Pushing the limits of zero-shot self-supervised super-resolution of anisotropic MR images.

Samuel W Remedios, Shuwen Wei, Blake E Dewey, Aaron Carass, Dzung L Pham, Jerry L Prince
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Abstract

Magnetic resonance images are often acquired as several 2D slices and stacked into a 3D volume, yielding a lower through-plane resolution than in-plane resolution. Many super-resolution (SR) methods have been proposed to address this, including those that use the inherent high-resolution (HR) in-plane signal as HR data to train deep neural networks. Techniques with this approach are generally both self-supervised and internally trained, so no external training data is required. However, in such a training paradigm limited data are present for training machine learning models and the frequency content of the in-plane data may be insufficient to capture the true HR image. In particular, the recovery of high frequency information is usually lacking. In this work, we show this shortcoming with Fourier analysis; we subsequently propose and compare several approaches to address the recovery of high frequency information. We test a particular internally trained self-supervised method named SMORE on ten subjects at three common clinical resolutions with three types of modification: frequency-type losses (Fourier and wavelet), feature-type losses, and low-resolution re-gridding strategies for estimating the residual. We find a particular combination to balance between signal recovery in both spatial and frequency domains qualitatively and quantitatively, yet none of the modifications alone or in tandem yield a vastly superior result. We postulate that there may either be limits on internally trained techniques that such modifications cannot address, or limits on modeling SR as finding a map from low-resolution to HR, or both.

突破了各向异性MR图像零镜头自监督超分辨率的极限。
磁共振图像通常是作为几个2D切片获得的,并堆叠成一个3D体,产生比平面内分辨率更低的平面分辨率。为了解决这个问题,已经提出了许多超分辨率(SR)方法,包括那些使用固有高分辨率(HR)平面内信号作为HR数据来训练深度神经网络的方法。使用这种方法的技术通常是自我监督和内部训练的,因此不需要外部训练数据。然而,在这种训练范式中,用于训练机器学习模型的数据有限,并且面内数据的频率内容可能不足以捕获真实的HR图像。特别是,高频信息的恢复通常是缺乏的。在这项工作中,我们用傅里叶分析来说明这个缺点;我们随后提出并比较了几种方法来解决高频信息的恢复问题。我们测试了一种特殊的内部训练的自我监督方法,名为SMORE,在10个受试者上以三种常见的临床分辨率进行了三种类型的修改:频率型损失(傅里叶和小波),特征型损失和用于估计残差的低分辨率重新网格化策略。我们发现了一种特殊的组合,可以在空间和频域的信号恢复之间进行定性和定量的平衡,但是单独或串联的修改都不能产生非常优越的结果。我们假设可能存在这样的修改无法解决的内部训练技术的限制,或者将SR建模为寻找从低分辨率到HR的地图的限制,或者两者兼而有之。
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