Coşkun Mustafa, Gürüler Hüseyin, Istanbullu Ayhan, Peker Musa
Department of Computer Engineering, Faculty of Engineering and Architecture, Balikesir University, 10145, Cagis, Balikesir, Turkey.
J Med Syst. 2015 Jan;39(1):173. doi: 10.1007/s10916-014-0173-3. Epub 2014 Dec 4.
The spectrum of EEG has been studied to predict the depth of anesthesia using variety of signal processing methods up to date. Those standard models have used the full spectrum of EEG signals together with the systolic-diastolic pressure and pulse values. As it is generally agreed today that the brain is in stable state and the delta-theta bands of the EEG spectrum remain active during anesthesia. Considering this background, two questions that motivates this paper. First, determining the amount of gas to be administered is whether feasable from the spectrum of EEG during the maintenance stage of surgical operations. Second, more specifically, the delta-theta bands of the EEG spectrum are whether sufficient alone for this aim. This research aims to answer these two questions together. Discrete wavelet transformation (DWT) and empirical mode decomposition (EMD) were applied to the EEG signals to extract delta-theta bands. The power density spectrum (PSD) values of target bands were presented as inputs to multi-layer perceptron (MLP) neural network (NN), which predicted the gas level. The present study has practical implications in terms of using less data, in an effective way and also saves time as well.
迄今为止,人们已经使用各种信号处理方法研究脑电图(EEG)频谱,以预测麻醉深度。那些标准模型使用了EEG信号的全频谱以及收缩压-舒张压和脉搏值。如今人们普遍认为,大脑处于稳定状态,并且在麻醉期间EEG频谱的δ-θ波段仍然活跃。考虑到这一背景,引发了本文的两个问题。第一,在外科手术的维持阶段,从EEG频谱确定要施用的气体量是否可行。第二,更具体地说,EEG频谱的δ-θ波段单独用于此目的是否足够。本研究旨在同时回答这两个问题。将离散小波变换(DWT)和经验模态分解(EMD)应用于EEG信号以提取δ-θ波段。目标波段的功率密度谱(PSD)值作为输入提供给多层感知器(MLP)神经网络(NN),该网络预测气体水平。本研究在有效使用较少数据方面具有实际意义,并且还节省了时间。