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一款采用并行架构 SVM 和提升小波变换的 65nm/0.448mW EEG 处理器,用于实现高性能和低功耗的癫痫检测。

A 65nm/0.448 mW EEG processor with parallel architecture SVM and lifting wavelet transform for high-performance and low-power epilepsy detection.

机构信息

Faculty of Electrical Engineering and Computer Science, Ningbo University, Ningbo, 315211, China.

Department of Electronic Technology, China Coast Guard Academy, Ningbo, Zhejiang, 315801, China.

出版信息

Comput Biol Med. 2022 May;144:105366. doi: 10.1016/j.compbiomed.2022.105366. Epub 2022 Mar 9.

DOI:10.1016/j.compbiomed.2022.105366
PMID:35305503
Abstract

In recent years, low-power and wearable biomedical testing devices have emerged as a key answer to the challenges associated with epilepsy disorders, which are prone to crises and require prolonged monitoring. The feature vector of the electroencephalographic (EEG) signal was extracted using the lifting wavelet transform algorithm, and the hardware of the lifting wavelet transform module was optimized using the canonic signed digit (CSD) coding method. A low-power EEG feature extraction circuit with a power consumption of 0.42 mW was constructed. This article employs the support vector machine (SVM) technique after feature extraction to categorize and identify epilepsy. A parallel SVM processing unit was constructed to accelerate classification and identification, and then a high-speed, low-power EEG epilepsy detection processor was implemented. The processor design was completed using TSMC 65 nm technology. The chip size is 0.98 mm2, operating voltage is 1 V, operating frequency is 1 MHz, epilepsy detection latency is 0.91 s, power consumption is 0.448 mW, and energy efficiency of a single classification is 2.23 μJ/class. The CHB-MIT database test results show that this processor has a sensitivity of 91.86% and a false detection rate of 0.17/h. Compared to other processors, this processor is more suitable for portable/wearable devices.

摘要

近年来,低功耗可穿戴式生物医学检测设备的出现为癫痫疾病相关挑战提供了关键的解决方案,因为癫痫疾病容易突发且需要长时间监测。本文采用提升小波变换算法提取脑电(EEG)信号的特征向量,并使用规范二进制补码(CSD)编码方法对提升小波变换模块的硬件进行了优化。构建了一个低功耗的 EEG 特征提取电路,其功耗为 0.42mW。本文在特征提取后采用支持向量机(SVM)技术对癫痫进行分类和识别。构建了一个并行 SVM 处理单元以加速分类和识别,然后实现了一个高速、低功耗的 EEG 癫痫检测处理器。该处理器采用 TSMC 65nm 技术设计,芯片尺寸为 0.98mm2,工作电压为 1V,工作频率为 1MHz,癫痫检测延迟为 0.91s,功耗为 0.448mW,每分类的能量效率为 2.23μJ/class。CHB-MIT 数据库测试结果表明,该处理器的灵敏度为 91.86%,假阳性率为 0.17/h。与其他处理器相比,该处理器更适用于便携式/可穿戴设备。

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