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Determining the Quantitative Threshold of High-Frequency Oscillation Distribution to Delineate the Epileptogenic Zone by Automated Detection

机译:通过自动检测确定高频振荡分布的定量阈值以描绘出致痫区

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摘要

>Objective: We proposed an improved automated high frequency oscillations (HFOs) detector that could not only be applied to various intracranial electrodes, but also automatically remove false HFOs caused by high-pass filtering. We proposed a continuous resection ratio of high order HFO channels and compared this ratio with each patient's post-surgical outcome, to determine the quantitative threshold of HFO distribution to delineate the epileptogenic zone (EZ).>Methods: We enrolled a total of 43 patients diagnosed with refractory epilepsy. The patients were used to optimize the parameters for SEEG electrodes, to test the algorithm for identifying false HFOs, and to calculate the continuous resection ratio of high order HFO channels. The ratio can be used to determine a quantitative threshold to locate the epileptogenic zone.>Results: Following optimization, the sensitivity, and specificity of our detector were 66.84 and 73.20% (ripples) and 69.76 and 66.13% (fast ripples, FRs), respectively. The sensitivity and specificity of our algorithm for removing false HFOs were 76.82 and 94.54% (ripples) and 72.55 and 94.87% (FRs), respectively. The median of the continuous resection ratio of high order HFO channels in patients with good surgical outcomes, was significantly higher than in patients with poor outcome, for both ripples and FRs (P < 0.05 ripples and P < 0.001 FRs).>Conclusions: Our automated detector has the advantage of not only applying to various intracranial electrodes but also removing false HFOs. Based on the continuous resection ratio of high order HFO channels, we can set the quantitative threshold for locating epileptogenic zones.
机译:>目的:我们提出了一种改进的自动高频振荡(HFO)检测器,该检测器不仅可以应用于各种颅内电极,还可以自动去除由高通滤波引起的虚假HFO。我们提出了连续切除高阶HFO通道的比率,并将该比率与每个患者的手术后结局进行比较,以确定HFO分布的定量阈值,以描绘出癫痫发生区(EZ)。>方法:总共招募了43例确诊为难治性癫痫的患者。患者被用来优化SEEG电极的参数,测试识别假HFO的算法,并计算高阶HFO通道的连续切除率。该比率可用于确定定位癫痫发生区的定量阈值。>结果:优化后,我们的检测器的灵敏度和特异性分别为66.84和73.20%(波纹)以及69.76和66.13%(快速纹波(FR)。我们的算法去除假HFO的敏感性和特异性分别为76.82%和94.54%(波纹)以及72.55和94.87%(FR)。手术效果良好的高阶HFO通道连续切除率的中位数,在波纹和FRs方面均显着高于结果差的患者(P <0.05波纹和P <0.001 FRs)。>结论::我们的自动检测器不仅具有适用于各种颅内电极的优点,而且还可以消除错误的HFO。基于高阶HFO通道的连续切除率,我们可以设置定位癫痫发生区的定量阈值。

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