| Literature DB >> 33476024 |
Ludger Starke1, Karsten Tabelow2, Thoralf Niendorf1, Andreas Pohlmann3,4.
Abstract
In order to tackle the challenges caused by the variability in estimated MRI parameters (e.g., T2* and T2) due to low SNR a number of strategies can be followed. One approach is postprocessing of the acquired data with a filter. The basic idea is that MR images possess a local spatial structure that is characterized by equal, or at least similar, noise-free signal values in vicinities of a location. Then, local averaging of the signal reduces the noise component of the signal. In contrast, nonlocal means filtering defines the weights for averaging not only within the local vicinity, bur it compares the image intensities between all voxels to define "nonlocal" weights. Furthermore, it generally compares not only single-voxel intensities but small spatial patches of the data to better account for extended similar patterns. Here we describe how to use an open source NLM filter tool to denoise 2D MR image series of the kidney used for parametric mapping of the relaxation times T2* and T2.This chapter is based upon work from the COST Action PARENCHIMA, a community-driven network funded by the European Cooperation in Science and Technology (COST) program of the European Union, which aims to improve the reproducibility and standardization of renal MRI biomarkers.Keywords: Diffusion; Kidney; Magnetic resonance imaging (MRI); Mice; Parametric mapping; Rats; T2; T2*
Year: 2021 PMID: 33476024 DOI: 10.1007/978-1-0716-0978-1_34
Source DB: PubMed Journal: Methods Mol Biol ISSN: 1064-3745