Quantitative Evaluation of Task-Induced Neurological Outcome after Stroke

Electroencephalography (EEG) can access ischemic stroke-derived cortical impairment and is believed to be a prospective predictive method for acute stroke prognostics, neurological outcome, and post-stroke rehabilitation management. This study aims to quantify EEG features to understand task-induced...

Full description

Bibliographic Details
Main Authors: Iqram Hussain, Se-Jin Park
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Brain Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3425/11/7/900
id doaj-ccebaa4d6e234006979bda7b9b4f8827
record_format Article
spelling doaj-ccebaa4d6e234006979bda7b9b4f88272021-07-23T13:32:50ZengMDPI AGBrain Sciences2076-34252021-07-011190090010.3390/brainsci11070900Quantitative Evaluation of Task-Induced Neurological Outcome after StrokeIqram Hussain0Se-Jin Park1Center for Medical Convergence Metrology, Korea Research Institute of Standards and Science, Daejeon 34113, KoreaCenter for Medical Convergence Metrology, Korea Research Institute of Standards and Science, Daejeon 34113, KoreaElectroencephalography (EEG) can access ischemic stroke-derived cortical impairment and is believed to be a prospective predictive method for acute stroke prognostics, neurological outcome, and post-stroke rehabilitation management. This study aims to quantify EEG features to understand task-induced neurological declines due to stroke and evaluate the biomarkers to distinguish the ischemic stroke group and the healthy adult group. We investigated forty-eight stroke patients (average age 72.2 years, 62% male) admitted to the rehabilitation center and seventy-five healthy adults (average age 77 years, 31% male) with no history of known neurological diseases. EEG was recorded through frontal, central, temporal, and occipital cortical electrodes (Fz, C1, C2, T7, T8, Oz) using wireless EEG devices and a newly developed data acquisition platform within three months after the appearance of symptoms of ischemic stroke (clinically confirmed). Continuous EEG data were recorded during the consecutive resting, motor (walking and working activities), and cognitive reading tasks. The statistical results showed that alpha, theta, and delta activities are biomarkers classifying the stroke patients and the healthy adults in the motor and cognitive states. DAR and DTR of the stroke group differed significantly from those of the healthy control group during the resting, motor, and cognitive tasks. Using the machine-learning approach, the C5.0 model showed 78% accuracy for the resting state, 89% accuracy in the functional motor walking condition, 84% accuracy in the working condition, and 85% accuracy in the cognitive reading state for classification the stroke group and the control group. This study is expected to be helpful for post-stroke treatment and post-stroke recovery.https://www.mdpi.com/2076-3425/11/7/900electroencephalographystrokeneurosciencemachine-learningneurological workload
collection DOAJ
language English
format Article
sources DOAJ
author Iqram Hussain
Se-Jin Park
spellingShingle Iqram Hussain
Se-Jin Park
Quantitative Evaluation of Task-Induced Neurological Outcome after Stroke
Brain Sciences
electroencephalography
stroke
neuroscience
machine-learning
neurological workload
author_facet Iqram Hussain
Se-Jin Park
author_sort Iqram Hussain
title Quantitative Evaluation of Task-Induced Neurological Outcome after Stroke
title_short Quantitative Evaluation of Task-Induced Neurological Outcome after Stroke
title_full Quantitative Evaluation of Task-Induced Neurological Outcome after Stroke
title_fullStr Quantitative Evaluation of Task-Induced Neurological Outcome after Stroke
title_full_unstemmed Quantitative Evaluation of Task-Induced Neurological Outcome after Stroke
title_sort quantitative evaluation of task-induced neurological outcome after stroke
publisher MDPI AG
series Brain Sciences
issn 2076-3425
publishDate 2021-07-01
description Electroencephalography (EEG) can access ischemic stroke-derived cortical impairment and is believed to be a prospective predictive method for acute stroke prognostics, neurological outcome, and post-stroke rehabilitation management. This study aims to quantify EEG features to understand task-induced neurological declines due to stroke and evaluate the biomarkers to distinguish the ischemic stroke group and the healthy adult group. We investigated forty-eight stroke patients (average age 72.2 years, 62% male) admitted to the rehabilitation center and seventy-five healthy adults (average age 77 years, 31% male) with no history of known neurological diseases. EEG was recorded through frontal, central, temporal, and occipital cortical electrodes (Fz, C1, C2, T7, T8, Oz) using wireless EEG devices and a newly developed data acquisition platform within three months after the appearance of symptoms of ischemic stroke (clinically confirmed). Continuous EEG data were recorded during the consecutive resting, motor (walking and working activities), and cognitive reading tasks. The statistical results showed that alpha, theta, and delta activities are biomarkers classifying the stroke patients and the healthy adults in the motor and cognitive states. DAR and DTR of the stroke group differed significantly from those of the healthy control group during the resting, motor, and cognitive tasks. Using the machine-learning approach, the C5.0 model showed 78% accuracy for the resting state, 89% accuracy in the functional motor walking condition, 84% accuracy in the working condition, and 85% accuracy in the cognitive reading state for classification the stroke group and the control group. This study is expected to be helpful for post-stroke treatment and post-stroke recovery.
topic electroencephalography
stroke
neuroscience
machine-learning
neurological workload
url https://www.mdpi.com/2076-3425/11/7/900
work_keys_str_mv AT iqramhussain quantitativeevaluationoftaskinducedneurologicaloutcomeafterstroke
AT sejinpark quantitativeevaluationoftaskinducedneurologicaloutcomeafterstroke
_version_ 1721289258801561600