首页> 外文会议>Conference on Medical Imaging 2008: Imaging Processing; 20080217-19; San Diego,CA(US) >An exploration of spatial similarities in temporal noise spectra in fMRI measurements
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An exploration of spatial similarities in temporal noise spectra in fMRI measurements

机译:功能磁共振成像测量中时间噪声频谱中空间相似性的探索

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In this paper, we describe a method to evaluate similarities in estimated temporal noise spectra of functional Magnetic Resonance Imaging (fMRI) time series. Accurate noise spectra are needed for reliable activation detection in fMRI. Since these spectra are a-priori unknown, they have to be estimated from the fMRI data. A noise model can be estimated for each voxel separately, but when noise spectra of neighboring voxels are (almost) equal, the power of the activation detection test can be improved by estimating the noise model from a set of neighboring voxels. In this paper, a method is described to evaluate the similarity of noise spectra of neighboring voxels. Noise spectrum similarities are studied in simulation as well as experimental fMRI datasets. The parameters of the model describing the voxel time series are estimated by a Maximum Likelihood (ML) estimator. The similarity of the ML estimated noise processes is assessed by the Model Error (ME), which is based on the Kullback Leibler divergence. Spatial correlations in the fMRI data reduce the ME between the noise spectra of (neighboring) voxels. This undesired effect is quantified by simulation experiments where spatial correlation is introduced. By plotting the ME as a function of the distance between voxels, it is observed that the ME increases as a function of this distance. Additionally, by using the theoretical distribution of the ME, it is observed that neighboring voxels indeed have similar noise spectra and these neighbors can be used to improve the noise model estimate.
机译:在本文中,我们描述了一种方法,用于评估功能磁共振成像(fMRI)时间序列的估计时间噪声谱中的相似性。为了在fMRI中进行可靠的激活检测,需要准确的噪声频谱。由于这些光谱是先验未知的,因此必须根据fMRI数据进行估算。可以分别为每个体素估计一个噪声模型,但是当相邻体素的噪声谱(几乎)相等时,可以通过从一组相邻体素中估计噪声模型来提高激活检测测试的能力。在本文中,描述了一种评估相邻体素噪声谱相似度的方法。在仿真以及实验性fMRI数据集中研究了噪声频谱的相似性。描述体素时间序列的模型参数由最大似然(ML)估计器估计。机器学习估计的噪声过程的相似性由模型误差(ME)评估,模型误差基于库尔贝克·莱布利尔散度。 fMRI数据中的空间相关性降低了(相邻)体素噪声谱之间的ME。通过引入空间相关性的模拟实验可以量化这种不良影响。通过将ME绘制为体素之间距离的函数,可以观察到ME随该距离而增加。另外,通过使用ME的理论分布,可以观察到相邻的体素确实具有相似的噪声谱,并且这些相邻的体素可以用于改善噪声模型估计。

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