Zouridakis G, Jansen B H, Boutros N N
Department of Neurosurgery, University of Texas Medical School, Houston 77030, USA.
IEEE Trans Biomed Eng. 1997 Aug;44(8):673-80. doi: 10.1109/10.605424.
The problem of extracting a useful signal (a response) buried in relatively high amplitude noise has been investigated, under the conditions of low signal-to-noise ratio. In particular, we present a method for detecting the "true" response of the brain resulting from repeated auditory stimulation, based on selective averaging of single-trial evoked potentials. Selective averaging is accomplished in two steps. First, an unsupervised fuzzy-clustering algorithm is employed to identify groups of trials with similar characteristics, using a performance index as an optimization criterion. Then, typical responses are obtained by ensemble averaging of all trials in the same group. Similarity among the resulting estimates is quantified through a synchronization measure, which accounts for the percentage of time that the estimates are in phase. The performance of the classifier is evaluated with synthetic signals of known characteristics, and its usefulness is demonstrated with real electrophysiological data obtained from normal volunteers.
在低信噪比条件下,对从相对高幅度噪声中提取有用信号(响应)的问题进行了研究。特别是,我们提出了一种基于单次试验诱发电位的选择性平均来检测重复听觉刺激引起的大脑“真实”响应的方法。选择性平均分两步完成。首先,采用无监督模糊聚类算法,以性能指标作为优化标准,识别具有相似特征的试验组。然后,通过对同一组中所有试验进行总体平均来获得典型响应。通过同步测量对所得估计值之间的相似性进行量化,同步测量考虑了估计值同相的时间百分比。用已知特征的合成信号评估分类器的性能,并用从正常志愿者获得的真实电生理数据证明其有效性。