Graef A, Hartmann M, Flamm C, Baumgartner C, Deistler M, Kluge T
Institute for Mathematical Methods in Economics, Vienna University of Technology, Vienna, Austria.
Biol Cybern. 2013 Jun;107(3):321-35. doi: 10.1007/s00422-013-0552-8. Epub 2013 Feb 22.
In this paper, we present a novel method for the identification of synchronization effects in multichannel electrocorticograms (ECoG). Based on autoregressive modeling, we define a dependency measure termed extrinsic-to-intrinsic power ratio (EIPR) which quantifies directed coupling effects in the time domain. Hereby, a dynamic input channel selection algorithm assures the estimation of the model parameters despite the strong spatial correlation among the high number of involved ECoG channels. We compare EIPR to the partial directed coherence, show its ability to indicate Granger causality and successfully validate a signal model. Applying EIPR to ictal ECoG data of patients suffering from temporal lobe epilepsy allows us to identify the electrodes of the seizure onset zone. The results obtained by the proposed method are in good accordance with the clinical findings.
在本文中,我们提出了一种用于识别多通道脑电皮质图(ECoG)同步效应的新方法。基于自回归建模,我们定义了一种称为外在与内在功率比(EIPR)的相关性度量,该度量在时域中量化了定向耦合效应。据此,一种动态输入通道选择算法可确保尽管大量参与的ECoG通道之间存在很强的空间相关性,但仍能估计模型参数。我们将EIPR与部分定向相干性进行比较,展示了其指示格兰杰因果关系的能力,并成功验证了一个信号模型。将EIPR应用于颞叶癫痫患者的发作期ECoG数据,使我们能够识别癫痫发作起始区的电极。所提出方法获得的结果与临床发现高度一致。