Cognitive Profiling Related to Cerebral Amyloid Beta Burden Using Machine Learning Approaches

Background: Cerebral amyloid beta (Aβ) is a hallmark of Alzheimer’s disease (AD). Aβ can be detected in vivo with amyloid imaging or cerebrospinal fluid assessments. However, these technologies can be both expensive and invasive, and their accessibility is limited in many clinical settings. Hence th...

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Main Authors: Hyunwoong Ko, Jung-Joon Ihm, Hong-Gee Kim, for the Alzheimer’s Disease Neuroimaging Initiative
Format: Article
Language:English
Published: Frontiers Media S.A. 2019-04-01
Series:Frontiers in Aging Neuroscience
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fnagi.2019.00095/full
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spelling doaj-d25d58ee3e5243bdb8f0e2a10745e8e12020-11-25T01:17:02ZengFrontiers Media S.A.Frontiers in Aging Neuroscience1663-43652019-04-011110.3389/fnagi.2019.00095439698Cognitive Profiling Related to Cerebral Amyloid Beta Burden Using Machine Learning ApproachesHyunwoong Ko0Hyunwoong Ko1Jung-Joon Ihm2Hong-Gee Kim3Hong-Gee Kim4Hong-Gee Kim5for the Alzheimer’s Disease Neuroimaging InitiativeInterdisciplinary Program in Cognitive Science, Seoul National University, Seoul, South KoreaBiomedical Knowledge Engineering Laboratory, School of Dentistry, Seoul National University, Seoul, South KoreaSchool of Dentistry, Seoul National University, Seoul, South KoreaInterdisciplinary Program in Cognitive Science, Seoul National University, Seoul, South KoreaBiomedical Knowledge Engineering Laboratory, School of Dentistry, Seoul National University, Seoul, South KoreaSchool of Dentistry, Seoul National University, Seoul, South KoreaBackground: Cerebral amyloid beta (Aβ) is a hallmark of Alzheimer’s disease (AD). Aβ can be detected in vivo with amyloid imaging or cerebrospinal fluid assessments. However, these technologies can be both expensive and invasive, and their accessibility is limited in many clinical settings. Hence the current study aims to identify multivariate cost-efficient markers for Aβ positivity among non-demented individuals using machine learning (ML) approaches.Methods: The relationship between cost-efficient candidate markers and Aβ status was examined by analyzing 762 participants from the Alzheimer’s Disease Neuroimaging Initiative-2 cohort at baseline visit (286 cognitively normal, 332 with mild cognitive impairment, and 144 with AD; mean age 73.2 years, range 55–90). Demographic variables (age, gender, education, and APOE status) and neuropsychological test scores were used as predictors in an ML algorithm. Cerebral Aβ burden and Aβ positivity were measured using 18F-florbetapir positron emission tomography images. The adaptive least absolute shrinkage and selection operator (LASSO) ML algorithm was implemented to identify cognitive performance and demographic variables and distinguish individuals from the population at high risk for cerebral Aβ burden. For generalizability, results were further checked by randomly dividing the data into training sets and test sets and checking predictive performances by 10-fold cross-validation.Results: Out of neuropsychological predictors, visuospatial ability and episodic memory test results were consistently significant predictors for Aβ positivity across subgroups with demographic variables and other cognitive measures considered. The adaptive LASSO model using out-of-sample classification could distinguish abnormal levels of Aβ. The area under the curve of the receiver operating characteristic curve was 0.754 in the mild change group, 0.803 in the moderate change group, and 0.864 in the severe change group, respectively.Conclusion: Our results showed that the cost-efficient neuropsychological model with demographics could predict Aβ positivity, suggesting a potential surrogate method for detecting Aβ deposition non-invasively with clinical utility. More specifically, it could be a very brief screening tool in various settings to recruit participants with potential biomarker evidence of AD brain pathology. These identified individuals would be valuable participants in secondary prevention trials aimed at detecting an anti-amyloid drug effect in the non-demented population.https://www.frontiersin.org/article/10.3389/fnagi.2019.00095/fullamyloid beta depositionneuropsychological assessmentmachine learningcognitive profilingAlzheimer’s disease
collection DOAJ
language English
format Article
sources DOAJ
author Hyunwoong Ko
Hyunwoong Ko
Jung-Joon Ihm
Hong-Gee Kim
Hong-Gee Kim
Hong-Gee Kim
for the Alzheimer’s Disease Neuroimaging Initiative
spellingShingle Hyunwoong Ko
Hyunwoong Ko
Jung-Joon Ihm
Hong-Gee Kim
Hong-Gee Kim
Hong-Gee Kim
for the Alzheimer’s Disease Neuroimaging Initiative
Cognitive Profiling Related to Cerebral Amyloid Beta Burden Using Machine Learning Approaches
Frontiers in Aging Neuroscience
amyloid beta deposition
neuropsychological assessment
machine learning
cognitive profiling
Alzheimer’s disease
author_facet Hyunwoong Ko
Hyunwoong Ko
Jung-Joon Ihm
Hong-Gee Kim
Hong-Gee Kim
Hong-Gee Kim
for the Alzheimer’s Disease Neuroimaging Initiative
author_sort Hyunwoong Ko
title Cognitive Profiling Related to Cerebral Amyloid Beta Burden Using Machine Learning Approaches
title_short Cognitive Profiling Related to Cerebral Amyloid Beta Burden Using Machine Learning Approaches
title_full Cognitive Profiling Related to Cerebral Amyloid Beta Burden Using Machine Learning Approaches
title_fullStr Cognitive Profiling Related to Cerebral Amyloid Beta Burden Using Machine Learning Approaches
title_full_unstemmed Cognitive Profiling Related to Cerebral Amyloid Beta Burden Using Machine Learning Approaches
title_sort cognitive profiling related to cerebral amyloid beta burden using machine learning approaches
publisher Frontiers Media S.A.
series Frontiers in Aging Neuroscience
issn 1663-4365
publishDate 2019-04-01
description Background: Cerebral amyloid beta (Aβ) is a hallmark of Alzheimer’s disease (AD). Aβ can be detected in vivo with amyloid imaging or cerebrospinal fluid assessments. However, these technologies can be both expensive and invasive, and their accessibility is limited in many clinical settings. Hence the current study aims to identify multivariate cost-efficient markers for Aβ positivity among non-demented individuals using machine learning (ML) approaches.Methods: The relationship between cost-efficient candidate markers and Aβ status was examined by analyzing 762 participants from the Alzheimer’s Disease Neuroimaging Initiative-2 cohort at baseline visit (286 cognitively normal, 332 with mild cognitive impairment, and 144 with AD; mean age 73.2 years, range 55–90). Demographic variables (age, gender, education, and APOE status) and neuropsychological test scores were used as predictors in an ML algorithm. Cerebral Aβ burden and Aβ positivity were measured using 18F-florbetapir positron emission tomography images. The adaptive least absolute shrinkage and selection operator (LASSO) ML algorithm was implemented to identify cognitive performance and demographic variables and distinguish individuals from the population at high risk for cerebral Aβ burden. For generalizability, results were further checked by randomly dividing the data into training sets and test sets and checking predictive performances by 10-fold cross-validation.Results: Out of neuropsychological predictors, visuospatial ability and episodic memory test results were consistently significant predictors for Aβ positivity across subgroups with demographic variables and other cognitive measures considered. The adaptive LASSO model using out-of-sample classification could distinguish abnormal levels of Aβ. The area under the curve of the receiver operating characteristic curve was 0.754 in the mild change group, 0.803 in the moderate change group, and 0.864 in the severe change group, respectively.Conclusion: Our results showed that the cost-efficient neuropsychological model with demographics could predict Aβ positivity, suggesting a potential surrogate method for detecting Aβ deposition non-invasively with clinical utility. More specifically, it could be a very brief screening tool in various settings to recruit participants with potential biomarker evidence of AD brain pathology. These identified individuals would be valuable participants in secondary prevention trials aimed at detecting an anti-amyloid drug effect in the non-demented population.
topic amyloid beta deposition
neuropsychological assessment
machine learning
cognitive profiling
Alzheimer’s disease
url https://www.frontiersin.org/article/10.3389/fnagi.2019.00095/full
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