• School of Electrical Engineering of Zhengzhou University, Zhengzhou 450001, China;
SHILi, Email: shili@zzu.edu.cn
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In the present study carried out in our laboratory, we recorded local field potential (LFP) signals in primary visual cortex (V1 area) of rats during the anesthesia process in the electrophysiological experiments of invasive microelectrode array implant, and obtained time evolutions of complexity measure Lempel-ziv complexity (LZC) by nonlinear dynamic analysis method. Combined with judgment criterion of tail flick latency to thermal stimulus and heart rate, the visual stimulation experiments are carried out to verify the reliability of anesthetized states by complexity analysis. The experimental results demonstrated that the time varying complexity measures LZC of LFP signals of different channels were similar to each other in the anesthesia process. In the same anesthesia state, the difference of complexity measure LZC between neuronal responses before and after visual stimulation was not significant. However, the complexity LZC in different anesthesia depths had statistical significances. Furthermore, complexity threshold value represented the depth of anesthesia was determined using optimization method. The reliability and accuracy of monitoring the depth of anesthesia using complexity measure LZC of LFP were all high. It provided an effective method of realtime monitoring depth of anesthesia for craniotomy patients in clinical operation.

Citation: LIXiaoyuan, SHILi, WANHong, HUYuxia. Monitoring Depth of Anesthesia and Effect Analysis in Primary Visual Cortex of Rats Based on Complexity of Local Field Potential. Journal of Biomedical Engineering, 2014, 31(2): 245-250. doi: 10.7507/1001-5515.20140046 Copy

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