Cargando…

Machine learning-based prediction of post-stroke cognitive status using electroencephalography-derived brain network attributes

OBJECTIVES: More than half of patients with acute ischemic stroke develop post-stroke cognitive impairment (PSCI), a significant barrier to future neurological recovery. Thus, predicting cognitive trajectories post-AIS is crucial. Our primary objective is to determine whether brain network propertie...

Descripción completa

Detalles Bibliográficos
Autores principales: Lee, Minwoo, Hong, Yuseong, An, Sungsik, Park, Ukeob, Shin, Jaekang, Lee, Jeongjae, Oh, Mi Sun, Lee, Byung-Chul, Yu, Kyung-Ho, Lim, Jae-Sung, Kang, Seung Wan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10568623/
https://www.ncbi.nlm.nih.gov/pubmed/37842126
http://dx.doi.org/10.3389/fnagi.2023.1238274
_version_ 1785119392129875968
author Lee, Minwoo
Hong, Yuseong
An, Sungsik
Park, Ukeob
Shin, Jaekang
Lee, Jeongjae
Oh, Mi Sun
Lee, Byung-Chul
Yu, Kyung-Ho
Lim, Jae-Sung
Kang, Seung Wan
author_facet Lee, Minwoo
Hong, Yuseong
An, Sungsik
Park, Ukeob
Shin, Jaekang
Lee, Jeongjae
Oh, Mi Sun
Lee, Byung-Chul
Yu, Kyung-Ho
Lim, Jae-Sung
Kang, Seung Wan
author_sort Lee, Minwoo
collection PubMed
description OBJECTIVES: More than half of patients with acute ischemic stroke develop post-stroke cognitive impairment (PSCI), a significant barrier to future neurological recovery. Thus, predicting cognitive trajectories post-AIS is crucial. Our primary objective is to determine whether brain network properties from electroencephalography (EEG) can predict post-stroke cognitive function using machine learning approach. METHODS: We enrolled consecutive stroke patients who underwent both EEG during the acute stroke phase and cognitive assessments 3 months post-stroke. We preprocessed acute stroke EEG data to eliminate low-quality epochs, then performed independent component analysis and quantified network characteristics using iSyncBrain®. Cognitive function was evaluated using the Montreal cognitive assessment (MoCA). We initially categorized participants based on the lateralization of their lesions and then developed machine learning models to predict cognitive status in the left and right hemisphere lesion groups. RESULTS: Eighty-seven patients were included, and the accuracy of lesion laterality prediction using EEG attributes was 97.0%. In the left hemispheric lesion group, the network attributes of the theta band were significantly correlated with MoCA scores, and higher global efficiency, clustering coefficient, and lower characteristic path length were associated with higher MoCA scores. Most features related to cognitive scores were selected from the frontal lobe. The predictive powers (R-squared) were 0.76 and 0.65 for the left and right stroke groups, respectively. CONCLUSION: Estimating EEG-based network properties in the acute phase of ischemic stroke through a machine learning model has a potential to predict cognitive outcomes after ischemic stroke.
format Online
Article
Text
id pubmed-10568623
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-105686232023-10-13 Machine learning-based prediction of post-stroke cognitive status using electroencephalography-derived brain network attributes Lee, Minwoo Hong, Yuseong An, Sungsik Park, Ukeob Shin, Jaekang Lee, Jeongjae Oh, Mi Sun Lee, Byung-Chul Yu, Kyung-Ho Lim, Jae-Sung Kang, Seung Wan Front Aging Neurosci Aging Neuroscience OBJECTIVES: More than half of patients with acute ischemic stroke develop post-stroke cognitive impairment (PSCI), a significant barrier to future neurological recovery. Thus, predicting cognitive trajectories post-AIS is crucial. Our primary objective is to determine whether brain network properties from electroencephalography (EEG) can predict post-stroke cognitive function using machine learning approach. METHODS: We enrolled consecutive stroke patients who underwent both EEG during the acute stroke phase and cognitive assessments 3 months post-stroke. We preprocessed acute stroke EEG data to eliminate low-quality epochs, then performed independent component analysis and quantified network characteristics using iSyncBrain®. Cognitive function was evaluated using the Montreal cognitive assessment (MoCA). We initially categorized participants based on the lateralization of their lesions and then developed machine learning models to predict cognitive status in the left and right hemisphere lesion groups. RESULTS: Eighty-seven patients were included, and the accuracy of lesion laterality prediction using EEG attributes was 97.0%. In the left hemispheric lesion group, the network attributes of the theta band were significantly correlated with MoCA scores, and higher global efficiency, clustering coefficient, and lower characteristic path length were associated with higher MoCA scores. Most features related to cognitive scores were selected from the frontal lobe. The predictive powers (R-squared) were 0.76 and 0.65 for the left and right stroke groups, respectively. CONCLUSION: Estimating EEG-based network properties in the acute phase of ischemic stroke through a machine learning model has a potential to predict cognitive outcomes after ischemic stroke. Frontiers Media S.A. 2023-09-28 /pmc/articles/PMC10568623/ /pubmed/37842126 http://dx.doi.org/10.3389/fnagi.2023.1238274 Text en Copyright © 2023 Lee, Hong, An, Park, Shin, Lee, Oh, Lee, Yu, Lim and Kang. https://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 Aging Neuroscience
Lee, Minwoo
Hong, Yuseong
An, Sungsik
Park, Ukeob
Shin, Jaekang
Lee, Jeongjae
Oh, Mi Sun
Lee, Byung-Chul
Yu, Kyung-Ho
Lim, Jae-Sung
Kang, Seung Wan
Machine learning-based prediction of post-stroke cognitive status using electroencephalography-derived brain network attributes
title Machine learning-based prediction of post-stroke cognitive status using electroencephalography-derived brain network attributes
title_full Machine learning-based prediction of post-stroke cognitive status using electroencephalography-derived brain network attributes
title_fullStr Machine learning-based prediction of post-stroke cognitive status using electroencephalography-derived brain network attributes
title_full_unstemmed Machine learning-based prediction of post-stroke cognitive status using electroencephalography-derived brain network attributes
title_short Machine learning-based prediction of post-stroke cognitive status using electroencephalography-derived brain network attributes
title_sort machine learning-based prediction of post-stroke cognitive status using electroencephalography-derived brain network attributes
topic Aging Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10568623/
https://www.ncbi.nlm.nih.gov/pubmed/37842126
http://dx.doi.org/10.3389/fnagi.2023.1238274
work_keys_str_mv AT leeminwoo machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes
AT hongyuseong machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes
AT ansungsik machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes
AT parkukeob machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes
AT shinjaekang machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes
AT leejeongjae machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes
AT ohmisun machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes
AT leebyungchul machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes
AT yukyungho machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes
AT limjaesung machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes
AT kangseungwan machinelearningbasedpredictionofpoststrokecognitivestatususingelectroencephalographyderivedbrainnetworkattributes