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Magnetic Resonance Imaging Based Radiomic Models of Prostate Cancer: A Narrative Review

SIMPLE SUMMARY: The increasing interest in implementing artificial intelligence in radiomic models has occurred alongside advancement in the tools used for computer-aided diagnosis. Such tools typically apply both statistical and machine learning methodologies to assess the various modalities used i...

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Autores principales: Chaddad, Ahmad, Kucharczyk, Michael J., Cheddad, Abbas, Clarke, Sharon E., Hassan, Lama, Ding, Shuxue, Rathore, Saima, Zhang, Mingli, Katib, Yousef, Bahoric, Boris, Abikhzer, Gad, Probst, Stephan, Niazi, Tamim
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7867056/
https://www.ncbi.nlm.nih.gov/pubmed/33535569
http://dx.doi.org/10.3390/cancers13030552
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author Chaddad, Ahmad
Kucharczyk, Michael J.
Cheddad, Abbas
Clarke, Sharon E.
Hassan, Lama
Ding, Shuxue
Rathore, Saima
Zhang, Mingli
Katib, Yousef
Bahoric, Boris
Abikhzer, Gad
Probst, Stephan
Niazi, Tamim
author_facet Chaddad, Ahmad
Kucharczyk, Michael J.
Cheddad, Abbas
Clarke, Sharon E.
Hassan, Lama
Ding, Shuxue
Rathore, Saima
Zhang, Mingli
Katib, Yousef
Bahoric, Boris
Abikhzer, Gad
Probst, Stephan
Niazi, Tamim
author_sort Chaddad, Ahmad
collection PubMed
description SIMPLE SUMMARY: The increasing interest in implementing artificial intelligence in radiomic models has occurred alongside advancement in the tools used for computer-aided diagnosis. Such tools typically apply both statistical and machine learning methodologies to assess the various modalities used in medical image analysis. Specific to prostate cancer, the radiomics pipeline has multiple facets that are amenable to improvement. This review discusses the steps of a magnetic resonance imaging based radiomics pipeline. Present successes, existing opportunities for refinement, and the most pertinent pending steps leading to clinical validation are highlighted. ABSTRACT: The management of prostate cancer (PCa) is dependent on biomarkers of biological aggression. This includes an invasive biopsy to facilitate a histopathological assessment of the tumor’s grade. This review explores the technical processes of applying magnetic resonance imaging based radiomic models to the evaluation of PCa. By exploring how a deep radiomics approach further optimizes the prediction of a PCa’s grade group, it will be clear how this integration of artificial intelligence mitigates existing major technological challenges faced by a traditional radiomic model: image acquisition, small data sets, image processing, labeling/segmentation, informative features, predicting molecular features and incorporating predictive models. Other potential impacts of artificial intelligence on the personalized treatment of PCa will also be discussed. The role of deep radiomics analysis-a deep texture analysis, which extracts features from convolutional neural networks layers, will be highlighted. Existing clinical work and upcoming clinical trials will be reviewed, directing investigators to pertinent future directions in the field. For future progress to result in clinical translation, the field will likely require multi-institutional collaboration in producing prospectively populated and expertly labeled imaging libraries.
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spelling pubmed-78670562021-02-07 Magnetic Resonance Imaging Based Radiomic Models of Prostate Cancer: A Narrative Review Chaddad, Ahmad Kucharczyk, Michael J. Cheddad, Abbas Clarke, Sharon E. Hassan, Lama Ding, Shuxue Rathore, Saima Zhang, Mingli Katib, Yousef Bahoric, Boris Abikhzer, Gad Probst, Stephan Niazi, Tamim Cancers (Basel) Review SIMPLE SUMMARY: The increasing interest in implementing artificial intelligence in radiomic models has occurred alongside advancement in the tools used for computer-aided diagnosis. Such tools typically apply both statistical and machine learning methodologies to assess the various modalities used in medical image analysis. Specific to prostate cancer, the radiomics pipeline has multiple facets that are amenable to improvement. This review discusses the steps of a magnetic resonance imaging based radiomics pipeline. Present successes, existing opportunities for refinement, and the most pertinent pending steps leading to clinical validation are highlighted. ABSTRACT: The management of prostate cancer (PCa) is dependent on biomarkers of biological aggression. This includes an invasive biopsy to facilitate a histopathological assessment of the tumor’s grade. This review explores the technical processes of applying magnetic resonance imaging based radiomic models to the evaluation of PCa. By exploring how a deep radiomics approach further optimizes the prediction of a PCa’s grade group, it will be clear how this integration of artificial intelligence mitigates existing major technological challenges faced by a traditional radiomic model: image acquisition, small data sets, image processing, labeling/segmentation, informative features, predicting molecular features and incorporating predictive models. Other potential impacts of artificial intelligence on the personalized treatment of PCa will also be discussed. The role of deep radiomics analysis-a deep texture analysis, which extracts features from convolutional neural networks layers, will be highlighted. Existing clinical work and upcoming clinical trials will be reviewed, directing investigators to pertinent future directions in the field. For future progress to result in clinical translation, the field will likely require multi-institutional collaboration in producing prospectively populated and expertly labeled imaging libraries. MDPI 2021-02-01 /pmc/articles/PMC7867056/ /pubmed/33535569 http://dx.doi.org/10.3390/cancers13030552 Text en © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Review
Chaddad, Ahmad
Kucharczyk, Michael J.
Cheddad, Abbas
Clarke, Sharon E.
Hassan, Lama
Ding, Shuxue
Rathore, Saima
Zhang, Mingli
Katib, Yousef
Bahoric, Boris
Abikhzer, Gad
Probst, Stephan
Niazi, Tamim
Magnetic Resonance Imaging Based Radiomic Models of Prostate Cancer: A Narrative Review
title Magnetic Resonance Imaging Based Radiomic Models of Prostate Cancer: A Narrative Review
title_full Magnetic Resonance Imaging Based Radiomic Models of Prostate Cancer: A Narrative Review
title_fullStr Magnetic Resonance Imaging Based Radiomic Models of Prostate Cancer: A Narrative Review
title_full_unstemmed Magnetic Resonance Imaging Based Radiomic Models of Prostate Cancer: A Narrative Review
title_short Magnetic Resonance Imaging Based Radiomic Models of Prostate Cancer: A Narrative Review
title_sort magnetic resonance imaging based radiomic models of prostate cancer: a narrative review
topic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7867056/
https://www.ncbi.nlm.nih.gov/pubmed/33535569
http://dx.doi.org/10.3390/cancers13030552
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