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Investigation of Radiation-Induced Toxicity in Head and Neck Cancer Patients through Radiomics and Machine Learning: A Systematic Review

Background. Radiation-induced toxicity represents a crucial concern in oncological treatments of patients affected by head and neck neoplasms, due to its impact on survivors' quality of life. Published reports suggested the potential of radiomics combined with machine learning methods in the pr...

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Autores principales: Carbonara, Roberta, Bonomo, Pierluigi, Di Rito, Alessia, Didonna, Vittorio, Gregucci, Fabiana, Ciliberti, Maria Paola, Surgo, Alessia, Bonaparte, Ilaria, Fiorentino, Alba, Sardaro, Angela
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8211491/
https://www.ncbi.nlm.nih.gov/pubmed/34211551
http://dx.doi.org/10.1155/2021/5566508
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author Carbonara, Roberta
Bonomo, Pierluigi
Di Rito, Alessia
Didonna, Vittorio
Gregucci, Fabiana
Ciliberti, Maria Paola
Surgo, Alessia
Bonaparte, Ilaria
Fiorentino, Alba
Sardaro, Angela
author_facet Carbonara, Roberta
Bonomo, Pierluigi
Di Rito, Alessia
Didonna, Vittorio
Gregucci, Fabiana
Ciliberti, Maria Paola
Surgo, Alessia
Bonaparte, Ilaria
Fiorentino, Alba
Sardaro, Angela
author_sort Carbonara, Roberta
collection PubMed
description Background. Radiation-induced toxicity represents a crucial concern in oncological treatments of patients affected by head and neck neoplasms, due to its impact on survivors' quality of life. Published reports suggested the potential of radiomics combined with machine learning methods in the prediction and assessment of radiation-induced toxicities, supporting a tailored radiation treatment management. In this paper, we present an update of the current knowledge concerning these modern approaches. Materials and Methods. A systematic review according to PICO-PRISMA methodology was conducted in MEDLINE/PubMed and EMBASE databases until June 2019. Studies assessing the use of radiomics combined with machine learning in predicting radiation-induced toxicity in head and neck cancer patients were specifically included. Four authors (two independently and two in concordance) assessed the methodological quality of the included studies using the Radiomic Quality Score (RQS). The overall score for each analyzed study was obtained by the sum of the single RQS items; the average and standard deviation values of the authors' RQS were calculated and reported. Results. Eight included papers, presenting data on parotid glands, cochlea, masticatory muscles, and white brain matter, were specifically analyzed in this review. Only one study had an average RQS was ≤ 30% (50%), while 3 studies obtained a RQS almost ≤ 25%. Potential variability in the interpretations of specific RQS items could have influenced the inter-rater agreement in specific cases. Conclusions. Published radiomic studies provide encouraging but still limited and preliminary data that require further validation to improve the decision-making processes in preventing and managing radiation-induced toxicities.
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spelling pubmed-82114912021-06-30 Investigation of Radiation-Induced Toxicity in Head and Neck Cancer Patients through Radiomics and Machine Learning: A Systematic Review Carbonara, Roberta Bonomo, Pierluigi Di Rito, Alessia Didonna, Vittorio Gregucci, Fabiana Ciliberti, Maria Paola Surgo, Alessia Bonaparte, Ilaria Fiorentino, Alba Sardaro, Angela J Oncol Review Article Background. Radiation-induced toxicity represents a crucial concern in oncological treatments of patients affected by head and neck neoplasms, due to its impact on survivors' quality of life. Published reports suggested the potential of radiomics combined with machine learning methods in the prediction and assessment of radiation-induced toxicities, supporting a tailored radiation treatment management. In this paper, we present an update of the current knowledge concerning these modern approaches. Materials and Methods. A systematic review according to PICO-PRISMA methodology was conducted in MEDLINE/PubMed and EMBASE databases until June 2019. Studies assessing the use of radiomics combined with machine learning in predicting radiation-induced toxicity in head and neck cancer patients were specifically included. Four authors (two independently and two in concordance) assessed the methodological quality of the included studies using the Radiomic Quality Score (RQS). The overall score for each analyzed study was obtained by the sum of the single RQS items; the average and standard deviation values of the authors' RQS were calculated and reported. Results. Eight included papers, presenting data on parotid glands, cochlea, masticatory muscles, and white brain matter, were specifically analyzed in this review. Only one study had an average RQS was ≤ 30% (50%), while 3 studies obtained a RQS almost ≤ 25%. Potential variability in the interpretations of specific RQS items could have influenced the inter-rater agreement in specific cases. Conclusions. Published radiomic studies provide encouraging but still limited and preliminary data that require further validation to improve the decision-making processes in preventing and managing radiation-induced toxicities. Hindawi 2021-06-09 /pmc/articles/PMC8211491/ /pubmed/34211551 http://dx.doi.org/10.1155/2021/5566508 Text en Copyright © 2021 Roberta Carbonara et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Review Article
Carbonara, Roberta
Bonomo, Pierluigi
Di Rito, Alessia
Didonna, Vittorio
Gregucci, Fabiana
Ciliberti, Maria Paola
Surgo, Alessia
Bonaparte, Ilaria
Fiorentino, Alba
Sardaro, Angela
Investigation of Radiation-Induced Toxicity in Head and Neck Cancer Patients through Radiomics and Machine Learning: A Systematic Review
title Investigation of Radiation-Induced Toxicity in Head and Neck Cancer Patients through Radiomics and Machine Learning: A Systematic Review
title_full Investigation of Radiation-Induced Toxicity in Head and Neck Cancer Patients through Radiomics and Machine Learning: A Systematic Review
title_fullStr Investigation of Radiation-Induced Toxicity in Head and Neck Cancer Patients through Radiomics and Machine Learning: A Systematic Review
title_full_unstemmed Investigation of Radiation-Induced Toxicity in Head and Neck Cancer Patients through Radiomics and Machine Learning: A Systematic Review
title_short Investigation of Radiation-Induced Toxicity in Head and Neck Cancer Patients through Radiomics and Machine Learning: A Systematic Review
title_sort investigation of radiation-induced toxicity in head and neck cancer patients through radiomics and machine learning: a systematic review
topic Review Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8211491/
https://www.ncbi.nlm.nih.gov/pubmed/34211551
http://dx.doi.org/10.1155/2021/5566508
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