用于核磁共振成像重建和分析的频率与图像空间联合学习

The journal of machine learning for biomedical imaging Pub Date : 2022-06-01 Epub Date: 2022-06-23
Nalini M Singh, Juan Eugenio Iglesias, Elfar Adalsteinsson, Adrian V Dalca, Polina Golland
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摘要

我们提出了明确结合频率和图像特征表征的神经网络层,并证明它们可用作从频率空间数据进行重建的通用构件。我们的工作是受核磁共振成像采集中出现的挑战所激发的,在采集过程中,信号是所需图像的傅里叶变换。所提出的联合学习方案既能校正频率空间的伪影,又能处理图像空间表征,从而在网络的每一层重建连贯的图像结构。这与目前大多数用于图像重建的深度学习方法形成了鲜明对比,后者将频率和图像空间特征分开处理,而且往往只在其中一个空间中进行操作。我们展示了联合卷积学习在各种任务中的优势,包括运动校正、去噪、欠采样采集重建,以及在模拟和实际多线圈磁共振成像数据中结合欠采样和运动校正。在所有任务和数据集上,联合模型都能生成始终如一的高质量输出图像。当集成到具有物理启发数据一致性约束的最先进的非滚动优化网络中进行欠采样重建时,所提出的架构显著改善了优化环境,从而在数量级上减少了训练时间。这一结果表明,在深度学习网络中,联合表征特别适合 MRI 信号。我们的代码和预训练模型可在 https://github.com/nalinimsingh/interlacer 公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Joint Frequency and Image Space Learning for MRI Reconstruction and Analysis.

Joint Frequency and Image Space Learning for MRI Reconstruction and Analysis.

Joint Frequency and Image Space Learning for MRI Reconstruction and Analysis.

Joint Frequency and Image Space Learning for MRI Reconstruction and Analysis.

We propose neural network layers that explicitly combine frequency and image feature representations and show that they can be used as a versatile building block for reconstruction from frequency space data. Our work is motivated by the challenges arising in MRI acquisition where the signal is a corrupted Fourier transform of the desired image. The proposed joint learning schemes enable both correction of artifacts native to the frequency space and manipulation of image space representations to reconstruct coherent image structures at every layer of the network. This is in contrast to most current deep learning approaches for image reconstruction that treat frequency and image space features separately and often operate exclusively in one of the two spaces. We demonstrate the advantages of joint convolutional learning for a variety of tasks, including motion correction, denoising, reconstruction from undersampled acquisitions, and combined undersampling and motion correction on simulated and real world multicoil MRI data. The joint models produce consistently high quality output images across all tasks and datasets. When integrated into a state of the art unrolled optimization network with physics-inspired data consistency constraints for undersampled reconstruction, the proposed architectures significantly improve the optimization landscape, which yields an order of magnitude reduction of training time. This result suggests that joint representations are particularly well suited for MRI signals in deep learning networks. Our code and pretrained models are publicly available at https://github.com/nalinimsingh/interlacer.

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