PINQI: An End-to-End Physics-Informed Approach to Learned Quantitative MRI Reconstruction

IF 4.2 2区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Computational Imaging Pub Date : 2024-04-15 DOI:10.1109/TCI.2024.3388869
Felix F. Zimmermann;Christoph Kolbitsch;Patrick Schuenke;Andreas Kofler
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Abstract

Quantitative Magnetic Resonance Imaging (qMRI) enables the reproducible measurement of biophysical parameters in tissue. The challenge lies in solving a nonlinear, ill-posed inverse problem to obtain the desired tissue parameter maps from acquired raw data. While various learned and non-learned approaches have been proposed, the existing learned methods fail to fully exploit the prior knowledge about the underlying MR physics, i.e. the signal model and the acquisition model. In this paper, we propose PINQI, a novel qMRI reconstruction method that integrates the knowledge about the signal, acquisition model, and learned regularization into a single end-to-end trainable neural network. Our approach is based on unrolled alternating optimization, utilizing differentiable optimization blocks to solve inner linear and non-linear optimization tasks, as well as convolutional layers for regularization of the intermediate qualitative images and parameter maps. This design enables PINQI to leverage the advantages of both the signal model and learned regularization. We evaluate the performance of our proposed network by comparing it with recently published approaches in the context of highly undersampled $T_{1}$ -mapping, using both a simulated brain dataset, as well as real scanner data acquired from a physical phantom and in-vivo data from healthy volunteers. The results demonstrate the superiority of our proposed solution over existing methods and highlight the effectiveness of our method in real-world scenarios.
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PINQI:一种端到端物理信息方法,用于学习定量 MRI 重构
定量磁共振成像(qMRI)可对组织中的生物物理参数进行可重复测量。所面临的挑战在于如何解决一个非线性、难解的逆问题,以便从获取的原始数据中获得所需的组织参数图。虽然已经提出了各种学习型和非学习型方法,但现有的学习型方法未能充分利用有关底层磁共振物理(即信号模型和采集模型)的先验知识。本文提出的 PINQI 是一种新型 qMRI 重构方法,它将信号知识、采集模型和学习正则化整合到一个端到端可训练神经网络中。我们的方法基于非滚动交替优化,利用可微分优化块解决内部线性和非线性优化任务,并利用卷积层对中间定性图像和参数图进行正则化。这种设计使 PINQI 能够充分利用信号模型和学习正则化的优势。我们使用模拟大脑数据集、从物理模型中获取的真实扫描仪数据以及从健康志愿者身上获取的体内数据,在高度欠采样 $T_{1}$ 映射的背景下,将我们提出的网络与最近发表的方法进行了比较,从而对其性能进行了评估。结果表明,我们提出的解决方案优于现有方法,并突出了我们的方法在真实世界场景中的有效性。
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来源期刊
IEEE Transactions on Computational Imaging
IEEE Transactions on Computational Imaging Mathematics-Computational Mathematics
CiteScore
8.20
自引率
7.40%
发文量
59
期刊介绍: The IEEE Transactions on Computational Imaging will publish articles where computation plays an integral role in the image formation process. Papers will cover all areas of computational imaging ranging from fundamental theoretical methods to the latest innovative computational imaging system designs. Topics of interest will include advanced algorithms and mathematical techniques, model-based data inversion, methods for image and signal recovery from sparse and incomplete data, techniques for non-traditional sensing of image data, methods for dynamic information acquisition and extraction from imaging sensors, software and hardware for efficient computation in imaging systems, and highly novel imaging system design.
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