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Denoising functional MR images: a comparison of wavelet denoising and Gaussian smoothing

机译:对功能性MR图像进行去噪:小波去噪与高斯平滑的比较

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We present a general wavelet-based denoising scheme for functional magnetic resonance imaging (fMRI) data and compare it to Gaussian smoothing, the traditional denoising method used in fMRI analysis. One-dimensional WaveLab thresholding routines were adapted to two-dimensional (2-D) images, and applied to 2-D wavelet coefficients. To test the effect of these methods on the signal-to-noise ratio (SNR), we compared the SNR of 2-D fMRI images before and after denoising, using both Gaussian smoothing and wavelet-based methods. We simulated a fMRI series with a time signal in an active spot, and tested the methods on noisy copies of it. The denoising methods were evaluated in two ways: by the average temporal SNR inside the original activated spot, and by the shape of the spot detected by thresholding the temporal SNR maps. Denoising methods that introduce much smoothness are better suited for low SNRs, but for images of reasonable quality they are not preferable, because they introduce heavy deformations. Wavelet-based denoising methods that introduce less smoothing preserve the sharpness of the images and retain the original shapes of active regions. We also performed statistical parametric mapping on the denoised simulated time series, as well as on a real fMRI data set. False discovery rate control was used to correct for multiple comparisons. The results show that the methods that produce smooth images introduce more false positives. The less smoothing wavelet-based methods, although generating more false negatives, produce a smaller total number of errors than Gaussian smoothing or wavelet-based methods with a large smoothing effect.
机译:我们为功能磁共振成像(fMRI)数据提供了一种基于小波的通用去噪方案,并将其与功能磁共振成像中使用的传统去噪方法高斯平滑进行了比较。一维WaveLab阈值处理例程适用于二维(2-D)图像,并应用于二维小波系数。为了测试这些方法对信噪比(SNR)的影响,我们使用高斯平滑法和基于小波的方法比较了去噪前后的二维fMRI图像的SNR。我们模拟了一个在活动点具有时间信号的功能磁共振成像系列,并在嘈杂的副本上测试了方法。去噪方法以两种方式进行评估:通过原始激活点内部的平均时间SNR,以及通过对时间SNR映射进行阈值检测到的点的形状。引入很多平滑度的去噪方法更适合于低SNR,但对于质量合理的图像,则不推荐使用,因为它们会引入严重的变形。引入较少平滑度的基于小波的降噪方法可保留图像的清晰度,并保留有效区域的原始形状。我们还对降噪后的模拟时间序列以及真实的fMRI数据集进行了统计参数映射。错误发现率控制用于纠正多个比较。结果表明,产生平滑图像的方法会引入更多的误报。与高斯平滑法或具有较大平滑效果的基于小波的方法相比,基于平滑度较小的基于小波的方法虽然会生成更多的假阴性,但产生的错误总数较小。

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