Cape Town - 2026 ISMRM-ISMRT Annual Meeting and Exhibition
9 May 2026 – 14 May 2026 · Cape Town, South Africa
452-02-006 / 452-02-006 ISMRM Abstract

Temporal Attention-Induced Scan-Specific fMRI Reconstruction Meets Time-Varying Trajectories

Accepted
Qiaoxin LI 1,2, Caini Pan1,2,3, Pierre-Antoine Comby1,2, Chaithya Giliyar Radhakrishna1,2, Philippe Ciuciu1,2
1MIND, Inria, Palaiseau, France
2Neurospin, CEA Paris Saclay, France
3CEA NeuroSpin, Paris-Saclay University, CNRS BAOBAB, Gif-sur-Yvette, France
Presenting Author: Qiaoxin LI

Synopsis

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References

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6. Chaithya, G. R., Lazarus, C., Mauconduit, F., Chauffert, N., Weiss, P., Ciuciu, P., & Vignaud, A. (2022). Optimizing full 3D SPARKLING trajectories for high-resolution magnetic resonance imaging. IEEE Transactions on Medical Imaging, 41(8), 2105–2117. DOI: 10.1109/TMI.2022.3157269 [doi]
7. Amor, Z., Le Ster, C., Gr, C., Daval-Frérot, G., Boulant, N., Mauconduit, F., Thirion, B., Ciuciu, P., & Vignaud, A. (2024). Impact of B0 field imperfections correction on BOLD sensitivity in 3D-SPARKLING fMRI data. Magnetic Resonance in Medicine, 91(4), 1434–1448. DOI: 10.1002/mrm.29943 [doi]
8. Amor, Z., Ciuciu, P., Gr, C., Daval-Frérot, G., Mauconduit, F., Thirion, B., & Vignaud, A. (2024). Non-Cartesian 3D-SPARKLING vs Cartesian 3D-EPI encoding schemes for functional magnetic resonance imaging at 7 Tesla. PLOS ONE, 19(5), e0299925. DOI: 10.1371/journal.pone.0299925 [doi]
9. Comby, P.-A., Vignaud, A., & Ciuciu, P. (2025). SNAKE: A modular realistic fMRI data simulator from the space-time domain to k-space and back. Imaging Neuroscience, 3, IMAG–a. DOI: 10.1162/IMAG.a.121 [doi]
10. Lazarus, C., Weiss, P., Chauffert, N., Mauconduit, F., Bottlaender, M., Vignaud, A., & Ciuciu, P. (2017). SPARKLING: Novel non-Cartesian sampling schemes for accelerated 2D anatomical imaging at 7T using compressed sensing. Proceedings of the 25th Annual Meeting of the International Society for Magnetic Resonance in Medicine (ISMRM).
11. Comby, P.-A., Daval-Frérot, G., Pan, C., Tanabene, A., Oudjman, L., Cencini, M., Ciuciu, P., & Gr, C. (2025). MRI-NUFFT: Doing non-cartesian MRI has never been easier. Journal of Open Source Software, 10(108), 7743. Comby, P.-A., Daval-Frérot, G., Pan, C., Tanabene, A., Oudjman, L., Cencini, M., Ciuciu, P., & Gr, C. (2025). MRI-NUFFT: Doing non-cartesian MRI has never been easier. Journal of Open Source Software, 10(108), 7743. https://doi.org/10.21105/joss.07743 [doi]

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