[基于采样间隔的癫痫信号状态转移网络特征提取]。

Lei Zhang, Shuang Yan, Changgui Gu
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引用次数: 0

摘要

癫痫发作和癫痫样间歇放电具有相似的波形。有效提取癫痫发作特征的方法具有重要的理论和临床意义。利用多采样间隔的可见性graphlet构造了状态转移网络,并分析了网络特征。研究发现,在不同采样间隔下,临界周期特征波形具有较强的鲁棒性,且在较小采样间隔范围内特征网络结构不易发生变化。相反,癫痫样放电的特征网络结构在较大的采样间隔范围内是稳定的。此外,临界点网络中的特征节点在整个过程中表现出长期的相关性,并在调节系统行为中发挥重要作用。在500 Hz左右的立体脑电图中,癫痫样发作和癫痫样发作间期的最大差异出现在0.032 s左右的采样间隔。综上所述,本研究有效揭示了脑系统病理变化特征与多个采样间隔的相关性,在癫痫的识别、分类和预测的临床诊断中具有潜在的应用价值。
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[Sampling intervals dependent feature extraction for state transfer networks of epileptic signals].

Epileptic seizures and the interictal epileptiform discharges both have similar waveforms. And a method to effectively extract features that can be used to distinguish seizures is of crucial importance both in theory and clinical practice. We constructed state transfer networks by using visibility graphlet at multiple sampling intervals and analyzed network features. We found that the characteristics waveforms in ictal periods were more robust with various sampling intervals, and those feature network structures did not change easily in the range of the smaller sampling intervals. Inversely, the feature network structures of interictal epileptiform discharges were stable in range of relatively larger sampling intervals. Furthermore, the feature nodes in networks during ictal periods showed long-term correlation along the process, and played an important role in regulating system behavior. For stereo-electroencephalography at around 500 Hz, the greatest difference between ictal and the interictal epileptiform occurred at the sampling interval around 0.032 s. In conclusion, this study effectively reveals the correlation between the features of pathological changes in brain system and the multiple sampling intervals, which holds potential application value in clinical diagnosis for identifying, classifying, and predicting epilepsy.

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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
期刊介绍:
期刊最新文献
[Ethical risks and regulatory considerations in neurofeedback technology]. [Prediction of hemodynamic parameters in pathological arterial vessels based on physics-informed neural networks]. [Optimized decomposition of dynamic electroencephalography-functional near infrared spectroscopy brain functional networks for the analysis of repetitive transcranial magnetic stimulation combined with motor training]. [Patient-specific electroencephalography epileptic seizure prediction method using global dynamic multi-scale spatio-temporal features]. [Optical coherence tomography angiography image segmentation based on multi-scale dilated convolution and dual attention network].
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