TL;DR
This paper introduces a spatial alignment network to improve multi-modal MRI reconstruction by compensating for spatial misalignments between modalities, enhancing reconstruction quality in clinical settings.
Contribution
It proposes a novel spatial alignment network combined with a cross-modality-synthesis loss for joint training, addressing spatial misalignment issues in multi-modal MRI reconstruction.
Findings
Enhanced reconstruction quality demonstrated on clinical MRI data.
Robustness of the method against spatial misalignments.
Outperforms existing multi-modal reconstruction approaches.
Abstract
In clinical practice, multi-modal magnetic resonance imaging (MRI) with different contrasts is usually acquired in a single study to assess different properties of the same region of interest in the human body. The whole acquisition process can be accelerated by having one or more modalities under-sampled in the -space. Recent research has shown that, considering the redundancy between different modalities, a target MRI modality under-sampled in the -space can be more efficiently reconstructed with a fully-sampled reference MRI modality. However, we find that the performance of the aforementioned multi-modal reconstruction can be negatively affected by subtle spatial misalignment between different modalities, which is actually common in clinical practice. In this paper, we improve the quality of multi-modal reconstruction by compensating for such spatial misalignment with a…
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