组合优化分析脑信号

J. Dauwels, F. Vialatte, T. Weber, A. Cichocki
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引用次数: 0

摘要

我们提出了一种新的方法来确定一个多维信号集合的相似性(或同步性)。首先将信号转换为点过程,其中点过程的每个事件对应于相应信号在适当特征空间中的活动爆发。然后通过自适应地对齐来自不同点过程的事件来计算信号的相似性。如果点过程相似,则每个时间序列中包含一个点的聚类自然会出现。然后,将同步性作为集群大小和一个集群内点之间距离的函数来测量。事件的排列在自然统计模型中定义;最优聚类是通过最大后验推理得到的,可以看作是一个组合优化问题。随着信号维数和数量的增加,推理任务的复杂度也随之增加。具体来说,推理任务对应于:a)比较两个一维信号时的动态程序;b)比较两个d维信号时在二部图上的最大加权匹配;c)一种NP-hard整数程序,当比较N个神经元2个信号时,该程序可以简化为N维匹配。我们通过脑电信号预测轻度认知障碍(MCI)的发生,证明了该方法的适用性。
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Analyzing brain signals by combinatorial optimization
We present a new method to determine the similarity (or synchrony) of a collection of multi-dimensional signals. The signals are first converted into point processes, where each event of a point process corresponds to a burst of activity of the corresponding signal in an appropriate feature space. The similarity of signals is then computed by adaptively aligning the events from the different point processes. If the point processes are similar, clusters containing one point from each time series will naturally appear. Synchrony is then measured as a function of the size of the clusters and the distance between points within one cluster. The alignment of events is defined in a natural statistical model; the optimal clustering is obtained through maximum a posteriori inference and can be cast as a combinatorial optimization problem. As the dimension and the number of signals increase, so does the complexity of the inference task. In particular, the inference task corresponds to: a) a dynamic program when comparing two 1-dimensional signals; b) A maximum weighted matching on a bipartite graph when comparing two d-dimensional signals; c) A NP-hard integer program that can be reduced to N-dimensional matching when comparing N ges 2 signals We show the applicability of the method by predicting the onset of mild cognitive impairment (MCI) from EEG signals.
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