Deep Learning Assisted Outer Volume Removal for Highly-Accelerated Real-Time Dynamic MRI
Merve G\"ulle, Sebastian Weing\"artner, Mehmet Ak\c{c}akaya

TL;DR
This paper introduces a deep learning-based outer volume removal technique for highly-accelerated real-time MRI, significantly reducing artifacts and improving image quality without changing acquisition protocols.
Contribution
It proposes a novel post-processing framework combining deep learning and physics-driven reconstruction to effectively eliminate aliasing artifacts from non-cardiac regions in real-time MRI.
Findings
Achieves high acceleration imaging with comparable quality to clinical standards.
Outperforms conventional methods in artifact reduction and image clarity.
Enables higher acceleration rates without compromising diagnostic information.
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…
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