TL;DR
This paper introduces a real-time deep learning-based motion tracking method for fetal MRI that predicts fetal movement directly from images, improving efficiency and accuracy over existing techniques.
Contribution
A novel recurrent neural network approach for real-time fetal motion prediction from MRI slices, enhancing fetal imaging without operator dependence.
Findings
Outperformed alternative methods in accuracy.
Achieved real-time performance with low error rates.
Effective across different fetal ages and motion patterns.
Abstract
Fetal magnetic resonance imaging (MRI) is challenged by uncontrollable, large, and irregular fetal movements. It is, therefore, performed through visual monitoring of fetal motion and repeated acquisitions to ensure diagnostic-quality images are acquired. Nevertheless, visual monitoring of fetal motion based on displayed slices, and navigation at the level of stacks-of-slices is inefficient. The current process is highly operator-dependent, increases scanner usage and cost, and significantly increases the length of fetal MRI scans which makes them hard to tolerate for pregnant women. To help build automatic MRI motion tracking and navigation systems to overcome the limitations of the current process and improve fetal imaging, we have developed a new real time image-based motion tracking method based on deep learning that learns to predict fetal motion directly from acquired images. Our…
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