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Directionality and Volatility in Electroencephalogram Time Series

机译:脑电图时间序列中的方向性和波动性

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We compare time series of electroencephalograms (EEGs) from healthy volunteers with EEGs from subjects diagnosed with epilepsy. The EEG time series from the healthy group are recorded during awake state with their eyes open and eyes closed, and the records from subjects with epilepsy are taken from three different recording regions of pre-surgical diagnosis: hippocampal, epileptogenic and seizure zone. The comparisons for these 5 categories are in terms of deviations from linear time series models with constant variance Gaussian white noise error inputs. One feature investigated is directionality, and how this can be modelled by either non-linear threshold autoregressive models or non-Gaussian errors. A second feature is volatility, which is modelled by Generalized AutoRegressive Conditional Heteroskedasticity (GARCH) processes. Other features include the proportion of variability accounted for by time series models, and the skewness and the kurtosis of the residuals. The results suggest these comparisons may have diagnostic potential for epilepsy and provide early warning of seizures.
机译:我们比较健康志愿者与患癫痫病的受试者脑电图时间序列的脑电图(EEG)。从健康组的EEG时间序列清醒状态过程中记录他们的眼睛睁开,闭上眼睛,从癫痫的受试者记录从术前诊断的三个不同的记录区采取:海马,癫痫和发作区。对于这些5个类别的比较是在从线性时间序列模型的偏差与常数方差高斯白噪声错误输入的条款。一个特点是研究方向性,以及如何可以通过非线性阈值自回归模型和非高斯误差建模。第二个特征是波动,这是由广义自回归条件异(GARCH)过程建模。其他功能还包括可变性的时间序列模型占的比例,偏度和残差的峰度。结果表明这些比较可能有潜在的诊断癫痫和癫痫发作提供早期预警。

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