首页> 外文会议>Annual Conference of Japanese Society for Medical and Biological Engineering;Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Classification of EEG bursts in deep sevoflurane, desflurane and isoflurane anesthesia using AR-modeling and entropy measures
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Classification of EEG bursts in deep sevoflurane, desflurane and isoflurane anesthesia using AR-modeling and entropy measures

机译:使用AR模型和熵测度对深七氟醚,地氟醚和异氟烷麻醉中的脑电图爆发进行分类

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摘要

A study relating signal patterns of burst onsets in burst suppression EEG to the anesthetic agent or anesthesia induction protocol is presented. A dataset of 82 recordings of sevoflurane, isoflurane and desflurane anesthesia underlies the study. 3 second segments from the onset of altogether 3214 bursts are described using AR model parameters, spectral entropy and sample entropy as features. The features are clustered using the K-means algorithm. The results indicate that no clear cut distinction can be made between the burst patterns induced by the mentioned anesthetics although bursts of certain properties are more common in certain patient groups. Several directions for further investigations are proposed based on visual inspection of the recordings.
机译:提出了有关将猝发抑制脑电图中的猝发发作信号模式与麻醉剂或麻醉诱导方案相关的研究。七氟醚,异氟烷和地氟醚麻醉的82个记录的数据集是该研究的基础。使用AR模型参数,频谱熵和样本熵作为特征,描述了总共3214个突发开始的3个第二段。使用K-means算法对要素进行聚类。结果表明,尽管在某些患者组中某些性质的猝发更为常见,但在上述麻醉药引起的猝发模式之间无法明确区分。根据记录的视觉检查,提出了进一步研究的几个方向。

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