Martínez Cristina G B, Niediek Johannes, Mormann Florian, Andrzejak Ralph G
Department of Communication and Information Technologies, Universitat Pompeu Fabra, Barcelona, Spain.
Edmond and Lily Safra Center for Brain Sciences, The Hebrew University of Jerusalem, Jerusalem, Israel.
Front Neurol. 2020 Sep 17;11:553885. doi: 10.3389/fneur.2020.553885. eCollection 2020.
The application of non-linear signal analysis techniques to biomedical data is key to improve our knowledge about complex physiological and pathological processes. In particular, the use of non-linear techniques to study electroencephalographic (EEG) recordings can provide an advanced characterization of brain dynamics. In epilepsy these dynamics are altered at different spatial scales of neuronal organization. We therefore apply non-linear signal analysis to EEG recordings from epilepsy patients derived with intracranial hybrid electrodes, which are composed of classical macro contacts and micro wires. Thereby, these electrodes record EEG at two different spatial scales. Our aim is to test the degree to which the analysis of the EEG recorded at these different scales allows us to characterize the neuronal dynamics affected by epilepsy. For this purpose, we retrospectively analyzed long-term recordings performed during five nights in three patients during which no seizures took place. As a benchmark we used the accuracy with which this analysis allows determining the hemisphere that contains the seizure onset zone, which is the brain area where clinical seizures originate. We applied the surrogate-corrected non-linear predictability score (ψ), a non-linear signal analysis technique which was shown previously to be useful for the lateralization of the seizure onset zone from classical intracranial EEG macro contact recordings. Higher values of ψ were found predominantly for signals recorded from the hemisphere containing the seizure onset zone as compared to signals recorded from the opposite hemisphere. These differences were found not only for the EEG signals recorded with macro contacts, but also for those recorded with micro wires. In conclusion, the information obtained from the analysis of classical macro EEG contacts can be complemented by the one of micro wire EEG recordings. This combined approach may therefore help to further improve the degree to which quantitative EEG analysis can contribute to the diagnostics in epilepsy patients.
将非线性信号分析技术应用于生物医学数据是提高我们对复杂生理和病理过程认识的关键。特别是,使用非线性技术研究脑电图(EEG)记录可以提供脑动力学的高级特征描述。在癫痫中,这些动力学在神经元组织的不同空间尺度上发生改变。因此,我们将非线性信号分析应用于来自癫痫患者的颅内混合电极记录的EEG,这种电极由传统的宏观触点和微丝组成。从而,这些电极在两个不同的空间尺度上记录EEG。我们的目的是测试在这些不同尺度上记录的EEG分析能够在多大程度上使我们表征受癫痫影响的神经元动力学。为此,我们回顾性分析了三名患者在五个晚上进行的无癫痫发作期间的长期记录。作为基准,我们使用这种分析确定包含癫痫发作起始区的半球的准确性,癫痫发作起始区是临床癫痫发作起源的脑区。我们应用了替代校正的非线性可预测性评分(ψ),这是一种非线性信号分析技术,先前已证明其可用于从传统颅内EEG宏观触点记录中对癫痫发作起始区进行定位。与从对侧半球记录的信号相比,主要在包含癫痫发作起始区的半球记录的信号中发现了更高的ψ值。这些差异不仅在宏观触点记录的EEG信号中发现,在微丝记录的信号中也发现了。总之,从传统宏观EEG触点分析中获得的信息可以由微丝EEG记录的信息补充。因此,这种联合方法可能有助于进一步提高定量EEG分析对癫痫患者诊断的贡献程度。