Numerical and Clinical Evaluation of the Robustness of Open-source Networks for Parallel MR Imaging Reconstruction.

IF 2.5 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Naoto Fujita, Suguru Yokosawa, Toru Shirai, Yasuhiko Terada
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引用次数: 0

Abstract

Purpose: Deep neural networks (DNNs) for MRI reconstruction often require large datasets for training. Still, in clinical settings, the domains of datasets are diverse, and how robust DNNs are to domain differences between training and testing datasets has been an open question. Here, we numerically and clinically evaluate the generalization of the reconstruction networks across various domains under clinically practical conditions and provide practical guidance on what points to consider when selecting models for clinical application.

Methods: We compare the reconstruction performance between four network models: U-Net, the deep cascade of convolutional neural networks (DC-CNNs), Hybrid Cascade, and variational network (VarNet). We used the public multicoil dataset fastMRI for training and testing and performed a single-domain test, where the domains of the dataset used for training and testing were the same, and cross-domain tests, where the source and target domains were different. We conducted a single-domain test (Experiment 1) and cross-domain tests (Experiments 2-4), focusing on six factors (the number of images, sampling pattern, acceleration factor, noise level, contrast, and anatomical structure) both numerically and clinically.

Results: U-Net had lower performance than the three model-based networks and was less robust to domain shifts between training and testing datasets. VarNet had the highest performance and robustness among the three model-based networks, followed by Hybrid Cascade and DC-CNN. Especially, VarNet showed high performance even with a limited number of training images (200 images/10 cases). U-Net was more robust to domain shifts concerning noise level than the other model-based networks. Hybrid Cascade showed slightly better performance and robustness than DC-CNN, except for robustness to noise-level domain shifts. The results of the clinical evaluations generally agreed with the results of the quantitative metrics.

Conclusion: In this study, we numerically and clinically evaluated the robustness of the publicly available networks using the multicoil data. Therefore, this study provided practical guidance for clinical applications.

并行磁共振成像重建的开源网络鲁棒性的数值和临床评价。
目的:用于MRI重建的深度神经网络(dnn)通常需要大数据集进行训练。然而,在临床环境中,数据集的域是多种多样的,dnn对训练和测试数据集之间的域差异有多强一直是一个悬而未决的问题。在这里,我们在临床实际条件下对重建网络在各个领域的泛化进行了数值和临床评估,并为临床应用选择模型时应考虑的要点提供了实际指导。方法:我们比较了四种网络模型的重建性能:U-Net,卷积神经网络的深度级联(dc - cnn),混合级联和变分网络(VarNet)。我们使用公共多线圈数据集fastMRI进行训练和测试,并进行了单域测试,其中用于训练和测试的数据集的域是相同的,以及跨域测试,其中源域和目标域不同。我们进行了单域测试(实验1)和跨域测试(实验2-4),重点关注六个因素(图像数量、采样模式、加速因子、噪声水平、对比度和解剖结构),包括数值和临床。结果:U-Net的性能低于三种基于模型的网络,并且对训练和测试数据集之间的域转移的鲁棒性较差。在三种基于模型的网络中,VarNet的性能和鲁棒性最高,其次是Hybrid Cascade和DC-CNN。特别是,VarNet即使在训练图像数量有限(200张图像/10例)的情况下也表现出很高的性能。与其他基于模型的网络相比,U-Net对涉及噪声水平的域漂移具有更强的鲁棒性。除了对噪声级域漂移的鲁棒性外,混合级联的性能和鲁棒性略优于DC-CNN。临床评价结果与定量指标结果基本一致。结论:在本研究中,我们使用多线圈数据对公开可用网络的稳健性进行了数值和临床评估。因此,本研究对临床应用具有实际指导意义。
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来源期刊
Magnetic Resonance in Medical Sciences
Magnetic Resonance in Medical Sciences RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
5.80
自引率
20.00%
发文量
71
审稿时长
>12 weeks
期刊介绍: Magnetic Resonance in Medical Sciences (MRMS or Magn Reson Med Sci) is an international journal pursuing the publication of original articles contributing to the progress of magnetic resonance in the field of biomedical sciences including technical developments and clinical applications. MRMS is an official journal of the Japanese Society for Magnetic Resonance in Medicine (JSMRM).
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