Development of a Bispectral index score prediction model based on an interpretable deep learning algorithm
- PMID: 37673590
- DOI: 10.1016/j.artmed.2023.102569
Development of a Bispectral index score prediction model based on an interpretable deep learning algorithm
Abstract
Background: Proper maintenance of hypnosis is crucial for ensuring the safety of patients undergoing surgery. Accordingly, indicators, such as the Bispectral index (BIS), have been developed to monitor hypnotic levels. However, the black-box nature of the algorithm coupled with the hardware makes it challenging to understand the underlying mechanisms of the algorithms and integrate them with other monitoring systems, thereby limiting their use.
Objective: We propose an interpretable deep learning model that forecasts BIS values 25 s in advance using 30 s electroencephalogram (EEG) data.
Material and methods: The proposed model utilized EEG data as a predictor, which is then decomposed into amplitude and phase components using fast Fourier Transform. An attention mechanism was applied to interpret the importance of these components in predicting BIS. The predictability of the model was evaluated on both regression and binary classification tasks, where the former involved predicting a continuous BIS value, and the latter involved classifying a dichotomous status at a BIS value of 60. To evaluate the interpretability of the model, we analyzed the attention values expressed in the amplitude and phase components according to five ranges of BIS values. The proposed model was trained and evaluated using datasets collected from two separate medical institutions.
Results and conclusion: The proposed model achieved excellent performance on both the internal and external validation datasets. The model achieved a root-mean-square error of 6.614 for the regression task, and an area under the receiver operating characteristic curve of 0.937 for the binary classification task. Interpretability analysis provided insight into the relationship between EEG frequency components and BIS values. Specifically, the attention mechanism revealed that higher BIS values were associated with increased amplitude attention values in high-frequency bands and increased phase attention values in various frequency bands. This finding is expected to facilitate a more profound understanding of the BIS prediction mechanism, thereby contributing to the advancement of anesthesia technologies.
Keywords: Attention mechanism; Biosignal; Electroencephalogram; Hypnotic level; Interpretable deep learning.
Copyright © 2023 Elsevier B.V. All rights reserved.
Conflict of interest statement
Declaration of competing interest The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: Sung-Hoon Kim reports financial support was provided by Ministry of Health & Welfare, Republic of Korea. Sung-Hoon Kim reports financial support was provided by Asan Institute for Life Sciences. Junetae Kim reports financial support was provided by National Cancer Center of Korea. Sung-Hoon Kim has patent Method for predicting depth of anesthesia based on EEG signal and anesthesia depth prediction device performing method pending to Asan Medical Center. Hee-Sun Park has patent Method for predicting depth of anesthesia based on EEG signal and anesthesia depth prediction device performing method pending to Asan Medical Center. Junetae Kim has patent Method for predicting depth of anesthesia based on EEG signal and anesthesia depth prediction device performing method pending to National Cancer Center of Korea. Eugene Hwang has patent Method for predicting depth of anesthesia based on EEG signal and anesthesia depth prediction device performing method pending to KAIST.
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