Robust Quantitative Susceptibility Mapping via Approximate Message
Passing with Parameter Estimation
- URL: http://arxiv.org/abs/2207.14709v3
- Date: Tue, 30 May 2023 21:37:57 GMT
- Title: Robust Quantitative Susceptibility Mapping via Approximate Message
Passing with Parameter Estimation
- Authors: Shuai Huang, James J. Lah, Jason W. Allen, Deqiang Qiu
- Abstract summary: We propose a probabilistic Bayesian approach for quantitative susceptibility mapping (QSM) with built-in parameter estimation.
On the simulated Sim2Snr1 dataset, AMP-PE achieved the lowest NRMSE, DFCM and the highest SSIM.
On the in vivo datasets, AMP-PE is robust and successfully recovers the susceptibility maps using the estimated parameters.
- Score: 14.22930572798757
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Purpose: For quantitative susceptibility mapping (QSM), the lack of
ground-truth in clinical settings makes it challenging to determine suitable
parameters for the dipole inversion. We propose a probabilistic Bayesian
approach for QSM with built-in parameter estimation, and incorporate the
nonlinear formulation of the dipole inversion to achieve a robust recovery of
the susceptibility maps.
Theory: From a Bayesian perspective, the image wavelet coefficients are
approximately sparse and modelled by the Laplace distribution. The measurement
noise is modelled by a Gaussian-mixture distribution with two components, where
the second component is used to model the noise outliers. Through probabilistic
inference, the susceptibility map and distribution parameters can be jointly
recovered using approximate message passing (AMP).
Methods: We compare our proposed AMP with built-in parameter estimation
(AMP-PE) to the state-of-the-art L1-QSM, FANSI and MEDI approaches on the
simulated and in vivo datasets, and perform experiments to explore the optimal
settings of AMP-PE. Reproducible code is available at
https://github.com/EmoryCN2L/QSM_AMP_PE
Results: On the simulated Sim2Snr1 dataset, AMP-PE achieved the lowest NRMSE,
DFCM and the highest SSIM, while MEDI achieved the lowest HFEN. On the in vivo
datasets, AMP-PE is robust and successfully recovers the susceptibility maps
using the estimated parameters, whereas L1-QSM, FANSI and MEDI typically
require additional visual fine-tuning to select or double-check working
parameters.
Conclusion: AMP-PE provides automatic and adaptive parameter estimation for
QSM and avoids the subjectivity from the visual fine-tuning step, making it an
excellent choice for the clinical setting.
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