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Dimitrios Karkalousos
Dimitrios Karkalousos
Postdoctoral Researcher at Amsterdam UMC
Overená e-mailová adresa na: amsterdamumc.nl
Názov
Citované v
Citované v
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Results of the 2020 fastMRI challenge for machine learning MR image reconstruction
MJ Muckley, B Riemenschneider, A Radmanesh, S Kim, G Jeong, J Ko, ...
IEEE transactions on medical imaging 40 (9), 2306-2317, 2021
2062021
State-of-the-art machine learning MRI reconstruction in 2020: Results of the second fastMRI challenge
MJ Muckley, B Riemenschneider, A Radmanesh, S Kim, G Jeong, J Ko, ...
arXiv preprint arXiv:2012.06318 2 (6), 7, 2020
412020
i-RIM applied to the fastMRI challenge
P Putzky, D Karkalousos, J Teuwen, N Miriakov, B Bakker, M Caan, ...
arXiv preprint arXiv:1910.08952, 2019
272019
Multi-coil mri reconstruction challenge—assessing brain mri reconstruction models and their generalizability to varying coil configurations
Y Beauferris, J Teuwen, D Karkalousos, N Moriakov, M Caan, G Yiasemis, ...
Frontiers in Neuroscience 16, 919186, 2022
222022
Direct: Deep image reconstruction toolkit
G Yiasemis, N Moriakov, D Karkalousos, M Caan, J Teuwen
Journal of Open Source Software 7 (73), 4278, 2022
122022
Evaluation of the robustness of learned MR image reconstruction to systematic deviations between training and test data for the models from the fastMRI challenge
PM Johnson, G Jeong, K Hammernik, J Schlemper, C Qin, J Duan, ...
Machine Learning for Medical Image Reconstruction: 4th International …, 2021
122021
Assessment of data consistency through cascades of independently recurrent inference machines for fast and robust accelerated MRI reconstruction
D Karkalousos, S Noteboom, HE Hulst, FM Vos, MWA Caan
Physics in Medicine & Biology 67 (12), 124001, 2022
102022
A unified model for reconstruction and R2* mapping of accelerated 7T data using the quantitative recurrent inference machine
C Zhang, D Karkalousos, PL Bazin, BF Coolen, H Vrenken, JJ Sonke, ...
NeuroImage 264, 119680, 2022
72022
Multi-channel MR reconstruction (MC-MRRec) challenge—Comparing accelerated MR reconstruction models and assessing their genereralizability to datasets collected with different …
Y Beauferris, J Teuwen, D Karkalousos, N Moriakov, M Caan, ...
arXiv preprint arXiv:2011.07952, 2020
62020
Reconstructing unseen modalities and pathology with an efficient Recurrent Inference Machine
D Karkalousos, K Lønning, HE Hulst, SO Dumoulin, JJ Sonke, FM Vos, ...
arXiv preprint arXiv:2012.07819, 2020
12020
MultiTask Learning for accelerated-MRI Reconstruction and Segmentation of Brain Lesions in Multiple Sclerosis
D Karkalousos, I Isgum, H Marquering, MWA Caan
Medical Imaging with Deep Learning, 991-1005, 2024
2024
Atommic: An Advanced Toolbox for Multitask Medical Imaging Consistency to Facilitate Artificial Intelligence Applications from Acquisition to Analysis in Magnetic Resonance Imaging
D Karkalousos, I Išgum, H Marquering, MWA Caan
Available at SSRN 4801289, 2024
2024
Data Consistency for Magnetic Resonance Imaging
D Karkalousos, M Caan
2021
Recurrent Variational Inference for fast and robust reconstruction of accelerated FLAIR MRI in Multiple Sclerosis
D Karkalousos, LC Liebrand, S Noteboom, HE Hulst, FM Vos, MWA Caan
Results of the 2020 fastMRI Brain Reconstruction Challenge
B Riemenschneider, M Muckley, A Radmanesh, S Kim, G Jeong, J Ko, ...
A Deep Learning Accelerated MRI Reconstruction Model's Dependence on Training Data Distribution
D Karkalousos, K Lønning, S Dumoulin, JJ Sonke, MWA Caan
Systém momentálne nemôže vykonať operáciu. Skúste to neskôr.
Články 1–16