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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Monitoring Depth of Anaesthesia Based on Electroencephalogram Extracted Features and Artificial Neural Network
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Monitoring Depth of Anaesthesia Based on Electroencephalogram Extracted Features and Artificial Neural Network

机译:基于脑电图提取特征和人工神经网络监测麻醉深度

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Monitoring Depth of Anaesthesia (DoA) is one of the current challenges in medical research. Anaesthetic drugs affects mainly the central nervous system and therefore Electroencephalogram (EEG) signal analysis during anaesthesia will help to quantify the Depth of Anaesthesia. This paper proposes a novel method to quantify DoA based on the analysis of EEG signals during anaesthesia. Dimensionality of EEG signals are reduced by extracting the time and frequency domain features Approximate entropy (ApEn), Spectral Entropy (SEN) and Wavelet Entropy (WE). A comparison is performed on extracted EEG feature variations during different phases of anaesthesia awake, induction, maintenance and recovery. Validation is succeeded by calculating the correlation of extracted EEG features with BIS index (commercially available DoA monitor). The transition from different phases of anaethesia shows characteristic changes on extracted features than with BIS. Finally, the extracted EEG features are fed to an Artificial Neural Network (ANN) to classify the different anesthetic states as awake, light anaesthesia, moderate anaesthesia and deep anaesthesia. The classification accuracy attained through training and validation is 90.5 percentage.
机译:监测麻醉深度(DOA)是医学研究中当前的挑战之一。麻醉药物主要影响中枢神经系统,因此在麻醉期间的脑电图(EEG)信号分析将有助于量化麻醉深度。本文提出了一种基于麻醉期间脑电图信号分析量化DOA的新方法。通过提取时间和频域特征近似熵(APEN),光谱熵(SEN)和小波熵(我们)来减少EEG信号的维度。在不同阶段内提取的EEG特征变异进行比较,在麻醉的不同阶段清醒,诱导,维护和恢复。通过计算提取的EEG功能与BIS索引(市售DOA监视器)的相关性来成功验证。来自Anaethesia的不同阶段的过渡表明提取的特征的特征变化而不是与双方的影响。最后,提取的EEG特征被馈送到人工神经网络(ANN),以将不同的麻醉状态分类为清醒,光麻,中度麻醉和深麻醉。通过培训和验证实现的分类准确性为90.5个百分比。

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