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Denoising of arterial spin labeling data: Wavelet-domain filtering compared with gaussian smoothing

机译:动脉自旋标记数据的去噪:小波域滤波与高斯平滑比较

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Purpose To investigate a wavelet-based filtering scheme for denoising of arterial spin labeling (ASL) data, potentially enabling reduction of the required number of averages and the acquisition time. Methods ASL magnetic resonance imaging image is proportional to blood perfusion. ASL perfusion maps suffer from low SNR, and the experiment must be repeated a number of times (typically more than 40) to achieveadequate image quality. In this study, systematic errors introduced by the proposed wavelet-domain filtering approach were investigated insimulated and experimental image datasets and compared with conventional Gaussian smoothing. Results Application of the proposed method enabled a reduction of the number of averages and the acquisition time by at least 50% with retained standard deviation, but with effects onabsolute CBF values close to borders and edges. Conclusions When the ASL perfusion maps showed moderate- to-high SNRs, wavelet-domain filtering was superior to Gaussian smoothing in the vicinity of borders between gray and white matter, while Gaussian smoothing was a better choice for larger homogeneous areas, irrespective of SNR.
机译:目的研究基于小波的滤波方案,对动脉旋转标记(ASL)数据进行降噪,从而有可能减少所需的平均数和采集时间。方法ASL磁共振成像图像与血液灌注成正比。 ASL灌注图的信噪比较低,必须重复进行多次实验(通常超过40次)才能获得足够的图像质量。在这项研究中,对拟议的小波域滤波方法引入的系统误差进行了模拟和实验图像数据集研究,并与常规的高斯平滑法进行了比较。结果所提出方法的应用使平均数和采集时间减少了至少50%,同时保留了标准偏差,但对接近边界和边缘的绝对CBF值产生了影响。结论当ASL灌注图显示出中等到高的SNR时,在灰和白质边界附近,小波域滤波优于高斯平滑,而与SNR无关,对于较大的均匀区域,高斯平滑是更好的选择。

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