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Learning joint segmentation of tissues and brain lesions from task-specific hetero-modal domain-shifted datasets

Brain tissue segmentation from multimodal MRI is a key building block of many neuroimaging analysis pipelines. Established tissue segmentation approaches have, however, not been developed to cope with large anatomical changes resulting from pathology, such as white matter lesions or tumours, and oft...

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Autores principales: Dorent, Reuben, Booth, Thomas, Li, Wenqi, Sudre, Carole H., Kafiabadi, Sina, Cardoso, Jorge, Ourselin, Sebastien, Vercauteren, Tom
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7116853/
https://www.ncbi.nlm.nih.gov/pubmed/33129151
http://dx.doi.org/10.1016/j.media.2020.101862
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author Dorent, Reuben
Booth, Thomas
Li, Wenqi
Sudre, Carole H.
Kafiabadi, Sina
Cardoso, Jorge
Ourselin, Sebastien
Vercauteren, Tom
author_facet Dorent, Reuben
Booth, Thomas
Li, Wenqi
Sudre, Carole H.
Kafiabadi, Sina
Cardoso, Jorge
Ourselin, Sebastien
Vercauteren, Tom
author_sort Dorent, Reuben
collection PubMed
description Brain tissue segmentation from multimodal MRI is a key building block of many neuroimaging analysis pipelines. Established tissue segmentation approaches have, however, not been developed to cope with large anatomical changes resulting from pathology, such as white matter lesions or tumours, and often fail in these cases. In the meantime, with the advent of deep neural networks (DNNs), segmentation of brain lesions has matured significantly. However, few existing approaches allow for the joint segmentation of normal tissue and brain lesions. Developing a DNN for such a joint task is currently hampered by the fact that annotated datasets typically address only one specific task and rely on task-specific imaging protocols including a task-specific set of imaging modalities. In this work, we propose a novel approach to build a joint tissue and lesion segmentation model from aggregated task-specific hetero-modal domain-shifted and partially-annotated datasets. Starting from a variational formulation of the joint problem, we show how the expected risk can be decomposed and optimised empirically. We exploit an upper bound of the risk to deal with heterogeneous imaging modalities across datasets. To deal with potential domain shift, we integrated and tested three conventional techniques based on data augmentation, adversarial learning and pseudo-healthy generation. For each individual task, our joint approach reaches comparable performance to task-specific and fully-supervised models. The proposed framework is assessed on two different types of brain lesions: White matter lesions and gliomas. In the latter case, lacking a joint ground-truth for quantitative assessment purposes, we propose and use a novel clinically-relevant qualitative assessment methodology.
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spelling pubmed-71168532021-03-04 Learning joint segmentation of tissues and brain lesions from task-specific hetero-modal domain-shifted datasets Dorent, Reuben Booth, Thomas Li, Wenqi Sudre, Carole H. Kafiabadi, Sina Cardoso, Jorge Ourselin, Sebastien Vercauteren, Tom Med Image Anal Article Brain tissue segmentation from multimodal MRI is a key building block of many neuroimaging analysis pipelines. Established tissue segmentation approaches have, however, not been developed to cope with large anatomical changes resulting from pathology, such as white matter lesions or tumours, and often fail in these cases. In the meantime, with the advent of deep neural networks (DNNs), segmentation of brain lesions has matured significantly. However, few existing approaches allow for the joint segmentation of normal tissue and brain lesions. Developing a DNN for such a joint task is currently hampered by the fact that annotated datasets typically address only one specific task and rely on task-specific imaging protocols including a task-specific set of imaging modalities. In this work, we propose a novel approach to build a joint tissue and lesion segmentation model from aggregated task-specific hetero-modal domain-shifted and partially-annotated datasets. Starting from a variational formulation of the joint problem, we show how the expected risk can be decomposed and optimised empirically. We exploit an upper bound of the risk to deal with heterogeneous imaging modalities across datasets. To deal with potential domain shift, we integrated and tested three conventional techniques based on data augmentation, adversarial learning and pseudo-healthy generation. For each individual task, our joint approach reaches comparable performance to task-specific and fully-supervised models. The proposed framework is assessed on two different types of brain lesions: White matter lesions and gliomas. In the latter case, lacking a joint ground-truth for quantitative assessment purposes, we propose and use a novel clinically-relevant qualitative assessment methodology. 2021-01-01 2020-10-09 /pmc/articles/PMC7116853/ /pubmed/33129151 http://dx.doi.org/10.1016/j.media.2020.101862 Text en https://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license https://creativecommons.org/licenses/by/4.0/.
spellingShingle Article
Dorent, Reuben
Booth, Thomas
Li, Wenqi
Sudre, Carole H.
Kafiabadi, Sina
Cardoso, Jorge
Ourselin, Sebastien
Vercauteren, Tom
Learning joint segmentation of tissues and brain lesions from task-specific hetero-modal domain-shifted datasets
title Learning joint segmentation of tissues and brain lesions from task-specific hetero-modal domain-shifted datasets
title_full Learning joint segmentation of tissues and brain lesions from task-specific hetero-modal domain-shifted datasets
title_fullStr Learning joint segmentation of tissues and brain lesions from task-specific hetero-modal domain-shifted datasets
title_full_unstemmed Learning joint segmentation of tissues and brain lesions from task-specific hetero-modal domain-shifted datasets
title_short Learning joint segmentation of tissues and brain lesions from task-specific hetero-modal domain-shifted datasets
title_sort learning joint segmentation of tissues and brain lesions from task-specific hetero-modal domain-shifted datasets
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7116853/
https://www.ncbi.nlm.nih.gov/pubmed/33129151
http://dx.doi.org/10.1016/j.media.2020.101862
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