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Machine Learning of Multi-Modal Tumor Imaging Reveals Trajectories of Response to Precision Treatment

SIMPLE SUMMARY: In order to evaluate precision cancer therapies, it would be advantageous to measure at the same time their action on tumor growth and on the biological target of the therapy. New non-invasive hybrid imaging techniques allow access to multiple quantitative parameters. Here, we traine...

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Autores principales: Mansouri, Nesrin, Balvay, Daniel, Zenteno, Omar, Facchin, Caterina, Yoganathan, Thulaciga, Viel, Thomas, Herraiz, Joaquin Lopez, Tavitian, Bertrand, Pérez-Liva, Mailyn
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10046832/
https://www.ncbi.nlm.nih.gov/pubmed/36980637
http://dx.doi.org/10.3390/cancers15061751
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author Mansouri, Nesrin
Balvay, Daniel
Zenteno, Omar
Facchin, Caterina
Yoganathan, Thulaciga
Viel, Thomas
Herraiz, Joaquin Lopez
Tavitian, Bertrand
Pérez-Liva, Mailyn
author_facet Mansouri, Nesrin
Balvay, Daniel
Zenteno, Omar
Facchin, Caterina
Yoganathan, Thulaciga
Viel, Thomas
Herraiz, Joaquin Lopez
Tavitian, Bertrand
Pérez-Liva, Mailyn
author_sort Mansouri, Nesrin
collection PubMed
description SIMPLE SUMMARY: In order to evaluate precision cancer therapies, it would be advantageous to measure at the same time their action on tumor growth and on the biological target of the therapy. New non-invasive hybrid imaging techniques allow access to multiple quantitative parameters. Here, we trained machine learning classifiers of features extracted from longitudinal in vivo co-registered metabolic, vascular and anatomical images in a mouse model of paraganglioma. We show that machine learning identifies ensembles of tumor states that correspond to stages of tumor evolution with or without anti-angiogenic treatment. These classifiers define individual trajectories of tumor progression and response to treatment, supporting the use of machine learning analysis of multiparametric imaging for the identification of response to anti-angiogenic treatment in this rodent model. ABSTRACT: The standard assessment of response to cancer treatments is based on gross tumor characteristics, such as tumor size or glycolysis, which provide very indirect information about the effect of precision treatments on the pharmacological targets of tumors. Several advanced imaging modalities allow for the visualization of targeted tumor hallmarks. Descriptors extracted from these images can help establishing new classifications of precision treatment response. We propose a machine learning (ML) framework to analyze metabolic–anatomical–vascular imaging features from positron emission tomography, ultrafast Doppler, and computed tomography in a mouse model of paraganglioma undergoing anti-angiogenic treatment with sunitinib. Imaging features from the follow-up of sunitinib-treated (n = 8, imaged once-per-week/6-weeks) and sham-treated (n = 8, imaged once-per-week/3-weeks) mice groups were dimensionally reduced and analyzed with hierarchical clustering Analysis (HCA). The classes extracted from HCA were used with 10 ML classifiers to find a generalized tumor stage prediction model, which was validated with an independent dataset of sunitinib-treated mice. HCA provided three stages of treatment response that were validated using the best-performing ML classifier. The Gaussian naive Bayes classifier showed the best performance, with a training accuracy of 98.7 and an average area under curve of 100. Our results show that metabolic–anatomical–vascular markers allow defining treatment response trajectories that reflect the efficacy of an anti-angiogenic drug on the tumor target hallmark.
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spelling pubmed-100468322023-03-29 Machine Learning of Multi-Modal Tumor Imaging Reveals Trajectories of Response to Precision Treatment Mansouri, Nesrin Balvay, Daniel Zenteno, Omar Facchin, Caterina Yoganathan, Thulaciga Viel, Thomas Herraiz, Joaquin Lopez Tavitian, Bertrand Pérez-Liva, Mailyn Cancers (Basel) Article SIMPLE SUMMARY: In order to evaluate precision cancer therapies, it would be advantageous to measure at the same time their action on tumor growth and on the biological target of the therapy. New non-invasive hybrid imaging techniques allow access to multiple quantitative parameters. Here, we trained machine learning classifiers of features extracted from longitudinal in vivo co-registered metabolic, vascular and anatomical images in a mouse model of paraganglioma. We show that machine learning identifies ensembles of tumor states that correspond to stages of tumor evolution with or without anti-angiogenic treatment. These classifiers define individual trajectories of tumor progression and response to treatment, supporting the use of machine learning analysis of multiparametric imaging for the identification of response to anti-angiogenic treatment in this rodent model. ABSTRACT: The standard assessment of response to cancer treatments is based on gross tumor characteristics, such as tumor size or glycolysis, which provide very indirect information about the effect of precision treatments on the pharmacological targets of tumors. Several advanced imaging modalities allow for the visualization of targeted tumor hallmarks. Descriptors extracted from these images can help establishing new classifications of precision treatment response. We propose a machine learning (ML) framework to analyze metabolic–anatomical–vascular imaging features from positron emission tomography, ultrafast Doppler, and computed tomography in a mouse model of paraganglioma undergoing anti-angiogenic treatment with sunitinib. Imaging features from the follow-up of sunitinib-treated (n = 8, imaged once-per-week/6-weeks) and sham-treated (n = 8, imaged once-per-week/3-weeks) mice groups were dimensionally reduced and analyzed with hierarchical clustering Analysis (HCA). The classes extracted from HCA were used with 10 ML classifiers to find a generalized tumor stage prediction model, which was validated with an independent dataset of sunitinib-treated mice. HCA provided three stages of treatment response that were validated using the best-performing ML classifier. The Gaussian naive Bayes classifier showed the best performance, with a training accuracy of 98.7 and an average area under curve of 100. Our results show that metabolic–anatomical–vascular markers allow defining treatment response trajectories that reflect the efficacy of an anti-angiogenic drug on the tumor target hallmark. MDPI 2023-03-14 /pmc/articles/PMC10046832/ /pubmed/36980637 http://dx.doi.org/10.3390/cancers15061751 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/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 (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Mansouri, Nesrin
Balvay, Daniel
Zenteno, Omar
Facchin, Caterina
Yoganathan, Thulaciga
Viel, Thomas
Herraiz, Joaquin Lopez
Tavitian, Bertrand
Pérez-Liva, Mailyn
Machine Learning of Multi-Modal Tumor Imaging Reveals Trajectories of Response to Precision Treatment
title Machine Learning of Multi-Modal Tumor Imaging Reveals Trajectories of Response to Precision Treatment
title_full Machine Learning of Multi-Modal Tumor Imaging Reveals Trajectories of Response to Precision Treatment
title_fullStr Machine Learning of Multi-Modal Tumor Imaging Reveals Trajectories of Response to Precision Treatment
title_full_unstemmed Machine Learning of Multi-Modal Tumor Imaging Reveals Trajectories of Response to Precision Treatment
title_short Machine Learning of Multi-Modal Tumor Imaging Reveals Trajectories of Response to Precision Treatment
title_sort machine learning of multi-modal tumor imaging reveals trajectories of response to precision treatment
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10046832/
https://www.ncbi.nlm.nih.gov/pubmed/36980637
http://dx.doi.org/10.3390/cancers15061751
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