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Main Authors: Götz, Michael, Weber, Christian, Binczyk, Franciszek, Polanska, Joanna, Tarnawski, Rafal, Bobek-Billewicz, Barbara, Köthe, Ullrich, Kleesiek, Jens, Stieltjes, Bram, Maier-Hein, Klaus H.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.07434
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author Götz, Michael
Weber, Christian
Binczyk, Franciszek
Polanska, Joanna
Tarnawski, Rafal
Bobek-Billewicz, Barbara
Köthe, Ullrich
Kleesiek, Jens
Stieltjes, Bram
Maier-Hein, Klaus H.
author_facet Götz, Michael
Weber, Christian
Binczyk, Franciszek
Polanska, Joanna
Tarnawski, Rafal
Bobek-Billewicz, Barbara
Köthe, Ullrich
Kleesiek, Jens
Stieltjes, Bram
Maier-Hein, Klaus H.
contents We propose a new method that employs transfer learning techniques to effectively correct sampling selection errors introduced by sparse annotations during supervised learning for automated tumor segmentation. The practicality of current learning-based automated tissue classification approaches is severely impeded by their dependency on manually segmented training databases that need to be recreated for each scenario of application, site, or acquisition setup. The comprehensive annotation of reference datasets can be highly labor-intensive, complex, and error-prone. The proposed method derives high-quality classifiers for the different tissue classes from sparse and unambiguous annotations and employs domain adaptation techniques for effectively correcting sampling selection errors introduced by the sparse sampling. The new approach is validated on labeled, multi-modal MR images of 19 patients with malignant gliomas and by comparative analysis on the BraTS 2013 challenge data sets. Compared to training on fully labeled data, we reduced the time for labeling and training by a factor greater than 70 and 180 respectively without sacrificing accuracy. This dramatically eases the establishment and constant extension of large annotated databases in various scenarios and imaging setups and thus represents an important step towards practical applicability of learning-based approaches in tissue classification.
format Preprint
id arxiv_https___arxiv_org_abs_2403_07434
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle DALSA: Domain Adaptation for Supervised Learning From Sparsely Annotated MR Images
Götz, Michael
Weber, Christian
Binczyk, Franciszek
Polanska, Joanna
Tarnawski, Rafal
Bobek-Billewicz, Barbara
Köthe, Ullrich
Kleesiek, Jens
Stieltjes, Bram
Maier-Hein, Klaus H.
Image and Video Processing
Computer Vision and Pattern Recognition
We propose a new method that employs transfer learning techniques to effectively correct sampling selection errors introduced by sparse annotations during supervised learning for automated tumor segmentation. The practicality of current learning-based automated tissue classification approaches is severely impeded by their dependency on manually segmented training databases that need to be recreated for each scenario of application, site, or acquisition setup. The comprehensive annotation of reference datasets can be highly labor-intensive, complex, and error-prone. The proposed method derives high-quality classifiers for the different tissue classes from sparse and unambiguous annotations and employs domain adaptation techniques for effectively correcting sampling selection errors introduced by the sparse sampling. The new approach is validated on labeled, multi-modal MR images of 19 patients with malignant gliomas and by comparative analysis on the BraTS 2013 challenge data sets. Compared to training on fully labeled data, we reduced the time for labeling and training by a factor greater than 70 and 180 respectively without sacrificing accuracy. This dramatically eases the establishment and constant extension of large annotated databases in various scenarios and imaging setups and thus represents an important step towards practical applicability of learning-based approaches in tissue classification.
title DALSA: Domain Adaptation for Supervised Learning From Sparsely Annotated MR Images
topic Image and Video Processing
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2403.07434