Huynh Khoi, Chang Wei-Tang, Wu Ye, Yap Pew-Thian
Department of Radiology, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599, USA.
Biomedical Research Imaging Center, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599, USA.
Patterns (N Y). 2024 Mar 14;5(4):100954. doi: 10.1016/j.patter.2024.100954. eCollection 2024 Apr 12.
The spatial resolution attainable in diffusion magnetic resonance (MR) imaging is inherently limited by noise. The weaker signal associated with a smaller voxel size, especially at a high level of diffusion sensitization, is often buried under the noise floor owing to the non-Gaussian nature of the MR magnitude signal. Here, we show how the noise floor can be suppressed remarkably via optimal shrinkage of singular values associated with noise in complex-valued k-space data from multiple receiver channels. We explore and compare different low-rank signal matrix recovery strategies to utilize the inherently redundant information from multiple channels. In combination with background phase removal, the optimal strategy reduces the noise floor by 11 times. Our framework enables imaging with substantially improved resolution for precise characterization of tissue microstructure and white matter pathways without relying on expensive hardware upgrades and time-consuming acquisition repetitions, outperforming other related denoising methods.
扩散磁共振成像中可达到的空间分辨率本质上受噪声限制。与较小体素大小相关的较弱信号,尤其是在高扩散敏感水平下,由于磁共振幅度信号的非高斯性质,常常被淹没在噪声本底之下。在此,我们展示了如何通过对来自多个接收通道的复数值k空间数据中与噪声相关的奇异值进行最优收缩,显著抑制噪声本底。我们探索并比较了不同的低秩信号矩阵恢复策略,以利用多个通道固有的冗余信息。结合背景相位去除,最优策略将噪声本底降低了11倍。我们的框架能够在不依赖昂贵硬件升级和耗时采集重复的情况下,以大幅提高的分辨率进行成像,用于精确表征组织微结构和白质通路,优于其他相关去噪方法。