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Design of a recognition system for monitoring the depth of anesthesia, based on the autoregressive modeling and neural network analysis of the EEG signals.

机译:基于EEG信号的自回归建模和神经网络分析,设计用于监测麻醉深度的识别系统。

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摘要

The need for a reliable method of measuring the depth of anesthesia has existed since the introduction of anesthesia. Hemodynamic variables are most commonly used as a measure of anesthetic depth by anesthesiologists in the operating room. It has been found that the hemodynamic variables by themselves may not be providing enough information to predict the depth of anesthesia. Since the system most affected by anesthetic agents is the central nervous system, electroencephalograms (EEG), a record of brain activity, can be used to monitor the anesthetic depth. This thesis establishes the feasibility of using a computer-based EEG recognition system to monitor anesthetic depth during halothane anesthesia. The spectral information contained in the EEG signals was represented using a tenth order autoregressive (AR) model. A four layer perceptron feedforward type of network was used in designing the recognition system. The system was trained and its performance tested on the input-output data pairs collected from animal experiments. The input features to the recognition system were based on the AR parameters and the output of the system was depth of anesthesia. Thirteen experiments were carried out on mongrel dogs at various levels of halothane, which itself was controlled using a closed circuit anesthesia controller. Depth of anesthesia was tested by monitoring the response to tail clamping, which is considered to be a supramaximal stimulus in dogs. The system was able to correctly classify the depth in 94% of the cases. The number of neurons in the hidden layer and the number of training samples required for generalization were obtained through clustering analysis. Addition of noise to the input neurons during training made the network more robust to external disturbances and improved the performance of the network significantly. The performance of the system has been shown to be clinically acceptable and has been shown to be robust with respect to inter-patient variability.
机译:自麻醉以来,一直需要一种可靠的方法来测量麻醉深度。血液动力学变量最常被手术室中的麻醉师用来衡量麻醉深度。已经发现,血液动力学变量本身可能不能提供足够的信息来预测麻醉深度。由于受麻醉剂影响最大的系统是中枢神经系统,因此可以使用脑电图(EEG)(记录大脑活动)来监测麻醉深度。本文建立了在氟烷麻醉过程中使用基于计算机的脑电图识别系统监测麻醉深度的可行性。使用十阶自回归(AR)模型表示EEG信号中包含的光谱信息。在设计识别系统时使用了四层感知器前馈型网络。对该系统进行了培训,并在从动物实验中收集的输入输出数据对上测试了其性能。识别系统的输入特征是基于AR参数,而系统的输出是麻醉深度。在不同水平的氟烷上对杂种犬进行了十三项实验,而氟烷本身是通过闭路麻醉控制器进行控制的。通过监测对尾巴夹紧的反应来测试麻醉深度,这被认为是狗的最大刺激。该系统能够正确分类94%的病例的深度。通过聚类分析获得隐藏层中神经元的数量和泛化所需的训练样本的数量。训练期间向输入神经元添加噪声使网络对外部干扰更加健壮,并显着改善了网络性能。该系统的性能已被证明在临床上是可以接受的,并且在患者之间的可变性方面已被证明是可靠的。

著录项

  • 作者

    Sharma, Ashutosh.;

  • 作者单位

    Rensselaer Polytechnic Institute.;

  • 授予单位 Rensselaer Polytechnic Institute.;
  • 学科 Engineering Biomedical.; Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 1993
  • 页码 149 p.
  • 总页数 149
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程;人工智能理论;
  • 关键词

  • 入库时间 2022-08-17 11:50:00

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