Abstract

BackgroundEstimating the depth of anaesthesia (DoA) is critical in modern anaesthetic practice. Multiple DoA monitors based on electroencephalograms (EEGs) have been widely used for DoA monitoring; however, these monitors may be inaccurate under certain conditions. In this work, we hypothesize that heart rate variability (HRV)-derived features based on a deep neural network can distinguish different anaesthesia states, providing a secondary tool for DoA assessment.MethodsA novel method of distinguishing different anaesthesia states was developed based on four HRV-derived features in the time and frequency domain combined with a deep neural network. Four features were extracted from an electrocardiogram, including the HRV high-frequency power, low-frequency power, high-to-low-frequency power ratio, and sample entropy. Next, these features were used as inputs for the deep neural network, which utilized the expert assessment of consciousness level as the reference output. Finally, the deep neural network was compared with the logistic regression, support vector machine, and decision tree models. The datasets of 23 anaesthesia patients were used to assess the proposed method.ResultsThe accuracies of the four models, in distinguishing the anaesthesia states, were 86.2% (logistic regression), 87.5% (support vector machine), 87.2% (decision tree), and 90.1% (deep neural network). The accuracy of deep neural network was higher than those of the logistic regression (p < 0.05), support vector machine (p < 0.05), and decision tree (p < 0.05) approaches. Our method outperformed the logistic regression, support vector machine, and decision tree methods.ConclusionsThe incorporation of four HRV-derived features in the time and frequency domain and a deep neural network could accurately distinguish between different anaesthesia states; however, this study is a pilot feasibility study. The proposed method—with other evaluation methods, such as EEG—is expected to assist anaesthesiologists in the accurate evaluation of the DoA.

Highlights

  • Estimating the depth of anaesthesia (DoA) is critical in modern anaesthetic practice

  • When Loss of consciousness (LOC) appeared during anaesthesia induction, the anaesthesiologist marked ‘LOC’ on the anaesthetic recording sheets immediately

  • This study proposed a novel method for distinguishing different anaesthesia states based on four heart rate variability (HRV)-derived features in the time and frequency domains, combined with a deep neural network

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Summary

Introduction

Estimating the depth of anaesthesia (DoA) is critical in modern anaesthetic practice. We hypothesize that heart rate variability (HRV)derived features based on a deep neural network can distinguish different anaesthesia states, providing a secondary tool for DoA assessment. Both the central nervous and autonomic systems are related to the depth of anaesthesia (DoA) [1]. The heart rate variability (HRV) derived from an ECG is regulated by the central nervous and autonomic systems, and closely related to the DoA during surgery [18,19,20]. HRV may be used as an important supplementary method of EEG monitoring in terms of DoA evaluation [21, 22]

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