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Prediction of Breast Cancer Treatment–Induced Fatigue by Machine Learning Using Genome-Wide Association Data

BACKGROUND: We aimed at predicting fatigue after breast cancer treatment using machine learning on clinical covariates and germline genome-wide data. METHODS: We accessed germline genome-wide data of 2799 early-stage breast cancer patients from the Cancer Toxicity study (NCT01993498). The primary en...

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Autores principales: Lee, Sangkyu, Deasy, Joseph O, Oh, Jung Hun, Di Meglio, Antonio, Dumas, Agnes, Menvielle, Gwenn, Charles, Cecile, Boyault, Sandrine, Rousseau, Marina, Besse, Celine, Thomas, Emilie, Boland, Anne, Cottu, Paul, Tredan, Olivier, Levy, Christelle, Martin, Anne-Laure, Everhard, Sibille, Ganz, Patricia A, Partridge, Ann H, Michiels, Stefan, Deleuze, Jean-François, Andre, Fabrice, Vaz-Luis, Ines
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7583150/
https://www.ncbi.nlm.nih.gov/pubmed/33490863
http://dx.doi.org/10.1093/jncics/pkaa039
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author Lee, Sangkyu
Deasy, Joseph O
Oh, Jung Hun
Di Meglio, Antonio
Dumas, Agnes
Menvielle, Gwenn
Charles, Cecile
Boyault, Sandrine
Rousseau, Marina
Besse, Celine
Thomas, Emilie
Boland, Anne
Cottu, Paul
Tredan, Olivier
Levy, Christelle
Martin, Anne-Laure
Everhard, Sibille
Ganz, Patricia A
Partridge, Ann H
Michiels, Stefan
Deleuze, Jean-François
Andre, Fabrice
Vaz-Luis, Ines
author_facet Lee, Sangkyu
Deasy, Joseph O
Oh, Jung Hun
Di Meglio, Antonio
Dumas, Agnes
Menvielle, Gwenn
Charles, Cecile
Boyault, Sandrine
Rousseau, Marina
Besse, Celine
Thomas, Emilie
Boland, Anne
Cottu, Paul
Tredan, Olivier
Levy, Christelle
Martin, Anne-Laure
Everhard, Sibille
Ganz, Patricia A
Partridge, Ann H
Michiels, Stefan
Deleuze, Jean-François
Andre, Fabrice
Vaz-Luis, Ines
author_sort Lee, Sangkyu
collection PubMed
description BACKGROUND: We aimed at predicting fatigue after breast cancer treatment using machine learning on clinical covariates and germline genome-wide data. METHODS: We accessed germline genome-wide data of 2799 early-stage breast cancer patients from the Cancer Toxicity study (NCT01993498). The primary endpoint was defined as scoring zero at diagnosis and higher than quartile 3 at 1 year after primary treatment completion on European Organization for Research and Treatment of Cancer quality-of-life questionnaires for Overall Fatigue and on the multidimensional questionnaire for Physical, Emotional, and Cognitive fatigue. First, we tested univariate associations of each endpoint with clinical variables and genome-wide variants. Then, using preselected clinical (false discovery rate < 0.05) and genomic (P < .001) variables, a multivariable preconditioned random-forest regression model was built and validated on a hold-out subset to predict fatigue. Gene set enrichment analysis identified key biological correlates (MetaCore). All statistical tests were 2-sided. RESULTS: Statistically significant clinical associations were found only with Emotional and Cognitive Fatigue, including receipt of chemotherapy, anxiety, and pain. Some single nucleotide polymorphisms had some degree of association (P < .001) with the different fatigue endpoints, although there were no genome-wide statistically significant (P < 5.00 × 10(−8)) associations. Only for Cognitive Fatigue, the predictive ability of the genomic multivariable model was statistically significantly better than random (area under the curve = 0.59, P = .01) and marginally improved with clinical variables (area under the curve = 0.60, P = .005). Single nucleotide polymorphisms found to be associated (P < .001) with Cognitive Fatigue belonged to genes linked to inflammation (false discovery rate adjusted P = .03), cognitive disorders (P = 1.51 × 10(−12)), and synaptic transmission (P = 6.28 × 10(−8)). CONCLUSIONS: Genomic analyses in this large cohort of breast cancer survivors suggest a possible genetic role for severe Cognitive Fatigue that warrants further exploration.
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spelling pubmed-75831502021-01-21 Prediction of Breast Cancer Treatment–Induced Fatigue by Machine Learning Using Genome-Wide Association Data Lee, Sangkyu Deasy, Joseph O Oh, Jung Hun Di Meglio, Antonio Dumas, Agnes Menvielle, Gwenn Charles, Cecile Boyault, Sandrine Rousseau, Marina Besse, Celine Thomas, Emilie Boland, Anne Cottu, Paul Tredan, Olivier Levy, Christelle Martin, Anne-Laure Everhard, Sibille Ganz, Patricia A Partridge, Ann H Michiels, Stefan Deleuze, Jean-François Andre, Fabrice Vaz-Luis, Ines JNCI Cancer Spectr Article BACKGROUND: We aimed at predicting fatigue after breast cancer treatment using machine learning on clinical covariates and germline genome-wide data. METHODS: We accessed germline genome-wide data of 2799 early-stage breast cancer patients from the Cancer Toxicity study (NCT01993498). The primary endpoint was defined as scoring zero at diagnosis and higher than quartile 3 at 1 year after primary treatment completion on European Organization for Research and Treatment of Cancer quality-of-life questionnaires for Overall Fatigue and on the multidimensional questionnaire for Physical, Emotional, and Cognitive fatigue. First, we tested univariate associations of each endpoint with clinical variables and genome-wide variants. Then, using preselected clinical (false discovery rate < 0.05) and genomic (P < .001) variables, a multivariable preconditioned random-forest regression model was built and validated on a hold-out subset to predict fatigue. Gene set enrichment analysis identified key biological correlates (MetaCore). All statistical tests were 2-sided. RESULTS: Statistically significant clinical associations were found only with Emotional and Cognitive Fatigue, including receipt of chemotherapy, anxiety, and pain. Some single nucleotide polymorphisms had some degree of association (P < .001) with the different fatigue endpoints, although there were no genome-wide statistically significant (P < 5.00 × 10(−8)) associations. Only for Cognitive Fatigue, the predictive ability of the genomic multivariable model was statistically significantly better than random (area under the curve = 0.59, P = .01) and marginally improved with clinical variables (area under the curve = 0.60, P = .005). Single nucleotide polymorphisms found to be associated (P < .001) with Cognitive Fatigue belonged to genes linked to inflammation (false discovery rate adjusted P = .03), cognitive disorders (P = 1.51 × 10(−12)), and synaptic transmission (P = 6.28 × 10(−8)). CONCLUSIONS: Genomic analyses in this large cohort of breast cancer survivors suggest a possible genetic role for severe Cognitive Fatigue that warrants further exploration. Oxford University Press 2020-05-11 /pmc/articles/PMC7583150/ /pubmed/33490863 http://dx.doi.org/10.1093/jncics/pkaa039 Text en © The Author(s) 2020. Published by Oxford University Press. http://creativecommons.org/licenses/by-nc/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Article
Lee, Sangkyu
Deasy, Joseph O
Oh, Jung Hun
Di Meglio, Antonio
Dumas, Agnes
Menvielle, Gwenn
Charles, Cecile
Boyault, Sandrine
Rousseau, Marina
Besse, Celine
Thomas, Emilie
Boland, Anne
Cottu, Paul
Tredan, Olivier
Levy, Christelle
Martin, Anne-Laure
Everhard, Sibille
Ganz, Patricia A
Partridge, Ann H
Michiels, Stefan
Deleuze, Jean-François
Andre, Fabrice
Vaz-Luis, Ines
Prediction of Breast Cancer Treatment–Induced Fatigue by Machine Learning Using Genome-Wide Association Data
title Prediction of Breast Cancer Treatment–Induced Fatigue by Machine Learning Using Genome-Wide Association Data
title_full Prediction of Breast Cancer Treatment–Induced Fatigue by Machine Learning Using Genome-Wide Association Data
title_fullStr Prediction of Breast Cancer Treatment–Induced Fatigue by Machine Learning Using Genome-Wide Association Data
title_full_unstemmed Prediction of Breast Cancer Treatment–Induced Fatigue by Machine Learning Using Genome-Wide Association Data
title_short Prediction of Breast Cancer Treatment–Induced Fatigue by Machine Learning Using Genome-Wide Association Data
title_sort prediction of breast cancer treatment–induced fatigue by machine learning using genome-wide association data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7583150/
https://www.ncbi.nlm.nih.gov/pubmed/33490863
http://dx.doi.org/10.1093/jncics/pkaa039
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