基于生成先验的稳定深部MRI重建

IF 8.9 1区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS IEEE Transactions on Medical Imaging Pub Date : 2022-10-25 DOI:10.48550/arXiv.2210.13834
Martin Zach, F. Knoll, T. Pock
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引用次数: 1

摘要

数据驱动的方法最近在磁共振成像(MRI)重建中取得了显著的成功,但由于缺乏通用性和可解释性,将其整合到临床常规中仍然具有挑战性。在本文中,我们在基于生成图像先验的统一框架中解决了这些挑战。我们提出了一种新的基于深度神经网络的正则化器,该正则化器仅在参考量级图像的生成设置中进行训练。经过训练后,正则化器编码更高层次的域统计量,我们通过合成无数据的图像来演示。将训练好的模型嵌入经典的变分方法中,无论子采样模式如何,都能产生高质量的重建。此外,该模型在面对以反差变化形式出现的非分布数据时表现出稳定的行为。此外,概率解释提供了重建的分布,从而允许不确定性量化。为了重建并行MRI,我们提出了一种快速的联合估计图像和灵敏度图的算法。结果显示了具有竞争力的性能,与最先进的端到端深度学习方法相当,同时保留了子采样模式的灵活性,并允许不确定性量化。
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Stable deep MRI reconstruction using Generative Priors
Data-driven approaches recently achieved remarkable success in magnetic resonance imaging (MRI) reconstruction, but integration into clinical routine remains challenging due to a lack of generalizability and interpretability. In this paper, we address these challenges in a unified framework based on generative image priors. We propose a novel deep neural network based regularizer which is trained in a generative setting on reference magnitude images only. After training, the regularizer encodes higher-level domain statistics which we demonstrate by synthesizing images without data. Embedding the trained model in a classical variational approach yields high-quality reconstructions irrespective of the sub-sampling pattern. In addition, the model shows stable behavior when confronted with out-of-distribution data in the form of contrast variation. Furthermore, a probabilistic interpretation provides a distribution of reconstructions and hence allows uncertainty quantification. To reconstruct parallel MRI, we propose a fast algorithm to jointly estimate the image and the sensitivity maps. The results demonstrate competitive performance, on par with state-of-the-art end-to-end deep learning methods, while preserving the flexibility with respect to sub-sampling patterns and allowing for uncertainty quantification.
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来源期刊
IEEE Transactions on Medical Imaging
IEEE Transactions on Medical Imaging 医学-成像科学与照相技术
CiteScore
21.80
自引率
5.70%
发文量
637
审稿时长
5.6 months
期刊介绍: The IEEE Transactions on Medical Imaging (T-MI) is a journal that welcomes the submission of manuscripts focusing on various aspects of medical imaging. The journal encourages the exploration of body structure, morphology, and function through different imaging techniques, including ultrasound, X-rays, magnetic resonance, radionuclides, microwaves, and optical methods. It also promotes contributions related to cell and molecular imaging, as well as all forms of microscopy. T-MI publishes original research papers that cover a wide range of topics, including but not limited to novel acquisition techniques, medical image processing and analysis, visualization and performance, pattern recognition, machine learning, and other related methods. The journal particularly encourages highly technical studies that offer new perspectives. By emphasizing the unification of medicine, biology, and imaging, T-MI seeks to bridge the gap between instrumentation, hardware, software, mathematics, physics, biology, and medicine by introducing new analysis methods. While the journal welcomes strong application papers that describe novel methods, it directs papers that focus solely on important applications using medically adopted or well-established methods without significant innovation in methodology to other journals. T-MI is indexed in Pubmed® and Medline®, which are products of the United States National Library of Medicine.
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