论文标题

考虑噪声相关性的多线圈MRI中深层DeNoiser的自我监督训练

Self-supervised training of deep denoisers in multi-coil MRI considering noise correlations

论文作者

Park, Juhyung, Park, Dongwon, Ji, Sooyeon, Shin, Hyeong-Geol, Chun, Se Young, Lee, Jongho

论文摘要

基于深度学习的denoising方法已显示出有力的结果,以改善磁共振(MR)图像的信噪比,主要是通过用干净的地面真相利用监督学习。但是,获取干净的地面真相图像通常是昂贵且耗时的。已经广泛研究了自我监督方法以减轻对干净图像的依赖性,但主要依赖于图像的K空间测量值的次优截面,以产生输入和目标图像,以确保统计独立性。在这项研究中,我们研究了一种被称为Coil2Coil(C2C)的多层MRI中的深层Denoisiser的替代自我监督的训练方法,该方法自然拆分并组合了分阶段阵列线圈之间的多线圈数据,从而产生了两个噪声折扣图像进行训练。这种新颖的方法允许利用多线索冗余,但是图像在统计上相关,并且可能没有相同的干净图像。为了减轻这些问题,我们提出的方法是将这些图像的统计依赖性降低并匹配基础干净的图像,从而使它们可以用作训练对。对于综合降解实验,C2C对先前的自我监管方法产生了最佳性能,报告结果甚至与受监督方法相当。对于现实世界的denoising案例,C2C作为合成案例产生一致的性能,仅消除噪声结构。

Deep learning-based denoising methods have shown powerful results for improving the signal-to-noise ratio of magnetic resonance (MR) images, mostly by leveraging supervised learning with clean ground truth. However, acquiring clean ground truth images is often expensive and time-consuming. Self supervised methods have been widely investigated to mitigate the dependency on clean images, but mostly rely on the suboptimal splitting of K-space measurements of an image to yield input and target images for ensuring statistical independence. In this study, we investigate an alternative self-supervised training method for deep denoisers in multi-coil MRI, dubbed Coil2Coil (C2C), that naturally split and combine the multi-coil data among phased array coils, generating two noise-corrupted images for training. This novel approach allows exploiting multi-coil redundancy, but the images are statistically correlated and may not have the same clean image. To mitigate these issues, we propose the methods to pproximately decorrelate the statistical dependence of these images and match the underlying clean images, thus enabling them to be used as the training pairs. For synthetic denoising experiments, C2C yielded the best performance against prior self-supervised methods, reporting outcome comparable even to supervised methods. For real-world denoising cases, C2C yielded consistent performance as synthetic cases, removing only noise structures.

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