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Increased Proportion of Variance Explained and Prediction Accuracy of Survival of Breast Cancer Patients with Use of Whole-Genome Multiomic Profiles

Whole-genome multiomic profiles hold valuable information for the analysis and prediction of disease risk and progression. However, integrating high-dimensional multilayer omic data into risk-assessment models is statistically and computationally challenging. We describe a statistical framework, the...

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Autores principales: Vazquez, Ana I., Veturi, Yogasudha, Behring, Michael, Shrestha, Sadeep, Kirst, Matias, Resende, Marcio F. R., de los Campos, Gustavo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Genetics Society of America 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4937492/
https://www.ncbi.nlm.nih.gov/pubmed/27129736
http://dx.doi.org/10.1534/genetics.115.185181
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author Vazquez, Ana I.
Veturi, Yogasudha
Behring, Michael
Shrestha, Sadeep
Kirst, Matias
Resende, Marcio F. R.
de los Campos, Gustavo
author_facet Vazquez, Ana I.
Veturi, Yogasudha
Behring, Michael
Shrestha, Sadeep
Kirst, Matias
Resende, Marcio F. R.
de los Campos, Gustavo
author_sort Vazquez, Ana I.
collection PubMed
description Whole-genome multiomic profiles hold valuable information for the analysis and prediction of disease risk and progression. However, integrating high-dimensional multilayer omic data into risk-assessment models is statistically and computationally challenging. We describe a statistical framework, the Bayesian generalized additive model ((BGAM), and present software for integrating multilayer high-dimensional inputs into risk-assessment models. We used BGAM and data from The Cancer Genome Atlas for the analysis and prediction of survival after diagnosis of breast cancer. We developed a sequence of studies to (1) compare predictions based on single omics with those based on clinical covariates commonly used for the assessment of breast cancer patients (COV), (2) evaluate the benefits of combining COV and omics, (3) compare models based on (a) COV and gene expression profiles from oncogenes with (b) COV and whole-genome gene expression (WGGE) profiles, and (4) evaluate the impacts of combining multiple omics and their interactions. We report that (1) WGGE profiles and whole-genome methylation (METH) profiles offer more predictive power than any of the COV commonly used in clinical practice (e.g., subtype and stage), (2) adding WGGE or METH profiles to COV increases prediction accuracy, (3) the predictive power of WGGE profiles is considerably higher than that based on expression from large-effect oncogenes, and (4) the gain in prediction accuracy when combining multiple omics is consistent. Our results show the feasibility of omic integration and highlight the importance of WGGE and METH profiles in breast cancer, achieving gains of up to 7 points area under the curve (AUC) over the COV in some cases.
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spelling pubmed-49374922016-07-19 Increased Proportion of Variance Explained and Prediction Accuracy of Survival of Breast Cancer Patients with Use of Whole-Genome Multiomic Profiles Vazquez, Ana I. Veturi, Yogasudha Behring, Michael Shrestha, Sadeep Kirst, Matias Resende, Marcio F. R. de los Campos, Gustavo Genetics Investigations Whole-genome multiomic profiles hold valuable information for the analysis and prediction of disease risk and progression. However, integrating high-dimensional multilayer omic data into risk-assessment models is statistically and computationally challenging. We describe a statistical framework, the Bayesian generalized additive model ((BGAM), and present software for integrating multilayer high-dimensional inputs into risk-assessment models. We used BGAM and data from The Cancer Genome Atlas for the analysis and prediction of survival after diagnosis of breast cancer. We developed a sequence of studies to (1) compare predictions based on single omics with those based on clinical covariates commonly used for the assessment of breast cancer patients (COV), (2) evaluate the benefits of combining COV and omics, (3) compare models based on (a) COV and gene expression profiles from oncogenes with (b) COV and whole-genome gene expression (WGGE) profiles, and (4) evaluate the impacts of combining multiple omics and their interactions. We report that (1) WGGE profiles and whole-genome methylation (METH) profiles offer more predictive power than any of the COV commonly used in clinical practice (e.g., subtype and stage), (2) adding WGGE or METH profiles to COV increases prediction accuracy, (3) the predictive power of WGGE profiles is considerably higher than that based on expression from large-effect oncogenes, and (4) the gain in prediction accuracy when combining multiple omics is consistent. Our results show the feasibility of omic integration and highlight the importance of WGGE and METH profiles in breast cancer, achieving gains of up to 7 points area under the curve (AUC) over the COV in some cases. Genetics Society of America 2016-07 2016-04-27 /pmc/articles/PMC4937492/ /pubmed/27129736 http://dx.doi.org/10.1534/genetics.115.185181 Text en Copyright © 2016 by the Genetics Society of America Available freely online through the author-supported open access option.
spellingShingle Investigations
Vazquez, Ana I.
Veturi, Yogasudha
Behring, Michael
Shrestha, Sadeep
Kirst, Matias
Resende, Marcio F. R.
de los Campos, Gustavo
Increased Proportion of Variance Explained and Prediction Accuracy of Survival of Breast Cancer Patients with Use of Whole-Genome Multiomic Profiles
title Increased Proportion of Variance Explained and Prediction Accuracy of Survival of Breast Cancer Patients with Use of Whole-Genome Multiomic Profiles
title_full Increased Proportion of Variance Explained and Prediction Accuracy of Survival of Breast Cancer Patients with Use of Whole-Genome Multiomic Profiles
title_fullStr Increased Proportion of Variance Explained and Prediction Accuracy of Survival of Breast Cancer Patients with Use of Whole-Genome Multiomic Profiles
title_full_unstemmed Increased Proportion of Variance Explained and Prediction Accuracy of Survival of Breast Cancer Patients with Use of Whole-Genome Multiomic Profiles
title_short Increased Proportion of Variance Explained and Prediction Accuracy of Survival of Breast Cancer Patients with Use of Whole-Genome Multiomic Profiles
title_sort increased proportion of variance explained and prediction accuracy of survival of breast cancer patients with use of whole-genome multiomic profiles
topic Investigations
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4937492/
https://www.ncbi.nlm.nih.gov/pubmed/27129736
http://dx.doi.org/10.1534/genetics.115.185181
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