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一种基于具有大眼电图(EDO)耐受性脑电图模拟前端的深度神经网络的实时麻醉深度监测系统。

A Real-Time Depth of Anesthesia Monitoring System Based on Deep Neural Network With Large EDO Tolerant EEG Analog Front-End.

作者信息

Park Yongjae, Han Su-Hyun, Byun Wooseok, Kim Ji-Hoon, Lee Hyung-Chul, Kim Seong-Jin

出版信息

IEEE Trans Biomed Circuits Syst. 2020 Aug;14(4):825-837. doi: 10.1109/TBCAS.2020.2998172. Epub 2020 May 28.

DOI:10.1109/TBCAS.2020.2998172
PMID:32746339
Abstract

In this article, we present a real-time electroencephalogram (EEG) based depth of anesthesia (DoA) monitoring system in conjunction with a deep learning framework, AnesNET. An EEG analog front-end (AFE) that can compensate ±380-mV electrode DC offset using a coarse digital DC servo loop is implemented in the proposed system. The EEG-based MAC, EEGMAC, is introduced as a novel index to accurately predict the DoA, which is designed for applying to patients anesthetized by both volatile and intravenous agents. The proposed deep learning protocol consists of four layers of convolutional neural network and two dense layers. In addition, we optimize the complexity of the deep neural network (DNN) to operate on a microcomputer such as the Raspberry Pi 3, realizing a cost-effective small-size DoA monitoring system. Fabricated in 110-nm CMOS, the prototype AFE consumes 4.33 μW per channel and has the input-referred noise of 0.29 μVrms from 0.5 to 100 Hz with the noise efficiency factor of 2.2. The proposed DNN was evaluated with pre-recorded EEG data from 374 subjects administrated by inhalational anesthetics under surgery, achieving an average squared and absolute errors of 0.048 and 0.05, respectively. The EEGMAC with subjects anesthetized by an intravenous agent also showed a good agreement with the bispectral index value, confirming the proposed DoA index is applicable to both anesthetics. The implemented monitoring system with the Raspberry Pi 3 estimates the EEGMAC within 20 ms, which is about thousand-fold faster than the BIS estimation in literature.

摘要

在本文中,我们介绍了一种基于实时脑电图(EEG)的麻醉深度(DoA)监测系统,该系统结合了深度学习框架AnesNET。在所提出的系统中,实现了一种脑电图模拟前端(AFE),它可以使用粗数字直流伺服环路补偿±380 mV的电极直流偏移。引入了基于脑电图的MAC(EEGMAC)作为一种准确预测麻醉深度的新指标,该指标设计用于应用于使用挥发性和静脉麻醉剂麻醉的患者。所提出的深度学习协议由四层卷积神经网络和两层全连接层组成。此外,我们优化了深度神经网络(DNN)的复杂度,以便在诸如Raspberry Pi 3之类的微型计算机上运行,从而实现了一种经济高效的小型麻醉深度监测系统。该原型AFE采用110 nm CMOS工艺制造,每通道功耗为4.33 μW,在0.5至100 Hz范围内的输入参考噪声为0.29 μVrms,噪声效率因子为2.2。所提出的DNN使用来自374名接受手术吸入麻醉的受试者的预记录脑电图数据进行评估,平均平方误差和绝对误差分别为0.048和0.05。使用静脉麻醉剂麻醉的受试者的EEGMAC也与双谱指数值显示出良好的一致性,证实了所提出的麻醉深度指标适用于两种麻醉剂。使用Raspberry Pi 3实现的监测系统在20 ms内估计EEGMAC,这比文献中的BIS估计快约一千倍。

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