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Using wearable sensors for semiology-independent seizure detection - towards ambulatory monitoring of epilepsy

机译:使用可穿戴式传感器进行不依赖符号学的癫痫发作检测-用于动态监测癫痫病

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Epilepsy is a disease of the central nervous system. Nearly 70% of people with epilepsy respond to a proper treatment, but for a successful therapy of epilepsy, physicians need to know if and when seizures occur. The gold standard diagnosis tool video-electroencephalography (vEEG) requires patients to stay at hospital for several days. A wearable sensor system, e.g. a wristband, serving as diagnostic tool or event monitor, would allow unobtrusive ambulatory long-term monitoring while reducing costs. Previous studies showed that seizures with motor symptoms such as generalized tonic-clonic seizures can be detected by measuring the electrodermal activity (EDA) and motion measuring acceleration (ACC). In this study, EDA and ACC from 8 patients were analyzed. In extension to previous studies, different types of seizures, including seizures without motor activity, were taken into account. A hierarchical classification approach was implemented in order to detect different types of epileptic seizures using data from wearable sensors. Using a k-nearest neighbor (kNN) classifier an overall sensitivity of 89.1% and an overall specificity of 93.1% were achieved, for seizures without motor activity the sensitivity was 97.1% and the specificity was 92.9%. The presented method is a first step towards a reliable ambulatory monitoring system for epileptic seizures with and without motor activity.
机译:癫痫病是中枢神经系统疾病。将近70%的癫痫患者对适当的治疗有反应,但是要成功治疗癫痫,医生需要知道是否以及何时发作。黄金标准诊断工具视频脑电图(vEEG)要求患者在医院呆几天。可穿戴式传感器系统,例如用作诊断工具或事件监控器的腕带将允许在不降低成本的情况下进行不干扰的门诊长期监控。先前的研究表明,可以通过测量皮肤电活动(EDA)和运动加速度(ACC)来检测具有运动症状的癫痫发作,例如全身性强直-阵挛性癫痫发作。在这项研究中,分析了8例患者的EDA和ACC。在先前研究的基础上,考虑了不同类型的癫痫发作,包括无运动活动的癫痫发作。为了使用来自可穿戴传感器的数据来检测不同类型的癫痫发作,实施了分级分类方法。使用k最近邻(kNN)分类器,可实现89.1%的整体敏感性和93.1%的整体特异性,对于无运动活动的癫痫发作,其敏感性为97.1%,特异性为92.9%。提出的方法是迈向具有和不具有运动活动的癫痫发作可靠的门诊监测系统的第一步。

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