首页> 外文期刊>Magnetic resonance in medicine: official journal of the Society of Magnetic Resonance in Medicine >Denoising of complex MRI data by wavelet-domain filtering: application to high-b-value diffusion-weighted imaging.
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Denoising of complex MRI data by wavelet-domain filtering: application to high-b-value diffusion-weighted imaging.

机译:小波域滤波对复杂MRI数据进行去噪:应用于高b值扩散加权成像。

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摘要

The Rician distribution of noise in magnitude magnetic resonance (MR) images is particularly problematic in low signal-to-noise ratio (SNR) regions. The Rician noise distribution causes a nonzero minimum signal in the image, which is often referred to as the rectified noise floor. True low signal is likely to be concealed in the noise, and quantification is severely hampered in low-SNR regions. To address this problem we performed noise reduction (or denoising) by Wiener-like filtering in the wavelet domain. The filtering was applied to complex MRI data before construction of the magnitude image. The noise-reduction algorithm was applied to simulated and experimental diffusion-weighted (DW) images. Denoising considerably reduced the signal standard deviation (SD, by up to 87% in simulated images) and decreased the background noise floor (by approximately a factor of 6 in simulated and experimental images).
机译:在低信噪比(SNR)区域中,幅值磁共振(MR)图像中噪声的Rician分布特别成问题。 Rician噪声分布会导致图像中的非零最小信号,这通常称为整流本底噪声。真正的低信号可能隐藏在噪声中,并且在低SNR区域中严重阻碍了量化。为了解决这个问题,我们通过小波域中的类似维纳滤波进行了降噪(或降噪)。在构建幅值图像之前,将滤波应用于复杂的MRI数据。降噪算法已应用于模拟和实验扩散加权(DW)图像。去噪大大降低了信号标准偏差(SD,在模拟图像中最多降低了87%),并降低了背景本底噪声(在模拟和实验图像中降低了约6倍)。

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