[2603.29922] Training deep learning based dynamic MR image reconstruction using synthetic fractals
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Abstract page for arXiv paper 2603.29922: Training deep learning based dynamic MR image reconstruction using synthetic fractals
Computer Science > Computer Vision and Pattern Recognition arXiv:2603.29922 (cs) [Submitted on 31 Mar 2026] Title:Training deep learning based dynamic MR image reconstruction using synthetic fractals Authors:Anirudh Raman, Olivier Jaubert, Mark Wrobel, Tina Yao, Ruaraidh Campbell, Rebecca Baker, Ruta Virsinskaite, Daniel Knight, Michael Quail, Jennifer Steeden, Vivek Muthurangu View a PDF of the paper titled Training deep learning based dynamic MR image reconstruction using synthetic fractals, by Anirudh Raman and 10 other authors View PDF Abstract:Purpose: To investigate whether synthetically generated fractal data can be used to train deep learning (DL) models for dynamic MRI reconstruction, thereby avoiding the privacy, licensing, and availability limitations associated with cardiac MR training datasets. Methods: A training dataset was generated using quaternion Julia fractals to produce 2D+time images. Multi-coil MRI acquisition was simulated to generate paired fully sampled and radially undersampled k-space data. A 3D UNet deep artefact suppression model was trained using these fractal data (F-DL) and compared with an identical model trained on cardiac MRI data (CMR-DL). Both models were evaluated on prospectively acquired radial real-time cardiac MRI from 10 patients. Reconstructions were compared against compressed sensing(CS) and low-rank deep image prior (LR-DIP). All reconstrctuions were ranked for image quality, while ventricular volumes and ejection fraction we...