Automatic High-Frequency Oscillations Detection Using Time-Frequency Analysis

E. Mirzakhalili, Christopher D. Adam, A. V. Ulyanova, V. Johnson, J. Wolf
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Abstract

The role of high-frequency oscillations (HFO) has been established in a multitude of the brain functions such as retrieval and consolidation of memory. Moreover, HFOs have been identified as a biomarker for pathological brain conditions, including epileptogenicity. Therefore, there has been a continuous effort to reliably detect and characterize HFOs. Here, we present an unsupervised HFO detector using characteristics of signals in the time-frequency domain obtained by continuous wavelet transform. By using L1 normalization for continuous wavelet transform, we improved the detection of HFOs without the need to normalize time-frequency maps. The elimination of normalizing the time-frequency maps reduces the computational cost of the analysis. We used two different benchmark datasets available in the literature to validate our proposed automatic HFO detector. The results demonstrate that our detector outperforms other commonly available HFO detectors including those that use time-frequency maps. Our HFO detector shows superior performance especially when signal-to-noise ratio (SNR) is low. Moreover, our detector can simultaneously detect artifacts, physiological spikes, and provide useful information about the HFOs such as their dominant frequency of oscillation, their average amplitude and their duration. This information can later be utilized to stratify HFOs for further analysis. Changes in HFO characteristics may be utilized as biomarkers in pathological conditions such as post-traumatic epilepsy.
自动高频振荡检测使用时频分析
高频振荡(HFO)的作用已经确立在许多大脑功能,如检索和巩固记忆。此外,hfo已被确定为病理性脑状况的生物标志物,包括致癫痫性。因此,人们一直在努力可靠地检测和表征hfo。本文提出了一种利用连续小波变换得到的信号时频域特征的无监督HFO检测器。通过对连续小波变换进行L1归一化处理,在不需要对时频图进行归一化处理的情况下,提高了hfo的检测效率。消除了对时频映射的归一化,减少了分析的计算成本。我们使用了文献中两个不同的基准数据集来验证我们提出的自动HFO检测器。结果表明,我们的检测器优于其他常用的HFO检测器,包括那些使用时频图的检测器。在信噪比较低的情况下,HFO检测器表现出优异的性能。此外,我们的探测器可以同时检测伪影、生理峰值,并提供有关hfo的有用信息,如它们的振荡主导频率、平均幅度和持续时间。这些信息以后可用于对氢氟烃类进行分层,以便进一步分析。HFO特征的变化可作为创伤后癫痫等病理状况的生物标志物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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