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Advancements in synthetic CT generation from MRI: a review of techniques, and trends in radiation therapy planning

Advancements in synthetic CT generation from MRI: a review of techniques, and trends in radiation therapy planning
Advancements in synthetic CT generation from MRI: a review of techniques, and trends in radiation therapy planning
Background: magnetic resonance imaging (MRI) and Computed tomography (CT) are crucial imaging techniques in both diagnostic imaging and radiation therapy. MRI provides excellent soft tissue contrast but lacks the direct electron density data needed to calculate dosage. CT, on the other hand, remains the gold standard due to its accurate electron density information in radiation therapy planning (RTP) but it exposes patients to ionizing radiation. Synthetic CT (sCT) generation from MRI has been a focused study field in the last few years due to cost effectiveness as well as for the objective of minimizing side-effects of using more than one imaging modality for treatment simulation. It offers significant time and cost efficiencies, bypassing the complexities of co-registration, and potentially improving treatment accuracy by minimizing registration-related errors. In an effort to navigate the quickly developing field of precision medicine, this paper investigates recent advancements in sCT generation techniques, particularly those using machine learning (ML) and deep learning (DL). The review highlights the potential of these techniques to improve the efficiency and accuracy of sCT generation for use in RTP by improving patient care and reducing healthcare costs. The intricate web of sCT generation techniques is scrutinized critically, with clinical implications and technical underpinnings for enhanced patient care revealed.

Purpose: this review aims to provide an overview of the most recent advancements in sCT generation from MRI with a particular focus of its use within RTP, emphasizing on techniques, performance evaluation, clinical applications, future research trends and open challenges in the field.

Methods: a thorough search strategy was employed to conduct a systematic literature review across major scientific databases. Focusing on the past decade's advancements, this review critically examines emerging approaches introduced from 2013 to 2023 for generating sCT from MRI, providing a comprehensive analysis of their methodologies, ultimately fostering further advancement in the field. This study highlighted significant contributions, identified challenges, and provided an overview of successes within RTP. Classifying the identified approaches, contrasting their advantages and disadvantages, and identifying broad trends were all part of the review's synthesis process.

Results: the review identifies various sCT generation approaches, consisting atlas-based, segmentation-based, multi-modal fusion, hybrid approaches, ML and DL-based techniques. These approaches are evaluated for image quality, dosimetric accuracy, and clinical acceptability. They are used for MRI-only radiation treatment, adaptive radiotherapy, and MR/PET attenuation correction. The review also highlights the diversity of methodologies for sCT generation, each with its own advantages and limitations. Emerging trends incorporate the integration of advanced imaging modalities including various MRI sequences like Dixon sequences, T1-weighted (T1W), T2-weighted (T2W), as well as hybrid approaches for enhanced accuracy.

Conclusions: the study examines MRI-based sCT generation, to minimize negative effects of acquiring both modalities. The study reviews 2013-2023 studies on MRI to sCT generation methods, aiming to revolutionize RTP by reducing use of ionizing radiation and improving patient outcomes. The review provides insights for researchers and practitioners, emphasizing the need for standardized validation procedures and collaborative efforts to refine methods and address limitations. It anticipates the continued evolution of techniques to improve the precision of sCT in RTP.
Humans, Radiotherapy Planning, Computer-Assisted/methods, Magnetic Resonance Imaging/methods, Tomography, X-Ray Computed/methods, Neoplasms/radiotherapy, Radiotherapy Dosage, Image Processing, Computer-Assisted/methods, Machine Learning, Radiotherapy, Intensity-Modulated/methods
1526-9914
Bahloul, Mohamed A.
fa34d4d5-5861-4104-9cf8-f4dec80c84a3
Jabeen, Saima
2b8d83f7-0321-424e-92aa-51e0e1f3b65c
Benoumhani, Sara
6b76332d-734b-4c07-b5c4-4ee1d83906ad
Alsaleh, Habib Abdulmohsen
08546f71-d926-4dca-bdb5-f13c4a5799a3
Belkhatir, Zehor
de90d742-a58f-4425-837c-20ff960fb9b6
Al-Wabil, Areej
e6b9b256-4ef9-4abd-81d4-d81ebdb4a632
Bahloul, Mohamed A.
fa34d4d5-5861-4104-9cf8-f4dec80c84a3
Jabeen, Saima
2b8d83f7-0321-424e-92aa-51e0e1f3b65c
Benoumhani, Sara
6b76332d-734b-4c07-b5c4-4ee1d83906ad
Alsaleh, Habib Abdulmohsen
08546f71-d926-4dca-bdb5-f13c4a5799a3
Belkhatir, Zehor
de90d742-a58f-4425-837c-20ff960fb9b6
Al-Wabil, Areej
e6b9b256-4ef9-4abd-81d4-d81ebdb4a632

Bahloul, Mohamed A., Jabeen, Saima, Benoumhani, Sara, Alsaleh, Habib Abdulmohsen, Belkhatir, Zehor and Al-Wabil, Areej (2024) Advancements in synthetic CT generation from MRI: a review of techniques, and trends in radiation therapy planning. Journal Of Applied Clinical Medical Physics, 25 (11), [e14499]. (doi:10.1002/acm2.14499).

Record type: Review

Abstract

Background: magnetic resonance imaging (MRI) and Computed tomography (CT) are crucial imaging techniques in both diagnostic imaging and radiation therapy. MRI provides excellent soft tissue contrast but lacks the direct electron density data needed to calculate dosage. CT, on the other hand, remains the gold standard due to its accurate electron density information in radiation therapy planning (RTP) but it exposes patients to ionizing radiation. Synthetic CT (sCT) generation from MRI has been a focused study field in the last few years due to cost effectiveness as well as for the objective of minimizing side-effects of using more than one imaging modality for treatment simulation. It offers significant time and cost efficiencies, bypassing the complexities of co-registration, and potentially improving treatment accuracy by minimizing registration-related errors. In an effort to navigate the quickly developing field of precision medicine, this paper investigates recent advancements in sCT generation techniques, particularly those using machine learning (ML) and deep learning (DL). The review highlights the potential of these techniques to improve the efficiency and accuracy of sCT generation for use in RTP by improving patient care and reducing healthcare costs. The intricate web of sCT generation techniques is scrutinized critically, with clinical implications and technical underpinnings for enhanced patient care revealed.

Purpose: this review aims to provide an overview of the most recent advancements in sCT generation from MRI with a particular focus of its use within RTP, emphasizing on techniques, performance evaluation, clinical applications, future research trends and open challenges in the field.

Methods: a thorough search strategy was employed to conduct a systematic literature review across major scientific databases. Focusing on the past decade's advancements, this review critically examines emerging approaches introduced from 2013 to 2023 for generating sCT from MRI, providing a comprehensive analysis of their methodologies, ultimately fostering further advancement in the field. This study highlighted significant contributions, identified challenges, and provided an overview of successes within RTP. Classifying the identified approaches, contrasting their advantages and disadvantages, and identifying broad trends were all part of the review's synthesis process.

Results: the review identifies various sCT generation approaches, consisting atlas-based, segmentation-based, multi-modal fusion, hybrid approaches, ML and DL-based techniques. These approaches are evaluated for image quality, dosimetric accuracy, and clinical acceptability. They are used for MRI-only radiation treatment, adaptive radiotherapy, and MR/PET attenuation correction. The review also highlights the diversity of methodologies for sCT generation, each with its own advantages and limitations. Emerging trends incorporate the integration of advanced imaging modalities including various MRI sequences like Dixon sequences, T1-weighted (T1W), T2-weighted (T2W), as well as hybrid approaches for enhanced accuracy.

Conclusions: the study examines MRI-based sCT generation, to minimize negative effects of acquiring both modalities. The study reviews 2013-2023 studies on MRI to sCT generation methods, aiming to revolutionize RTP by reducing use of ionizing radiation and improving patient outcomes. The review provides insights for researchers and practitioners, emphasizing the need for standardized validation procedures and collaborative efforts to refine methods and address limitations. It anticipates the continued evolution of techniques to improve the precision of sCT in RTP.

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J Applied Clin Med Phys - 2024 - Bahloul - Advancements in synthetic CT generation from MRI A review of techniques and - Version of Record
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Accepted/In Press date: 26 July 2024
e-pub ahead of print date: 26 September 2024
Published date: 6 November 2024
Keywords: Humans, Radiotherapy Planning, Computer-Assisted/methods, Magnetic Resonance Imaging/methods, Tomography, X-Ray Computed/methods, Neoplasms/radiotherapy, Radiotherapy Dosage, Image Processing, Computer-Assisted/methods, Machine Learning, Radiotherapy, Intensity-Modulated/methods

Identifiers

Local EPrints ID: 502626
URI: http://eprints.soton.ac.uk/id/eprint/502626
ISSN: 1526-9914
PURE UUID: c9665fb4-1170-436e-a94f-7fda8620cb9f
ORCID for Zehor Belkhatir: ORCID iD orcid.org/0000-0001-7277-3895

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Date deposited: 02 Jul 2025 16:34
Last modified: 22 Aug 2025 02:38

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Contributors

Author: Mohamed A. Bahloul
Author: Saima Jabeen
Author: Sara Benoumhani
Author: Habib Abdulmohsen Alsaleh
Author: Zehor Belkhatir ORCID iD
Author: Areej Al-Wabil

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