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Radiomics for Identification and Prediction in Metastatic Prostate Cancer: A Review of Studies

Metastatic Prostate Cancer (mPCa) is associated with a poor patient prognosis. mPCa spreads throughout the body, often to bones, with spatial and temporal variations that make the clinical management of the disease difficult. The evolution of the disease leads to spatial heterogeneity that is extrem...

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Autores principales: Kendrick, Jake, Francis, Roslyn, Hassan, Ghulam Mubashar, Rowshanfarzad, Pejman, Jeraj, Robert, Kasisi, Collin, Rusanov, Branimir, Ebert, Martin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8591174/
https://www.ncbi.nlm.nih.gov/pubmed/34790581
http://dx.doi.org/10.3389/fonc.2021.771787
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author Kendrick, Jake
Francis, Roslyn
Hassan, Ghulam Mubashar
Rowshanfarzad, Pejman
Jeraj, Robert
Kasisi, Collin
Rusanov, Branimir
Ebert, Martin
author_facet Kendrick, Jake
Francis, Roslyn
Hassan, Ghulam Mubashar
Rowshanfarzad, Pejman
Jeraj, Robert
Kasisi, Collin
Rusanov, Branimir
Ebert, Martin
author_sort Kendrick, Jake
collection PubMed
description Metastatic Prostate Cancer (mPCa) is associated with a poor patient prognosis. mPCa spreads throughout the body, often to bones, with spatial and temporal variations that make the clinical management of the disease difficult. The evolution of the disease leads to spatial heterogeneity that is extremely difficult to characterise with solid biopsies. Imaging provides the opportunity to quantify disease spread. Advanced image analytics methods, including radiomics, offer the opportunity to characterise heterogeneity beyond what can be achieved with simple assessment. Radiomics analysis has the potential to yield useful quantitative imaging biomarkers that can improve the early detection of mPCa, predict disease progression, assess response, and potentially inform the choice of treatment procedures. Traditional radiomics analysis involves modelling with hand-crafted features designed using significant domain knowledge. On the other hand, artificial intelligence techniques such as deep learning can facilitate end-to-end automated feature extraction and model generation with minimal human intervention. Radiomics models have the potential to become vital pieces in the oncology workflow, however, the current limitations of the field, such as limited reproducibility, are impeding their translation into clinical practice. This review provides an overview of the radiomics methodology, detailing critical aspects affecting the reproducibility of features, and providing examples of how artificial intelligence techniques can be incorporated into the workflow. The current landscape of publications utilising radiomics methods in the assessment and treatment of mPCa are surveyed and reviewed. Associated studies have incorporated information from multiple imaging modalities, including bone scintigraphy, CT, PET with varying tracers, multiparametric MRI together with clinical covariates, spanning the prediction of progression through to overall survival in varying cohorts. The methodological quality of each study is quantified using the radiomics quality score. Multiple deficits were identified, with the lack of prospective design and external validation highlighted as major impediments to clinical translation. These results inform some recommendations for future directions of the field.
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spelling pubmed-85911742021-11-16 Radiomics for Identification and Prediction in Metastatic Prostate Cancer: A Review of Studies Kendrick, Jake Francis, Roslyn Hassan, Ghulam Mubashar Rowshanfarzad, Pejman Jeraj, Robert Kasisi, Collin Rusanov, Branimir Ebert, Martin Front Oncol Oncology Metastatic Prostate Cancer (mPCa) is associated with a poor patient prognosis. mPCa spreads throughout the body, often to bones, with spatial and temporal variations that make the clinical management of the disease difficult. The evolution of the disease leads to spatial heterogeneity that is extremely difficult to characterise with solid biopsies. Imaging provides the opportunity to quantify disease spread. Advanced image analytics methods, including radiomics, offer the opportunity to characterise heterogeneity beyond what can be achieved with simple assessment. Radiomics analysis has the potential to yield useful quantitative imaging biomarkers that can improve the early detection of mPCa, predict disease progression, assess response, and potentially inform the choice of treatment procedures. Traditional radiomics analysis involves modelling with hand-crafted features designed using significant domain knowledge. On the other hand, artificial intelligence techniques such as deep learning can facilitate end-to-end automated feature extraction and model generation with minimal human intervention. Radiomics models have the potential to become vital pieces in the oncology workflow, however, the current limitations of the field, such as limited reproducibility, are impeding their translation into clinical practice. This review provides an overview of the radiomics methodology, detailing critical aspects affecting the reproducibility of features, and providing examples of how artificial intelligence techniques can be incorporated into the workflow. The current landscape of publications utilising radiomics methods in the assessment and treatment of mPCa are surveyed and reviewed. Associated studies have incorporated information from multiple imaging modalities, including bone scintigraphy, CT, PET with varying tracers, multiparametric MRI together with clinical covariates, spanning the prediction of progression through to overall survival in varying cohorts. The methodological quality of each study is quantified using the radiomics quality score. Multiple deficits were identified, with the lack of prospective design and external validation highlighted as major impediments to clinical translation. These results inform some recommendations for future directions of the field. Frontiers Media S.A. 2021-11-01 /pmc/articles/PMC8591174/ /pubmed/34790581 http://dx.doi.org/10.3389/fonc.2021.771787 Text en Copyright © 2021 Kendrick, Francis, Hassan, Rowshanfarzad, Jeraj, Kasisi, Rusanov and Ebert https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
Kendrick, Jake
Francis, Roslyn
Hassan, Ghulam Mubashar
Rowshanfarzad, Pejman
Jeraj, Robert
Kasisi, Collin
Rusanov, Branimir
Ebert, Martin
Radiomics for Identification and Prediction in Metastatic Prostate Cancer: A Review of Studies
title Radiomics for Identification and Prediction in Metastatic Prostate Cancer: A Review of Studies
title_full Radiomics for Identification and Prediction in Metastatic Prostate Cancer: A Review of Studies
title_fullStr Radiomics for Identification and Prediction in Metastatic Prostate Cancer: A Review of Studies
title_full_unstemmed Radiomics for Identification and Prediction in Metastatic Prostate Cancer: A Review of Studies
title_short Radiomics for Identification and Prediction in Metastatic Prostate Cancer: A Review of Studies
title_sort radiomics for identification and prediction in metastatic prostate cancer: a review of studies
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8591174/
https://www.ncbi.nlm.nih.gov/pubmed/34790581
http://dx.doi.org/10.3389/fonc.2021.771787
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