Cross-Modality Reference and Feature Mutual-Projection for 3D Brain MRI Image Super-Resolution.

Lulu Wang, Wanqi Zhang, Wei Chen, Zhongshi He, Yuanyuan Jia, Jinglong Du
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Abstract

High-resolution (HR) magnetic resonance imaging (MRI) can reveal rich anatomical structures for clinical diagnoses. However, due to hardware and signal-to-noise ratio limitations, MRI images are often collected with low resolution (LR) which is not conducive to diagnosing and analyzing clinical diseases. Recently, deep learning super-resolution (SR) methods have demonstrated great potential in enhancing the resolution of MRI images; however, most of them did not take the cross-modality and internal priors of MR seriously, which hinders the SR performance. In this paper, we propose a cross-modality reference and feature mutual-projection (CRFM) method to enhance the spatial resolution of brain MRI images. Specifically, we feed the gradients of HR MRI images from referenced imaging modality into the SR network to transform true clear textures to LR feature maps. Meanwhile, we design a plug-in feature mutual-projection (FMP) method to capture the cross-scale dependency and cross-modality similarity details of MRI images. Finally, we fuse all feature maps with parallel attentions to produce and refine the HR features adaptively. Extensive experiments on MRI images in the image domain and k-space show that our CRFM method outperforms existing state-of-the-art MRI SR methods.

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用于三维脑磁共振成像超分辨率的跨模态参考和特征相互投影
高分辨率(HR)磁共振成像(MRI)可显示丰富的解剖结构,用于临床诊断。然而,由于硬件和信噪比的限制,磁共振成像图像的采集分辨率(LR)通常较低,不利于临床疾病的诊断和分析。近年来,深度学习超分辨率(SR)方法在提高核磁共振图像分辨率方面展现出了巨大潜力;然而,这些方法大多没有认真对待核磁共振的跨模态和内部先验,从而阻碍了 SR 性能的提高。在本文中,我们提出了一种跨模态参考和特征相互投影(CRFM)方法来增强脑部磁共振成像的空间分辨率。具体来说,我们将参考成像模式的 HR MRI 图像的梯度输入 SR 网络,将真实清晰的纹理转换为 LR 特征图。同时,我们设计了一种插件式特征相互投影(FMP)方法,以捕捉核磁共振成像图像的跨尺度依赖性和跨模态相似性细节。最后,我们以并行关注的方式融合所有特征图,自适应地生成和完善 HR 特征。在图像域和 k 空间中对 MRI 图像进行的大量实验表明,我们的 CRFM 方法优于现有的最先进 MRI SR 方法。
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