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Sort entropy-based for the analysis of EEG during anesthesia

机译:基于排序熵的麻醉期间脑电图分析

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The monitoring of anesthetic depth is an absolutely necessary procedure in the process of surgical operation. To judge and control the depth of anesthesia has become a clinical issue which should be resolved urgently. EEG collected wiil be processed by sort entrop in this paper. Signal response of the surface of the cerebral cortex is determined for different stages of patients in the course of anesthesia. EEG is simulated and analyzed through the fast algorithm of sort entropy. The results show that discipline of phasic changes for EEG is very detected accurately,and it has better noise immunity in detecting the EEG anaesthetized than approximate entropy. In conclusion, the computing of Sort entropy algorithm requires shorter time. It has high efficiency and strong anti-interference.
机译:麻醉深度的监测是外科手术过程中绝对必要的程序。判断和控制麻醉深度已成为临床亟待解决的问题。本文对收集到的脑电信号进行分类熵处理。在麻醉过程中,针对不同阶段的患者确定大脑皮层表面的信号响应。通过排序熵的快速算法对脑电图进行仿真和分析。结果表明,脑电信号的相位变化规律能被准确地检测出,并且在麻醉的脑电信号的检测中比近似熵具有更好的抗噪性。总之,排序熵算法的计算需要更短的时间。效率高,抗干扰能力强。

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