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Towards MR contrast independent synthetic CT generation
Umeå University, Faculty of Medicine, Department of Radiation Sciences.
Umeå University, Faculty of Medicine, Department of Radiation Sciences.ORCID iD: 0000-0001-7539-2262
Umeå University, Faculty of Medicine, Department of Radiation Sciences.
Umeå University, Faculty of Science and Technology, Department of Computing Science.ORCID iD: 0000-0001-7119-7646
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2024 (English)In: Zeitschrift für Medizinische Physik, ISSN 0939-3889, E-ISSN 1876-4436, Vol. 34, no 2, p. 270-277Article in journal (Refereed) Published
Abstract [en]

The use of synthetic CT (sCT) in the radiotherapy workflow would reduce costs and scan time while removing the uncertainties around working with both MR and CT modalities. The performance of deep learning (DL) solutions for sCT generation is steadily increasing, however most proposed methods were trained and validated on private datasets of a single contrast from a single scanner. Such solutions might not perform equally well on other datasets, limiting their general usability and therefore value. Additionally, functional evaluations of sCTs such as dosimetric comparisons with CT-based dose calculations better show the impact of the methods, but the evaluations are more labor intensive than pixel-wise metrics.

To improve the generalization of an sCT model, we propose to incorporate a pre-trained DL model to pre-process the input MR images by generating artificial proton density, T1 and T2 maps (i.e. contrast-independent quantitative maps), which are then used for sCT generation. Using a dataset of only T2w MR images, the robustness towards input MR contrasts of this approach is compared to a model that was trained using the MR images directly. We evaluate the generated sCTs using pixel-wise metrics and calculating mean radiological depths, as an approximation of the mean delivered dose. On T2w images acquired with the same settings as the training dataset, there was no significant difference between the performance of the models. However, when evaluated on T1w images, and a wide range of other contrasts and scanners from both public and private datasets, our approach outperforms the baseline model. Using a dataset of T2w MR images, our proposed model implements synthetic quantitative maps to generate sCT images, improving the generalization towards other contrasts. Our code and trained models are publicly available.

Place, publisher, year, edition, pages
Elsevier, 2024. Vol. 34, no 2, p. 270-277
Keywords [en]
MRI contrast, Robust machine learning, Synthetic CT generation
National Category
Computer Sciences Radiology, Nuclear Medicine and Medical Imaging
Identifiers
URN: urn:nbn:se:umu:diva-214270DOI: 10.1016/j.zemedi.2023.07.001ISI: 001246727700001PubMedID: 37537099Scopus ID: 2-s2.0-85169824488OAI: oai:DiVA.org:umu-214270DiVA, id: diva2:1796266
Funder
Cancerforskningsfonden i Norrland, LP 18-2182Cancerforskningsfonden i Norrland, AMP 18-912Cancerforskningsfonden i Norrland, AMP 20-1014Cancerforskningsfonden i Norrland, LP 22-2319Region VästerbottenSwedish National Infrastructure for Computing (SNIC)Available from: 2023-09-12 Created: 2023-09-12 Last updated: 2024-07-04Bibliographically approved
In thesis
1. Contributions to deep learning for imaging in radiotherapy
Open this publication in new window or tab >>Contributions to deep learning for imaging in radiotherapy
2023 (English)Doctoral thesis, comprehensive summary (Other academic)
Alternative title[sv]
Bidrag till djupinlärning för bildbehandling inom strålbehandling
Abstract [en]

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.

Place, publisher, year, edition, pages
Umeå: Umeå University, 2023. p. 100
Series
Umeå University medical dissertations, ISSN 0346-6612 ; 2264
Keywords
deep learning, medical imaging, radiotherapy, artefact correction, bias field correction, contrast transfer, synthetic CT, reproducibility
National Category
Radiology, Nuclear Medicine and Medical Imaging
Identifiers
urn:nbn:se:umu:diva-215693 (URN)9789180701945 (ISBN)9789180701952 (ISBN)
Public defence
2024-01-26, E04, Norrlands universitetssjukhus, Umeå, 13:00 (English)
Opponent
Supervisors
Available from: 2023-11-08 Created: 2023-10-25 Last updated: 2024-07-02Bibliographically approved

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Simkó, AttilaBylund, MikaelLöfstedt, TommyGarpebring, AndersNyholm, TufveJonsson, Joakim

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Simkó, AttilaBylund, MikaelLöfstedt, TommyGarpebring, AndersNyholm, TufveJonsson, Joakim
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Department of Radiation SciencesDepartment of Computing Science
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Zeitschrift für Medizinische Physik
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