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Function of Cancer Associated Genes Revealed by Modern Univariate and Multivariate Association Tests

Copy number variation (CNV) plays a role in pathogenesis of many human diseases, especially cancer. Several whole genome CNV association studies have been performed for the purpose of identifying cancer associated CNVs. Here we undertook a novel approach to whole genome CNV analysis, with the goal b...

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Autores principales: Gorfine, Malka, Goldstein, Boaz, Fishman, Alla, Heller, Ruth, Heller, Yair, Lamm, Ayelet T.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4429101/
https://www.ncbi.nlm.nih.gov/pubmed/25965968
http://dx.doi.org/10.1371/journal.pone.0126544
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author Gorfine, Malka
Goldstein, Boaz
Fishman, Alla
Heller, Ruth
Heller, Yair
Lamm, Ayelet T.
author_facet Gorfine, Malka
Goldstein, Boaz
Fishman, Alla
Heller, Ruth
Heller, Yair
Lamm, Ayelet T.
author_sort Gorfine, Malka
collection PubMed
description Copy number variation (CNV) plays a role in pathogenesis of many human diseases, especially cancer. Several whole genome CNV association studies have been performed for the purpose of identifying cancer associated CNVs. Here we undertook a novel approach to whole genome CNV analysis, with the goal being identification of associations between CNV of different genes (CNV-CNV) across 60 human cancer cell lines. We hypothesize that these associations point to the roles of the associated genes in cancer, and can be indicators of their position in gene networks of cancer-driving processes. Recent studies show that gene associations are often non-linear and non-monotone. In order to obtain a more complete picture of all CNV associations, we performed omnibus univariate analysis by utilizing dCov, MIC, and HHG association tests, which are capable of detecting any type of association, including non-monotone relationships. For comparison we used Spearman and Pearson association tests, which detect only linear or monotone relationships. Application of dCov, MIC and HHG tests resulted in identification of twice as many associations compared to those found by Spearman and Pearson alone. Interestingly, most of the new associations were detected by the HHG test. Next, we utilized dCov's and HHG's ability to perform multivariate analysis. We tested for association between genes of unknown function and known cancer-related pathways. Our results indicate that multivariate analysis is much more effective than univariate analysis for the purpose of ascribing biological roles to genes of unknown function. We conclude that a combination of multivariate and univariate omnibus association tests can reveal significant information about gene networks of disease-driving processes. These methods can be applied to any large gene or pathway dataset, allowing more comprehensive analysis of biological processes.
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spelling pubmed-44291012015-05-21 Function of Cancer Associated Genes Revealed by Modern Univariate and Multivariate Association Tests Gorfine, Malka Goldstein, Boaz Fishman, Alla Heller, Ruth Heller, Yair Lamm, Ayelet T. PLoS One Research Article Copy number variation (CNV) plays a role in pathogenesis of many human diseases, especially cancer. Several whole genome CNV association studies have been performed for the purpose of identifying cancer associated CNVs. Here we undertook a novel approach to whole genome CNV analysis, with the goal being identification of associations between CNV of different genes (CNV-CNV) across 60 human cancer cell lines. We hypothesize that these associations point to the roles of the associated genes in cancer, and can be indicators of their position in gene networks of cancer-driving processes. Recent studies show that gene associations are often non-linear and non-monotone. In order to obtain a more complete picture of all CNV associations, we performed omnibus univariate analysis by utilizing dCov, MIC, and HHG association tests, which are capable of detecting any type of association, including non-monotone relationships. For comparison we used Spearman and Pearson association tests, which detect only linear or monotone relationships. Application of dCov, MIC and HHG tests resulted in identification of twice as many associations compared to those found by Spearman and Pearson alone. Interestingly, most of the new associations were detected by the HHG test. Next, we utilized dCov's and HHG's ability to perform multivariate analysis. We tested for association between genes of unknown function and known cancer-related pathways. Our results indicate that multivariate analysis is much more effective than univariate analysis for the purpose of ascribing biological roles to genes of unknown function. We conclude that a combination of multivariate and univariate omnibus association tests can reveal significant information about gene networks of disease-driving processes. These methods can be applied to any large gene or pathway dataset, allowing more comprehensive analysis of biological processes. Public Library of Science 2015-05-12 /pmc/articles/PMC4429101/ /pubmed/25965968 http://dx.doi.org/10.1371/journal.pone.0126544 Text en © 2015 Gorfine 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
Gorfine, Malka
Goldstein, Boaz
Fishman, Alla
Heller, Ruth
Heller, Yair
Lamm, Ayelet T.
Function of Cancer Associated Genes Revealed by Modern Univariate and Multivariate Association Tests
title Function of Cancer Associated Genes Revealed by Modern Univariate and Multivariate Association Tests
title_full Function of Cancer Associated Genes Revealed by Modern Univariate and Multivariate Association Tests
title_fullStr Function of Cancer Associated Genes Revealed by Modern Univariate and Multivariate Association Tests
title_full_unstemmed Function of Cancer Associated Genes Revealed by Modern Univariate and Multivariate Association Tests
title_short Function of Cancer Associated Genes Revealed by Modern Univariate and Multivariate Association Tests
title_sort function of cancer associated genes revealed by modern univariate and multivariate association tests
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4429101/
https://www.ncbi.nlm.nih.gov/pubmed/25965968
http://dx.doi.org/10.1371/journal.pone.0126544
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