脑电时间序列状态空间模型估计用于脑活动源分类

Nattaporn Plub-in, J. Songsiri
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引用次数: 4

摘要

众所周知,脑电图(EEG)信号是由发生在人脑内部的电流源信号产生的,这些电流源在一定时间内可能同时活跃,也可能不同时活跃。本文旨在从捕获EEG时间序列特征的动态模型参数中推断出的信息中对活动源和非活动源进行分类。我们提出了一种状态空间模型来解释脑电信号和脑电信号的耦合动力学,其中脑电信号是根据体积传导特性的线性组合。我们的模型具有一个结构,即模型输出矩阵的稀疏模式可以指示活动源和非活动源的位置。在此假设下,本文提出的估计方法分为两个步骤。首先,采用子空间辨识方法估计模型的动态矩阵和状态变量到脑电输出的映射矩阵;其次,利用群lasso问题求解映射矩阵对状态空间模型输出矩阵的估计,提高了稀疏性模式;因此,输出矩阵的非零行表示脑电数据对应的有源。我们在随机生成的数据集上验证了我们的方法的性能,这些数据集在公平的环境中代表了现实的人类大脑活动。通过选择合适的问题参数和阈值处理来丢弃输出矩阵的小幅度,可以获得95 - 98%的可接受精度。
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State-space model estimation of EEG time series for classifying active brain sources
Electroencephalography (EEG) signals are known to be generated from the current source signals occurring inside human brains and these sources may or may not be active concurrently at a certain time. This paper aims to classify active and inactive sources from the information that can be inferred from parameters of a dynamical model that captures characteristics of EEG time series. We propose a state-space model for explaining coupled dynamics of the source and EEG signals where EEG is a linear combination of sources according to the characteristics of volume conduction. Our model has a structure that the sparsity pattern of the model output matrix can indicate the position of active and inactive sources. With this assumption, the proposed estimation method consists of two steps. Firstly, a subspace identification method is performed to estimate the dynamic matrix of the model and the mapping matrix from the state variable to EEG output. Secondly, the estimation of the output matrix in the state-space model from the mapping matrix is solved by a group lasso problem to promote a sparsity pattern. As a result, nonzero rows of the output matrix represent active source that corresponding to EEG data. We verify the performance of our method on randomly generated data sets that represent realistic human brain activities in a fair setting. An acceptable accuracy of 95 – 98% is obtained with a suitable selection of a problem parameter and a thresholding process to discard small magnitudes of the output matrix.
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