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DC-SiamNet:用于自监督磁共振成像重建的深度对比暹罗网络。

DC-SiamNet: Deep contrastive Siamese network for self-supervised MRI reconstruction.

作者信息

Yan Yanghui, Yang Tiejun, Zhao Xiang, Jiao Chunxia, Yang Aolin, Miao Jianyu

机构信息

School of Information Science and Engineering, Henan University of Technology, Zhengzhou, 450001, China.

School of Artificial Intelligence and Big Data, Henan University of Technology, Zhengzhou, 450001, China; Key Laboratory of Grain Information Processing and Control (HAUT), Ministry of Education, Zhengzhou, China; Henan Key Laboratory of Grain Photoelectric Detection and Control (HAUT), Zhengzhou, Henan, China.

出版信息

Comput Biol Med. 2023 Dec;167:107619. doi: 10.1016/j.compbiomed.2023.107619. Epub 2023 Oct 28.

Abstract

Reconstruction methods based on deep learning have greatly shortened the data acquisition time of magnetic resonance imaging (MRI). However, these methods typically utilize massive fully sampled data for supervised training, restricting their application in certain clinical scenarios and posing challenges to the reconstruction effect when high-quality MR images are unavailable. Recently, self-supervised methods have been developed that only undersampled MRI images participate in the network training. Nevertheless, due to the lack of complete referable MR image data, self-supervised reconstruction is prone to produce incorrect structure contents, such as unnatural texture details and over-smoothed tissue sites. To solve this problem, we propose a self-supervised Deep Contrastive Siamese Network (DC-SiamNet) for fast MR imaging. First, DC-SiamNet performs the reconstruction with a Siamese unrolled structure and obtains visual representations in different iterative phases. Particularly, an attention-weighted average pooling module is employed at the bottleneck layer of the U-shape regularization unit, which can effectively aggregate valuable local information of the underlying feature map in the generated representation vector. Then, a novel hybrid loss function is designed to drive the self-supervised reconstruction and contrastive learning simultaneously by forcing the output consistency across different branches in the frequency domain, the image domain, and the latent space. The proposed method is extensively evaluated with different sampling patterns on the IXI brain dataset and the MRINet knee dataset. Experimental results show that DC-SiamNet can achieve 0.93 in structural similarity and 33.984 dB in peak signal-to-noise ratio on the IXI brain dataset under 8x acceleration. It has better reconstruction accuracy than other methods, and the performance is close to the corresponding model trained with full supervision, especially when the sampling rate is low. In addition, generalization experiments verify that our method has a strong cross-domain reconstruction ability for different contrast brain images.

摘要

基于深度学习的重建方法极大地缩短了磁共振成像(MRI)的数据采集时间。然而,这些方法通常利用大量的全采样数据进行监督训练,限制了它们在某些临床场景中的应用,并且当无法获得高质量的MR图像时,对重建效果构成挑战。最近,已经开发出自监督方法,其中只有欠采样的MRI图像参与网络训练。然而,由于缺乏完整的可参考MR图像数据,自监督重建容易产生不正确的结构内容,例如不自然的纹理细节和过度平滑的组织部位。为了解决这个问题,我们提出了一种用于快速MR成像的自监督深度对比暹罗网络(DC-SiamNet)。首先,DC-SiamNet采用暹罗展开结构进行重建,并在不同的迭代阶段获得视觉表示。特别地,在U形正则化单元的瓶颈层采用了注意力加权平均池化模块,它可以有效地在生成的表示向量中聚合底层特征图的有价值的局部信息。然后,设计了一种新颖的混合损失函数,通过在频域、图像域和潜在空间中强制不同分支之间的输出一致性,同时驱动自监督重建和对比学习。所提出的方法在IXI脑数据集和MRINet膝关节数据集上用不同的采样模式进行了广泛评估。实验结果表明,在8倍加速下,DC-SiamNet在IXI脑数据集上的结构相似性可达0.93,峰值信噪比可达33.984dB。它比其他方法具有更好的重建精度,并且性能接近使用全监督训练的相应模型,特别是在采样率较低时。此外,泛化实验验证了我们的方法对于不同对比度的脑图像具有很强的跨域重建能力。

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