Department of Electronic Engineering, University of York, York, YO10 5DD, UK.
3rd Neurological Department, Aristotle University of Thessaloniki Faculty of Health Sciences, Exohi, 57010 Thessaloniki, Greece.
Seizure. 2024 Apr;117:28-35. doi: 10.1016/j.seizure.2024.01.015. Epub 2024 Jan 29.
High frequency oscillations (HFOs) are an emerging biomarker of epilepsy. However, very few studies have investigated the functional connectivity of interictal iEEG signals in the frequency range of HFOs. Here, we study the corresponding functional networks using graph theory, and we assess their predictive value for automatic electrode classification in a cohort of 20 drug resistant patients.
Coherence-based connectivity analysis was performed on the iEEG recordings, and six different local graph measures were computed in both sub-bands of the HFO frequency range (80-250 Hz and 250-500 Hz). Correlation analysis was implemented between the local graph measures and the ripple and fast ripple rates. Finally, the WEKA software was employed for training and testing different predictive models on the aforementioned local graph measures.
The ripple rate was significantly correlated with five out of six local graph measures in the functional network. For fast ripples, their rate was also significantly (but negatively) correlated with most of the local metrics. The results from WEKA showed that the Logistic Regression algorithm was able to classify highly HFO-contaminated electrodes with an accuracy of 82.5 % for ripples and 75.4 % for fast ripples.
Functional connectivity networks in the HFO band could represent an alternative to the direct use of distinct HFO events, while also providing important insights about hub epileptic areas that can represent possible surgical targets. Automatic electrode classification through FC-based classifiers can help bypass the burden of manual HFO annotation, providing at the same time similar amount of information about the epileptic tissue.
高频振荡(HFOs)是癫痫的一种新兴生物标志物。然而,很少有研究调查 HFO 频率范围内的间歇性 iEEG 信号的功能连通性。在这里,我们使用图论研究相应的功能网络,并评估它们在 20 名耐药患者队列中自动电极分类的预测价值。
在 iEEG 记录上进行基于相干性的连通性分析,并在 HFO 频率范围(80-250 Hz 和 250-500 Hz)的两个子带中计算六个不同的局部图度量。在局部图度量和纹波和快纹波率之间进行相关分析。最后,使用 WEKA 软件在上述局部图度量上训练和测试不同的预测模型。
纹波率与功能网络中六个局部图度量中的五个显著相关。对于快纹波,其速率也与大多数局部指标显著(但负相关)相关。WEKA 的结果表明,Logistic 回归算法能够以 82.5%的精度对纹波和 75.4%的精度对快纹波对高度 HFO 污染的电极进行分类。
HFO 带中的功能连通性网络可以替代直接使用不同的 HFO 事件,同时还提供有关可能成为手术目标的癫痫区域的重要信息。基于 FC 的分类器的自动电极分类可以帮助避免手动 HFO 注释的负担,同时提供有关癫痫组织的类似信息量。