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用于检测脑损伤大鼠连续脑电图记录中癫痫发作的高效无监督算法。

Efficient unsupervised algorithms for the detection of seizures in continuous EEG recordings from rats after brain injury.

作者信息

White Andrew M, Williams Philip A, Ferraro Damien J, Clark Suzanne, Kadam Shilpa D, Dudek F Edward, Staley Kevin J

机构信息

Department of Neurology, University of Colorado Health Sciences Center, 4200 E. 9th Avenue, Denver, CO 80262, USA.

出版信息

J Neurosci Methods. 2006 Apr 15;152(1-2):255-66. doi: 10.1016/j.jneumeth.2005.09.014. Epub 2005 Dec 5.

Abstract

Long-term EEG monitoring in chronically epileptic animals produces very large EEG data files which require efficient algorithms to differentiate interictal spikes and seizures from normal brain activity, noise, and, artifact. We compared four methods for seizure detection based on (1) EEG power as computed using amplitude squared (the power method), (2) the sum of the distances between consecutive data points (the coastline method), (3) automated spike frequency and duration detection (the spike frequency method), and (4) data range autocorrelation combined with spike frequency (the autocorrelation method). These methods were used to analyze a randomly selected test set of 13 days of continuous EEG data in which 75 seizures were imbedded. The EEG recordings were from eight different rats representing two different models of chronic epilepsy (five kainate-treated and three hypoxic-ischemic). The EEG power method had a positive predictive value (PPV, or true positives divided by the sum of true positives and false positives) of 18% and a sensitivity (true positives divided by the sum of true positives and false negatives) of 95%, the coastline method had a PPV of 78% and sensitivity of 99.59, the spike frequency method had a PPV of 78% and a sensitivity of 95%, and the autocorrelation method yielded a PPV of 96% and a sensitivity of 100%. It is possible to detect seizures automatically in a prolonged EEG recording using computationally efficient unsupervised algorithms. Both the quality of the EEG and the analysis method employed affect PPV and sensitivity.

摘要

对慢性癫痫动物进行长期脑电图监测会产生非常大的脑电图数据文件,这就需要高效的算法来区分发作间期棘波、癫痫发作与正常脑电活动、噪声及伪迹。我们比较了四种癫痫发作检测方法,分别基于:(1)用幅度平方计算的脑电图功率(功率法);(2)连续数据点之间距离的总和(海岸线法);(3)自动检测棘波频率和持续时间(棘波频率法);(4)数据范围自相关结合棘波频率(自相关法)。这些方法用于分析一个随机选择的包含13天连续脑电图数据的测试集,其中嵌入了75次癫痫发作。脑电图记录来自代表两种不同慢性癫痫模型的八只不同大鼠(五只经海藻酸处理,三只缺氧缺血)。脑电图功率法的阳性预测值(PPV,即真阳性除以真阳性与假阳性之和)为18%,灵敏度(真阳性除以真阳性与假阴性之和)为95%;海岸线法的PPV为78%,灵敏度为99.5%;棘波频率法的PPV为78%,灵敏度为95%;自相关法的PPV为96%,灵敏度为100%。使用计算效率高的无监督算法可以在长时间脑电图记录中自动检测癫痫发作。脑电图的质量和所采用的分析方法都会影响PPV和灵敏度。

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