...
首页> 外文期刊>Epilepsia: Journal of the International League against Epilepsy >Automated video-based detection of nocturnal convulsive seizures in a residential care setting
【24h】

Automated video-based detection of nocturnal convulsive seizures in a residential care setting

机译:基于自动视频的夜间痉挛癫痫发作的自动化检测

获取原文
获取原文并翻译 | 示例
           

摘要

People with epilepsy need assistance and are at risk of sudden death when having convulsive seizures (CS). Automated real-time seizure detection systems can help alert caregivers, but wearable sensors are not always tolerated. We determined algorithm settings and investigated detection performance of a video algorithm to detect CS in a residential care setting. The algorithm calculates power in the 2-6Hz range relative to 0.5-12.5Hz range in group velocity signals derived from video-sequence optical flow. A detection threshold was found using a training set consisting of video-electroencephalogaphy (EEG) recordings of 72 CS. A test set consisting of 24 full nights of 12 new subjects in residential care and additional recordings of 50 CS selected randomly was used to estimate performance. All data were analyzed retrospectively. The start and end of CS (generalized clonic and tonic-clonic seizures) and other seizures considered desirable to detect (long generalized tonic, hyperkinetic, and other major seizures) were annotated. The detection threshold was set to the value that obtained 97% sensitivity in the training set. Sensitivity, latency, and false detection rate (FDR) per night were calculated in the test set. A seizure was detected when the algorithm output exceeded the threshold continuously for 2seconds. With the detection threshold determined in the training set, all CS were detected in the test set (100% sensitivity). Latency was 10seconds in 78% of detections. Three/five hyperkinetic and 6/9 other major seizures were detected. Median FDR was 0.78 per night and no false detections occurred in 9/24 nights. Our algorithm could improve safety unobtrusively by automated real-time detection of CS in video registrations, with an acceptable latency and FDR. The algorithm can also detect some other motor seizures requiring assistance.
机译:癫痫有癫痫的人需要援助,并且在有抽搐癫痫发作时有猝死的风险(CS)。自动实时癫痫发作检测系统可以帮助警告护理人员,但不能总是容忍可穿戴传感器。我们确定了算法设置和调查了视频算法的检测性能,以检测住宅护理环境中的CS。该算法在从视频序列光学流程的组速度信号中计算2-6Hz范围内的功率相对0.5-12.5Hz范围。使用由72cs的视频脑电图(EEG)记录组成的训练集找到检测阈值。由24间全年夜晚组成的测试集,其中包括住宅护理的12个新科目以及随机选择的50cs的额外录音来估算性能。回顾性地分析所有数据。 CS的开始和结束(广义克隆和助长致助核癫痫发作)和认为所考虑的其他癫痫发作被释放(长期广义滋补品,高型药物和其他主要癫痫发作)被注释。检测阈值被设置为在训练集中获得97%灵敏度的值。在测试集中计算每晚的灵敏度,延迟和假检测率(FDR)。当算法输出超过2秒的算法输出超过阈值时,检测到癫痫发作。利用在训练集中确定的检测阈值,在测试集(100%灵敏度)中检测到所有CS。延迟是78%的检测中的10秒。检测到三次/五种过基因和6/9其他主要癫痫发作。中位数FDR为每晚0.78,9/24晚上没有错误检测。我们的算法可以通过自动实时检测视频注册中的CS,具有可接受的延迟和FDR来提高安全性的安全性。该算法还可以检测需要帮助的其他电动机癫痫发作。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号