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Multivariate autoregressive models with exogenous inputs for intracerebral responses to direct electrical stimulation of the human brain

机译:具有外部输入的多变量自回归模型用于大脑对人脑直接电刺激的反应

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摘要

A multivariate autoregressive (MVAR) model with exogenous inputs (MVARX) is developed for describing the cortical interactions excited by direct electrical current stimulation of the cortex. Current stimulation is challenging to model because it excites neurons in multiple locations both near and distant to the stimulation site. The approach presented here models these effects using an exogenous input that is passed through a bank of filters, one for each channel. The filtered input and a random input excite a MVAR system describing the interactions between cortical activity at the recording sites. The exogenous input filter coefficients, the autoregressive coefficients, and random input characteristics are estimated from the measured activity due to current stimulation. The effectiveness of the approach is demonstrated using intracranial recordings from three surgical epilepsy patients. We evaluate models for wakefulness and NREM sleep in these patients with two stimulation levels in one patient and two stimulation sites in another resulting in a total of 10 datasets. Excellent agreement between measured and model-predicted evoked responses is obtained across all datasets. Furthermore, one-step prediction is used to show that the model also describes dynamics in pre-stimulus and evoked recordings. We also compare integrated information—a measure of intracortical communication thought to reflect the capacity for consciousness—associated with the network model in wakefulness and sleep. As predicted, higher information integration is found in wakefulness than in sleep for all five cases.
机译:建立了带有外源输入(MVARX)的多元自回归(MVAR)模型,用于描述由皮层的直接电流刺激所激发的皮层相互作用。当前的刺激模型具有挑战性,因为它会刺激靠近和远离刺激部位的多个位置的神经元。此处介绍的方法使用通过一组滤波器传递的外部输入对这些效果进行建模,每个滤波器一个。过滤后的输入和随机输入激发了一个MVAR系统,该系统描述了记录部位的皮层活动之间的相互作用。外源输入滤波器系数,自回归系数和随机输入特性是根据电流刺激下测得的活动来估算的。使用三名外科手术癫痫患者的颅内记录证明了该方法的有效性。我们评估了这些患者的清醒和NREM睡眠模型,其中一名患者有两种刺激水平,另一名患者有两个刺激部位,共产生10个数据集。在所有数据集中都获得了测量的和模型预测的诱发反应之间的极佳一致性。此外,单步预测用于表明该模型还描述了预刺激和诱发记录中的动态。我们还比较了综合信息(一种用来反映意识能力的皮质内通信手段)与清醒和睡眠中的网络模型的关联。如所预测的,在所有五种情况下,觉醒都比睡眠中的信息整合更高。

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