基于新型可穿戴传感器的强直阵挛发作临床检测系统的研制

Mini Thomas, Esteve Hassan, Kugsang Jeong, J. Perumpillichira
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摘要

本文介绍了一种新的无线体域网络(WBAN)的开发和测试,该网络专门用于远程监测患者的全身性强直阵挛发作(GTCS)的检测。WBAN由四个三轴加速度计传感器组成,安装在手臂和腿上。使用商用医疗传感器模块作为基准来验证和校准可穿戴传感器数据。每个传感器通过蓝牙低功耗(BLE)网络与基于Linux的平台进行通信。使用Python软件开发图形用户界面(GUI),显示采集到的实时传感器数据。利用Matlab软件编写了一种新的癫痫检测数字信号处理程序。该程序采用基于快速傅里叶变换(FFT)和移动平均窗口的多特征技术,以最小的处理时间对数据样本进行分析。每个轴上的四个传感器节点的平均窗口样本每秒钟与预设的经验阈值进行周期性比较。一旦在基站检测到癫痫发作,就会发出警报,并将短信服务(SMS)和即时电子邮件发送给医务人员。实时数据存储在安全的医疗数据库中,供将来参考和分析。最终的WBAN原型通过健康志愿者模拟强直阵挛发作症状来测试系统的整体性能。该系统也被批准在加拿大进行未来的临床试验,并且已经实现了试点临床演示。
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Development of Clinical Detection System for Tonic-Clonic Seizures using New Wearable Sensors
This paper presents the development and testing of a new wireless body area network (WBAN) designed specifically for remote patient monitoring for detection of generalized tonic-clonic seizures (GTCS). The WBAN is comprised of four, triaxial accelerometer sensors worn on arms and legs. Commercial medical sensor modules were used as benchmarks to validate and calibrate the wearable sensors data. Each sensor is communicating with Linux based platform via Bluetooth Low Energy (BLE) network. Graphical User Interface (GUI) was developed using Python Software to display the collected real-time sensors data. A new digital signal processing routine for seizure detection was created using Matlab software. This routine is employing multi-feature techniques based on Fast Fourier Transform (FFT) and moving average window to analyze data samples with minimal processing time. The average windowed samples are compared periodically with pre-set empirical threshold values every second on each axis for the four sensor nodes. An alert is generated once seizure is detected at base station where Short Message Service (SMS) and instant email will be sent to the medical health staff. The real-time data is stored in secured medical database for future reference and analysis. The final WBAN prototype was demonstrated using healthy volunteers mimicking tonic-clonic seizure symptoms to test overall system performance. The system is also approved for future clinical trials in Canada, and pilot clinical demonstrations have been achieved.
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