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首页> 外文期刊>Medical engineering & physics. >Time-varying statistical dimension analysis with application to newborn scalp EEG seizure signals.
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Time-varying statistical dimension analysis with application to newborn scalp EEG seizure signals.

机译:时变统计维度分析及其在新生儿头皮脑电图发作信号中的应用。

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摘要

A new approach to the analysis of nonstationary possibly nonlinear time series is presented. It is based on an adaptive autocovariance eigenspectrum computation known as APEX together with the Rissanen's Minimum Description Length criterion for the selection of the most relevant eigenvalues. A new concept of time-varying instantaneous statistical dimension is introduced. The motivation for this new approach is the analysis of newborn electroencephalogram for which nonstationarity is an inherent property. The proposed algorithm and new dimension are first assessed on synthetic data. Then, newborn scalp EEG data are analyzed using the proposed scheme. Transitions between different brain states are shown to occur on a baby having electrical and clinical seizures.
机译:提出了一种分析非平稳可能非线性时间序列的新方法。它基于称为APEX的自适应自协方差特征谱计算以及用于选择最相关特征值的Rissanen最小描述长度准则。引入了时变瞬时统计维数的新概念。这种新方法的动机是分析非平稳性是其固有特性的新生儿脑电图。首先根据综合数据评估提出的算法和新维度。然后,使用提出的方案分析新生儿头皮脑电数据。已显示出不同的大脑状态之间的转换发生在患有电性和临床性癫痫发作的婴儿上。

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