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A 0.21 μJ patient-specific REM/Non-REM sleep classifier for Alzheimer patients

机译:适用于阿尔茨海默病患者的0.21μJ患者特定的REM /非REM睡眠分类器

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An electroencephalograph (EEG) based classification processor for Random Eye-movement (REM) and Non-REM (NREM) sleep detection for Alzheimer patients is presented. To enable a home-based wearable polysomnography, a single-channel-EEG, with the novel feature extraction (FE) approach and the machine-learning classifier is utilized. The 4-dimenional Feature Vector (FV) is based on the spectral edge frequency (SEF), low-to-high spectral content, and rapid-eye-movement detection. To utilize SEF efficiently on hardware, a 16-point FFT is proposed that achieves an area reduction of 43% compared to the conventional with minimal overhead in the precision loss. A Linear Support Vector Machine (LSVM) is utilized to decide between REM and NREM based on the FV. The system is synthesized using 0.18μm process and experimental verification is done using FPGA based on the subset of patients from the PhysioNet Sleep database. The proposed classification processor achieves energy-efficiency of 0.21J/classification with a sensitivity and specificity of 89.8% and 93.6% respectively.
机译:提出了一种基于脑电图(EEG)的分类处理器,用于阿尔茨海默病患者的随机眼动(REM)和非REM(NREM)睡眠检测。为了实现基于家庭的可穿戴式多导睡眠监测,利用了具有新颖特征提取(FE)方法和机器学习分类器的单通道EEG。 4维特征向量(FV)基于频谱边缘频率(SEF),从低到高的频谱含量以及快速的眼动检测。为了在硬件上有效地利用SEF,提出了一种16点FFT,与传统方法相比,面积减小了43%,同时在精度损失方面的开销很小。线性支持向量机(LSVM)用于基于FV在REM和NREM之间进行决策。该系统使用0.18μm工艺进行合成,并基于PhysioNet Sleep数据库中患者的子集使用FPGA进行实验验证。所提出的分类处理器可实现0.21J /分类的能量效率,灵敏度和特异性分别为89.8 \%和93.6 \%。

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