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通过自适应分割和概率密度函数分类实现计算机化脑电图模式分类。临床评估。

Computerized EEG pattern classification by adaptive segmentation and probability density function classification. Clinical evaluation.

作者信息

Creutzfeldt O D, Bodenstein G, Barlow J S

出版信息

Electroencephalogr Clin Neurophysiol. 1985 May;60(5):373-93. doi: 10.1016/0013-4694(85)91012-0.

DOI:10.1016/0013-4694(85)91012-0
PMID:2580689
Abstract

A series of 63 clinical EEGs showing a variety of normal and abnormal patterns was analysed by computer with particular reference to the different types of pattern within the same EEG. Boundaries between different patterns were established by means of adaptive segmentation, so that the duration of the resulting segments was determined by the particular EEG itself (thus the term 'adaptive'). Four channels from each EEG were analysed, paired (left and right) channels were simultaneously segmented and analysed interactively. Similar segments were then clustered without supervision by estimating a probability density function in a 2-dimensional 'feature space' having dimensions of mean frequency and mean power. Individual clusters emerged as well-defined peaks of the surface, individual segments or small groups of duration insufficient to constitute a separate cluster, being identified as 'singular events' (e.g., rare sharp waves, artifacts). The autocorrelation function was used to characterize the EEG both for the segmentation and for the subsequent clustering of the resulting segments. In confirmation of our previous work, adaptive segmentation based on the autocorrelation function of the EEG was found to be quite satisfactory. Unsupervised clustering by estimation of the probability density function in feature space was found to give the correct number of clusters (usually less than 5) in a majority of the records (65%), but in the remaining minority of cases (35%), either overclustering or underclustering occurred. Further, the 'singular events' were occasionally partly included in a formal cluster. Comparison of these results of EEG clustering by unsupervised probability density function estimation with earlier results obtained by supervised hierarchical clustering suggests that there may be subtle cues used by the electroencephalographer in the classification of EEG patterns which have not been adequately approximated by the computer algorithms thus far used in this work. Hence at least some minimal degree of supervision in the clustering process may be necessary, at least for the present. On the other hand, the method recommends itself for the representation of illustrative EEG summaries which, in conjunction with a short written report, would provide the clinical neurologist with a sufficient picture of the real EEG without, in most cases, the need to inspect the original record.

摘要

对63份呈现各种正常和异常模式的临床脑电图进行了计算机分析,特别关注同一脑电图内不同类型的模式。通过自适应分割确定不同模式之间的边界,使得所得片段的持续时间由特定脑电图本身决定(因此称为“自适应”)。分析每份脑电图的四个通道,配对(左和右)通道同时进行分割并交互式分析。然后在无监督的情况下,通过估计具有平均频率和平均功率维度的二维“特征空间”中的概率密度函数,将相似的片段聚类。单个聚类呈现为表面上明确的峰值,持续时间不足以构成单独聚类的单个片段或小群体被识别为“奇异事件”(例如,罕见的尖波、伪迹)。自相关函数用于脑电图的分割以及对所得片段的后续聚类。正如我们之前的工作所证实的,基于脑电图自相关函数的自适应分割被证明是相当令人满意的。通过估计特征空间中的概率密度函数进行无监督聚类,发现在大多数记录(65%)中能给出正确的聚类数量(通常少于5个),但在其余少数情况(35%)中,要么聚类过度要么聚类不足。此外,“奇异事件”偶尔会部分包含在正式聚类中。将通过无监督概率密度函数估计进行脑电图聚类的这些结果与早期通过有监督层次聚类获得的结果进行比较表明,脑电图学家在脑电图模式分类中可能使用了一些微妙线索,而目前这项工作中所使用的计算机算法尚未充分逼近这些线索。因此,至少在目前,聚类过程中可能需要某种最低程度的监督。另一方面,该方法因其可用于呈现说明性脑电图摘要而值得推荐,结合简短的书面报告,在大多数情况下无需检查原始记录就能为临床神经科医生提供真实脑电图的充分图像。

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