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Abstract #4506

Joint group sparsity-based motion-compensated deep learning reconstruction for 3D whole-heart joint T1/T2 mapping

Lina Felsner1,2, Andrew Phair1, Karl P. Kunze3, René M. Botnar1,4,5, and Claudia Prieto1,4,5
1School of Biomedical Engineering and Imaging Sciences, King's College London, London, United Kingdom, 2King’s Institute for Artificial Intelligence, London, United Kingdom, 3MR Research Collaborations, Siemens Healthcare Limited, Camberley, United Kingdom, 4School of Engineering, Pontificia Universidad Católica de Chile, Santiago, Chile, 5Millennium Institute for Intelligent Healthcare Engineering, Santiago, Chile

Synopsis

Keywords: AI/ML Image Reconstruction, Cardiovascular

Motivation: Myocardial T1 and T2 mapping is crucial in the assessment of cardiovascular disease. 3D whole-heart joint T1/T2 mapping approaches have been proposed, however they require long reconstruction times.

Goal(s): By leveraging deep learning (DL)-based techniques, we aim to significantly reduce the reconstruction times for 3D whole-heart joint T1/T2 mapping, while maintaining high-quality results.

Approach: Recently a joint group sparsity-based DL approach was proposed for image reconstruction of undersampled multi-contrast MRI data. Here, we propose to extend this approach for non-rigid motion-corrected reconstructions for multi-contrast 3D data for joint T1/T2 mapping.

Results: Our approach achieves good agreement with reference techniques, while outperforming single-contrast reconstructions.

Impact: Joint group sparsity-based deep learning non-rigid motion-corrected reconstruction for multi-dimensional joint 3D T1/T2 whole-heart mapping achieves good agreement with reference techniques and outperforms single-contrast reconstructions. The approach significantly reduces reconstruction times, making it feasible for clinical applications.

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