School of Electronic Information, Hangzhou Dianzi University, Hangzhou, Zhejiang, 310018, China; Department of Biomedical Engineering, University of Houston, Houston, TX, USA.
Department of Biomedical Engineering, University of Houston, Houston, TX, USA.
J Neurosci Methods. 2019 Jan 15;312:105-113. doi: 10.1016/j.jneumeth.2018.11.020. Epub 2018 Nov 22.
High angular resolution diffusion imaging (HARDI) data is typically corrupted with Rician noise. Although larger b-values help to retrieve more accurate angular diffusivity information, they also lead to an increase in noise generation.
In order to sufficiently reduce noise in HARDI images and improve the construction of orientation distribution function (ODF) fields, a novel denoising method was developed in this study by combining the singular value decomposition (SVD) and non-local means (NLM) filter. Similar 3D patches were first recruited into a matrix from a search volume. HARDI signals in the matrix were then re-estimated using the SVD low rank approximation, and a NLM filter was employed to filter out any residual noise.
The performance of the proposed method was evaluated against the state-of-the-art denoising methods based on both synthetic and real HARDI datasets. Results demonstrated the superior performance of the developed SVD-NLM method in denoising HARDI data through preserving fine angular structural details and estimating diffusion orientations from improved ODF fields.
The proposed SVD-NLM method can improve HARDI quantitative computations, such as MRI brain tissue segmentation and diffusion profile estimation, that rely on the quality of imaging data.
高角度分辨率扩散成像(HARDI)数据通常会受到瑞利噪声的污染。虽然较大的 b 值有助于获取更准确的各向异性扩散信息,但也会导致噪声生成增加。
为了充分降低 HARDI 图像中的噪声并改善方向分布函数(ODF)场的构建,本研究提出了一种新的去噪方法,该方法结合了奇异值分解(SVD)和非局部均值(NLM)滤波器。首先,从搜索体积中招募相似的 3D 补丁到一个矩阵中。然后,使用 SVD 低秩逼近重新估计矩阵中的 HARDI 信号,并使用 NLM 滤波器过滤掉任何残余噪声。
基于合成和真实 HARDI 数据集,评估了所提出方法与最先进的去噪方法的性能。结果表明,所提出的 SVD-NLM 方法在通过保留精细的角度结构细节和从改进的 ODF 场估计扩散方向来对 HARDI 数据进行去噪方面表现出色。
所提出的 SVD-NLM 方法可以提高依赖于成像数据质量的 HARDI 定量计算,例如 MRI 脑组织分割和扩散分布估计。