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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Automated Detection of Convulsive Seizures Using a Wearable Accelerometer Device
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Automated Detection of Convulsive Seizures Using a Wearable Accelerometer Device

机译:使用可穿戴式加速度计设备自动检测抽搐发作

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Epileptic seizure detection requires specialized approaches such as video/electroencephalography monitoring. However, these approaches are restricted mainly to hospital setting and requires video/EEG analysis by experts, which makes these approaches resource- nd labor-intensive. In contrast, we aim to develop a wireless remote monitoring system based on a single wrist-worn accelerometer device, which is sensitive to multiple types of convulsive seizures and is capable of detecting seizures with short duration. Simple time domain features including a new set of Poincare plot based features were extracted from the active movement events recorded using a wrist-worn accelerometer device. The best features were then selected using the area under the ROC curve analysis. Kernelized support vector data description was then used to classify nonseizure and seizure events. The proposed algorithm was evaluated on 5576 h of recordings from 79 patients and detected 40 (86.95%) of 46 convulsive seizures (generalized tonic-clonic (GTCS), psychogenic nonepileptic, and complex partial seizures) from 20 patients with a total of 270 false alarms (1.16/24 h). Furthermore, the algorithm showed a comparable performance (sensitivity 95.23% and false alarm rate 0.64/24 h) with respect to existing unimodal and multimodal methods for GTCS detection. The promising results shows the potential to build an ambulatory monitoring convulsive seizure detection system. A wearable accelerometer based seizure detection system would aid in continuous assessment of convulsive seizures in a timely and non-invasive manner.
机译:癫痫发作的检测需要专门的方法,例如视频/脑电图监测。但是,这些方法主要限于医院环境,并且需要专家进行视频/ EEG分析,这使这些方法变得资源和劳动密集型。相比之下,我们的目标是开发基于单个腕戴式加速度计设备的无线远程监控系统,该设备对多种类型的惊厥性癫痫发作敏感,并且能够检测持续时间短的癫痫发作。简单的时域特征(包括一组基于Poincare图的新特征)是从使用腕戴式加速度计设备记录的活动运动事件中提取的。然后使用ROC曲线分析下的区域选择最佳特征。然后使用内核化的支持向量数据描述对非癫痫发作和癫痫发作事件进行分类。在79名患者的5576 h记录中评估了该算法,并从20例患者中发现了40例惊厥性癫痫发作(广义强直性阵挛性(GTCS),精神性非癫痫和复杂性部分性癫痫发作)中的40例(86.95%),总共270例假警报(1.16 / 24小时)。此外,相对于现有的用于GTCS检测的单峰和多峰方法,该算法显示出可比的性能(灵敏度95.23%和误报率0.64 / 24 h)。令人鼓舞的结果表明,有可能建立一种动态监测的惊厥性癫痫发作检测系统。基于可穿戴式加速度计的癫痫发作检测系统将有助于及时,无创地连续评估惊厥性癫痫发作。

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