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A Learnable Variational Model for Joint Multimodal MRI Reconstruction and Synthesis

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arxiv 2204.03804 v2 pith:LV6CQFAE submitted 2022-04-08 eess.IV cs.CVcs.LGmath.OC

A Learnable Variational Model for Joint Multimodal MRI Reconstruction and Synthesis

classification eess.IV cs.CVcs.LGmath.OC
keywords modeldatalearnablesynthesisjointmodalitiesmulti-modalmultimodal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Generating multi-contrasts/modal MRI of the same anatomy enriches diagnostic information but is limited in practice due to excessive data acquisition time. In this paper, we propose a novel deep-learning model for joint reconstruction and synthesis of multi-modal MRI using incomplete k-space data of several source modalities as inputs. The output of our model includes reconstructed images of the source modalities and high-quality image synthesized in the target modality. Our proposed model is formulated as a variational problem that leverages several learnable modality-specific feature extractors and a multimodal synthesis module. We propose a learnable optimization algorithm to solve this model, which induces a multi-phase network whose parameters can be trained using multi-modal MRI data. Moreover, a bilevel-optimization framework is employed for robust parameter training. We demonstrate the effectiveness of our approach using extensive numerical experiments.

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