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Dynamic causal modelling of electrographic seizure activity using Bayesian belief updating

机译:使用贝叶斯信念更新的电子癫痫发作活动的动态因果模型

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Seizure activity in EEG recordings can persist for hours with seizure dynamics changing rapidly over time and space. To characterise the spatiotemporal evolution of seizure activity, large data sets often need to be analysed. Dynamic causal modelling (DCM) can be used to estimate the synaptic drivers of cortical dynamics during a seizure; however, the requisite (Bayesian) inversion procedure is computationally expensive. In this note, we describe a straightforward procedure, within the DCM framework, that provides efficient inversion of seizure activity measured with non-invasive and invasive physiological recordings; namely, EEG/ECoG. We describe the theoretical background behind a Bayesian belief updating scheme for DCM. The scheme is tested on simulated and empirical seizure activity (recorded both invasively and non-invasively) and compared with standard Bayesian inversion. We show that the Bayesian belief updating scheme provides similar estimates of time-varying synaptic parameters, compared to standard schemes, indicating no significant qualitative change in accuracy. The difference in variance explained was small (less than 5%). The updating method was substantially more efficient, taking approximately 5-10 min compared to approximately 1-2 h. Moreover, the setup of the model under the updating scheme allows for a clear specification of how neuronal variables fluctuate over separable timescales. This method now allows us to investigate the effect of fast (neuronal) activity on slow fluctuations in (synaptic) parameters, paving a way forward to understand how seizure activity is generated. (C) 2015 The Authors. Published by Elsevier Inc.
机译:脑电图记录中的癫痫发作活动可以持续数小时,并且癫痫发作动态会随着时间和空间的变化而迅速变化。为了表征癫痫发作活动的时空演变,经常需要分析大量数据。动态因果模型(DCM)可用于评估癫痫发作期间皮层动力学的突触驱动器;但是,必需的(贝叶斯)反演过程在计算上是昂贵的。在本说明中,我们描述了一个在DCM框架内的简单程序,该程序可通过无创和有创生理记录来有效地反转癫痫发作的活动。即EEG / ECoG。我们描述了DCM贝叶斯信念更新方案背后的理论背景。该方案经过模拟和经验性癫痫发作活动测试(有创和无创记录),并与标准贝叶斯反演进行了比较。我们显示,与标准方案相比,贝叶斯信念更新方案提供了随时间变化的突触参数的相似估计,表明准确性没有明显的质变。解释的方差差异很小(小于5%)。更新方法实际上更有效,与大约1-2小时相比,花费了大约5-10分钟。此外,在更新方案下建立模型可以清楚地说明神经元变量如何在可分离的时间范围内波动。现在,该方法使我们能够研究快速(神经元)活动对(突触)参数缓慢波动的影响,为了解癫痫发作活动的产生方式铺平了道路。 (C)2015作者。由Elsevier Inc.发布

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