A Bayesian method is proposed by formulating deep learning outcome as a regularization in QSM reconstruction. It enforces the fidelity between the network generated QSM and the measured inhomogeneity field. Preliminary results indicate both quantitative and qualitative improvement over QSM by deep learning alone.
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