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Pathway Relevance Ranking for Tumor Samples through Network-Based Data Integration

The study of cancer, a highly heterogeneous disease with different causes and clinical outcomes, requires a multi-angle approach and the collection of large multi-omics datasets that, ideally, should be analyzed simultaneously. We present a new pathway relevance ranking method that is able to priori...

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Autores principales: Verbeke, Lieven P. C., Van den Eynden, Jimmy, Fierro, Ana Carolina, Demeester, Piet, Fostier, Jan, Marchal, Kathleen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4517887/
https://www.ncbi.nlm.nih.gov/pubmed/26217958
http://dx.doi.org/10.1371/journal.pone.0133503
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author Verbeke, Lieven P. C.
Van den Eynden, Jimmy
Fierro, Ana Carolina
Demeester, Piet
Fostier, Jan
Marchal, Kathleen
author_facet Verbeke, Lieven P. C.
Van den Eynden, Jimmy
Fierro, Ana Carolina
Demeester, Piet
Fostier, Jan
Marchal, Kathleen
author_sort Verbeke, Lieven P. C.
collection PubMed
description The study of cancer, a highly heterogeneous disease with different causes and clinical outcomes, requires a multi-angle approach and the collection of large multi-omics datasets that, ideally, should be analyzed simultaneously. We present a new pathway relevance ranking method that is able to prioritize pathways according to the information contained in any combination of tumor related omics datasets. Key to the method is the conversion of all available data into a single comprehensive network representation containing not only genes but also individual patient samples. Additionally, all data are linked through a network of previously identified molecular interactions. We demonstrate the performance of the new method by applying it to breast and ovarian cancer datasets from The Cancer Genome Atlas. By integrating gene expression, copy number, mutation and methylation data, the method’s potential to identify key pathways involved in breast cancer development shared by different molecular subtypes is illustrated. Interestingly, certain pathways were ranked equally important for different subtypes, even when the underlying (epi)-genetic disturbances were diverse. Next to prioritizing universally high-scoring pathways, the pathway ranking method was able to identify subtype-specific pathways. Often the score of a pathway could not be motivated by a single mutation, copy number or methylation alteration, but rather by a combination of genetic and epi-genetic disturbances, stressing the need for a network-based data integration approach. The analysis of ovarian tumors, as a function of survival-based subtypes, demonstrated the method’s ability to correctly identify key pathways, irrespective of tumor subtype. A differential analysis of survival-based subtypes revealed several pathways with higher importance for the bad-outcome patient group than for the good-outcome patient group. Many of the pathways exhibiting higher importance for the bad-outcome patient group could be related to ovarian tumor proliferation and survival.
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spelling pubmed-45178872015-07-31 Pathway Relevance Ranking for Tumor Samples through Network-Based Data Integration Verbeke, Lieven P. C. Van den Eynden, Jimmy Fierro, Ana Carolina Demeester, Piet Fostier, Jan Marchal, Kathleen PLoS One Research Article The study of cancer, a highly heterogeneous disease with different causes and clinical outcomes, requires a multi-angle approach and the collection of large multi-omics datasets that, ideally, should be analyzed simultaneously. We present a new pathway relevance ranking method that is able to prioritize pathways according to the information contained in any combination of tumor related omics datasets. Key to the method is the conversion of all available data into a single comprehensive network representation containing not only genes but also individual patient samples. Additionally, all data are linked through a network of previously identified molecular interactions. We demonstrate the performance of the new method by applying it to breast and ovarian cancer datasets from The Cancer Genome Atlas. By integrating gene expression, copy number, mutation and methylation data, the method’s potential to identify key pathways involved in breast cancer development shared by different molecular subtypes is illustrated. Interestingly, certain pathways were ranked equally important for different subtypes, even when the underlying (epi)-genetic disturbances were diverse. Next to prioritizing universally high-scoring pathways, the pathway ranking method was able to identify subtype-specific pathways. Often the score of a pathway could not be motivated by a single mutation, copy number or methylation alteration, but rather by a combination of genetic and epi-genetic disturbances, stressing the need for a network-based data integration approach. The analysis of ovarian tumors, as a function of survival-based subtypes, demonstrated the method’s ability to correctly identify key pathways, irrespective of tumor subtype. A differential analysis of survival-based subtypes revealed several pathways with higher importance for the bad-outcome patient group than for the good-outcome patient group. Many of the pathways exhibiting higher importance for the bad-outcome patient group could be related to ovarian tumor proliferation and survival. Public Library of Science 2015-07-28 /pmc/articles/PMC4517887/ /pubmed/26217958 http://dx.doi.org/10.1371/journal.pone.0133503 Text en © 2015 Verbeke et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Verbeke, Lieven P. C.
Van den Eynden, Jimmy
Fierro, Ana Carolina
Demeester, Piet
Fostier, Jan
Marchal, Kathleen
Pathway Relevance Ranking for Tumor Samples through Network-Based Data Integration
title Pathway Relevance Ranking for Tumor Samples through Network-Based Data Integration
title_full Pathway Relevance Ranking for Tumor Samples through Network-Based Data Integration
title_fullStr Pathway Relevance Ranking for Tumor Samples through Network-Based Data Integration
title_full_unstemmed Pathway Relevance Ranking for Tumor Samples through Network-Based Data Integration
title_short Pathway Relevance Ranking for Tumor Samples through Network-Based Data Integration
title_sort pathway relevance ranking for tumor samples through network-based data integration
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4517887/
https://www.ncbi.nlm.nih.gov/pubmed/26217958
http://dx.doi.org/10.1371/journal.pone.0133503
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