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A Robustness Comparison of Two Algorithms Used for EEG Spike Detection

机译:两种用于脑电信号峰值检测的算法的鲁棒性比较

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摘要

Spikes and sharp waves recorded on scalp EEG may play an important role in identifying the epileptogenic network as well as in understanding the central nervous system. Therefore, several automatic and semi-automatic methods have been implemented to detect these two neural transients. A consistent gold standard associated with a high degree of agreement among neuroscientists is required to measure relevant performance of different methods. In fact, scalp EEG data can often be corrupted by a set of artifacts and are not always served as data of gold standard. For this reason, the use of intracerebral EEG data mixed with gaussian noise seems to best resemble the output of scalp EEG brain and serves as a consistent gold standard. In the present framework, we test the robustness of two important methods that have been previously used for the automatic detection of epileptiform transients (spikes and sharp waves). These methods are based respectively on Discrete Wavelet Transform (DWT) and Continuous Wavelet Transform (CWT). Our purpose is to elaborate a comparative study in terms of sensitivity and selectivity changes via the decrease of Signal to Noise Ratio (SNR), which is ranged from 10 dB up to -10 dB. The results demonstrate that, DWT approach turns to be more stable in terms of sensitivity, and it successfully follows the detection of relevant spikes with the decrease of SNR. However, CWT-based approach remains more stable in terms of selectivity, so that, it performs well in terms of rejecting false spikes compared to DWT approach.
机译:头皮脑电图上记录的尖峰和尖波可能在识别癫痫发生网络以及理解中枢神经系统中起重要作用。因此,已经实现了几种自动和半自动方法来检测这两个神经瞬态。要衡量不同方法的相关性能,需要与神经科学家之间高度一致的一致的金标准。实际上,头皮脑电图数据经常会被一组伪像破坏,并且并不总是用作黄金标准的数据。因此,将脑内脑电图数据与高斯噪声混合使用似乎最类似于头皮脑电图脑的输出,并且是一致的金标准。在当前框架中,我们测试了两种重要方法的鲁棒性,这些方法先前已用于自动检测癫痫样瞬变(尖峰和尖波)。这些方法分别基于离散小波变换(DWT)和连续小波变换(CWT)。我们的目的是通过降低信噪比(SNR)来进行灵敏度和选择性变化方面的比较研究,信噪比的范围从10 dB到-10 dB。结果表明,DWT方法在灵敏度方面变得更加稳定,并且随着SNR的降低,成功地跟随了相关尖峰的检测。但是,基于CWT的方法在选择性方面仍然更加稳定,因此与DWT相比,在拒绝错误尖峰方面表现良好。

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