自适应滤波去除静息状态fMRI BOLD信号中的非平稳生理噪声

P. Piaggi, D. Menicucci, C. Gentili, G. Handjaras, M. Laurino, Andrea Piarulli, M. Guazzelli, A. Gemignani, A. Landi
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引用次数: 2

摘要

fMRI以参考脑室源信号为协变量,采用通用线性模型(GLM)方法研究去除非神经成分后的脑功能连通性。心室信号与心脏和呼吸节律的低频调节有关,这是不稳定的活动。在此,我们采用自适应滤波方法来改善从BOLD信号中去除生理噪声的效果。通过评估去除的信号方差量和同源对侧感兴趣区域(roi)之间的连通性来比较不同滤波方法。利用广义相关系数RV来估计roi之间的全局连通性。自适应滤波和GLM的平均ROI降低率分别为52%和11%。自适应滤波使灰质roi之间的连通性高于GLM。因此,自适应滤波是去除低频生理噪声和突出静息状态功能网络的可行方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive filtering for removing nonstationary physiological noise from resting state fMRI BOLD signals
fMRI is used to investigate brain functional connectivity after removing nonneural components by General Linear Model (GLM) approach with a reference ventricle-derived signal as covariate. Ventricle signals are related to low-frequency modulations of cardiac and respiratory rhythms, which are nonstationary activities. Herein, we employed an adaptive filtering approach to improve removing physiological noise from BOLD signals. Comparisons between filtering approaches were performed by evaluating the amount of removed signal variance and the connectivity between homologous contralateral regions of interest (ROIs). The global connectivity between ROIs was estimated with a generalized correlation named RV coefficient. The mean ROI decrease of variance was •52% and •11%, for adaptive filtering and GLM, respectively. Adaptive filtering led to higher connectivity between grey matter ROIs than that obtained with GLM. Thus, adaptive filtering is a feasible method for removing the physiological noise in the low frequency band and to highlight resting state functional networks.
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