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Adaptive Smoothing Based on Gaussian Processes Regression Increases the Sensitivity and Specificity of fMRI Data

机译:基于高斯进程回归的自适应平滑增加了FMRI数据的灵敏度和特异性

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Temporal and spatial filtering of fMRI data is often used to improve statistical power. However, conventional methods, such as smoothing with fixed-width Gaussian filters, remove fine-scale structure in the data, necessitating a tradeoff between sensitivity and specificity. Specifically, smoothing may increase sensitivity (reduce noise and increase statistical power) but at the cost loss of specificity in that fine-scale structure in neural activity patterns is lost. Here, we propose an alternative smoothing method based on Gaussian processes (GP) regression for single subjects fMRI experiments. This method adapts the level of smoothing on a voxel by voxel basis according to the characteristics of the local neural activity patterns. GP-based fMRI analysis has been heretofore impractical owing to computational demands. Here, we demonstrate a new implementation of GP that makes it possible to handle the massive data dimensionality of the typical fMRI experiment. We demonstrate how GP can be used as a drop-in replacement to conventional preprocessing steps for temporal and spatial smoothing in a standard fMRI pipeline. We present simulated and experimental results that show the increased sensitivity and specificity compared to conventional smoothing strategies. (C) 2016 Wiley Periodicals, Inc.
机译:FMRI数据的时间和空间过滤通常用于改善统计功率。然而,常规方法,例如用固定宽度高斯滤波器平滑,在数据中删除微尺度结构,需要在灵敏度和特异性之间进行权衡。具体而言,平滑可能会增加灵敏度(降低噪声并增加统计功率),但在神经活动模式中的细尺结构中的特异性成本丧失是丢失的。这里,我们提出了一种基于高斯过程(GP)回归的替代平滑方法,用于单一受试者FMRI实验。该方法根据局部神经活性模式的特征,在体素基础上适应体素对体素的平滑水平。由于计算需求,基于GP的FMRI分析一直是不切实际的。在这里,我们展示了GP的新实现,使得可以处理典型的FMRI实验的大规模数据维度。我们展示了GP如何将GP作为替换替换,以便在标准FMRI管道中进行时间和空间平滑的传统预处理步骤。我们呈现模拟和实验结果,与传统的平滑策略相比,显示出增加的敏感性和特异性。 (c)2016 Wiley期刊,Inc。

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