Title :
Monitoring the depth of anaesthesia using Hurst exponent and Bayesian methods
Author :
Tai Nguyen-Ky ; Peng Wen ; Yan Li
Author_Institution :
Fac. of Eng. & Surveying, Univ. of Southern Queensland, Toowoomba, QLD, Australia
Abstract :
This study proposes a novel index MLDoA to identify different anaesthetic states of a patient during surgery. Based on the new index MLDoA, the assessment of depth of anaesthesia (DoA) for a patient can be clearly monitored. Firstly, a modified Bayesian wavelet threshold is proposed to de-noise the electroencephalogram (EEG) signals. Secondly, the Hurst exponent is obtained to classify four states of anaesthesia: deep anaesthesia, moderate anaesthesia, light anaesthesia and awake. Finally, the index MLDoA is derived based on the Hurst exponent and maximum-likelihood function. The MLDoA index is evaluated using clinically obtained EEG signals and the bispectral (BIS) data. The results show that the new index remains robust in the case of poor signal quality where BIS does not. Moreover, the new index MLDoA responds faster than the BIS index during the anaesthetic state transitions of patients. To validate the proposed method, the analysis of variance method is used to compare the new index MLDoA with the BIS index. The results indicate that the MLDoA distribution is better in distinguishing the five DoA states.
Keywords :
Bayes methods; electroencephalography; maximum likelihood estimation; medical signal processing; patient monitoring; signal denoising; surgery; wavelet transforms; BIS index; Bayesian methods; DoA; EEG signals; Hurst exponent method; MLDoA index; anaesthetic state transitions; bispectral data; depth of anaesthesia monitoring; electroencephalogram signal denoising; maximum-likelihood function; modified Bayesian wavelet threshold; surgery;
Journal_Title :
Signal Processing, IET
DOI :
10.1049/iet-spr.2013.0113