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Contributions to de...
Contributions to deep learning for imaging in radiotherapy
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- Simkó, Attila, 1995- (författare)
- Umeå universitet,Radiofysik
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- Jonsson, Joakim, PhD, 1984- (preses)
- Umeå universitet,Radiofysik
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- Löfstedt, Tommy, Docent (preses)
- Umeå universitet,Radiofysik,Institutionen för datavetenskap
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- Garpebring, Anders, Docent (preses)
- Umeå universitet,Institutionen för strålningsvetenskaper
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- Nyholm, Tufve, Professor (preses)
- Umeå universitet,Radiofysik
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- Cheplygina, Veronika, Associate professor, PhD (opponent)
- IT University of Copenhagen, Copenhagen, Denmark
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(creator_code:org_t)
- ISBN 9789180701945
- Umeå : Umeå University, 2023
- Engelska 100 s.
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Serie: Umeå University medical dissertations, 0346-6612 ; 2264
- Relaterad länk:
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http://www.mlsatelli...
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https://umu.diva-por... (primary) (Raw object)
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https://umu.diva-por...
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https://urn.kb.se/re...
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Abstract
Ämnesord
Stäng
- Purpose: The increasing importance of medical imaging in cancer treatment, combined with the growing popularity of deep learning gave relevance to the presented contributions to deep learning solutions with applications in medical imaging.Relevance: The projects aim to improve the efficiency of MRI for automated tasks related to radiotherapy, building on recent advancements in the field of deep learning.Approach: Our implementations are built on recently developed deep learning methodologies, while introducing novel approaches in the main aspects of deep learning, with regards to physics-informed augmentations and network architectures, and implicit loss functions. To make future comparisons easier, we often evaluated our methods on public datasets, and made all solutions publicly available.Results: The results of the collected projects include the development of robust models for MRI bias field correction, artefact removal, contrast transfer and sCT generation. Furthermore, the projects stress the importance of reproducibility in deep learning research and offer guidelines for creating transparent and usable code repositories.Conclusions: Our results collectively build the position of deep learning in the field of medical imaging. The projects offer solutions that are both novel and aim to be highly applicable, while emphasizing generalization towards a wide variety of data and the transparency of the results.
Ämnesord
- MEDICIN OCH HÄLSOVETENSKAP -- Klinisk medicin -- Radiologi och bildbehandling (hsv//swe)
- MEDICAL AND HEALTH SCIENCES -- Clinical Medicine -- Radiology, Nuclear Medicine and Medical Imaging (hsv//eng)
Nyckelord
- deep learning
- medical imaging
- radiotherapy
- artefact correction
- bias field correction
- contrast transfer
- synthetic CT
- reproducibility
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Simkó, Attila, 1 ...
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Jonsson, Joakim, ...
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Löfstedt, Tommy, ...
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Garpebring, Ande ...
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Nyholm, Tufve, P ...
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Cheplygina, Vero ...
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