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Artificial Intelligence-based Radiomics in the Era of Immuno-oncology

The recent, rapid advances in immuno-oncology have revolutionized cancer treatment and spurred further research into tumor biology. Yet, cancer patients respond variably to immunotherapy despite mounting evidence to support its efficacy. Current methods for predicting immunotherapy response are unre...

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Autores principales: Kang, Cyra Y, Duarte, Samantha E, Kim, Hye Sung, Kim, Eugene, Park, Jonghanne, Lee, Alice Daeun, Kim, Yeseul, Kim, Leeseul, Cho, Sukjoo, Oh, Yoojin, Gim, Gahyun, Park, Inae, Lee, Dongyup, Abazeed, Mohamed, Velichko, Yury S, Chae, Young Kwang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9177100/
https://www.ncbi.nlm.nih.gov/pubmed/35348765
http://dx.doi.org/10.1093/oncolo/oyac036
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author Kang, Cyra Y
Duarte, Samantha E
Kim, Hye Sung
Kim, Eugene
Park, Jonghanne
Lee, Alice Daeun
Kim, Yeseul
Kim, Leeseul
Cho, Sukjoo
Oh, Yoojin
Gim, Gahyun
Park, Inae
Lee, Dongyup
Abazeed, Mohamed
Velichko, Yury S
Chae, Young Kwang
author_facet Kang, Cyra Y
Duarte, Samantha E
Kim, Hye Sung
Kim, Eugene
Park, Jonghanne
Lee, Alice Daeun
Kim, Yeseul
Kim, Leeseul
Cho, Sukjoo
Oh, Yoojin
Gim, Gahyun
Park, Inae
Lee, Dongyup
Abazeed, Mohamed
Velichko, Yury S
Chae, Young Kwang
author_sort Kang, Cyra Y
collection PubMed
description The recent, rapid advances in immuno-oncology have revolutionized cancer treatment and spurred further research into tumor biology. Yet, cancer patients respond variably to immunotherapy despite mounting evidence to support its efficacy. Current methods for predicting immunotherapy response are unreliable, as these tests cannot fully account for tumor heterogeneity and microenvironment. An improved method for predicting response to immunotherapy is needed. Recent studies have proposed radiomics—the process of converting medical images into quantitative data (features) that can be processed using machine learning algorithms to identify complex patterns and trends—for predicting response to immunotherapy. Because patients undergo numerous imaging procedures throughout the course of the disease, there exists a wealth of radiological imaging data available for training radiomics models. And because radiomic features reflect cancer biology, such as tumor heterogeneity and microenvironment, these models have enormous potential to predict immunotherapy response more accurately than current methods. Models trained on preexisting biomarkers and/or clinical outcomes have demonstrated potential to improve patient stratification and treatment outcomes. In this review, we discuss current applications of radiomics in oncology, followed by a discussion on recent studies that use radiomics to predict immunotherapy response and toxicity.
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spelling pubmed-91771002022-06-09 Artificial Intelligence-based Radiomics in the Era of Immuno-oncology Kang, Cyra Y Duarte, Samantha E Kim, Hye Sung Kim, Eugene Park, Jonghanne Lee, Alice Daeun Kim, Yeseul Kim, Leeseul Cho, Sukjoo Oh, Yoojin Gim, Gahyun Park, Inae Lee, Dongyup Abazeed, Mohamed Velichko, Yury S Chae, Young Kwang Oncologist Cancer Diagnostics and Molecular Pathology The recent, rapid advances in immuno-oncology have revolutionized cancer treatment and spurred further research into tumor biology. Yet, cancer patients respond variably to immunotherapy despite mounting evidence to support its efficacy. Current methods for predicting immunotherapy response are unreliable, as these tests cannot fully account for tumor heterogeneity and microenvironment. An improved method for predicting response to immunotherapy is needed. Recent studies have proposed radiomics—the process of converting medical images into quantitative data (features) that can be processed using machine learning algorithms to identify complex patterns and trends—for predicting response to immunotherapy. Because patients undergo numerous imaging procedures throughout the course of the disease, there exists a wealth of radiological imaging data available for training radiomics models. And because radiomic features reflect cancer biology, such as tumor heterogeneity and microenvironment, these models have enormous potential to predict immunotherapy response more accurately than current methods. Models trained on preexisting biomarkers and/or clinical outcomes have demonstrated potential to improve patient stratification and treatment outcomes. In this review, we discuss current applications of radiomics in oncology, followed by a discussion on recent studies that use radiomics to predict immunotherapy response and toxicity. Oxford University Press 2022-03-28 /pmc/articles/PMC9177100/ /pubmed/35348765 http://dx.doi.org/10.1093/oncolo/oyac036 Text en © The Author(s) 2022. Published by Oxford University Press. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Cancer Diagnostics and Molecular Pathology
Kang, Cyra Y
Duarte, Samantha E
Kim, Hye Sung
Kim, Eugene
Park, Jonghanne
Lee, Alice Daeun
Kim, Yeseul
Kim, Leeseul
Cho, Sukjoo
Oh, Yoojin
Gim, Gahyun
Park, Inae
Lee, Dongyup
Abazeed, Mohamed
Velichko, Yury S
Chae, Young Kwang
Artificial Intelligence-based Radiomics in the Era of Immuno-oncology
title Artificial Intelligence-based Radiomics in the Era of Immuno-oncology
title_full Artificial Intelligence-based Radiomics in the Era of Immuno-oncology
title_fullStr Artificial Intelligence-based Radiomics in the Era of Immuno-oncology
title_full_unstemmed Artificial Intelligence-based Radiomics in the Era of Immuno-oncology
title_short Artificial Intelligence-based Radiomics in the Era of Immuno-oncology
title_sort artificial intelligence-based radiomics in the era of immuno-oncology
topic Cancer Diagnostics and Molecular Pathology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9177100/
https://www.ncbi.nlm.nih.gov/pubmed/35348765
http://dx.doi.org/10.1093/oncolo/oyac036
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