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Differential co-expression network centrality and machine learning feature selection for identifying susceptibility hubs in networks with scale-free structure

BACKGROUND: Biological insights into group differences, such as disease status, have been achieved through differential co-expression analysis of microarray data. Additional understanding of group differences may be achieved by integrating the connectivity structure of the differential co-expression...

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Autores principales: Lareau, Caleb A, White, Bill C, Oberg, Ann L, McKinney, Brett A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4326454/
https://www.ncbi.nlm.nih.gov/pubmed/25685197
http://dx.doi.org/10.1186/s13040-015-0040-x
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author Lareau, Caleb A
White, Bill C
Oberg, Ann L
McKinney, Brett A
author_facet Lareau, Caleb A
White, Bill C
Oberg, Ann L
McKinney, Brett A
author_sort Lareau, Caleb A
collection PubMed
description BACKGROUND: Biological insights into group differences, such as disease status, have been achieved through differential co-expression analysis of microarray data. Additional understanding of group differences may be achieved by integrating the connectivity structure of the differential co-expression network and per-gene differential expression between phenotypic groups. Such a global differential co-expression network strategy may increase sensitivity to detect gene-gene interactions (or expression epistasis) that may act as candidates for rewiring susceptibility co-expression networks. METHODS: We test two methods for inferring Genetic Association Interaction Networks (GAIN) incorporating both differential co-expression effects and differential expression effects: a generalized linear model (GLM) regression method with interaction effects (reGAIN) and a Fisher test method for correlation differences (dcGAIN). We rank the importance of each gene with complete interaction network centrality (CINC), which integrates each gene’s differential co-expression effects in the GAIN model along with each gene’s individual differential expression measure. We compare these methods with statistical learning methods Relief-F, Random Forests and Lasso. We also develop a mixture model and permutation approach for determining significant importance score thresholds for network centralities, Relief-F and Random Forest. We introduce a novel simulation strategy that generates microarray case–control data with embedded differential co-expression networks and underlying correlation structure based on scale-free or Erdos-Renyi (ER) random networks. RESULTS: Using the network simulation strategy, we find that Relief-F and reGAIN provide the best balance between detecting interactions and main effects, plus reGAIN has the ability to adjust for covariates and model quantitative traits. The dcGAIN approach performs best at finding differential co-expression effects by design but worst for main effects, and it does not adjust for covariates and is limited to dichotomous outcomes. When the underlying network is scale free instead of ER, all interaction network methods have greater power to find differential co-expression effects. We apply these methods to a public microarray study of the differential immune response to influenza vaccine, and we identify effects that suggest a role in influenza vaccine immune response for genes from the PI3K family, which includes genes with known immunodeficiency function, and KLRG1, which is a known marker of senescence. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (doi:10.1186/s13040-015-0040-x) contains supplementary material, which is available to authorized users.
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spelling pubmed-43264542015-02-14 Differential co-expression network centrality and machine learning feature selection for identifying susceptibility hubs in networks with scale-free structure Lareau, Caleb A White, Bill C Oberg, Ann L McKinney, Brett A BioData Min Research BACKGROUND: Biological insights into group differences, such as disease status, have been achieved through differential co-expression analysis of microarray data. Additional understanding of group differences may be achieved by integrating the connectivity structure of the differential co-expression network and per-gene differential expression between phenotypic groups. Such a global differential co-expression network strategy may increase sensitivity to detect gene-gene interactions (or expression epistasis) that may act as candidates for rewiring susceptibility co-expression networks. METHODS: We test two methods for inferring Genetic Association Interaction Networks (GAIN) incorporating both differential co-expression effects and differential expression effects: a generalized linear model (GLM) regression method with interaction effects (reGAIN) and a Fisher test method for correlation differences (dcGAIN). We rank the importance of each gene with complete interaction network centrality (CINC), which integrates each gene’s differential co-expression effects in the GAIN model along with each gene’s individual differential expression measure. We compare these methods with statistical learning methods Relief-F, Random Forests and Lasso. We also develop a mixture model and permutation approach for determining significant importance score thresholds for network centralities, Relief-F and Random Forest. We introduce a novel simulation strategy that generates microarray case–control data with embedded differential co-expression networks and underlying correlation structure based on scale-free or Erdos-Renyi (ER) random networks. RESULTS: Using the network simulation strategy, we find that Relief-F and reGAIN provide the best balance between detecting interactions and main effects, plus reGAIN has the ability to adjust for covariates and model quantitative traits. The dcGAIN approach performs best at finding differential co-expression effects by design but worst for main effects, and it does not adjust for covariates and is limited to dichotomous outcomes. When the underlying network is scale free instead of ER, all interaction network methods have greater power to find differential co-expression effects. We apply these methods to a public microarray study of the differential immune response to influenza vaccine, and we identify effects that suggest a role in influenza vaccine immune response for genes from the PI3K family, which includes genes with known immunodeficiency function, and KLRG1, which is a known marker of senescence. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (doi:10.1186/s13040-015-0040-x) contains supplementary material, which is available to authorized users. BioMed Central 2015-02-03 /pmc/articles/PMC4326454/ /pubmed/25685197 http://dx.doi.org/10.1186/s13040-015-0040-x Text en © Lareau et al.; licensee BioMed Central. 2015 This article is published under license to BioMed Central Ltd. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly credited. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Research
Lareau, Caleb A
White, Bill C
Oberg, Ann L
McKinney, Brett A
Differential co-expression network centrality and machine learning feature selection for identifying susceptibility hubs in networks with scale-free structure
title Differential co-expression network centrality and machine learning feature selection for identifying susceptibility hubs in networks with scale-free structure
title_full Differential co-expression network centrality and machine learning feature selection for identifying susceptibility hubs in networks with scale-free structure
title_fullStr Differential co-expression network centrality and machine learning feature selection for identifying susceptibility hubs in networks with scale-free structure
title_full_unstemmed Differential co-expression network centrality and machine learning feature selection for identifying susceptibility hubs in networks with scale-free structure
title_short Differential co-expression network centrality and machine learning feature selection for identifying susceptibility hubs in networks with scale-free structure
title_sort differential co-expression network centrality and machine learning feature selection for identifying susceptibility hubs in networks with scale-free structure
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4326454/
https://www.ncbi.nlm.nih.gov/pubmed/25685197
http://dx.doi.org/10.1186/s13040-015-0040-x
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