消除癫痫颅内脑电图记录中伪hfos的平均稀疏局部表示

Behrang Fazli Besheli, Zhiyi Sha, Thomas R. Henry, Jay R. Gavvala, S. Sheth, N. Ince
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引用次数: 0

摘要

间期高频振荡(HFO)被认为是一种很有前途的癫痫区生物标志物。由伪影和噪声产生的伪HFO可能会逃过HFO检测器,误导癫痫发作区(SOZ)的定位。本研究的目的是提出一种新的融合随机森林分类器的稀疏表示框架来检测真实的hfo并消除伪hfo。在该方案中,通过传统的基于幅度阈值的检测器的每个候选事件以稀疏方式局部表示。具体而言,该方法将信号划分为多个重叠窗口,并采用正交匹配追踪方法,从预定义的冗余Gabor字典中选取少量振荡原子来局部逼近信号。然后,对重叠段的近似进行平均,以增加平滑度。最后,重建事件的能力被转化为信息特征,并输入随机森林分类器。在11例癫痫患者10分钟的间歇期颅内脑电图(iEEG)记录上对该技术进行了测试。在这个框架中,三位专家目视检查了基于幅度阈值的HFO检测器在eeg记录中捕获的4466个事件,并将其标记为真实HFO或伪HFO。我们在这些标记事件中达到了89.77%的分类准确率。此外,通过计算检测到的hfo和SOZ通道之间的空间重叠来评估该方法的成功。与传统的基于幅度阈值的HFO检测器相比,我们的方法对SOZ的定位提高了18.27%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Averaged sparse local representation for the elimination of pseudo-HFOs from intracranial EEG recording in epilepsy
Interictal high-frequency oscillation (HFO) is considered a promising biomarker of the epileptogenic zone. The pseudo-HFOs originating from artifacts and noise might escape HFO detectors and mislead the seizure onset zone (SOZ) localization. The purpose of this study is to propose a new sparse representation framework fused with a random forest classifier to detect the real HFOs and eliminate the pseudo-ones. In this scheme, each candidate event that passed a conventional amplitude threshold-based detector was represented locally in a sparse fashion. Specifically, the signal is divided into overlapping windows and using orthogonal matching pursuit, only a few oscillatory atoms selected from a predefined redundant Gabor dictionary were used to approximate the signal locally. Later, the approximations in overlapping segments are averaged to increase the smoothness. Finally, the ability to reconstruct an event is translated to informative features and fed into a random forest classifier. This technique was tested on 10 minutes of interictal intracranial EEG (iEEG) recordings recorded from 11 patients with epilepsy. In this framework, three experts visually inspected 4466 events captured by the amplitude threshold-based HFO detector in iEEG recordings and labeled them as real-HFO or Pseudo-HFO. We reached 89.77% classification accuracy in these labeled events. Furthermore, the success of the method assessed by calculating the spatial overlap between the detected HFOs and SOZ channels. Compared to conventional amplitude threshold-based HFO detector, our method resulted a significant 18.27% improvement in the localization of SOZ.
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