Bayesian inversion for Magnetic Resonance ElastographyTools Cejka, Fabian (2023) Bayesian inversion for Magnetic Resonance Elastography. PhD thesis, University of Nottingham.
AbstractIn this thesis we study an inverse problem arising in Magnetic Resonance Elastography (MRE) which is a noninvasive method for quantifying soft tissue stiffness. We develop a Bayesian formulation of this problem which involves inferring (heterogeneous) elastic properties in the time-harmonic purely elastic or viscoelastic wave equation. We apply modern Ensemble Kalman Inversion (EKI) algorithms which are derivative-free and provide robust approximations of the Bayesian posterior in a computationally tractable manner. Moreover, we show how parametrisations of EKI can be used to design effective inversions of properties with complex geometries relevant to the detection of diseased tissue via MRE.
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