用于神经植入平台的低功耗高精度癫痫检测算法

Khaled A. Helal, Ahmed Yasser Abo Elmkarem, A. Refaat, Taha Shawky Kamel, Kareem Ayman Mohamed, Mohamed Mahmoud Kamal, Mohamed Mostafa Abdelrahman, H. Mostafa, Y. Ismail
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引用次数: 4

摘要

神经接口是在神经系统和内部或外部设备的交叉点上运行的系统。神经刺激器是最重要的神经接口之一,用于帮助那些经历癫痫发作的人。为了有效地使用这种刺激器,应该在正确的时间检测到癫痫发作。癫痫的检测基本上是建立在数字信号处理的基础上,通过监测颅内脑电图的某些特征。先前的许多研究都是针对不同系统的检测效率进行研究,然而,其中一些研究是在计算有限的功率可植入平台上实现这些系统的可行性。本文研究了5个时域特征和3个小波域特征。在此基础上,提出了一种适用于植入式神经系统的高精度、低功耗的癫痫发作检测算法。实验结果表明,该方法对长时间脑电图癫痫发作的检测灵敏度为92.64%,特异度为99.29%,准确度为99.16%。在Xilinx Spartan-6 XC6SLX45T FPGA上实现了该算法的面积和功耗结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-power high-accuracy seizure detection algorithms for neural implantable platforms
Neural interfaces are systems operating at the intersection of the nervous system and an internal or external device. Neuro-stimulator is one of the most important neural interfaces used to help those who experience epileptic seizures. To use this stimulator efficiently, seizure should be detected at the right time. Seizure detection is basically founded on digital signal processing by monitoring certain features of the intracranial electroencephalogram. Many of the previous researches are directed to study the detection efficacies using different systems, however, a few of them study the feasibility of implementing these systems over a computationally limited power implantable platforms. In this paper, five time-domain features and three wavelet-domain features are investigated. Following that, a high accuracy seizure detection algorithm is presented with efficient power consumption which makes it suitable for implantable neural systems. The experiment results show that the presented method achieves a sensitivity, specificity, and accuracy of 92.64%, 99.29%, and 99.16% respectively for long-term iEEG seizure detection. The area and power results are obtained from implementing the algorithms on Xilinx Spartan-6 XC6SLX45T FPGA.
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