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- 2021
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Mark
Deep neural network ensemble for on-the-fly quality control-driven segmentation of cardiac MRI T1 mapping
(
- Contribution to journal › Article
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Mark
Ensemble of Deep Convolutional Neural Networks with Monte Carlo Dropout Sampling for Automated Image Segmentation Quality Control and Robust Deep Learning Using Small Datasets
2021) 25th Annual Conference on Medical Image Understanding and Analysis, MIUA 2021 In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) 12722 LNCS. p.280-293(
- Chapter in Book/Report/Conference proceeding › Paper in conference proceeding
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Mark
Automated motion analysis of bony joint structures from dynamic computer tomography images : A multi-atlas approach
(
- Contribution to journal › Article
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Mark
Brain tissues have single-voxel signatures in multi-spectral MRI
(
- Contribution to journal › Article
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Mark
Automated left atrial time-resolved segmentation in MRI long-axis cine images using active contours
(
- Contribution to journal › Article
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Mark
Assessing Ribosome Distribution Along Transcripts with Polarity Scores and Regression Slope Estimates
(
- Chapter in Book/Report/Conference proceeding › Book chapter
- 2020
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Mark
Characterization of hippocampal subfields using ex vivo MRI and histology data : Lessons for in vivo segmentation
(
- Contribution to journal › Article
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Mark
Artificial intelligence in PET-CT. From Image Enhancement to Imaging Biomarkers.
2020) In Lund University, Faculty of Medicine Doctoral Dissertation Series(
- Thesis › Doctoral thesis (compilation)
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Mark
RECOMIA—a cloud-based platform for artificial intelligence research in nuclear medicine and radiology
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- Contribution to journal › Article
- 2019
-
Mark
Automated quantification of reference levels in liver and mediastinal blood pool for the Deauville therapy response classification using FDG-PET/CT in Hodgkin and non-Hodgkin lymphomas
(
- Contribution to journal › Article