Noise effects in various quantitative susceptibility mapping methods

S Wang, T Liu, W Chen, P Spincemaille… - IEEE Transactions …, 2013 - ieeexplore.ieee.org
S Wang, T Liu, W Chen, P Spincemaille, C Wisnieff, AJ Tsiouris, W Zhu, C Pan, L Zhao…
IEEE Transactions on Biomedical Engineering, 2013ieeexplore.ieee.org
Various regularization methods have been proposed for single-orientation quantitative
susceptibility mapping (QSM), which is an ill-posed magnetic field to susceptibility source
inverse problem. Noise amplification, a major issue in inverse problems, manifests as
streaking artifacts and quantification errors in QSM and has not been comparatively
evaluated in these algorithms. In this paper, various QSM methods were systematically
categorized for noise analysis. Six representative QSM methods were selected from four …
Various regularization methods have been proposed for single-orientation quantitative susceptibility mapping (QSM), which is an ill-posed magnetic field to susceptibility source inverse problem. Noise amplification, a major issue in inverse problems, manifests as streaking artifacts and quantification errors in QSM and has not been comparatively evaluated in these algorithms. In this paper, various QSM methods were systematically categorized for noise analysis. Six representative QSM methods were selected from four categories: two non-Bayesian methods with alteration or approximation of the dipole kernel to overcome the ill conditioning; four Bayesian methods using a general mathematical prior or a specific physical structure prior to select a unique solution, and using a data fidelity term with or without noise weighting. The effects of noise in these QSM methods were evaluated by reconstruction errors in simulation and image quality in 50 consecutive human subjects. Bayesian QSM methods with noise weighting consistently reduced root mean squared errors in numerical simulations and increased image quality scores in the human brain images, when compared to non-Bayesian methods and to corresponding Bayesian methods without noise weighting (p ≤ 0.001). In summary, noise effects in QSM can be reduced using Bayesian methods with proper noise weighting.
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