Large-Scale Gene Co-Expression Network As a Source of Functional Annotation for Cattle Genes Hamid Beiki Iowa State University, [email protected]

Large-Scale Gene Co-Expression Network As a Source of Functional Annotation for Cattle Genes Hamid Beiki Iowa State University, Beiki@Iastate.Edu

Masthead Logo Animal Science Publications Animal Science 2016 Large-scale gene co-expression network as a source of functional annotation for cattle genes Hamid Beiki Iowa State University, [email protected] Ardeshir Nejati-Javaremi University of Tehran Abbas Pakdel Isfahan University of Technology Ali Masoudi-Nejad University of Tehran Zhi-Liang Hu Iowa State University SeFoe nelloxtw pa thige fors aaddndition addal aitutionhorsal works at: https://lib.dr.iastate.edu/ans_pubs Part of the Agriculture Commons, Animal Sciences Commons, Bioinformatics Commons, Cell and Developmental Biology Commons, and the Genetics and Genomics Commons The ompc lete bibliographic information for this item can be found at https://lib.dr.iastate.edu/ ans_pubs/426. For information on how to cite this item, please visit http://lib.dr.iastate.edu/ howtocite.html. This Article is brought to you for free and open access by the Animal Science at Iowa State University Digital Repository. It has been accepted for inclusion in Animal Science Publications by an authorized administrator of Iowa State University Digital Repository. For more information, please contact [email protected]. Large-scale gene co-expression network as a source of functional annotation for cattle genes Abstract Background: Genome sequencing and subsequent gene annotation of genomes has led to the elucidation of many genes, but in vertebrates the actual number of protein coding genes are very consistent across species (~20,000). Seven years after sequencing the cattle eg nome, there are still genes that have limited annotation and the function of many genes are still not understood, or partly understood at best. Based on the assumption that genes with similar patterns of expression across a vast array of tissues and experimental conditions are likely to encode proteins with related functions or participate within a given pathway, we constructed a genome-wide Cattle Gene Co-expression Network (CGCN) using 72 microarray datasets that contained a total of 1470 Affymetrix Genechip Bovine Genome Arrays that were retrieved from either NCBI GEO or EBI ArrayExpress. Results: The ott al of 16,607 probe sets, which represented 11,397 genes, with unique Entrez ID were consolidated into 32 co-expression modules that contained between 29 and 2569 probe sets. All of the identified modules showed strong functional enrichment for gene ontology (GO) terms and Reactome pathways. For example, modules with important biological functions such as response to virus, response to bacteria, energy metabolism, cell signaling and cell cycle have been identified. Moreover, gene co-expression networks using “guilt-byassociation” principle have been used to predict the potential function of 132 genes with no functional annotation. Four unknown Hub genes were identified in modules highly enriched for GO terms related to leukocyte activation (LOC509513), RNA processing (LOC100848208), nucleic acid metabolic process (LOC100850151) and organic-acid metabolic process (MGC137211). Such highly connected genes should be investigated more closely as they likely to have key regulatory roles. Conclusions: We have demonstrated that the CGCN and its corresponding regulons provides rich information for experimental biologists to design experiments, interpret experimental results, and develop novel hypothesis on gene function in this poorly annotated genome. The network is publicly accessible at http://www.animalgenome. org/cgi-bin/host/reecylab/d. Disciplines Agriculture | Animal Sciences | Bioinformatics | Cell and Developmental Biology | Genetics and Genomics Comments This article is published as Beiki, Hamid, Ardeshir Nejati-Javaremi, Abbas Pakdel, Ali Masoudi-Nejad, Zhi- Liang Hu, and James M. Reecy. "Large-scale gene co-expression network as a source of functional annotation for cattle eg nes." BMC genomics 17 (2016): 846. doi: 10.1186/s12864-016-3176-2. Creative Commons License Creative ThiCommons works is licensed under a Creative Commons Attribution 4.0 License. Attribution 4.0 LAicuthenosrse Hamid Beiki, Ardeshir Nejati-Javaremi, Abbas Pakdel, Ali Masoudi-Nejad, Zhi-Liang Hu, and James M. Reecy This article is available at Iowa State University Digital Repository: https://lib.dr.iastate.edu/ans_pubs/426 This article is available at Iowa State University Digital Repository: https://lib.dr.iastate.edu/ans_pubs/426 Beiki et al. BMC Genomics (2016) 17:846 DOI 10.1186/s12864-016-3176-2 RESEARCH ARTICLE Open Access Large-scale gene co-expression network as a source of functional annotation for cattle genes Hamid Beiki1,4, Ardeshir Nejati-Javaremi1*, Abbas Pakdel2, Ali Masoudi-Nejad3, Zhi-Liang Hu4 and James M Reecy4 Abstract Background: Genome sequencing and subsequent gene annotation of genomes has led to the elucidation of many genes, but in vertebrates the actual number of protein coding genes are very consistent across species (~20,000). Seven years after sequencing the cattle genome, there are still genes that have limited annotation and the function of many genes are still not understood, or partly understood at best. Based on the assumption that genes with similar patterns of expression across a vast array of tissues and experimental conditions are likely to encode proteins with related functions or participate within a given pathway, we constructed a genome-wide Cattle Gene Co-expression Network (CGCN) using 72 microarray datasets that contained a total of 1470 Affymetrix Genechip Bovine Genome Arrays that were retrieved from either NCBI GEO or EBI ArrayExpress. Results: The total of 16,607 probe sets, which represented 11,397 genes, with unique Entrez ID were consolidated into 32 co-expression modules that contained between 29 and 2569 probe sets. All of the identified modules showed strong functional enrichment for gene ontology (GO) terms and Reactome pathways. For example, modules with important biological functions such as response to virus, response to bacteria, energy metabolism, cell signaling and cell cycle have been identified. Moreover, gene co-expression networks using “guilt-by- association” principle have been used to predict the potential function of 132 genes with no functional annotation. Four unknown Hub genes were identified in modules highly enriched for GO terms related to leukocyte activation (LOC509513), RNA processing (LOC100848208), nucleic acid metabolic process (LOC100850151) and organic-acid metabolic process (MGC137211). Such highly connected genes should be investigated more closely as they likely to have key regulatory roles. Conclusions: We have demonstrated that the CGCN and its corresponding regulons provides rich information for experimental biologists to design experiments, interpret experimental results, and develop novel hypothesis on gene function in this poorly annotated genome. The network is publicly accessible at http://www.animalgenome. org/cgi-bin/host/reecylab/d. Background sequencing of the cattle genome in 2009 [2], there have The completion of a draft genome assembly simply been efforts to identify functional elements in the gen- marks the “end of the beginning” of genome exploration ome [3–7]. Functional genomics focuses on understand- in that species [1]. After a genome is sequenced, the ing the function and regulation of genes and gene next critical step is gene annotation. This includes products on a genome-wide or global scale [1]. Initial marking the genomic position and structure of genes, annotation of the cattle genome identified 22,000+ naming genes (nomenclature) and functional annotation genes, with a core set of 14,345 orthologs shared among i.e. identifying their biological function. Since the seven mammalian species [2]. Despite these efforts, the function of some genes is still not understood, or partly * Correspondence: [email protected] understood at best [6]. 1Department of Animal Science, University College of Agriculture and Natural The large amount of biological data deposited in pub- Resources, University of Tehran, Karaj 31587-11167, Iran lic databases provides an opportunity to computationally Full list of author information is available at the end of the article © The Author(s). 2016 Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. 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. Beiki et al. BMC Genomics (2016) 17:846 Page 2 of 13 annotate functional and regulatory connections among Reactome pathway information [20] (functional enrich- genes. A challenge in this post-genomic era is to prop- ment analysis). Almost all modules exhibited high en- erly integrate available information so as to reconstruct, richment for GO terms (32 modules) or Reactome as accurately as possible, valuable information from large pathways (29 modules) (Table 1 and Additional file 3: volumes of data [8]. It is widely accepted that to under- Table S3). The concordance between enriched GO terms stand gene function, genes must be studied in the con- and pathways in each module strengthened the bio- text of networks [9]. Gene co-expression analysis (GCA) logical function of computational

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