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Automated Detection of Anesthetic Depth Levels Using Chaotic Features with Artificial Neural Networks

机译:利用神经网络的混沌特征自动检测麻醉深度

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Monitoring the depth of anesthesia (DOA) during surgery is very important in order to avoid patients’ interoperative awareness. Since the traditional methods of assessing DOA which involve monitoring the heart rate, pupil size, sweating etc, may vary from patient to patient depending on the type of surgery and the type of drug administered, modern methods based on electroencephalogram (EEG) are preferred. EEG being a nonlinear signal, it is appropriate to use nonlinear chaotic parameters to identify the anesthetic depth levels. This paper discusses an automated detection method of anesthetic depth levels based on EEG recordings using non-linear chaotic features and neural network classifiers. Three nonlinear parameters, namely, correlation dimension (CD), Lyapunov exponent (LE) and Hurst exponent (HE) are used as features and two neural network models, namely, multi-layer perceptron network (feed forward model) and Elman network (feedback model) are used for classification. The neural network models are trained and tested with single and multiple features derived from chaotic parameters and the performances are evaluated in terms of sensitivity, specificity and overall accuracy. It is found from the experimental results that the Lyapunov exponent feature with Elman network yields an overall accuracy of 99% in detecting the anesthetic depth levels.
机译:为了避免患者对手术的意识,在手术过程中监测麻醉深度(DOA)非常重要。由于评估DOA的传统方法(包括监测心率,瞳孔大小,出汗等)可能因手术类型和所用药物类型而异,因此,首选基于脑电图(EEG)的现代方法。脑电图是一种非线性信号,宜使用非线性混沌参数来识别麻醉剂的深度水平。本文讨论了使用非线性混沌特征和神经网络分类器的基于EEG记录的麻醉深度水平的自动检测方法。使用三个非线性参数,即相关维数(CD),Lyapunov指数(LE)和Hurst指数(HE)作为特征,以及两个神经网络模型,即多层感知器网络(前馈模型)和Elman网络(反馈)型号)用于分类。对神经网络模型进行训练和测试,这些模型具有从混沌参数派生的单个和多个特征,并根据敏感性,特异性和总体准确性对性能进行了评估。从实验结果中发现,具有Elman网络的Lyapunov指数特征在检测麻醉剂深度水平上的总精度为99%。

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