Denoising of diffusion MRI using random matrix theory
2016; Elsevier BV; Volume: 142; Linguagem: Inglês
10.1016/j.neuroimage.2016.08.016
ISSN1095-9572
AutoresJelle Veraart, Dmitry S. Novikov, Daan Christiaens, Benjamin Ades‐Aron, Jan Sijbers, Els Fieremans,
Tópico(s)MRI in cancer diagnosis
ResumoWe introduce and evaluate a post-processing technique for fast denoising of diffusion-weighted MR images. By exploiting the intrinsic redundancy in diffusion MRI using universal properties of the eigenspectrum of random covariance matrices, we remove noise-only principal components, thereby enabling signal-to-noise ratio enhancements. This yields parameter maps of improved quality for visual, quantitative, and statistical interpretation. By studying statistics of residuals, we demonstrate that the technique suppresses local signal fluctuations that solely originate from thermal noise rather than from other sources such as anatomical detail. Furthermore, we achieve improved precision in the estimation of diffusion parameters and fiber orientations in the human brain without compromising the accuracy and spatial resolution.
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