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Joint Multi-anatomy Training of a Variational Network for Reconstruction of Accelerated Magnetic Resonance Image Acquisitions

机译:用于改变加速磁共振图像采集的变分网络的联合多解剖训练

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Magnetic resonance imaging is a leading image modality for many clinical applications; however, a significant drawback is the lengthy data acquisition. This motivates the development of methods for reconstruction of sparsely sampled image data. One such technique is the Variational Network (VN), a machine learning method that generalizes traditional iterative reconstruction techniques, learning the regularization term from large amounts of image data. Previously, with the VN technique, reconstruction of 4-fold accelerated knee images was shown to be highly successful. In this work we extend the VN approach to applications beyond knee imaging and evaluate the classic VN and a newly developed Unet-VN in 5 different anatomical regions. We evaluate the networks trained individually for each anatomical area as well as jointly trained with data from all anatomical areas. The VN and Unet-VN were trained to reconstruct 4-fold accelerated images of knees, brains, hips, ankles and shoulders. SSIM was calculated to quantitatively evaluate the reconstructed images. Results show that the Unet-VN outperforms the classic VN, both quantitatively - in terms of structural similarity - and qualitatively. The networks jointly trained with multi-anatomy data approach the performance of the individually trained networks and offer the simplicity of a single network for a range of clinical applications which has substantial benefit for clinical translation.
机译:磁共振成像是许多临床应用的主要图像模态;然而,显着的缺点是冗长的数据采集。这激励了改变稀疏采样图像数据的方法的开发。一种这样的技术是变形网络(VN),一种机器学习方法,其概括了传统的迭代重建技术,从大量图像数据学习正则化术语。以前,利用VN技术,显示了4倍加速膝关节图像的重建非常成功。在这项工作中,我们将VN方法扩展到膝盖成像以外的应用,并评估5种不同解剖区域中的经典VN和新开发的UNET-VN。我们为每个解剖区域进行单独培训的网络,以及与来自所有解剖区域的数据一起培训。培训VN和UNET-VN以重建4倍加速图像的膝盖,大脑,臀部,脚踝和肩部。计算SSIM以定量评估重建的图像。结果表明,UNET-VN优于经典VN,它们都是定量的 - 在结构相似性 - 和定性方面。通过多解剖数据接近具有多个培训网络的性能的网络,并为一系列临床应用提供单一网络的简单性,这对临床翻译具有实质性效益。

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