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Wavelets versus resels in the context of fMRI: establishing the link with SPM

机译:在FMRI的上下文中,小波与重新起作用:与SPM建立链接

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Statistical Parametric Mapping (SPM) is a widely deployed tool for detecting and analyzing brain activity from fMRI data. One of SPM's main features is smoothing the data by a Gaussian filter to increase the SNR. The subsequent statistical inference is based on the continuous Gaussian random field theory. Since the remaining spatial resolution has deteriorated due to smoothing, SPM introduces the concept of "resels" (resolution elements) or spatial information-containing cells. The number of resels turns out to be inversely proportional to the size of the Gaussian smoother. Detection the activation signal in fMRI data can also be done by a wavelet approach: after computing the spatial wavelet transform, a straightforward coefficient-wise statistical test is applied to detect activated wavelet coefficients. In this paper, we establish the link between SPM and the wavelet approach based on two observations. First, the (iterated) lowpass analysis filter of the discrete wavelet transform can be chosen to closely resemble SPM's Gaussian filter. Second, the subsampling scheme provides us with a natural way to define the number of resels; i.e., the number of coefficients in the lowpass subband of the wavelet decomposition. Using this connection, we can obtain the degree of the splines of the wavelet transform that makes it equivalent to SPM's method. We show results for two particularly attractive biorthogonal wavelet transforms for this task; i.e., 3D fractional-spline wavelets and 2D+Z fractional quincunx wavelets. The activation patterns are comparable to SPM's.
机译:统计参数映射(SPM)是广泛部署的工具,用于从FMRI数据检测和分析大脑活动。 SPM的主要功能之一是通过高斯滤波器平滑数据以增加SNR。随后的统计推断基于连续高斯随机场理论。由于剩余的空间分辨率由于平滑而导致劣化,因此SPM引入了“转化”(分辨率元素)或包含空间信息的细胞的概念。重组的数量结果结果与高斯更平滑的大小成反比。检测FMRI数据中的激活信号也可以通过小波方法进行:在计算空间小波变换之后,应用了直接的系数明智统计测试来检测激活的小波系数。在本文中,我们基于两个观察确定了SPM与小波方法之间的联系。首先,可以选择离散小波变换的(迭代)低通分析滤波器以与SPM的高斯滤波器紧密相似。其次,数据采样方案为我们提供了一种自然的方式来定义重建数;即,小波分解的低通子带中的系数的数量。使用此连接,我们可以获得小波变换的花键度,使其与SPM的方法相同。我们为这项任务显示两个特别有吸引力的双正交小波变换的结果;即,3D分数样条小波和2D + Z分数Quincunx小波。激活模式与SPM相当。

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