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首页> 外文期刊>NeuroImage >Resampling methods for improved wavelet-based multiple hypothesis testing of parametric maps in functional MRI.
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Resampling methods for improved wavelet-based multiple hypothesis testing of parametric maps in functional MRI.

机译:功能磁共振成像中用于参数图的基于小波的多重假设检验的重采样方法。

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摘要

Two- or three-dimensional wavelet transforms have been considered as a basis for multiple hypothesis testing of parametric maps derived from functional magnetic resonance imaging (fMRI) experiments. Most of the previous approaches have assumed that the noise variance is equally distributed across levels of the transform. Here we show that this assumption is unrealistic; fMRI parameter maps typically have more similarity to a 1/f-type spatial covariance with greater variance in 2D wavelet coefficients representing lower spatial frequencies, or coarser spatial features, in the maps. To address this issue we resample the fMRI time series data in the wavelet domain (using a 1D discrete wavelet transform [DWT]) to produce a set of permuted parametric maps that are decomposed (using a 2D DWT) to estimate level-specific variances of the 2D wavelet coefficients under the null hypothesis. These resampling-based estimates of the "wavelet variance spectrum" are substituted in a Bayesian bivariate shrinkage operator to denoise the observed 2D wavelet coefficients, which are then inverted to reconstitute the observed, denoised map in the spatial domain. Multiple hypothesis testing controlling the false discovery rate in the observed, denoised maps then proceeds in the spatial domain, using thresholds derived from an independent set of permuted, denoised maps. We show empirically that this more realistic, resampling-based algorithm for wavelet-based denoising and multiple hypothesis testing has good Type I error control and can detect experimentally engendered signals in data acquired during auditory-linguistic processing.
机译:二维或三维小波变换已被认为是对从功能磁共振成像(fMRI)实验获得的参数图进行多重假设测试的基础。大多数以前的方法都假定噪声方差平均分布在变换的各个级别上。在这里,我们证明了这种假设是不现实的。 fMRI参数图通常与1 / f型空间协方差具有更大的相似性,而二维小波系数的方差更大,代表该图中较低的空间频率或较粗糙的空间特征。为了解决这个问题,我们在小波域中对fMRI时间序列数据进行了重采样(使用1D离散小波变换[DWT]),以生成一组置换后的参数图,这些参数图被分解(使用2D DWT)以估计特定于水平的方差零假设下的二维小波系数。这些基于重采样的“小波方差谱”估计值被贝叶斯二元收缩算子替代,以对观察到的二维小波系数进行消噪,然后将其反转以在空间域中重构观察到的,去噪后的地图。然后,使用从一组独立的置换后的去噪图集中得出的阈值,在空间域中进行多个假设测试,以控制观察到的去噪图中的错误发现率。我们凭经验表明,这种基于小波的降噪和多重假设测试的更现实,基于重采样的算法具有良好的I类错误控制,并且可以检测听觉语言处理过程中获取的数据中的实验产生信号。

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