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运用样本熵测量七氟醚对脑电图的影响。

Measuring the effects of sevoflurane on electroencephalogram using sample entropy.

机构信息

School of Electrical Engineering, Iran University of Science & Technology, Tehran, Iran.

出版信息

Acta Anaesthesiol Scand. 2012 Aug;56(7):880-9. doi: 10.1111/j.1399-6576.2012.02676.x. Epub 2012 Mar 8.

DOI:10.1111/j.1399-6576.2012.02676.x
PMID:22404496
Abstract

BACKGROUND

Monitoring the effect of anesthetic drugs on the neural system is a major ongoing challenge for anesthetists. During the past few years, several electroencephalogram (EEG)-based methods such as the response entropy (RE) as implemented in the Datex-Ohmeda M-Entropy Module have been proposed. In this paper, sample entropy is used to quantify the predictability of EEG series, which could provide an index to show the effect of sevoflurane anesthesia. The dose-response relation of sample entropy is compared with that of RE.

METHODS

EEG data from 21 subjects is collected during the induction of general anesthesia with sevoflurane. The sample entropy is applied to the EEG recording. Pharmacokinetic-pharmacodynamic modeling and prediction probability statistic are used to evaluate the efficiency of sample entropy in comparison with RE.

RESULTS

Both methods track the gross changes in EEG, especially the occurrence of burst-suppression pattern at high doses of anesthetics. However, our method produces faster reaction to transients in EEG during the induction of anesthesia as indicated from the pharmacokinetic and pharmacodynamic modeled parameters and analysis around the point of loss of consciousness. Also, sample entropy correlated more closely with effect-site sevoflurane concentration than the RE. In addition, our proposed method exhibits greater resistance to noise in the EEG signals.

CONCLUSION

The results demonstrate that sample entropy can estimate the sevoflurane drug effect on the EEG more effectively than the commercial RE index with a stronger noise resistance.

摘要

背景

监测麻醉药物对神经系统的影响是麻醉师面临的一项重大挑战。在过去的几年中,已经提出了几种基于脑电图(EEG)的方法,例如 Datex-Ohmeda M-Entropy 模块中的反应熵(RE)。在本文中,使用样本熵来量化 EEG 序列的可预测性,这可以提供一个指标来显示七氟醚麻醉的效果。比较了样本熵和 RE 的剂量反应关系。

方法

在七氟醚全身麻醉诱导过程中收集 21 名受试者的 EEG 数据。将样本熵应用于 EEG 记录。使用药代动力学-药效学建模和预测概率统计来评估样本熵与 RE 相比的效率。

结果

两种方法都可以跟踪 EEG 的总体变化,尤其是在高剂量麻醉剂时出现爆发抑制模式。然而,我们的方法在麻醉诱导过程中对 EEG 中的瞬态反应更快,这可以从意识丧失点周围的药代动力学和药效学建模参数和分析中看出。此外,样本熵与效应部位七氟醚浓度的相关性比 RE 更强。此外,与 RE 相比,我们提出的方法对 EEG 信号中的噪声具有更强的抵抗力。

结论

结果表明,与商用 RE 指数相比,样本熵可以更有效地估计七氟醚对 EEG 的药物作用,并且具有更强的抗噪能力。

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