Abstract
AbstractAnaesthesia is a state of temporary controlled loss of awareness induced for medical operations. An accurate assessment of the depth of anaesthesia (DoA) helps anesthesiologists to avoid awareness during surgery and keep the recovery period short. However, the existing DoA algorithms have limitations, such as not robust enough for different patients and having time delay in assessment. In this study, to develop a reliable DoA measurement method, pre-denoised electroencephalograph (EEG) signals are divided into ten frequency bands (α, β1, β2, β3, β4, β, βγ, γ, δ and θ), and the features are extracted from different frequency bands using spectral entropy (SE) methods. SE from the beta-gamma frequency band (21.5–38.5 Hz) and SE from the beta frequency band show the highest correlation (R-squared value: 0.8458 and 0.7312, respectively) with the most popular DoA index, bispectral index (BIS). In this research, a new DoA index is developed based on these two SE features for monitoring the DoA. The highest Pearson correlation coefficient by comparing the BIS index for testing data is 0.918, and the average is 0.80. In addition, the proposed index shows an earlier reaction than the BIS index when the patient goes from deep anaesthesia to moderate anaesthesia, which means it is more suitable for the real-time DoA assessment. In the case of poor signal quality (SQ), while the BIS index exhibits inflexibility with cases of poor SQ, the new proposed index shows reliable assessment results that reflect the clinical observations.
Publisher
Springer Science and Business Media LLC
Subject
Cognitive Neuroscience,Computer Science Applications,Neurology
Reference36 articles.
1. Diykh M, Li Y, Wen P, Li T (2018) Complex networks approach for depth of anesthesia assessment. Measurement 119:178–189
2. Nguyen-Ky T, Wen P, Li Y (2009) Theoretical basis for identification of different anesthetic states based on routinely recorded EEG during operation. Comput Biol Med 39(1):40–45
3. Ahmadi B, Negahbani E, Amirfattahi R, Zaghari B, Mansouri M (2008) Extraction of BIS™ index sub-parameters in different anesthetic and sedative levels. In: 9th International Conference on Signal Processing. IEEE, 2008, pp 2665–2668
4. Iselin-Chaves IA, Willems SJ, Jermann FC, Forster A, Adam SR, Van der Linden M (2005) Investigation of implicit memory during isoflurane anesthesia for elective surgery using the process dissociation procedure. Anesthesiol J Am Soc Anesthesiologists 103(5):925–933
5. Musizza B, Ribaric S (2010) Monitoring the depth of anaesthesia. Sensors 10(12):10896–10935
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