Bernabei John M, Arnold T Campbell, Shah Preya, Revell Andrew, Ong Ian Z, Kini Lohith G, Stein Joel M, Shinohara Russell T, Lucas Timothy H, Davis Kathryn A, Bassett Danielle S, Litt Brian
Department of Bioengineering, University of Pennsylvania, Philadelphia, PA 19104, USA.
Center for Neuroengineering & Therapeutics, University of Pennsylvania, Philadelphia, PA 19104, USA.
Brain Commun. 2021 Jul 11;3(3):fcab156. doi: 10.1093/braincomms/fcab156. eCollection 2021.
Brain network models derived from graph theory have the potential to guide functional neurosurgery, and to improve rates of post-operative seizure freedom for patients with epilepsy. A barrier to applying these models clinically is that intracranial EEG electrode implantation strategies vary by centre, region and country, from cortical grid & strip electrodes (Electrocorticography), to purely stereotactic depth electrodes (Stereo EEG), to a mixture of both. To determine whether models derived from one type of study are broadly applicable to others, we investigate the differences in brain networks mapped by electrocorticography and stereo EEG in a cohort of patients who underwent surgery for temporal lobe epilepsy and achieved a favourable outcome. We show that networks derived from electrocorticography and stereo EEG define distinct relationships between resected and spared tissue, which may be driven by sampling bias of temporal depth electrodes in patients with predominantly cortical grids. We propose a method of correcting for the effect of internodal distance that is specific to electrode type and explore how additional methods for spatially correcting for sampling bias affect network models. Ultimately, we find that smaller surgical targets tend to have lower connectivity with respect to the surrounding network, challenging notions that abnormal connectivity in the epileptogenic zone is typically high. Our findings suggest that effectively applying computational models to localize epileptic networks requires accounting for the effects of spatial sampling, particularly when analysing both electrocorticography and stereo EEG recordings in the same cohort, and that future network studies of epilepsy surgery should also account for differences in focality between resection and ablation. We propose that these findings are broadly relevant to intracranial EEG network modelling in epilepsy and an important step in translating them clinically into patient care.
源自图论的脑网络模型有潜力指导功能神经外科手术,并提高癫痫患者术后无癫痫发作的几率。将这些模型应用于临床的一个障碍是,颅内脑电图电极植入策略因中心、地区和国家而异,从皮质网格和条状电极(皮质脑电图),到纯粹的立体定向深度电极(立体脑电图),再到两者的混合。为了确定从一种研究类型得出的模型是否广泛适用于其他类型,我们在一组接受颞叶癫痫手术且预后良好的患者中,研究了通过皮质脑电图和立体脑电图绘制的脑网络差异。我们发现,源自皮质脑电图和立体脑电图的网络定义了切除组织和保留组织之间的不同关系,这可能是由主要使用皮质网格的患者中颞部深度电极的采样偏差所驱动的。我们提出了一种针对电极类型校正节点间距离影响的方法,并探讨了其他空间校正采样偏差的方法如何影响网络模型。最终,我们发现较小的手术靶点相对于周围网络往往具有较低的连通性,这对癫痫发作起始区异常连通性通常较高的观点提出了挑战。我们的研究结果表明,有效地应用计算模型来定位癫痫网络需要考虑空间采样的影响,特别是在分析同一队列中的皮质脑电图和立体脑电图记录时,并且未来癫痫手术的网络研究也应考虑切除和消融之间局灶性的差异。我们认为这些发现与癫痫的颅内脑电图网络建模广泛相关,是将其临床转化为患者护理的重要一步。