Epileptic seizure detection using heart rate variability

Gulezar Shamim, Y. Khan, M. Sarfraz, Omar Farooq
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引用次数: 3

Abstract

Epileptic seizures are recurring brief episodes of abnormal excessive or synchronous neuronal activity in the brain, and are often accompanied by changes in various autonomic functions like heart rate (HR). A better approach for detecting epileptic seizures is by using electrocardiogram (ECG) signals because ECG acquisition is relatively easier as compared to EEG. In this paper a new technique is proposed for detection of seizures in epileptic patients using the electrocardiogram (ECG) signal. Feature sets for analysis of HRV (heart rate variability) comprises of parameters from multiple domains. For temporal analysis activity, mobility and complexity features are identified and for spectral analysis mean of absolute deviation of Fast Fourier Transform coefficients and spectral entropy are identified for seizure detection. These features are classified by using two different approaches i.e. by setting threshold and by using linear support vector machine where average latency by threshold approach was found to be better than linear SVM. The performance parameters for the proposed technique using threshold approach for classification are accuracy (94.2%), sensitivity (84.1%) and specificity (94.5%) which shows that the proposed algorithm detects epileptic seizures efficiently. Comparison of performance of this model was done with those proposed earlier using ECG signal and this model was found to be better.
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利用心率变异性检测癫痫发作
癫痫发作是大脑中异常过度或同步神经元活动的反复发作,通常伴有各种自主神经功能的变化,如心率(HR)。一种更好的检测癫痫发作的方法是使用心电图信号,因为与脑电图相比,心电图的采集相对容易。本文提出了一种利用心电图信号检测癫痫发作的新方法。用于HRV(心率变异性)分析的特征集由来自多个域的参数组成。对于时间分析活动,确定了迁移性和复杂性特征,对于光谱分析,确定了用于癫痫检测的快速傅里叶变换系数的绝对偏差均值和光谱熵。这些特征通过两种不同的方法进行分类,即设置阈值和使用线性支持向量机,其中发现阈值法的平均延迟优于线性支持向量机。采用阈值法进行分类的技术性能参数为准确率(94.2%)、灵敏度(84.1%)和特异性(94.5%),表明该算法能够有效地检测癫痫发作。将该模型与已有的基于心电信号的模型进行了性能比较,结果表明该模型具有更好的性能。
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