2013
DOI: 10.1093/nar/gkt145
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Canonical correlation analysis for RNA-seq co-expression networks

Abstract: Digital transcriptome analysis by next-generation sequencing discovers substantial mRNA variants. Variation in gene expression underlies many biological processes and holds a key to unravelling mechanism of common diseases. However, the current methods for construction of co-expression networks using overall gene expression are originally designed for microarray expression data, and they overlook a large number of variations in gene expressions. To use information on exon, genomic positional level and allele-s… Show more

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Cited by 76 publications
(75 citation statements)
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“…WGCNA has been widely used to identify co-expressed gene networks in various human brain regions (Oldham et al, 2008), animals (Fuller et al, 2007;Langfelder et al, 2012), and in human phenotypes, including schizophrenia (Torkamani et al, 2010), autism (Voineagu et al, 2011), cancer (Clarke et al, 2013), aggressive behavior (Malki et al, 2014), BD (Chen et al, 2013a), and psoriasis (Li et al, 2014). However, aside from one study of a few gene networks (Hong et al, 2013), WGCNA has not yet been applied to the complete brain transcriptome in BD as revealed by RNA-seq.…”
Section: Introductionmentioning
confidence: 99%
“…WGCNA has been widely used to identify co-expressed gene networks in various human brain regions (Oldham et al, 2008), animals (Fuller et al, 2007;Langfelder et al, 2012), and in human phenotypes, including schizophrenia (Torkamani et al, 2010), autism (Voineagu et al, 2011), cancer (Clarke et al, 2013), aggressive behavior (Malki et al, 2014), BD (Chen et al, 2013a), and psoriasis (Li et al, 2014). However, aside from one study of a few gene networks (Hong et al, 2013), WGCNA has not yet been applied to the complete brain transcriptome in BD as revealed by RNA-seq.…”
Section: Introductionmentioning
confidence: 99%
“…One can further examine whether the resulting component lists are enriched for known gene signatures or signaling pathways . Statistical methods, such as principle component analysis (PCA), partial linear‐square regression (PLSR), and canonical correlation analysis (CCA), are then utilized to identify functional relationships by checking the expression correlations between components or clustering the expression profiles of individual elements . For example, Dewey et al assembled all myocardial transcript data from the GEO database and used gene coexpression network analysis to derive functional modules and regulatory mediators in developing and failing myocardium that were not present in normal adult tissue …”
Section: Computational Methods In Systems Biologymentioning
confidence: 99%
“…In this approach, the genes are treated individually, without considering the interactions between them (Hong et al, 2013). However, biological functions exhibit a complex behavior, resulting from a set of genes interacting with each other (Zhao et al, 2010).…”
Section: An Overview Of Data Integration: the Use Of Networkmentioning
confidence: 99%