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A Pan-Cancer Approach to Predict Responsiveness to Immune Checkpoint Inhibitors by Machine Learning

Immunotherapy by using immune checkpoint inhibitors (ICI) has dramatically improved the treatment options in various cancers, increasing survival rates for treated patients. Nevertheless, there are heterogeneous response rates to ICI among different cancer types, and even in the context of patients...

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Autores principales: Polano, Maurizio, Chierici, Marco, Dal Bo, Michele, Gentilini, Davide, Di Cintio, Federica, Baboci, Lorena, Gibbs, David L., Furlanello, Cesare, Toffoli, Giuseppe
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6827166/
https://www.ncbi.nlm.nih.gov/pubmed/31618839
http://dx.doi.org/10.3390/cancers11101562
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author Polano, Maurizio
Chierici, Marco
Dal Bo, Michele
Gentilini, Davide
Di Cintio, Federica
Baboci, Lorena
Gibbs, David L.
Furlanello, Cesare
Toffoli, Giuseppe
author_facet Polano, Maurizio
Chierici, Marco
Dal Bo, Michele
Gentilini, Davide
Di Cintio, Federica
Baboci, Lorena
Gibbs, David L.
Furlanello, Cesare
Toffoli, Giuseppe
author_sort Polano, Maurizio
collection PubMed
description Immunotherapy by using immune checkpoint inhibitors (ICI) has dramatically improved the treatment options in various cancers, increasing survival rates for treated patients. Nevertheless, there are heterogeneous response rates to ICI among different cancer types, and even in the context of patients affected by a specific cancer. Thus, it becomes crucial to identify factors that predict the response to immunotherapeutic approaches. A comprehensive investigation of the mutational and immunological aspects of the tumor can be useful to obtain a robust prediction. By performing a pan-cancer analysis on gene expression data from the Cancer Genome Atlas (TCGA, 8055 cases and 29 cancer types), we set up and validated a machine learning approach to predict the potential for positive response to ICI. Support vector machines (SVM) and extreme gradient boosting (XGboost) models were developed with a 10×5-fold cross-validation schema on 80% of TCGA cases to predict ICI responsiveness defined by a score combining tumor mutational burden and TGF- [Formula: see text] signaling. On the remaining 20% validation subset, our SVM model scored 0.88 accuracy and 0.27 Matthews Correlation Coefficient. The proposed machine learning approach could be useful to predict the putative response to ICI treatment by expression data of primary tumors.
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spelling pubmed-68271662019-11-18 A Pan-Cancer Approach to Predict Responsiveness to Immune Checkpoint Inhibitors by Machine Learning Polano, Maurizio Chierici, Marco Dal Bo, Michele Gentilini, Davide Di Cintio, Federica Baboci, Lorena Gibbs, David L. Furlanello, Cesare Toffoli, Giuseppe Cancers (Basel) Article Immunotherapy by using immune checkpoint inhibitors (ICI) has dramatically improved the treatment options in various cancers, increasing survival rates for treated patients. Nevertheless, there are heterogeneous response rates to ICI among different cancer types, and even in the context of patients affected by a specific cancer. Thus, it becomes crucial to identify factors that predict the response to immunotherapeutic approaches. A comprehensive investigation of the mutational and immunological aspects of the tumor can be useful to obtain a robust prediction. By performing a pan-cancer analysis on gene expression data from the Cancer Genome Atlas (TCGA, 8055 cases and 29 cancer types), we set up and validated a machine learning approach to predict the potential for positive response to ICI. Support vector machines (SVM) and extreme gradient boosting (XGboost) models were developed with a 10×5-fold cross-validation schema on 80% of TCGA cases to predict ICI responsiveness defined by a score combining tumor mutational burden and TGF- [Formula: see text] signaling. On the remaining 20% validation subset, our SVM model scored 0.88 accuracy and 0.27 Matthews Correlation Coefficient. The proposed machine learning approach could be useful to predict the putative response to ICI treatment by expression data of primary tumors. MDPI 2019-10-15 /pmc/articles/PMC6827166/ /pubmed/31618839 http://dx.doi.org/10.3390/cancers11101562 Text en © 2019 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 Article
Polano, Maurizio
Chierici, Marco
Dal Bo, Michele
Gentilini, Davide
Di Cintio, Federica
Baboci, Lorena
Gibbs, David L.
Furlanello, Cesare
Toffoli, Giuseppe
A Pan-Cancer Approach to Predict Responsiveness to Immune Checkpoint Inhibitors by Machine Learning
title A Pan-Cancer Approach to Predict Responsiveness to Immune Checkpoint Inhibitors by Machine Learning
title_full A Pan-Cancer Approach to Predict Responsiveness to Immune Checkpoint Inhibitors by Machine Learning
title_fullStr A Pan-Cancer Approach to Predict Responsiveness to Immune Checkpoint Inhibitors by Machine Learning
title_full_unstemmed A Pan-Cancer Approach to Predict Responsiveness to Immune Checkpoint Inhibitors by Machine Learning
title_short A Pan-Cancer Approach to Predict Responsiveness to Immune Checkpoint Inhibitors by Machine Learning
title_sort pan-cancer approach to predict responsiveness to immune checkpoint inhibitors by machine learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6827166/
https://www.ncbi.nlm.nih.gov/pubmed/31618839
http://dx.doi.org/10.3390/cancers11101562
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