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Jakob Wasserthal
Jakob Wasserthal
German Cancer Research Center, University Hospital Basel
Verified email at usb.ch
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Cited by
Cited by
Year
nnu-net: Self-adapting framework for u-net-based medical image segmentation
F Isensee, J Petersen, A Klein, D Zimmerer, PF Jaeger, S Kohl, ...
arXiv preprint arXiv:1809.10486, 2018
8542018
TractSeg-Fast and accurate white matter tract segmentation
J Wasserthal, P Neher, KH Maier-Hein
NeuroImage 183, 239-253, 2018
4532018
Totalsegmentator: Robust segmentation of 104 anatomic structures in ct images
J Wasserthal, HC Breit, MT Meyer, M Pradella, D Hinck, AW Sauter, ...
Radiology: Artificial Intelligence 5 (5), 2023
2642023
Combined tract segmentation and orientation mapping for bundle-specific tractography
J Wasserthal, PF Neher, D Hirjak, KH Maier-Hein
Medical image analysis 58, 101559, 2019
1252019
Tract orientation mapping for bundle-specific tractography
J Wasserthal, PF Neher, KH Maier-Hein
Medical Image Computing and Computer Assisted Intervention–MICCAI 2018: 21st …, 2018
602018
Multiparametric mapping of white matter microstructure in catatonia
J Wasserthal, KH Maier-Hein, PF Neher, G Northoff, KM Kubera, S Fritze, ...
Neuropsychopharmacology 45 (10), 1750-1757, 2020
592020
Tractography reproducibility challenge with empirical data (TraCED): the 2017 ISMRM diffusion study group challenge
V Nath, KG Schilling, P Parvathaneni, Y Huo, JA Blaber, AE Hainline, ...
Journal of Magnetic Resonance Imaging 51 (1), 234-249, 2020
482020
batchgenerators—a python framework for data augmentation
F Isensee, P Jäger, J Wasserthal, D Zimmerer, J Petersen, S Kohl, ...
Zenodo 3632567, 2020
452020
nnU-Net: self-adapting framework for U-Net-based medical image segmentation. 2018
F Isensee, J Petersen, A Klein, D Zimmerer, PF Jaeger, S Kohl, ...
arXiv preprint arXiv:1809.10486, 1809
241809
Potential of stroke imaging using a new prototype of low-field MRI: a prospective direct 0.55 T/1.5 T scanner comparison
T Rusche, HC Breit, M Bach, J Wasserthal, J Gehweiler, S Manneck, ...
Journal of Clinical Medicine 11 (10), 2798, 2022
182022
Automated detection of pancreatic cystic lesions on CT using deep learning
L Abel, J Wasserthal, T Weikert, AW Sauter, I Nesic, M Obradovic, S Yang, ...
Diagnostics 11 (5), 901, 2021
152021
batchgenerators-a python framework for data augmentation (2020)
F Isensee, P Jäger, J Wasserthal, D Zimmerer, J Petersen, S Kohl, ...
DOI: https://doi. org/10.5281/zenodo 3632567, 2020
152020
Differentiating axonal loss and demyelination in chronic MS lesions: A novel approach using single streamline diffusivity analysis
S Klistorner, MH Barnett, J Wasserthal, C Yiannikas, J Barton, J Parratt, ...
PLoS One 16 (1), e0244766, 2021
92021
MedShapeNet--A Large-Scale Dataset of 3D Medical Shapes for Computer Vision
J Li, A Pepe, C Gsaxner, G Luijten, Y Jin, N Ambigapathy, E Nasca, ...
arXiv preprint arXiv:2308.16139, 2023
72023
White matter microstructure alterations in cortico-striatal networks are associated with parkinsonism in schizophrenia spectrum disorders
J Wasserthal, KH Maier-Hein, PF Neher, RC Wolf, G Northoff, ...
European Neuropsychopharmacology 50, 64-74, 2021
72021
Direct white matter bundle segmentation using stacked u-nets
J Wasserthal, PF Neher, F Isensee, KH Maier-Hein
arXiv preprint arXiv:1703.02036, 2017
72017
Pulmonary transit time of cardiovascular magnetic resonance perfusion scans for quantification of cardiopulmonary haemodynamics
M Segeroth, DJ Winkel, I Strebel, S Yang, JG van der Stouwe, ...
European Heart Journal-Cardiovascular Imaging 24 (8), 1062-1071, 2023
42023
Prospective assessment of cerebral microbleeds with low-field magnetic resonance imaging (0.55 Tesla MRI)
T Rusche, HC Breit, M Bach, J Wasserthal, J Gehweiler, S Manneck, ...
Journal of Clinical Medicine 12 (3), 1179, 2023
42023
Machine Learning for Onset Prediction of Patients with Intracerebral Hemorrhage
T Rusche, J Wasserthal, HC Breit, U Fischer, R Guzman, J Fiehler, ...
Journal of Clinical Medicine 12 (7), 2631, 2023
22023
Deep Anatomical Federated Network (Dafne): an open client/server framework for the continuous collaborative improvement of deep-learning-based medical image segmentation
F Santini, J Wasserthal, A Agosti, X Deligianni, KR Keene, HE Kan, ...
arXiv preprint arXiv:2302.06352, 2023
22023
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