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Jan Hendrik Moltz

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International Journal of Computer Assisted Radiology and Surgery|April 26, 2011
Object-based analysis of CT images for automatic detection and segmentation of hypodense liver lesionsMichael Schwier, Jan Hendrik Moltz, Heinz-Otto Peitgen
Academic Radiology|March 18, 2015
Comparison of volumetric and linear serial CT assessments of lung metastases in renal cell carcinoma patients in a clinical phase IIB studyVolker Dicken, Lars Bornemann, Jan Hendrik Moltz, et al.
Scientific Reports|October 21, 2018
Automatic liver tumor segmentation in CT with fully convolutional neural networks and object-based postprocessingGrzegorz Chlebus, Andrea Schenk, Jan Hendrik Moltz, et al.
Critical Reviews in Biomedical Engineering|December 24, 2010
State of the art in computer-assisted planning, intervention, and assessment of liver-tumor ablationChristian Schumann, Christian Rieder, Jennifer Bieberstein, et al.
European Radiology|June 30, 2012
Workflow-centred evaluation of an automatic lesion tracking software for chemotherapy monitoring by CTJan Hendrik Moltz, Melvin D'Anastasi, Andreas Kiessling, et al.
Journal of Medical Imaging (Bellingham, Wash.)|November 16, 2020
Hippocampus segmentation in CT using deep learning: impact of MR versus CT-based training contoursAnnika Hänsch, Jan Hendrik Moltz, Benjamin Geisler, et al.
European Radiology|June 25, 2021
Automated segmentation and quantification of the healthy and diseased aorta in CT angiographies using a dedicated deep learning approachMalte Maria Sieren, Cornelia Widmann, Nick Weiss, et al.
Scientific Data|May 18, 2026
A longitudinal whole-body CT dataset with manually annotated tumor lesionsSergios Gatidis, Felix Peisen, Andreas Wagner, et al.
Academic Radiology|May 25, 2016
Algorithm Variability in the Estimation of Lung Nodule Volume From Phantom CT Scans: Results of the QIBA 3A Public ChallengeMaria Athelogou, Hyun J Kim, Alden Dima, et al.
Medical Image Analysis|September 26, 2022
Rapid artificial intelligence solutions in a pandemic-The COVID-19-20 Lung CT Lesion Segmentation ChallengeHolger R Roth, Ziyue Xu, Carlos Tor-Díez, et al.
Pageof 2

Showing results (1-10 of 13) with videos related to

Sort By:
Pageof 2
International Journal of Computer Assisted Radiology and Surgery|April 26, 2011
Object-based analysis of CT images for automatic detection and segmentation of hypodense liver lesionsMichael Schwier, Jan Hendrik Moltz, Heinz-Otto Peitgen
Academic Radiology|March 18, 2015
Comparison of volumetric and linear serial CT assessments of lung metastases in renal cell carcinoma patients in a clinical phase IIB studyVolker Dicken, Lars Bornemann, Jan Hendrik Moltz, et al.
Scientific Reports|October 21, 2018
Automatic liver tumor segmentation in CT with fully convolutional neural networks and object-based postprocessingGrzegorz Chlebus, Andrea Schenk, Jan Hendrik Moltz, et al.
Critical Reviews in Biomedical Engineering|December 24, 2010
State of the art in computer-assisted planning, intervention, and assessment of liver-tumor ablationChristian Schumann, Christian Rieder, Jennifer Bieberstein, et al.
European Radiology|June 30, 2012
Workflow-centred evaluation of an automatic lesion tracking software for chemotherapy monitoring by CTJan Hendrik Moltz, Melvin D'Anastasi, Andreas Kiessling, et al.
Journal of Medical Imaging (Bellingham, Wash.)|November 16, 2020
Hippocampus segmentation in CT using deep learning: impact of MR versus CT-based training contoursAnnika Hänsch, Jan Hendrik Moltz, Benjamin Geisler, et al.
European Radiology|June 25, 2021
Automated segmentation and quantification of the healthy and diseased aorta in CT angiographies using a dedicated deep learning approachMalte Maria Sieren, Cornelia Widmann, Nick Weiss, et al.
Scientific Data|May 18, 2026
A longitudinal whole-body CT dataset with manually annotated tumor lesionsSergios Gatidis, Felix Peisen, Andreas Wagner, et al.
Academic Radiology|May 25, 2016
Algorithm Variability in the Estimation of Lung Nodule Volume From Phantom CT Scans: Results of the QIBA 3A Public ChallengeMaria Athelogou, Hyun J Kim, Alden Dima, et al.
Medical Image Analysis|September 26, 2022
Rapid artificial intelligence solutions in a pandemic-The COVID-19-20 Lung CT Lesion Segmentation ChallengeHolger R Roth, Ziyue Xu, Carlos Tor-Díez, et al.
Pageof 2