Sarah J.A. Carr, Judith Jaeger, Shijia Bian, Ping He, Nancy Maserejian, Wenting Wang, Paul Maruff, Ahmed Enayetallah, Yanming Wang, Zhengyi Chen, Alan Lerner, Curtis Tatsuoka, Australian Imaging Biomarkers and Lifestyle Flagship Study of Ageing
Format: Article
Language:English
Published: Frontiers Media S.A. 2019-09-01
Series:Frontiers in Neurology
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fneur.2019.00976/full
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author Sarah J.A. Carr
Sarah J.A. Carr
Judith Jaeger
Judith Jaeger
Shijia Bian
Ping He
Nancy Maserejian
Wenting Wang
Paul Maruff
Paul Maruff
Ahmed Enayetallah
Yanming Wang
Zhengyi Chen
Alan Lerner
Alan Lerner
Curtis Tatsuoka
Curtis Tatsuoka
Curtis Tatsuoka
Australian Imaging Biomarkers and Lifestyle Flagship Study of Ageing
spellingShingle Sarah J.A. Carr
Sarah J.A. Carr
Judith Jaeger
Judith Jaeger
Shijia Bian
Ping He
Nancy Maserejian
Wenting Wang
Paul Maruff
Paul Maruff
Ahmed Enayetallah
Yanming Wang
Zhengyi Chen
Alan Lerner
Alan Lerner
Curtis Tatsuoka
Curtis Tatsuoka
Curtis Tatsuoka
Australian Imaging Biomarkers and Lifestyle Flagship Study of Ageing
Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis
Frontiers in Neurology
Alzheimer's disease
cognitive impairment
amyloid
partially ordered sets
ADNI/AIBL
author_facet Sarah J.A. Carr
Sarah J.A. Carr
Judith Jaeger
Judith Jaeger
Shijia Bian
Ping He
Nancy Maserejian
Wenting Wang
Paul Maruff
Paul Maruff
Ahmed Enayetallah
Yanming Wang
Zhengyi Chen
Alan Lerner
Alan Lerner
Curtis Tatsuoka
Curtis Tatsuoka
Curtis Tatsuoka
Australian Imaging Biomarkers and Lifestyle Flagship Study of Ageing
author_sort Sarah J.A. Carr
title Associating Cognition With Amyloid Status Using Partially Ordered Set Analysis
title_short 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_sort associating cognition with amyloid status using partially ordered set analysis
publisher Frontiers Media S.A.
series Frontiers in Neurology
issn 1664-2295
publishDate 2019-09-01
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.
topic Alzheimer's disease
cognitive impairment
amyloid
partially ordered sets
ADNI/AIBL
url https://www.frontiersin.org/article/10.3389/fneur.2019.00976/full
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spelling doaj-a4b74a17778d44ac8071bc80cb44a1862020-11-24T21:29:49ZengFrontiers Media S.A.Frontiers in Neurology1664-22952019-09-011010.3389/fneur.2019.00976477677Associating Cognition With Amyloid Status Using Partially Ordered Set AnalysisSarah J.A. Carr0Sarah J.A. Carr1Judith Jaeger2Judith Jaeger3Shijia Bian4Ping He5Nancy Maserejian6Wenting Wang7Paul Maruff8Paul Maruff9Ahmed Enayetallah10Yanming Wang11Zhengyi Chen12Alan Lerner13Alan Lerner14Curtis Tatsuoka15Curtis Tatsuoka16Curtis Tatsuoka17Australian Imaging Biomarkers and Lifestyle Flagship Study of AgeingDepartment of Neurology, Case Western Reserve University, Cleveland, OH, United StatesNeuroimaging Department, Institute of Psychiatry, Psychology and Neuroscience, King's College London, London, United KingdomCognitionMetrics, LLC, Wilmington, DE, United StatesDepartment of Psychiatry and Behavioral Sciences, Albert Einstein College of Medicine, Bronx, NY, United StatesBiogen, Cambridge, MA, United StatesBiogen, Cambridge, MA, United StatesBiogen, Cambridge, MA, United StatesBiogen, Cambridge, MA, United StatesFlorey Institute of Neuroscience and Mental Health, University of Melbourne, Parkville, VIC, AustraliaCogState Ltd., Melbourne, VIC, AustraliaBiogen, Cambridge, MA, United StatesDepartment of Radiology, Case Western Reserve University, Cleveland, OH, United StatesDepartment of Neurology, Case Western Reserve University, Cleveland, OH, United StatesDepartment of Neurology, Case Western Reserve University, Cleveland, OH, United StatesNeurological Institute, University Hospitals Cleveland Medical Center, Beachwood, OH, United StatesDepartment of Neurology, Case Western Reserve University, Cleveland, OH, United StatesNeurological Institute, University Hospitals Cleveland Medical Center, Beachwood, OH, United States0Department of Population and Quantitative Health Sciences, Case Western Reserve University, Cleveland, OH, United StatesBackground: 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.https://www.frontiersin.org/article/10.3389/fneur.2019.00976/fullAlzheimer's diseasecognitive impairmentamyloidpartially ordered setsADNI/AIBL