Ye Xinyu, Ma Xiaodong, Pan Ziyi, Zhang Zhe, Guo Hua, Uğurbil Kamil, Wu Xiaoping
Center for Biomedical Imaging Research, School of Biomedical Engineering, Tsinghua University, Beijing, China.
Wellcome Center for Integrative Neuroimaging, FMRIB, Nuffield Department of Clinical Neurosciences, University of Oxford, Oxford, UK.
Magn Reson Med. 2025 Jun;93(6):2473-2487. doi: 10.1002/mrm.30502. Epub 2025 Mar 13.
To propose a two-step, nonlocal principal component analysis (PCA) method and demonstrate its utility for denoising complex diffusion MR images with a few diffusion directions.
A two-step denoising pipeline was implemented to ensure accurate patch selection even with high noise levels and was coupled with data preprocessing for g-factor normalization and phase stabilization before data denoising with a nonlocal PCA algorithm. At the heart of our proposed pipeline was the use of a data-driven optimal shrinkage algorithm to manipulate the singular values in a way that would optimally estimate the noise-free signal. Our approach's denoising performances were evaluated using simulation and in vivo human data experiments. The results were compared with those obtained with existing local PCA-based methods.
In both simulation and human data experiments, our approach substantially enhanced image quality relative to the noisy counterpart, yielding improved performances for estimation of relevant diffusion tensor imaging metrics. It also outperformed existing local PCA-based methods in reducing noise while preserving anatomic details. It also led to improved whole-brain tractography relative to the noisy counterpart.
The proposed denoising method has the utility for improving image quality for diffusion MRI with a few diffusion directions and is believed to benefit many applications, especially those aiming to achieve high-quality parametric mapping using only a few image volumes.
提出一种两步非局部主成分分析(PCA)方法,并证明其在对具有少数扩散方向的复杂扩散磁共振图像进行去噪方面的效用。
实施了一个两步去噪流程,以确保即使在高噪声水平下也能准确选择图像块,并在使用非局部PCA算法进行数据去噪之前,结合用于g因子归一化和相位稳定的数据预处理。我们提出的流程的核心是使用一种数据驱动的最优收缩算法,以一种能最优估计无噪声信号的方式来处理奇异值。使用模拟和体内人体数据实验评估了我们方法的去噪性能。将结果与使用现有基于局部PCA的方法获得的结果进行了比较。
在模拟和人体数据实验中,相对于有噪声的图像,我们的方法显著提高了图像质量,在估计相关扩散张量成像指标方面表现更优。在减少噪声同时保留解剖细节方面,它也优于现有的基于局部PCA的方法。相对于有噪声的图像,它还改善了全脑纤维束成像。
所提出的去噪方法有助于提高具有少数扩散方向的扩散磁共振成像的图像质量,并且相信会有益于许多应用,尤其是那些旨在仅使用少数图像体积来实现高质量参数映射的应用。