Utility of intracranial EEG networks depends on re-referencing and connectivity choice

Haoer Shi, A. R. Pattnaik, Carlos Aguila, Alfredo Lucas, N. Sinha, Brian Prager, Marissa Mojena, Ryan Gallagher, Alexandra Parashos, Leonardo Bonilha, E. Gleichgerrcht, Kathryn A Davis, Brian Litt, E. Conrad
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Abstract

Abstract Studies of intracranial EEG networks have been used to reveal seizure generators in patients with drug-resistant epilepsy. Intracranial EEG is implanted to capture the epileptic network, the collection of brain tissue that forms a substrate for seizures to start and spread. Interictal intracranial EEG measures brain activity at baseline, and networks computed during this state can reveal aberrant brain tissue without requiring seizure recordings. Intracranial EEG network analyses require choosing a reference and applying statistical measures of functional connectivity. Approaches to these technical choices vary widely across studies, and the impact of these technical choices on downstream analyses is poorly understood. Our objective was to examine the effects of different re-referencing and connectivity approaches on connectivity results and on the ability to lateralize the seizure onset zone in patients with drug-resistant epilepsy. We applied 48 pre-processing pipelines to a cohort of 125 patients with drug-resistant epilepsy recorded with interictal intracranial EEG across two epilepsy centres to generate intracranial EEG functional connectivity networks. Twenty-four functional connectivity measures across time and frequency domains were applied in combination with common average re-referencing or bipolar re-referencing. We applied an unsupervised clustering algorithm to identify groups of pre-processing pipelines. We subjected each pre-processing approach to three quality tests: (i) the introduction of spurious correlations; (ii) robustness to incomplete spatial sampling; and (iii) the ability to lateralize the clinician-defined seizure onset zone. Three groups of similar pre-processing pipelines emerged: common average re-referencing pipelines, bipolar re-referencing pipelines and relative entropy-based connectivity pipelines. Relative entropy and common average re-referencing networks were more robust to incomplete electrode sampling than bipolar re-referencing and other connectivity methods (Friedman test, Dunn–Šidák test P < 0.0001). Bipolar re-referencing reduced spurious correlations at non-adjacent channels better than common average re-referencing (Δ mean from machine ref = −0.36 versus −0.22) and worse in adjacent channels (Δ mean from machine ref = −0.14 versus −0.40). Relative entropy-based network measures lateralized the seizure onset hemisphere better than other measures in patients with temporal lobe epilepsy (Benjamini–Hochberg-corrected P < 0.05, Cohen’s d: 0.60–0.76). Finally, we present an interface where users can rapidly evaluate intracranial EEG pre-processing choices to select the optimal pre-processing methods tailored to specific research questions. The choice of pre-processing methods affects downstream network analyses. Choosing a single method among highly correlated approaches can reduce redundancy in processing. Relative entropy outperforms other connectivity methods in multiple quality tests. We present a method and interface for researchers to optimize their pre-processing methods for deriving intracranial EEG brain networks.
颅内脑电图网络的实用性取决于重新参照和连接选择
摘要 颅内脑电图网络研究已被用于揭示耐药性癫痫患者的癫痫发作发生器。植入颅内脑电图可捕捉癫痫网络,即形成癫痫发作开始和扩散基质的脑组织集合。发作间期颅内脑电图测量基线时的大脑活动,在这种状态下计算出的网络可以揭示异常的脑组织,而不需要癫痫发作记录。颅内脑电图网络分析需要选择参照物并应用功能连接的统计量度。这些技术选择的方法在不同的研究中差别很大,而这些技术选择对下游分析的影响却鲜为人知。我们的目的是研究不同的再参照和连接方法对连接结果的影响,以及对耐药性癫痫患者癫痫发作起始区侧定的能力的影响。我们在两个癫痫中心对 125 名耐药性癫痫患者的发作间期颅内脑电图记录进行了 48 项预处理,以生成颅内脑电图功能连接网络。我们采用了 24 种跨时域和频域的功能连接测量方法,并结合了共同平均再参照或双极再参照。我们采用无监督聚类算法来识别预处理管道组。我们对每种预处理方法进行了三项质量测试:(i) 引入虚假相关性;(ii) 对不完整空间采样的鲁棒性;(iii) 临床医生定义的癫痫发作起始区的侧向化能力。最终形成了三组相似的预处理管道:共同平均再参照管道、双极再参照管道和基于相对熵的连接管道。与双极再参照和其他连接方法相比,相对熵和共同平均再参照网络对不完全电极取样的稳健性更高(Friedman 检验、Dunn-Šidák 检验,P < 0.0001)。双极再参照法比普通平均再参照法更好地减少了非相邻通道的虚假相关性(来自机器参照的Δ平均值=-0.36对-0.22),但在相邻通道的虚假相关性较差(来自机器参照的Δ平均值=-0.14对-0.40)。在颞叶癫痫患者中,基于相对熵的网络测量对发作起始半球的侧化效果优于其他测量(Benjamini-Hochberg 校正 P < 0.05,Cohen's d:0.60-0.76)。最后,我们提供了一个界面,用户可以通过该界面快速评估颅内脑电图预处理选择,从而根据具体研究问题选择最佳预处理方法。预处理方法的选择会影响下游网络分析。在高度相关的方法中选择一种方法可以减少处理过程中的冗余。在多项质量测试中,相对熵优于其他连接性方法。我们为研究人员提供了一种方法和界面,用于优化得出颅内脑电图脑网络的预处理方法。
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