1.An anesthesia depth computing method study based on wavelet transform and artificial neural network.
Sinian YUAN ; Jilun YE ; Xu ZHANG ; Jingjing ZHOU ; Xue TAN ; Ruowei LI ; Zhuqiang DENG ; Yaomao DING
Journal of Biomedical Engineering 2021;38(5):838-847
General anesthesia is an essential part of surgery to ensure the safety of patients. Electroencephalogram (EEG) has been widely used in anesthesia depth monitoring for abundant information and the ability of reflecting the brain activity. The paper proposes a method which combines wavelet transform and artificial neural network (ANN) to assess the depth of anesthesia. Discrete wavelet transform was used to decompose the EEG signal, and the approximation coefficients and detail coefficients were used to calculate the 9 characteristic parameters. Kruskal-Wallis statistical test was made to these characteristic parameters, and the test showed that the parameters were statistically significant for the differences of the four levels of anesthesia: awake, light anesthesia, moderate anesthesia and deep anesthesia (
Algorithms
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Anesthesia, General
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Electroencephalography
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Humans
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Neural Networks, Computer
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Wavelet Analysis