Generalized Gaussian time series model for increments of EEG data

Pub Date : 2023-01-01 DOI:10.4310/21-sii692
N. Leonenko, Ž. Salinger, A. Sikorskii, N. Šuvak, M. Boivin
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引用次数: 2

Abstract

We propose a new strictly stationary time series model with marginal generalized Gaussian distribution and exponentially decaying autocorrelation function for modeling of increments of electroencephalogram (EEG) data collected from Ugandan children during coma from cerebral malaria. The model inherits its appealing properties from the strictly stationary strong mixing Markovian diffusion with invari-ant generalized Gaussian distribution (GGD). The GGD parametrization used in this paper comprises some famous light-tailed distributions (e.g., Laplace and Gaussian) and some well known and widely applied heavy-tailed distributions (e.g., Student). Two versions of this model fit to the data from each EEG channel. In the first model, marginal distributions is from the light-tailed GGD sub-family, and the distribution parameters were estimated using quasi-likelihood approach. In the second model, marginal distributions is heavy-tailed (Student), and the tail index was estimated using the approach based on the empirical scaling function. The estimated parameters from models across EEG channels were explored as potential predictors of neurocognitive outcomes of these children 6 months after recov-ering from illness. Several of these parameters were shown to be important predictors even after controlling for neurocognitive scores immediately following cerebral malaria illness and traditional blood and cerebrospinal fluid biomarkers collected during hospitalization.
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脑电数据增量的广义高斯时间序列模型
我们提出了一种新的严格平稳时间序列模型,该模型具有边际广义高斯分布和指数衰减自相关函数,用于模拟乌干达儿童脑疟疾昏迷期间的脑电图数据增量。该模型继承了具有不变广义高斯分布(GGD)的严格平稳强混合马尔可夫扩散的优良特性。本文使用的GGD参数化包括一些著名的轻尾分布(如拉普拉斯和高斯分布)和一些著名的、应用广泛的重尾分布(如Student分布)。该模型的两个版本适合于每个脑电信号通道的数据。在第一个模型中,边际分布来自轻尾GGD亚族,并使用准似然方法估计分布参数。在第二个模型中,边际分布是重尾分布(Student),并且使用基于经验标度函数的方法估计尾部指数。通过脑电图各通道模型的估计参数作为这些儿童康复后6个月神经认知结果的潜在预测因子进行了探讨。即使在控制脑型疟疾发病后立即的神经认知评分和住院期间收集的传统血液和脑脊液生物标志物后,其中一些参数仍被证明是重要的预测指标。
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