静息状态fMRI动态功能连通性估计中的自适应窗口选择

Zhiguo Zhang, Z. Fu, S. Chan, Y. Hung, G. Motta, X. Di, B. Biswal
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引用次数: 3

摘要

静息状态功能磁共振成像(rs-fMRI)对固有脑网络的研究通常基于功能组织在扫描期间是静止的假设。因此,通常通过两个区域的rs-fMRI信号之间的相关系数来衡量的功能连通性(FC)的时空动态的存在和潜力,在大多数研究中没有考虑到。近年来的研究表明,静息状态下的大脑活动是时变的,具有明显的动态特征。然而,由于难以选择合适的窗口来定位时变相关系数(TVCC),缺乏一种有效的时变相关系数估计方法。本文介绍了一种自适应估计非平稳信号TVCC的新方法,并研究了其在rs-fMRI数据动态FC推断中的应用。该方法采用自适应大小的滑动窗口,并根据最小均方误差的局部插件规则选择滑动窗口,对TVCC进行局部估计。在综合数据上的仿真结果表明,该方法优于传统的固定窗口TVCC估计方法。此外,将该方法应用于真实的rs-fMRI信号,结果表明静息状态下的FC是短暂的,不同脑区之间的FC变异性有很大差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive window selection in estimating dynamic functional connectivity of resting-state fMRI
Investigation of the intrinsic brain networks using the resting-state functional magnetic resonance imaging (rs-fMRI) is generally based on the assumption that the functional organization is stationary across the duration of the scan. Hence, the presence and potential of temporal and spatial dynamics of the functional connectivity (FC), which is usually measured by the correlation coefficients between rs-fMRI signals of two regions, are not taken into account in most of the research. Recent studies have shown that the resting-state brain activities are time-varying in nature with substantial dynamic characteristics. However, an effective method for estimating the time-varying FC is lacking, which is mainly due to the difficulty in choosing an appropriate window to localize the time-varying correlation coefficients (TVCC). In this paper, we introduce a novel method for adaptively estimating the TVCC of non-stationary signals and study its application to infer dynamic FC of rs-fMRI data. The proposed method employs a sliding window with adaptive size, which is selected by a local plug-in rule to minimize the mean square error, to estimate the TVCC locally. Simulation results on synthetic data show that the proposed method outperforms the conventional TVCC estimators with a fixed window. Furthermore, the proposed method is used on real rs-fMRI signals, and the results demonstrate that the FC in the resting state are transient and the variability of FCs between different brain regions differs substantially.
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