BM4D-PC: nonlocal volumetric denoising of principal components of diffusion-weighted MR images
Vinicius P. Campos, Diego Szczupak, Tales Santini, Afonso C. Silva, Alessandro Foi, Marcelo A. C. Vieira, Corey A. Baron

TL;DR
This paper introduces BM4D-PC, a novel denoising method for diffusion-weighted MRI that effectively models noise characteristics and exploits dataset redundancy, leading to superior image quality and more accurate diffusion metrics.
Contribution
The paper presents a new denoising approach combining BM4D with PCA of DWI data, incorporating full noise statistics and enabling direct noise map estimation.
Findings
BM4D-PC outperforms existing methods in PSNR, SSIM, and RMSE.
It significantly improves image quality and diffusion metrics in in-vivo data.
The method is effective across various datasets and acquisition strategies.
Abstract
Purpose: Noise in diffusion-weighted MRI (dMRI) is often spatially correlated due to different acquisition and reconstruction strategies, which is not fully accounted for in current denoising strategies. Thus, we propose a novel model-based denoising method for dMRI that effectively accounts for the different noise characteristics of data. Methods: We propose a denoising strategy that incorporates full noise statistics, including the noise power spectral density (PSD), by leveraging the BM4D algorithm. Furthermore, to exploit redundancy across the diffusion MRI dataset, BM4D is applied to principal components (PC) of diffusion-weighted images (DWI) obtained through principal component analysis (PCA) decomposition of the entire DWI dataset, an approach we refer to as BM4D-PC. Importantly, our method also allows for direct estimation of both the noise map and PSD. We evaluated BM4D-PC…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Functional Brain Connectivity Studies · MRI in cancer diagnosis
