Real-Time Epilepsy Detection with IMU and Low Power Processor Design

Yu-Ju Su, K. Wen, M. Cheng, Chen-Nen Chang
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Abstract

In this work, we proposed a system that supplies real-time epilepsy detection system (RED system) with a single inertial measurement unit (IMU) and a low power processing unit. Since the accuracy can reach 99.81%, the specificity can reach 99.81%, and false positive rate of 0.19%, it not only ensures reliability but also provides a quantification analysis for diagnosis. The proposed method has been verified by 60 patients and the processing unit has been implemented into a chip using TSMC 0.18 μm process, which proves the feasibility of mobile device to the RED system.
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基于IMU和低功耗处理器的实时癫痫检测设计
在这项工作中,我们提出了一种提供实时癫痫检测系统(RED系统)的系统,该系统具有单惯性测量单元(IMU)和低功耗处理单元。准确率可达99.81%,特异性可达99.81%,假阳性率为0.19%,既保证了可靠性,又为诊断提供了定量分析。该方法已通过60例患者验证,并采用TSMC 0.18 μm工艺将处理单元实现在芯片上,证明了移动设备对RED系统的可行性。
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