In clinical practice, magnetic resonance imaging (MRI) with multiple contrasts is usually acquired in a single study to assess different properties of the same region of interest in human body. The whole acquisition process can be accelerated by having one or more modalities under-sampled in the $k$-space. Recent researches demonstrate that, considering the redundancy between different contrasts or modalities, a target MRI modality under-sampled in the $k$-space can be more efficiently reconstructed with a fully-sampled MRI contrast as the reference modality. However, we find that the performance of the above multi-modal reconstruction can be negatively affected by subtle spatial misalignment between different contrasts, which is actually common in clinical practice. In this paper, to compensate for such spatial misalignment, we integrate the spatial alignment network with multi-modal reconstruction towards better reconstruction quality of the target modality. First, the spatial alignment network estimates the spatial misalignment between the fully-sampled reference and the under-sampled target images, and warps the reference image accordingly. Then, the aligned fully-sampled reference image joins the multi-modal reconstruction of the under-sampled target image. Also, considering the contrast difference between the target and the reference images, we particularly design the cross-modality-synthesis-based registration loss, in combination with the reconstruction loss, to jointly train the spatial alignment network and the reconstruction network. Experiments on both clinical MRI and multi-coil $k$-space raw data demonstrate the superiority and robustness of multi-modal MRI reconstruction empowered with our spatial alignment network. Our code is publicly available at \url{https://github.com/woxuankai/SpatialAlignmentNetwork}.
翻译:在临床实践中,具有多重对比度的磁共振成像(MARI)通常在一次研究中获得,目的是评估对人体有兴趣的同一区域的不同特性。整个获取过程可以通过在美元空间中采集一种或多种模式,从而加速。最近的研究显示,考虑到不同对比度或模式之间的冗余,在美元空间中采集一个目标的MRI模式可以更有效地进行重建,以完全抽样的MRI为参照模式。然而,我们发现,上述多模式重建的绩效可能会受到不同对比度之间微妙的空间误差的负面影响,而这种对比度实际上在临床实践中很常见。在本文中,为了弥补这种空间偏差,我们将空间调整网络与多模式重建相结合,提高目标模式的重建质量。首先,空间调整网络估计了完全抽样的参考值与低位图像之间的空间错配对。随后,完全混合的参考度重建与我们的目标成本网络之间的对比,同时考虑我们现有多模式的图像的升级与我们的目标重组。