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An EEG-Based Hypnotic State Monitor for Patients During General Anesthesia

机译:一般麻醉期间患者的脑催眠状态监测率

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摘要

Most surgical procedures are not possible without general anesthesia which necessitates continuous and accurate monitoring of the patients' level of hypnosis (LoH). Currently, the LoH is monitored using the conventional methods of either observing the patient's physiological parameters or using electroencephalogram (EEG)-based monitors. To overcome the limitations of the conventional methods, this work implements an accurate EEG-based LoH monitoring processor using a bagged tree machine-learning (BTML) classifier. It is based on 12 temporal and spectral features to incorporate robustness against age variation and achieve high classification accuracy. Spectral features are computed using discrete wavelet transform (DWT) that uses time-multiplexed filter (TMF) architecture. The TMF DWT consumes 110.6-nJ/feature vector for a 100-tap filter while reducing the area by 11% compared with the conventional method. Moreover, the BTML is implemented using a pipelined approach which enables an efficient on-chip implementation to reduce the hardware cost by 15x compared with the parallel approach. The proposed processor is implemented using a 180-nm CMOS process with an active area of 0.9 mm(2) while consuming 1.6 mW. The accuracy of the proposed hypnotic state monitor is verified using two EEG databases with a total of 95 patients and achieves a sensitivity and specificity of 95.4% and 97.7%, respectively.
机译:大多数手术程序都不可能在没有全身麻醉的情况下,这需要持续和准确地监测患者的催眠水平(LOH)。目前,使用常规方法监测LOH,用于观察患者的生理参数或使用脑电图(EEG)的监测器。为了克服传统方法的局限性,该工作使用袋装树机 - 学习(BTML)分类器实现了基于精确的基于EEG的LOH监控处理器。它基于12个时间和光谱特征,以融入较大的年龄变化并实现高分类精度。使用使用时间复用滤波器(TMF)架构的离散小波变换(DWT)计算光谱特征。 TMF DWT消耗了110.6-NJ /特征向量为100抽头过滤器,同时与传统方法相比将面积减小11%。此外,使用流水线方法实现了BTML,其使得能够有效的片上实施方式,以使硬件成本与并行方法相比减少15倍。所提出的处理器使用180nm的CMOS工艺实现,该过程有0.9mm(2)的有效面积,同时消耗1.6mW。拟议的催眠状态监测率的准确性通过两个脑电图数据库进行验证,共有95名患者,分别实现95.4%和97.7%的敏感性和特异性。

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