Comprehensive imaging characterization of colorectal liver metastases
Comprehensive imaging characterization of colorectal liver metastases
Colorectal liver metastases (CRLM) have heterogenous histopathological and immunohistochemical phenotypes, which are associated with variable responses to treatment and outcomes. However, this information is usually only available after resection, and therefore of limited value in treatment planning. Improved techniques for in vivo disease assessment, which can characterise the variable tumour biology, would support further personalization of management strategies. Advanced imaging of CRLM including multiparametric MRI and functional imaging techniques have the potential to provide clinically-actionable phenotypic characterisation. This includes assessment of the tumour-liver interface, internal tumour components and treatment response. Advanced analysis techniques, including radiomics and machine learning now have a growing role in assessment of imaging, providing high-dimensional imaging feature extraction which can be linked to clinical relevant tumour phenotypes, such as a the Consensus Molecular Subtypes (CMS). In this review, we outline how imaging techniques could reproducibly characterize the histopathological features of CRLM, with several matched imaging and histology examples to illustrate these features, and discuss the oncological relevance of these features. Finally, we discuss the future challenges and opportunities of CRLM imaging, with a focus on the potential value of advanced analytics including radiomics and artificial intelligence, to help inform future research in this rapidly moving field.
MRI, colorectal (colon) cancer, computed tomography, liver, metastasis, radiomic biomarkers
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Maclean, Drew
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Tsakok, Maria
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Gleeson, Fergus
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Breen, David J
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Goldin, Robert
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Primrose, John
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Harris, Adrian
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Franklin, James
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7 December 2021
Maclean, Drew
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Tsakok, Maria
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Gleeson, Fergus
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Breen, David J
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Goldin, Robert
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Primrose, John
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Harris, Adrian
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Franklin, James
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Maclean, Drew, Tsakok, Maria, Gleeson, Fergus, Breen, David J, Goldin, Robert, Primrose, John, Harris, Adrian and Franklin, James
(2021)
Comprehensive imaging characterization of colorectal liver metastases.
Frontiers in Oncology, 11, , [730854].
(doi:10.3389/fonc.2021.730854).
Abstract
Colorectal liver metastases (CRLM) have heterogenous histopathological and immunohistochemical phenotypes, which are associated with variable responses to treatment and outcomes. However, this information is usually only available after resection, and therefore of limited value in treatment planning. Improved techniques for in vivo disease assessment, which can characterise the variable tumour biology, would support further personalization of management strategies. Advanced imaging of CRLM including multiparametric MRI and functional imaging techniques have the potential to provide clinically-actionable phenotypic characterisation. This includes assessment of the tumour-liver interface, internal tumour components and treatment response. Advanced analysis techniques, including radiomics and machine learning now have a growing role in assessment of imaging, providing high-dimensional imaging feature extraction which can be linked to clinical relevant tumour phenotypes, such as a the Consensus Molecular Subtypes (CMS). In this review, we outline how imaging techniques could reproducibly characterize the histopathological features of CRLM, with several matched imaging and histology examples to illustrate these features, and discuss the oncological relevance of these features. Finally, we discuss the future challenges and opportunities of CRLM imaging, with a focus on the potential value of advanced analytics including radiomics and artificial intelligence, to help inform future research in this rapidly moving field.
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fonc-11-730854
- Author's Original
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fonc-11-730854
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More information
Accepted/In Press date: 15 November 2021
Published date: 7 December 2021
Additional Information:
Publisher Copyright:
Copyright © 2021 Maclean, Tsakok, Gleeson, Breen, Goldin, Primrose, Harris and Franklin.
Copyright:
Copyright 2021 Elsevier B.V., All rights reserved.
Keywords:
MRI, colorectal (colon) cancer, computed tomography, liver, metastasis, radiomic biomarkers
Identifiers
Local EPrints ID: 454352
URI: http://eprints.soton.ac.uk/id/eprint/454352
ISSN: 2234-943X
PURE UUID: a45dd925-980c-44b4-9f90-d84a92824bfa
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Date deposited: 08 Feb 2022 17:30
Last modified: 17 Mar 2024 02:40
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Contributors
Author:
Drew Maclean
Author:
Maria Tsakok
Author:
Fergus Gleeson
Author:
David J Breen
Author:
Robert Goldin
Author:
Adrian Harris
Author:
James Franklin
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