Cape Town - 2026 ISMRM-ISMRT Annual Meeting and Exhibition
9 May 2026 – 14 May 2026 · Cape Town, South Africa
660-04-009 ISMRM Abstract

From YouTube to MRI Reconstruction: Overcoming Data Scarcity with Physics-Informed Video Pre-Training

Accepted
Simon Graf 1,2, Walter A Wohlgemuth1,2, Andreas Deistung1,2
1Medical Physics Group, University Clinic and Outpatient Clinic for Radiology, University Hospital Halle (Saale), Germany
2Halle MR Imaging Core Facility, Medical Faculty, Martin-Luther-University Halle-Wittenberg, Germany
Presenting Author: Simon Graf

Synopsis

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References

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