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Wavelet-based regularity analysis reveals recurrent spatiotemporal behavior in resting-state fMRI

机译:基于小波的规律性分析揭示了静止状态功能磁共振成像中的时空复发行为

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One of the major findings from multimodal neuroimaging studies in the past decade is that the human brain is anatomically and functionally organized into large-scale networks. In resting state fMRI (rs-fMRI), spatial patterns emerge when temporal correlations between various brain regions are tallied, evidencing networks of ongoing intercortical cooperation. However, the dynamic structure governing the brain's spontaneous activity is far less understood due to the short and noisy nature of the rs-fMRI signal. Here, we develop a wavelet-based regularity analysis based on noise estimation capabilities of the wavelet transform to measure recurrent temporal pattern stability within the rs-fMRI signal across multiple temporal scales. The method consists of performing a stationary wavelet transform to preserve signal structure, followed by construction of lagged subsequences to adjust for correlated features, and finally the calculation of sample entropy across wavelet scales based on an objective estimate of noise level at each scale. We found that the brain's default mode network (DMN) areas manifest a higher level of irregularity in rs-fMRI time series than rest of the brain. In 25 aged subjects with mild cognitive impairment and 25 matched healthy controls, wavelet-based regularity analysis showed improved sensitivity in detecting changes in the regularity of rs-fMRI signals between the two groups within the DMN and executive control networks, compared with standard multiscale entropy analysis. Wavelet-based regularity analysis based on noise estimation capabilities of the wavelet transform is a promising technique to characterize the dynamic structure of rs-fMRI as well as other biological signals. Hum Brain Mapp 36:3603-3620, 2015. (c) 2015 Wiley Periodicals, Inc.
机译:在过去的十年中,多模式神经影像学研究的主要发现之一是人脑在解剖学上和功能上都组织成大型网络。在静止状态fMRI(rs-fMRI)中,当计算出各个大脑区域之间的时间相关性时,就会出现空间模式,这证明了正在进行的皮层间合作网络。然而,由于rs-fMRI信号的短暂且嘈杂的性质,控制大脑自发活动的动态结构远未广为人知。在这里,我们基于小波变换的噪声估计功能开发了基于小波的正则分析,以测量跨多个时间尺度的rs-fMRI信号内的复发性时间模式稳定性。该方法包括执行固定的小波变换以保留信号结构,然后构造滞后子序列以针对相关特征进行调整,最后基于每个尺度的噪声水平的客观估计来计算小波尺度上的样本熵。我们发现,大脑的默认模式网络(DMN)区域在rs-fMRI时间序列中表现出比大脑其他部位更高的不规则程度。与标准的多尺度熵相比,在25名患有轻度认知障碍的老年受试者和25名相匹配的健康对照组中,基于小波的规律性分析显示,在DMN和执行控制网络中的两组之间检测rs-fMRI信号规律性变化的敏感性更高。分析。基于小波变换的噪声估计能力的基于小波的规律性分析是一种有前途的技术,可用于表征rs-fMRI以及其他生物信号的动态结构。嗡嗡声大脑地图36:3603-3620,2015.(c)2015威利期刊公司

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