Deep Learning Assisted Outer Volume Removal for Highly-Accelerated Real-Time Dynamic MRI
- URL: http://arxiv.org/abs/2505.00643v1
- Date: Thu, 01 May 2025 16:31:52 GMT
- Title: Deep Learning Assisted Outer Volume Removal for Highly-Accelerated Real-Time Dynamic MRI
- Authors: Merve Gülle, Sebastian Weingärtner, Mehmet Akçakaya,
- Abstract summary: Real-time (RT) dynamic MRI plays a vital role in capturing rapid physiological processes.<n>RT cine MRI is important for functional assessment of the heart with high temporal resolution.<n> achieving high acceleration rates in RT cine MRI is challenging due to aliasing artifacts from extra-cardiac tissues.
- Score: 2.512491726995032
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- 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.
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