Cape Town - 2026 ISMRM-ISMRT Annual Meeting and Exhibition
9 May 2026 – 14 May 2026 · Cape Town, South Africa
351-03-010 / 351-03-010 ISMRM Abstract

K-space parallel imaging reconstruction using complex-valued deep Koopman autoencoders

Accepted
Wassim Ben Salah 1,2, Jon O Cleary3,4, Sarah McElroy5, Antoine Naegel6, Kasim Ali Mohamed3, Saranya BALESWARAN3, Sebastien Ourselin2, Jonathan Shapey2,7, Christos Bergeles2, Radhouene Neji1,2
1Imaging Physics and Engineering Department, School of Biomedical Engineering & Imaging Sciences, King's College London, London, United Kingdom
2Surgical & Interventional Engineering Research Department, School of Biomedical Engineering and Imaging Sciences, King's College London, London, United Kingdom
3Department of Radiology, Guy's and St. Thomas' NHS Foundation Trust, London, United Kingdom
4Research Department of Cancer Imaging, School of Biomedical Engineering and Imaging Sciences, King's College London, London, United Kingdom
5MR Research Collaborations, Siemens Healthcare Limited, Montreal, Canada
6Siemens Healthcare SAS, Courbevoie, France
7Department of Neurosurgery, King's College Hospital NHS Foundation Trust London, London, United Kingdom
Presenting Author: Wassim Ben Salah

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References

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