多层次状态空间模型实现了高精度事件相关潜能分析。

Proloy Das, Mingjian He, Patrick L Purdon
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引用次数: 0

摘要

在认知任务中,与刺激呈现时间锁定的大脑反应在脑电图(EEG)中表现为事件相关电位(ERP)。一般来说,ERPs 是约 1 μ V 的信号,其背景是更强的神经振荡,因此传统上是通过平均数百次试验反应来提取ERPs,这样神经振荡就可以相互抵消。然而,在认知科学实验中,由于物理条件的限制,通常很难进行大量的试验。此外,过度的平均化还会模糊ERPs信号的精细结构,而这些信号本来可能是各种内在因素的指示。在此,我们建议使用一种新颖的振荡状态空间表示法对背景振荡进行建模,并以数据驱动的方式识别其时间轨迹。这样,我们就能有效地将振荡与感兴趣的反应信号分离开来,从而改善诱发反应的信噪比,最终提高试验的保真度。我们还为 ERP 波形考虑了类似随机漫步的连续性约束,以恢复平滑、去噪的估计值。我们采用广义期望最大化算法来估计模型参数,然后推断出 ERP 波形的近似后验分布。我们通过模拟研究证明了我们提出的 ERP 提取技术降低了依赖性。最后,我们展示了在分析试验次数较少的认知任务设置中的脑电图数据时,使用我们的方法提取的 ERP 如何比传统的基于平均值的 ERP 更有参考价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilevel State-Space Models Enable High Precision Event Related Potential Analysis.

During cognitive tasks, the elicited brain responses that are time-locked to the stimulus presentation are manifested in electroencephalogram (EEG) as Event Related Potentials (ERPs). In general, ERPs are ~ 1 μ V signals embedded in the background of much stronger neural oscillations, and thus they are traditionally extracted by averaging hundreds of trial responses so that the neural oscillations can cancel out each other. However, often in cognitive science experiments, it is difficult to administer large number of trials due to physical constraints. Additionally, these excessive averaging can also blur fine structures of the ERPs signals, which might otherwise be indicative of various intrinsic factors. Here we propose to model the background oscillations using a novel oscillation state-space representation and identify their time-traces in a data-driven way. This allows us to effectively separate the oscillations from the response signals of interest, thus improving the signal-to-noise of the evoked response, and eventually increasing trial fidelity. We also consider a random-walk like continuity constraint for the ERP waveforms to recover smooth, de-noised estimates. We employ a generalized expectation maximization algorithm for estimating the model parameters, and then infer the approximate posterior distribution of ERP waveforms. We demonstrate the reduced reliance of our proposed ERP extraction technique via a simulation study. Finally, we showcase how the extracted ERPs using our method can be more informative than the traditional average-based ERPs when analyzing EEG data in cognitive task settings with fewer trials.

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