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Influence of Time-Series Normalization, Number of Nodes, Connectivity and Graph Measure Selection on Seizure-Onset Zone Localization from Intracranial EEG

机译:时间序列标准化,节点数,连接和图测量选择对颅内脑电图的癫痫发作区域定位的影响

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We investigated the influence of processing steps in the estimation of multivariate directed functional connectivity during seizures recorded with intracranial EEG (iEEG) on seizure-onset zone (SOZ) localization. We studied the effect of (i) the number of nodes, (ii) time-series normalization, (iii) the choice of multivariate time-varying connectivity measure: Adaptive Directed Transfer Function (ADTF) or Adaptive Partial Directed Coherence (APDC) and (iv) graph theory measure: outdegree or shortest path length. First, simulations were performed to quantify the influence of the various processing steps on the accuracy to localize the SOZ. Afterwards, the SOZ was estimated from a 113-electrodes iEEG seizure recording and compared with the resection that rendered the patient seizure-free. The simulations revealed that ADTF is preferred over APDC to localize the SOZ from ictal iEEG recordings. Normalizing the time series before analysis resulted in an increase of 25–35% of correctly localized SOZ, while adding more nodes to the connectivity analysis led to a moderate decrease of 10%, when comparing 128 with 32 input nodes. The real-seizure connectivity estimates localized the SOZ inside the resection area using the ADTF coupled to outdegree or shortest path length. Our study showed that normalizing the time-series is an important pre-processing step, while adding nodes to the analysis did only marginally affect the SOZ localization. The study shows that directed multivariate Granger-based connectivity analysis is feasible with many input nodes (>?100) and that normalization of the time-series before connectivity analysis is preferred.
机译:我们调查了处理步骤在癫痫发作区域(SOZ)定位上记录的癫痫发作期间多变量指向功能连接估计的影响。我们研究了(i)节点数量,(ii)时间序列归一化的效果,(iii)多变量时变连接测量的选择:自适应定向传递函数(ADTF)或自适应部分定向的一致性(APDC)和(iv)图论措施:欠仓或最短路径长度。首先,进行仿真以量化各种处理步骤对定位SOZ的准确性的影响。然后,SOZ由113电极IEEG癫痫发作估计并与切除进行比较,使患者无癫痫发作。模拟显示,ADTF优先于APDC,以从ICTAL IEEG录制中定位SOZ。在分析之前归一化时间序列导致25-35%的正确局部SOZ,同时将更多节点添加到连接性分析,当与32个输入节点进行比较128时,将更多节点导致到25%的中等减小。实际癫痫发作连接估计使用耦合到欠压或最短路径长度的ADTF将SOZ定位在切除区域内。我们的研究表明,正常化的时间序列是一个重要的预处理步骤,同时将节点添加到分析中仅对SOZ本地化产生了边际影响。该研究表明,定向的基于多变量格子的连接性分析是可行的,许多输入节点(>?100),并且在连接分析之前的时间序列的归一化是优选的。

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