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首页> 外文期刊>Seizure: the journal of the British Epilepsy Association >A model of heart rate changes to detect seizures in severe epilepsy.
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A model of heart rate changes to detect seizures in severe epilepsy.

机译:一种心率变化模型,用于检测严重癫痫发作。

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AIM OF THE STUDY: An explorative study to assess the value of a model for the automatic detection and characterization of heart rate (HR) changes during seizures in severe epilepsy. METHODS: Heart rate changes were monitored in 10 patients with 104 seizures, mostly tonic and myoclonic, to assess the value of various modalities for the detection of seizures based on heart rate. EEG/video monitoring served as the golden standard. Two algorithms were developed. First, a curve-fitting algorithm was used to characterize the heart rate patterns. A second algorithm based on a moving median filter was developed for automatic detection of the heart rate change onset. For varying model parameters the sensitivity (SENS) and positive predictive values (PPV) were determined. RESULTS: Changes in heart rate were found in 8 of the 10 patients and 50 of 104 seizures. Patterns of heart rate changes could be quantitatively characterized and were found to be stereotype for each individual patient. Large differences of thecurve-fitting pattern were in some cases due to a tachycardia at seizure onset that was followed by a significant postictal bradycardia. In two out of three patients with more than 10 seizures a PPV of at least 50% yielded a SENS above 90%. CONCLUSIONS: Heart rate patterns can be accurately characterized with a new developed curve-fitting algorithm. Heart rate changes can also be used for automatic detection of seizures in patients with severe epilepsy if the model parameters are chosen according to predefined characteristics of the patient.
机译:研究目的:一项探索性研究,旨在评估重症癫痫发作中自动检测和表征心率(HR)变化的模型的价值。方法:监测10例104例癫痫发作(主要是强直性和肌阵挛性发作)患者的心率变化,以评估基于心率的各种检测癫痫发作方法的价值。脑电图/视频监控是黄金标准。开发了两种算法。首先,使用曲线拟合算法来表征心率模式。开发了基于移动中值滤波器的第二种算法,用于自动检测心率变化的发作。对于变化的模型参数,确定了灵敏度(SENS)和阳性预测值(PPV)。结果:在10例患者中有8例和104例癫痫发作中有50例发现了心率变化。心率变化的模式可以定量表征,并且被认为是每个患者的刻板印象。在某些情况下,曲线拟合模式的较大差异是由于癫痫发作开始时心动过速,随后是明显的术后心动过缓。癫痫发作超过10例的患者中,三分之二的PPV至少为50%,SENS高于90%。结论:可以使用新开发的曲线拟合算法来准确表征心率模式。如果根据患者的预定义特征选择了模型参数,则心率变化也可用于严重癫痫患者的癫痫发作的自动检测。

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