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Seizure-Onset Mapping Based on Time-Variant Multivariate Functional Connectivity Analysis of High-Dimensional Intracranial EEG: A Kalman Filter Approach

机译:基于高维颅内脑电图的时变多元功能连接分析的癫痫发作 - 攻丝:Kalman滤波器方法

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The visual interpretation of intracranial EEG (iEEG) is the standard method used in complex epilepsy surgery cases to map the regions of seizure onset targeted for resection. Still, visual iEEG analysis is labor-intensive and biased due to interpreter dependency. Multivariate parametric functional connectivity measures using adaptive autoregressive (AR) modeling of the iEEG signals based on the Kalman filter algorithm have been used successfully to localize the electrographic seizure onsets. Due to their high computational cost, these methods have been applied to a limited number of iEEG time-series (< 60). The aim of this study was to test two Kalman filter implementations, a well-known multivariate adaptive AR model (Arnold et al. 1998) and a simplified, computationally efficient derivation of it, for their potential application to connectivity analysis of high-dimensional (up to 192 channels) iEEG data. When used on simulated seizures together with a multivariate connectivity estimator, the partial directed coherence, the two AR models were compared for their ability to reconstitute the designed seizure signal connections from noisy data. Next, focal seizures from iEEG recordings (73-113 channels) in three patients rendered seizure-free after surgery were mapped with the outdegree, a graph-theory index of outward directed connectivity. Simulation results indicated high levels of mapping accuracy for the two models in the presence of low-to-moderate noise cross-correlation. Accordingly, both AR models correctly mapped the real seizure onset to the resection volume. This study supports the possibility of conducting fully data-driven multivariate connectivity estimations on high-dimensional iEEG datasets using the Kalman filter approach.
机译:颅内EEG(IEEG)的视觉解释是复杂癫痫手术案件中使用的标准方法,用于映射靶向切除的癫痫发作区域。尽管如此,视觉IEEG分析是由于解释器依赖而劳动密集型和偏见。使用基于Kalman滤波器算法的IEEG信号的自适应自适应(AR)建模的多变量参数功能连接措施已成功地用于本地化拍摄癫痫发作件。由于其高计算成本,这些方法已应用于有限数量的IEEG时间序列(<60)。本研究的目的是测试两个卡尔曼滤波器实现,众所周知的多变量自适应AR模型(​​Arnold等,1998)以及其潜在应用于高维的连接分析(高达192个通道)IEEG数据。当在与多变量连接估计器一起使用模拟癫痫发作时,将部分定向的连贯性,两个AR模型进行了比较,以便从嘈杂数据重建设计的癫痫发作信号连接。接下来,从IEEG录制(73-113频道)的焦点缉获在手术后无癫痫发作后的三名患者中映射出来,映射到外向连接的图形理论指数。仿真结果表明,在存在低至中噪声交叉相关的情况下,两种模型的映射精度高。因此,两个AR模型都正确映射到切除卷的真实癫痫发作。本研究支持使用Kalman滤波器方法对高维IEEG数据集进行完全数据驱动的多变量连接估计的可能性。

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