Title :
Adaptive Covariance Estimation of Non-Stationary Processes and its Application to Infer Dynamic Connectivity From fMRI
Author :
Zening Fu ; Shing-Chow Chan ; Xin Di ; Biswal, Biswajit ; Zhiguo Zhang
Author_Institution :
Dept. of Electr. & Electron. Eng., Univ. of Hong Kong, Hong Kong, China
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.
Keywords :
adaptive estimation; biomedical MRI; brain; covariance analysis; mean square error methods; medical signal processing; minimisation; neurophysiology; regression analysis; signal denoising; LPR-ICI method; adaptive covariance estimation; asymptotic analysis; data-driven variable bandwidth selection method; dynamic connectivity; dynamic functional brain connectivity; fMRI; functional magnetic resonance imaging; intersection-of-confidence intervals; local optimal bandwidth; local polynomial regression method; mean square error minimisation; noise scenarios; nonstationary biological processes; nonstationary biomedical signals; optimal bandwidth; short-time data segments; simulated signals; statistical dependence; time-varying covariance; transient connectivity patterns; Bandwidth; Biological processes; Biomedical measurement; Estimation; Kernel; Noise; Polynomials; Dynamic functional connectivity; functional magnetic resonance imaging (fMRI); local polynomial regression; locally stationary processes; time-varying covariance;
Journal_Title :
Biomedical Circuits and Systems, IEEE Transactions on
DOI :
10.1109/TBCAS.2014.2306732