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Predicting Age From Brain EEG Signals—A Machine Learning Approach

Objective: The brain age gap estimate (BrainAGE) is the difference between the estimated age and the individual chronological age. BrainAGE was studied primarily using MRI techniques. EEG signals in combination with machine learning (ML) approaches were not commonly used for the human age prediction...

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Autores principales: Al Zoubi, Obada, Ki Wong, Chung, Kuplicki, Rayus T., Yeh, Hung-wen, Mayeli, Ahmad, Refai, Hazem, Paulus, Martin, Bodurka, Jerzy
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6036180/
https://www.ncbi.nlm.nih.gov/pubmed/30013472
http://dx.doi.org/10.3389/fnagi.2018.00184
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author Al Zoubi, Obada
Ki Wong, Chung
Kuplicki, Rayus T.
Yeh, Hung-wen
Mayeli, Ahmad
Refai, Hazem
Paulus, Martin
Bodurka, Jerzy
author_facet Al Zoubi, Obada
Ki Wong, Chung
Kuplicki, Rayus T.
Yeh, Hung-wen
Mayeli, Ahmad
Refai, Hazem
Paulus, Martin
Bodurka, Jerzy
author_sort Al Zoubi, Obada
collection PubMed
description Objective: The brain age gap estimate (BrainAGE) is the difference between the estimated age and the individual chronological age. BrainAGE was studied primarily using MRI techniques. EEG signals in combination with machine learning (ML) approaches were not commonly used for the human age prediction, and BrainAGE. We investigated whether age-related changes are affecting brain EEG signals, and whether we can predict the chronological age and obtain BrainAGE estimates using a rigorous ML framework with a novel and extensive EEG features extraction. Methods: EEG data were obtained from 468 healthy, mood/anxiety, eating and substance use disorder participants (297 females) from the Tulsa-1000, a naturalistic longitudinal study based on Research Domain Criteria framework. Five sets of preprocessed EEG features across channels and frequency bands were used with different ML methods to predict age. Using a nested-cross-validation (NCV) approach and stack-ensemble learning from EEG features, the predicted age was estimated. The important features and their spatial distributions were deduced. Results: The stack-ensemble age prediction model achieved R(2) = 0.37 (0.06), Mean Absolute Error (MAE) = 6.87(0.69) and RMSE = 8.46(0.59) in years. The age and predicted age correlation was r = 0.6. The feature importance revealed that age predictors are spread out across different feature types. The NCV approach produced a reliable age estimation, with features consistent behavior across different folds. Conclusion: Our rigorous ML framework and extensive EEG signal features allow a reliable estimation of chronological age, and BrainAGE. This general framework can be extended to test EEG association with and to predict/study other physiological relevant responses.
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spelling pubmed-60361802018-07-16 Predicting Age From Brain EEG Signals—A Machine Learning Approach Al Zoubi, Obada Ki Wong, Chung Kuplicki, Rayus T. Yeh, Hung-wen Mayeli, Ahmad Refai, Hazem Paulus, Martin Bodurka, Jerzy Front Aging Neurosci Neuroscience Objective: The brain age gap estimate (BrainAGE) is the difference between the estimated age and the individual chronological age. BrainAGE was studied primarily using MRI techniques. EEG signals in combination with machine learning (ML) approaches were not commonly used for the human age prediction, and BrainAGE. We investigated whether age-related changes are affecting brain EEG signals, and whether we can predict the chronological age and obtain BrainAGE estimates using a rigorous ML framework with a novel and extensive EEG features extraction. Methods: EEG data were obtained from 468 healthy, mood/anxiety, eating and substance use disorder participants (297 females) from the Tulsa-1000, a naturalistic longitudinal study based on Research Domain Criteria framework. Five sets of preprocessed EEG features across channels and frequency bands were used with different ML methods to predict age. Using a nested-cross-validation (NCV) approach and stack-ensemble learning from EEG features, the predicted age was estimated. The important features and their spatial distributions were deduced. Results: The stack-ensemble age prediction model achieved R(2) = 0.37 (0.06), Mean Absolute Error (MAE) = 6.87(0.69) and RMSE = 8.46(0.59) in years. The age and predicted age correlation was r = 0.6. The feature importance revealed that age predictors are spread out across different feature types. The NCV approach produced a reliable age estimation, with features consistent behavior across different folds. Conclusion: Our rigorous ML framework and extensive EEG signal features allow a reliable estimation of chronological age, and BrainAGE. This general framework can be extended to test EEG association with and to predict/study other physiological relevant responses. Frontiers Media S.A. 2018-07-02 /pmc/articles/PMC6036180/ /pubmed/30013472 http://dx.doi.org/10.3389/fnagi.2018.00184 Text en Copyright © 2018 Al Zoubi, Ki Wong, Kuplicki, Yeh, Mayeli, Refai, Paulus and Bodurka. 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 Neuroscience
Al Zoubi, Obada
Ki Wong, Chung
Kuplicki, Rayus T.
Yeh, Hung-wen
Mayeli, Ahmad
Refai, Hazem
Paulus, Martin
Bodurka, Jerzy
Predicting Age From Brain EEG Signals—A Machine Learning Approach
title Predicting Age From Brain EEG Signals—A Machine Learning Approach
title_full Predicting Age From Brain EEG Signals—A Machine Learning Approach
title_fullStr Predicting Age From Brain EEG Signals—A Machine Learning Approach
title_full_unstemmed Predicting Age From Brain EEG Signals—A Machine Learning Approach
title_short Predicting Age From Brain EEG Signals—A Machine Learning Approach
title_sort predicting age from brain eeg signals—a machine learning approach
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6036180/
https://www.ncbi.nlm.nih.gov/pubmed/30013472
http://dx.doi.org/10.3389/fnagi.2018.00184
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