» Articles » PMID: 34315065

Quantitative Analysis of EEG Reactivity for Neurological Prognostication After Cardiac Arrest

Overview
Publisher Elsevier
Specialties Neurology
Psychiatry
Date 2021 Jul 27
PMID 34315065
Citations 8
Authors
Affiliations
Soon will be listed here.
Abstract

Objective: To test whether 1) quantitative analysis of EEG reactivity (EEG-R) using machine learning (ML) is superior to visual analysis, and 2) combining quantitative analyses of EEG-R and EEG background pattern increases prognostic value for prediction of poor outcome after cardiac arrest (CA).

Methods: Several types of ML models were trained with twelve quantitative features derived from EEG-R and EEG background data of 134 adult CA patients. Poor outcome was a Cerebral Performance Category score of 3-5 within 6 months.

Results: The Random Forest (RF) trained on EEG-R showed the highest AUC of 83% (95-CI 80-86) of tested ML classifiers, predicting poor outcome with 46% sensitivity (95%-CI 40-51) and 89% specificity (95%-CI 86-92). Visual analysis of EEG-R had 80% sensitivity and 65% specificity. The RF was also the best classifier for EEG background (AUC 85%, 95%-CI 83-88) at 24 h after CA, with 62% sensitivity (95%-CI 57-67) and 84% specificity (95%-CI 79-88). Combining EEG-R and EEG background RF classifiers reduced the number of false positives.

Conclusions: Quantitative EEG-R using ML predicts poor outcome with higher specificity, but lower sensitivity compared to visual analysis of EEG-R, and is of some additional value to ML on EEG background data.

Significance: Quantitative EEG-R using ML is a promising alternative to visual analysis and of some added value to ML on EEG background data.

Citing Articles

Using artificial intelligence to optimize anti-seizure treatment and EEG-guided decisions in severe brain injury.

Akras Z, Jing J, Westover M, Zafar S Neurotherapeutics. 2025; 22(1):e00524.

PMID: 39855915 PMC: 11840355. DOI: 10.1016/j.neurot.2025.e00524.


Quantitative EEG reactivity induced by electrical stimulation predicts good outcome in comatose patients after cardiac arrest.

Liu G, Wang Y, Tian F, Chen W, Cui L, Jiang M Ann Intensive Care. 2024; 14(1):99.

PMID: 38935167 PMC: 11211292. DOI: 10.1186/s13613-024-01339-6.


Serum neuronal pentraxin 2 is related to cognitive dysfunction and electroencephalogram slow wave/fast wave frequency ratio in epilepsy.

Huang X, Xu M, Chen Y, Lin Y, Lin Y, Wang F World J Psychiatry. 2023; 13(10):714-723.

PMID: 38058685 PMC: 10696288. DOI: 10.5498/wjp.v13.i10.714.


Electroencephalogram-based machine learning models to predict neurologic outcome after cardiac arrest: A systematic review.

Chen C, Massey S, Kirschen M, Yuan I, Padiyath A, Simpao A Resuscitation. 2023; 194:110049.

PMID: 37972682 PMC: 11023717. DOI: 10.1016/j.resuscitation.2023.110049.


Early Prediction of Epilepsy after Encephalitis in Childhood Based on EEG and Clinical Features.

Sun X, Zhao J, Guo C, Zhu X Emerg Med Int. 2023; 2023:8862598.

PMID: 37485251 PMC: 10359137. DOI: 10.1155/2023/8862598.