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Random Forest Classification of Alcohol Use Disorder Using fMRI Functional Connectivity, Neuropsychological Functioning, and Impulsivity Measures

Individuals with alcohol use disorder (AUD) are known to manifest a variety of neurocognitive impairments that can be attributed to alterations in specific brain networks. The current study aims to identify specific features of brain connectivity, neuropsychological performance, and impulsivity trai...

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Autores principales: Kamarajan, Chella, Ardekani, Babak A., Pandey, Ashwini K., Kinreich, Sivan, Pandey, Gayathri, Chorlian, David B., Meyers, Jacquelyn L., Zhang, Jian, Bermudez, Elaine, Stimus, Arthur T., Porjesz, Bernice
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7071377/
https://www.ncbi.nlm.nih.gov/pubmed/32093319
http://dx.doi.org/10.3390/brainsci10020115
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author Kamarajan, Chella
Ardekani, Babak A.
Pandey, Ashwini K.
Kinreich, Sivan
Pandey, Gayathri
Chorlian, David B.
Meyers, Jacquelyn L.
Zhang, Jian
Bermudez, Elaine
Stimus, Arthur T.
Porjesz, Bernice
author_facet Kamarajan, Chella
Ardekani, Babak A.
Pandey, Ashwini K.
Kinreich, Sivan
Pandey, Gayathri
Chorlian, David B.
Meyers, Jacquelyn L.
Zhang, Jian
Bermudez, Elaine
Stimus, Arthur T.
Porjesz, Bernice
author_sort Kamarajan, Chella
collection PubMed
description Individuals with alcohol use disorder (AUD) are known to manifest a variety of neurocognitive impairments that can be attributed to alterations in specific brain networks. The current study aims to identify specific features of brain connectivity, neuropsychological performance, and impulsivity traits that can classify adult males with AUD (n = 30) from healthy controls (CTL, n = 30) using the Random Forest (RF) classification method. The predictor variables were: (i) fMRI-based within-network functional connectivity (FC) of the Default Mode Network (DMN), (ii) neuropsychological scores from the Tower of London Test (TOLT), and the Visual Span Test (VST), and (iii) impulsivity factors from the Barratt Impulsiveness Scale (BIS). The RF model, with a classification accuracy of 76.67%, identified fourteen DMN connections, two neuropsychological variables (memory span and total correct scores of the forward condition of the VST), and all impulsivity factors as significantly important for classifying participants into either the AUD or CTL group. Specifically, the AUD group manifested hyperconnectivity across the bilateral anterior cingulate cortex and the prefrontal cortex as well as between the bilateral posterior cingulate cortex and the left inferior parietal lobule, while showing hypoconnectivity in long-range anterior–posterior and interhemispheric long-range connections. Individuals with AUD also showed poorer memory performance and increased impulsivity compared to CTL individuals. Furthermore, there were significant associations among FC, impulsivity, neuropsychological performance, and AUD status. These results confirm the previous findings that alterations in specific brain networks coupled with poor neuropsychological functioning and heightened impulsivity may characterize individuals with AUD, who can be efficiently identified using classification algorithms such as Random Forest.
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spelling pubmed-70713772020-03-19 Random Forest Classification of Alcohol Use Disorder Using fMRI Functional Connectivity, Neuropsychological Functioning, and Impulsivity Measures Kamarajan, Chella Ardekani, Babak A. Pandey, Ashwini K. Kinreich, Sivan Pandey, Gayathri Chorlian, David B. Meyers, Jacquelyn L. Zhang, Jian Bermudez, Elaine Stimus, Arthur T. Porjesz, Bernice Brain Sci Article Individuals with alcohol use disorder (AUD) are known to manifest a variety of neurocognitive impairments that can be attributed to alterations in specific brain networks. The current study aims to identify specific features of brain connectivity, neuropsychological performance, and impulsivity traits that can classify adult males with AUD (n = 30) from healthy controls (CTL, n = 30) using the Random Forest (RF) classification method. The predictor variables were: (i) fMRI-based within-network functional connectivity (FC) of the Default Mode Network (DMN), (ii) neuropsychological scores from the Tower of London Test (TOLT), and the Visual Span Test (VST), and (iii) impulsivity factors from the Barratt Impulsiveness Scale (BIS). The RF model, with a classification accuracy of 76.67%, identified fourteen DMN connections, two neuropsychological variables (memory span and total correct scores of the forward condition of the VST), and all impulsivity factors as significantly important for classifying participants into either the AUD or CTL group. Specifically, the AUD group manifested hyperconnectivity across the bilateral anterior cingulate cortex and the prefrontal cortex as well as between the bilateral posterior cingulate cortex and the left inferior parietal lobule, while showing hypoconnectivity in long-range anterior–posterior and interhemispheric long-range connections. Individuals with AUD also showed poorer memory performance and increased impulsivity compared to CTL individuals. Furthermore, there were significant associations among FC, impulsivity, neuropsychological performance, and AUD status. These results confirm the previous findings that alterations in specific brain networks coupled with poor neuropsychological functioning and heightened impulsivity may characterize individuals with AUD, who can be efficiently identified using classification algorithms such as Random Forest. MDPI 2020-02-20 /pmc/articles/PMC7071377/ /pubmed/32093319 http://dx.doi.org/10.3390/brainsci10020115 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Kamarajan, Chella
Ardekani, Babak A.
Pandey, Ashwini K.
Kinreich, Sivan
Pandey, Gayathri
Chorlian, David B.
Meyers, Jacquelyn L.
Zhang, Jian
Bermudez, Elaine
Stimus, Arthur T.
Porjesz, Bernice
Random Forest Classification of Alcohol Use Disorder Using fMRI Functional Connectivity, Neuropsychological Functioning, and Impulsivity Measures
title Random Forest Classification of Alcohol Use Disorder Using fMRI Functional Connectivity, Neuropsychological Functioning, and Impulsivity Measures
title_full Random Forest Classification of Alcohol Use Disorder Using fMRI Functional Connectivity, Neuropsychological Functioning, and Impulsivity Measures
title_fullStr Random Forest Classification of Alcohol Use Disorder Using fMRI Functional Connectivity, Neuropsychological Functioning, and Impulsivity Measures
title_full_unstemmed Random Forest Classification of Alcohol Use Disorder Using fMRI Functional Connectivity, Neuropsychological Functioning, and Impulsivity Measures
title_short Random Forest Classification of Alcohol Use Disorder Using fMRI Functional Connectivity, Neuropsychological Functioning, and Impulsivity Measures
title_sort random forest classification of alcohol use disorder using fmri functional connectivity, neuropsychological functioning, and impulsivity measures
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7071377/
https://www.ncbi.nlm.nih.gov/pubmed/32093319
http://dx.doi.org/10.3390/brainsci10020115
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