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Identifying Neural Discharges using Time-Frequency Distributions for EEG

机译:使用脑电的时频分布识别神经放电

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This paper presents a time-frequency approach as a nonlinear signal EEG processing technique. The proposed method is based on the use of the Smoothed Pseudo Wigner-Ville distribution (SPWV) good resolution combined with McAulay-Quatieri (MQ) sinusoidal model to identify a neural discharge. The initial results show the algorithm as a suitable method to develop an automatic detector based on graphics patterns parameterized by the features present in the neural discharges on the time-frequency plane. We obtained three features based on energy, frequency and tracking and the algorithm is tested in an application with epileptic EEGs. We can isolate a continuous energy trace with other oscillations when the epileptic seizure is beginning. This characteristic is always present in 16 different seizures from 6 epileptic patients.
机译:本文提出了一种时频方法作为非线性信号脑电图处理技术。所提出的方法是基于使用平滑伪Wigner-Ville分布(SPWV)的高分辨率与McAulay-Quatieri(MQ)正弦模型相结合来识别神经放电的。初步结果表明,该算法是开发基于时频平面上神经放电特征参数化图形模式的自动检测器的合适方法。我们获得了基于能量,频率和跟踪的三个特征,并在具有癫痫性脑电图的应用中对该算法进行了测试。当癫痫发作开始时,我们可以将连续的能量迹线与其他振荡隔离开来。在6名癫痫患者的16种不同的癫痫发作中,始终存在此特征。

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