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Design and Implementation of a Machine Learning Based EEG Processor for Accurate Estimation of Depth of Anesthesia

机译:精确估计麻醉深度的基于机器学习的脑电处理器的设计与实现

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摘要

Accurate monitoring of the depth of anesthesia (DoA) is essential for intraoperative and postoperative patient's health. Commercially available electroencephalograph (EEG)-based DoA monitors are recommended only for certain anesthetic drugs and specific age-group patients. This paper presents a machine learning classification processor for accurate DoA estimation irrespective of the patient's age and anesthetic drug. The classification is solely based on six features extracted from EEG signal, i.e., spectral edge frequency (SEF), beta ratio, and four bands of spectral energy (FBSE). A machine learning fine decision tree classifier is adopted to achieve a four-class DoA classification (deep, moderate, and light DoA versus awake state). The feature selection and the classification processor are optimized to achieve the highest classification accuracy for the state of moderate anesthesia required for the surgical operations. The proposed 256-point fast Fourier transform accelerator is implemented to realize SEF, beta ratio, and FBSE that enables minimal latency and high accuracy feature extraction. The proposed DoA processor is implemented using a 65 nm CMOS technology and experimentally verified using field programming gate array (FPGA) based on the EEG recordings of 75 patients undergoing elective surgery with different types of anesthetic agents. The processor achieves an average accuracy of 92.2% for all DoA states, with a latency of 1s The 0.09 mm(2) DoA processor consumes 140nJ/classification.
机译:准确监测麻醉深度(DoA)对于术中和术后患者的健康至关重要。仅针对某些麻醉药物和特定年龄组的患者,建议使用市售的基于脑电图(EEG)的DoA监护仪。本文提出了一种机器学习分类处理器,无论患者的年龄和麻醉药物如何,都可以进行准确的DoA估计。该分类仅基于从EEG信号提取的六个特征,即频谱边缘频率(SEF),β比和四个频谱能量带(FBSE)。采用机器学习精细决策树分类器以实现四类DoA分类(深度,中度和轻度DoA与苏醒状态)。优化了特征选择和分类处理器,以针对外科手术所需的中度麻醉状态实现最高的分类精度。所提出的256点快速傅立叶变换加速器可实现SEF,β比和FBSE,从而实现最小的延迟和高精度的特征提取。拟议的DoA处理器使用65 nm CMOS技术实现,并基于75位接受不同类型麻醉剂的择期手术患者的EEG记录,使用现场编程门阵列(FPGA)进行了实验验证。该处理器在所有DoA状态下均达到92.2%的平均精度,延迟为1s。0.09mm(2)DoA处理器每分类消耗140nJ。

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