Deep Learning Assisted Outer Volume Removal for Highly-Accelerated Real-Time Dynamic MRI.

ArXiv Pub Date : 2025-05-01
Merve Gülle, Sebastian Weingärtner, Mehmet Akçakaya
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Abstract

Real-time (RT) dynamic MRI plays a vital role in capturing rapid physiological processes, offering unique insights into organ motion and function. Among these applications, RT cine MRI is particularly important for functional assessment of the heart with high temporal resolution. RT imaging enables free-breathing, ungated imaging of cardiac motion, making it a crucial alternative for patients who cannot tolerate conventional breath-hold, ECG-gated acquisitions. However, achieving high acceleration rates in RT cine MRI is challenging due to aliasing artifacts from extra-cardiac tissues, particularly at high undersampling factors. In this study, we propose a novel outer volume removal (OVR) method to address this challenge by eliminating aliasing contributions from non-cardiac regions in a post-processing framework. Our approach estimates the outer volume signal for each timeframe using composite temporal images from time-interleaved undersampling patterns, which inherently contain pseudo-periodic ghosting artifacts. A deep learning (DL) model is trained to identify and remove these artifacts, producing a clean outer volume estimate that is subsequently subtracted from the corresponding k-space data. The final reconstruction is performed with a physics-driven DL (PD-DL) method trained using an OVR-specific loss function to restore high spatio-temporal resolution images. Experimental results show that the proposed method at high accelerations achieves image quality that is visually comparable to clinical baseline images, while outperforming conventional reconstruction techniques, both qualitatively and quantitatively. The proposed approach provides a practical and effective solution for artifact reduction in RT cine MRI without requiring acquisition modifications, offering a pathway to higher acceleration rates while preserving diagnostic quality.

深度学习辅助的高加速实时动态MRI外体积去除。
实时(RT)动态MRI在捕捉快速生理过程中起着至关重要的作用,为器官运动和功能提供了独特的见解。在这些应用中,RT电影MRI对于高时间分辨率的心脏功能评估尤为重要。RT成像可以实现自由呼吸、无门控的心脏运动成像,使其成为无法忍受传统屏气、心电图门控采集的患者的重要选择。然而,由于心脏外组织的混叠伪影,特别是在高欠采样因素下,在RT电影MRI中实现高加速率是具有挑战性的。在这项研究中,我们提出了一种新的外容积去除(OVR)方法,通过在后处理框架中消除非心脏区域的混叠贡献来解决这一挑战。我们的方法使用来自时间交错欠采样模式的复合时间图像来估计每个时间框架的外部体积信号,这些图像固有地包含伪周期性重影伪影。训练一个深度学习(DL)模型来识别和删除这些伪影,产生一个干净的外部体积估计,随后从相应的k空间数据中减去。最后的重建使用物理驱动DL (PD-DL)方法进行,该方法使用特定于ovr的损失函数进行训练,以恢复高时空分辨率的图像。实验结果表明,该方法在高加速度下获得的图像质量在视觉上与临床基线图像相当,同时在定性和定量上都优于传统的重建技术。所提出的方法提供了一种实用而有效的解决方案,可以在不需要修改采集的情况下减少RT电影MRI中的伪影,在保持诊断质量的同时提供更高加速率的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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