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一种用于诱发电位微状态分割的自动化方法。

An automated method for micro-state segmentation of evoked potentials.

作者信息

Hennings Kristian, Lelic Dina, Petrini Laura

机构信息

Mech-Sense, Department of Gastroenterology, Aalborg Hospital, Medicinerhuset, 4. sal, Mølleparkvej 4, DK-9000 Aalborg, Denmark.

出版信息

J Neurosci Methods. 2009 Feb 15;177(1):225-31. doi: 10.1016/j.jneumeth.2008.09.029. Epub 2008 Oct 10.

Abstract

We present a method for segmenting evoked potentials into functional micro-states. The method is based on measuring the similarity between all the topographic maps in the evoked potential and grouping them into functional micro-states based on minimizing an error function. The similarity is measured as the normalized cross-correlation coefficient. The method was validated on simulated data and tested on its ability to segment a visual evoked potential. On simulated data the method missed from 1% to 8.5% of the micro-state boundaries for evoked potentials with a signal-to-noise ratio of 20-1dB, respectively. The proposed segmentation method was compared with segmentation based on K-mean clustering. It was found that the proposed method was better at detecting the correct number of micro-states and was computationally more efficient. The automatic segmentation of the visual evoked potential was compared to the manual segmentation performed by eleven EEG specialists. No significant difference in the deviation of micro-state boundaries was observed between two random EEG specialists and between a random EEG specialist and the automatic method. Thus it was found that the method could reliably segment evoked potentials into their functional micro-states.

摘要

我们提出了一种将诱发电位分割为功能性微状态的方法。该方法基于测量诱发电位中所有地形图之间的相似性,并基于最小化误差函数将它们分组为功能性微状态。相似性通过归一化互相关系数来衡量。该方法在模拟数据上进行了验证,并测试了其分割视觉诱发电位的能力。在模拟数据上,对于信噪比分别为20 - 1dB的诱发电位,该方法遗漏了1%至8.5%的微状态边界。将所提出的分割方法与基于K均值聚类的分割方法进行了比较。结果发现,所提出的方法在检测正确的微状态数量方面表现更好,并且计算效率更高。将视觉诱发电位的自动分割与由11位脑电图专家进行的手动分割进行了比较。在两位随机选择的脑电图专家之间以及在一位随机选择的脑电图专家与自动方法之间,未观察到微状态边界偏差的显著差异。因此发现该方法能够可靠地将诱发电位分割为其功能性微状态。

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