静息状态fMRI低频分析

Lianghua He, Hongfei Ji, Meng Wan, Shuang Liu
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摘要

静息状态功能磁共振成像(rsfMRI)是一种相对较新的、功能强大的方法,用于评估参与者在不执行明确任务时发生的区域相互作用。传统的基于感兴趣区域的相关和相干方法分别由于对时间延迟和时间行程的敏感性而不太适合rsfMRI。本文对rsfMRI数据的低频特性进行了分析。首先,采用Welch方法计算静息状态血氧水平依赖(blood - oxygen-水平依赖,BOLD)信号在每个体素上的低频,并在此基础上分析其在受试者和体素上的统计分布;通过一系列的实验证明,低频特性比时域的相干性和频域的相干性更具有鲁棒性和一致性。我们发现,在0.0137HZ左右的窄带上,低频统计分布的性质占优势。
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Low frequency analysis of resting-state fMRI
Resting state functional magnetic resonance imaging (rsfMRI) is a relatively new and an powerful method for evaluating regional interactions that occur when a participant is not performing an explicit task. Because of sensitiveness to time delay and length of time courses, respectively, traditional methods of correlation and coherence based on region of interest are not very suitable for rsfMRI. In this paper, we analyzed low frequency property of rsfMRI data. Firstly, we calculated the low frequency of resting-state Blood-Oxygenation-Level-Dependent(BOLD) signal on every voxel using Welch method, based on which we analyzed the statistical distribution cross subjects and voxels. The low frequency feature is proved by a series of experiments to be more robust and consistent comparing with coorelation in time domain and coherency in frequency domain. We found that the property of low frequency statistical distribution is dominant on narrow band, which is around 0.0137HZ.
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