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  4. Depth Analysis of Anesthesia Using EEG Signals via Time Series Feature Extraction and Machine Learning
 
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Depth Analysis of Anesthesia Using EEG Signals via Time Series Feature Extraction and Machine Learning

Journal
Sci
Journal Volume
5
Journal Issue
2
Date Issued
2023-06-01
Author(s)
Anand, Raghav V.
Abbod, Maysam F.
SHOU-ZEN FAN  
Shieh, Jiann Shing
DOI
10.3390/sci5020019
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/637688
URL
https://api.elsevier.com/content/abstract/scopus_id/85163714771
Abstract
The term “anesthetic depth” refers to the extent to which a general anesthetic agent sedates the central nervous system with specific strength concentration at which it is delivered. The depth level of anesthesia plays a crucial role in determining surgical complications, and it is imperative to keep the depth levels of anesthesia under control to perform a successful surgery. This study used electroencephalography (EEG) signals to predict the depth levels of anesthesia. Traditional preprocessing methods such as signal decomposition and model building using deep learning were used to classify anesthetic depth levels. This paper proposed a novel approach to classify the anesthesia levels based on the concept of time series feature extraction, by finding out the relation between EEG signals and the bi-spectral Index over a period of time. Time series feature extraction on basis of scalable hypothesis tests were performed to extract features by analyzing the relation between the EEG signals and Bi-Spectral Index, and machine learning models such as support vector classifier, XG boost classifier, gradient boost classifier, decision trees and random forest classifier are used to train the features and predict the depth level of anesthesia. The best-trained model was random forest, which gives an accuracy of 83%. This provides a platform to further research and dig into time series-based feature extraction in this area.
Subjects
anesthetic depth | bi-spectral index | electroencephalography | feature extraction | machine learning | time series
SDGs

[SDGs]SDG15

Type
journal article

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To permanently archive and promote researcher profiles and scholarly works, Library integrates the services of “NTU Repository” with “Academic Hub” to form NTU Scholars.

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開放取用是從使用者角度提升資訊取用性的社會運動,應用在學術研究上是透過將研究著作公開供使用者自由取閱,以促進學術傳播及因應期刊訂購費用逐年攀升。同時可加速研究發展、提升研究影響力,NTU Scholars即為本校的開放取用典藏(OA Archive)平台。(點選深入了解OA)

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