A micropower integrated platform for wireless multichannel recording of ECoG activity

M. Mollazadeh, Elliot Greenwald, M. Schieber, N. Thakor, G. Cauwenberghs
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Abstract

Electrocorticography (ECoG), the recording of electrical signals from the surface of cortex, is widely used for monitoring and analysis of epileptic brain activity. However, current ECoG recording methods require tethering of the patient causing discomfort and impeding his or her mobility. We demonstrate a system for wireless multichannel recording of ECoG activity. The system is comprised of a custom made VLSI neural front end, transceiver modules, battery and a custom software written in LabView for real-time data monitoring and storage. The system offers programmable gain, bandwidth and ADC setting while maintaining low noise performance and drawing less than 6.7mA of current from 3.7V battery. We have validated this system by recording micro-ECoG signal from the dorsal premotor cortex region of a primate performing reach to grasp movements. In our demonstration, we will show the wireless operation of the system, transmitting pre-recorded ECoG signals from primates through a saline solution. We will also show real-time recording of electromyography (EMG) signals from a human subject performing motor movements. Our system offers a new platform for wireless health monitoring system in epilepsy units.
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一种用于ECoG活动无线多通道记录的微功率集成平台
脑皮层电图(ECoG)是一种记录皮层表面电信号的技术,被广泛用于监测和分析癫痫患者的大脑活动。然而,目前的ECoG记录方法需要系住患者,造成不适并阻碍其活动。我们演示了一个无线多通道记录ECoG活动的系统。该系统由定制的VLSI神经网络前端、收发模块、电池和用LabView编写的用于实时数据监控和存储的定制软件组成。该系统提供可编程增益、带宽和ADC设置,同时保持低噪声性能,并从3.7V电池中汲取小于6.7mA的电流。我们通过记录灵长类动物进行伸手抓握动作时背侧运动前皮层的微ecog信号,验证了该系统。在我们的演示中,我们将展示该系统的无线操作,通过盐水溶液传输灵长类动物预先记录的ECoG信号。我们也将展示实时记录的肌电图(EMG)信号从一个人类受试者执行运动。该系统为癫痫病房的无线健康监测系统提供了一个新的平台。
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