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非平稳过程的自适应协方差估计及其在从功能磁共振成像推断动态连通性中的应用。

Adaptive covariance estimation of non-stationary processes and its application to infer dynamic connectivity from fMRI.

作者信息

Fu Zening, Chan Shing-Chow, Di Xin, Biswal Bharat, Zhang Zhiguo

出版信息

IEEE Trans Biomed Circuits Syst. 2014 Apr;8(2):228-39. doi: 10.1109/TBCAS.2014.2306732. Epub 2014 Apr 17.

Abstract

Time-varying covariance is an important metric to measure the statistical dependence between non-stationary biological processes. Time-varying covariance is conventionally estimated from short-time data segments within a window having a certain bandwidth, but it is difficult to choose an appropriate bandwidth to estimate covariance with different degrees of non-stationarity. This paper introduces a local polynomial regression (LPR) method to estimate time-varying covariance and performs an asymptotic analysis of the LPR covariance estimator to show that both the estimation bias and variance are functions of the bandwidth and there exists an optimal bandwidth to minimize the mean square error (MSE) locally. A data-driven variable bandwidth selection method, namely the intersection of confidence intervals (ICI), is adopted in LPR for adaptively determining the local optimal bandwidth that minimizes the MSE. Experimental results on simulated signals show that the LPR-ICI method can achieve robust and reliable performance in estimating time-varying covariance with different degrees of variations and under different noise scenarios, making it a powerful tool to study the dynamic relationship between non-stationary biomedical signals. Further, we apply the LPR-ICI method to estimate time-varying covariance of functional magnetic resonance imaging (fMRI) signals in a visual task for the inference of dynamic functional brain connectivity. The results show that the LPR-ICI method can effectively capture the transient connectivity patterns from fMRI.

摘要

时变协方差是衡量非平稳生物过程之间统计依赖性的一个重要指标。传统上,时变协方差是根据具有一定带宽的窗口内的短时间数据段来估计的,但对于不同程度的非平稳性,很难选择合适的带宽来估计协方差。本文介绍了一种局部多项式回归(LPR)方法来估计时变协方差,并对LPR协方差估计器进行了渐近分析,结果表明估计偏差和方差都是带宽的函数,并且存在一个最优带宽可以在局部最小化均方误差(MSE)。LPR中采用了一种数据驱动的可变带宽选择方法,即置信区间相交法(ICI),用于自适应地确定使MSE最小化的局部最优带宽。对模拟信号的实验结果表明,LPR-ICI方法在估计不同变化程度和不同噪声场景下的时变协方差时能够实现稳健可靠的性能,使其成为研究非平稳生物医学信号之间动态关系的有力工具。此外,我们将LPR-ICI方法应用于视觉任务中功能磁共振成像(fMRI)信号的时变协方差估计,以推断动态功能脑连接性。结果表明,LPR-ICI方法能够有效地从fMRI中捕捉瞬态连接模式。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8215/10716865/8ff6fd3cfcc8/nihms-595164-f0001.jpg

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