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Accurate Localization of Seizure Onset Zones Based on Multi-feature Extraction and Wavelet Time-frequency Map

机译:基于多特征提取和小波时频图的癫痫发作区域的精确定位

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Recent studies have found that high-frequency oscillations (HFOs) in the 80 Hz to 500 Hz band of electroencephalogram (EEG) are important biomarkers for locating the Seizure Onset Zone (SOZ). In the preoperative localization of epileptic seizures, the traditional manual observation of 0.1Hz to 100Hz epileptiform discharge to determine the onset of epilepsy is very time-consuming and prones to great errors. It not only increases the risk of patient treatment, but also causes misdiagnosis. At present, SOZ auto-location algorithms mostly adopt a single feature extraction algorithm. Although these methods have high sensitivity, but have low specificity, false positives still exist. In this paper, we propose a SOZ location algorithm based on multivariate feature extraction of HFOs and wavelet time-frequency map. The Wavelet Entropy (WE), Power Spectral Density (PSD) and Teager Energy Operator (TEO) are used to extract the suspected channel of epileptic SOZ. Then according to the wavelet time-frequency map to further determine the results. The effectiveness of this algorithm is verified by the results of 5 clinical cases.
机译:最近的研究发现,80Hz至500Hz脑电图(EEG)中的高频振荡(HFO)是用于定位癫痫发作区域(SOZ)的重要生物标志物。在癫痫发作的术前定位中,传统的手动观察0.1Hz至100Hz癫痫病,以确定癫痫发作是非常耗时的和绰号到巨大错误。它不仅提高了患者治疗的风险,还会导致误诊。目前,SOZ自动定位算法主要采用单个特征提取算法。虽然这些方法具有很高的灵敏度,但具有较低的特异性,仍然存在误报。在本文中,我们提出了一种基于HFOS和小波时频图的多变量特征提取的SOZ定位算法。小波熵(我们),功率谱密度(PSD)和Teager能量操作员(TEO)用于提取癫痫症SOZ的疑似通道。然后根据小波时频映射进一步确定结果。该算法的有效性通过5临床病例的结果验证。

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