Löfgren N, Lindecrantz K, Flisberg A, Bågenholm R, Kjellmer I, Thordstein M
Department of Signals and Systems, Chalmers University of Technology, Gothenburg, Sweden.
J Neural Eng. 2006 Sep;3(3):227-34. doi: 10.1088/1741-2560/3/3/005. Epub 2006 Jul 20.
A novel measure of spectral distance is presented, which is inspired by the prediction residual parameter presented by Itakura in 1975, but derived from frequency domain data and extended to include autoregressive moving average (ARMA) models. This new algorithm is applied to electroencephalogram (EEG) data from newborn piglets exposed to hypoxia for the purpose of early detection of hypoxia. The performance is evaluated using parameters relevant for potential clinical use, and is found to outperform the Itakura distance, which has proved to be useful for this application. Additionally, we compare the performance with various algorithms previously used for the detection of hypoxia from EEG. Our results based on EEG from newborn piglets show that some detector statistics divert significantly from a reference period less than 2 min after the start of general hypoxia. Among these successful detectors, the proposed spectral distance is the only spectral-based parameter. It therefore appears that spectral changes due to hypoxia are best described by use of an ARMA- model-based spectral estimate, but the drawback of the presented method is high computational effort.
提出了一种新的频谱距离度量方法,它受到1975年板仓提出的预测残差参数的启发,但源自频域数据,并扩展到包括自回归滑动平均(ARMA)模型。这种新算法应用于暴露于缺氧环境的新生仔猪的脑电图(EEG)数据,以实现缺氧的早期检测。使用与潜在临床应用相关的参数对性能进行评估,发现其性能优于已被证明在此应用中有用的板仓距离。此外,我们将该性能与先前用于从脑电图检测缺氧的各种算法进行比较。我们基于新生仔猪脑电图的结果表明,在全身性缺氧开始后不到2分钟,一些检测器统计数据与参考期有显著差异。在这些成功的检测器中,所提出的频谱距离是唯一基于频谱的参数。因此,似乎缺氧引起的频谱变化最好用基于ARMA模型的频谱估计来描述,但所提出方法的缺点是计算量很大。