SBGNview has collected pathway data and gene sets from the following databases: Reactome, PANTHER Pathway, SMPDB, MetaCyc and MetaCrop. These gene sets can be used for pathway enrichment analysis.
In this vignette, we will show you a complete pathway analysis workflow based on GAGE + SBGNview. Similar workflows have been documented in the gage package using GAGE + Pathview.
Please cite the following papers when using the open-source SBGNview package. This will help the project and our team:
Luo W, Brouwer C. Pathview: an R/Biocondutor package for pathway-based data integration and visualization. Bioinformatics, 2013, 29(14):1830-1831, doi: 10.1093/bioinformatics/btt285
Please also cite the GAGE paper when using the gage package:
Luo W, Friedman M, etc. GAGE: generally applicable gene set enrichment for pathway analysis. BMC Bioinformatics, 2009, 10, pp. 161, doi: 10.1186/1471-2105-10-161
Please see the Quick Start tutorial for installation instructions and quick start examples.
In this example, we analyze a RNA-Seq dataset of IFNg KO mice vs wild type mice. It contains normalized RNA-seq gene expression data described in Greer, Renee L., Xiaoxi Dong, et al, 2016.
The RNA abundance data was quantile normalized and log2 transformed, stored in a “SummarizedExperiment” object. SBGNview input user data (gene.data or cpd.data) can be either a numeric matrix or a vector, like those in pathview. In addition, it can be a “SummarizedExperiment” object, which is commonly used in BioConductor packages.
library(SBGNview)
library(SummarizedExperiment)
data("IFNg", "pathways.info")
count.data <- assays(IFNg)$counts
head(count.data)
wt.cols <- which(IFNg$group == "wt")
ko.cols <- which(IFNg$group == "ko")ensembl.pathway <- sbgn.gsets(id.type = "ENSEMBL",
                              species = "mmu",
                              mol.type = "gene",
                              output.pathway.name = TRUE
                              )
head(ensembl.pathway[[2]])if(!requireNamespace("gage", quietly = TRUE)) {
  BiocManager::install("gage", update = FALSE)
}
library(gage)
degs <- gage(exprs = count.data,
           gsets = ensembl.pathway,
           ref = wt.cols,
           samp = ko.cols,
           compare = "paired" #"as.group"
           )
head(degs$greater)[,3:5]
head(degs$less)[,3:5]
down.pathways <- row.names(degs$less)[1:10]
head(down.pathways)The abundance values were log2 transformed. Here we calculate the fold change of IFNg KO group v.s. WT group.
ensembl.koVsWt <- count.data[,ko.cols]-count.data[,wt.cols]
head(ensembl.koVsWt)
#alternatively, we can also calculate mean fold changes per gene, which corresponds to gage analysis above with compare="as.group"
mean.wt <- apply(count.data[,wt.cols] ,1 ,"mean")
head(mean.wt)
mean.ko <- apply(count.data[,ko.cols],1,"mean")
head(mean.ko)
# The abundance values were on log scale. Hence fold change is their difference.
ensembl.koVsWt.m <- mean.ko - mean.wt#load the SBGNview pathway collection, which may takes a few seconds.
data(sbgn.xmls)
down.pathways <- sapply(strsplit(down.pathways,"::"), "[", 1)
head(down.pathways)
sbgnview.obj <- SBGNview(
    gene.data = ensembl.koVsWt,
    gene.id.type = "ENSEMBL",
    input.sbgn = down.pathways[1:2],#can be more than 2 pathways
    output.file = "ifn.sbgnview.less",
    show.pathway.name = TRUE,
    max.gene.value = 2,
    min.gene.value = -2,
    mid.gene.value = 0,
    node.sum = "mean",
    output.format = c("png"),
    
    font.size = 2.3,
    org = "mmu",
    
    text.length.factor.complex = 3,
    if.scale.compartment.font.size = TRUE,
    node.width.adjust.factor.compartment = 0.04 
)
sbgnview.objFigure 4.1: SBGNview graph of the most down-regulated pathways in IFNg KO experiment
Figure 4.2: SBGNview graph of the second most down-regulated pathways in IFNg KO experiment
The ‘cancer.ds’ is a microarray dataset from a breast cancer study. The dataset was adopted from gage package and processed into a SummarizedExperiment object. It is used to demo SBGNview’s visualization ability.
data("cancer.ds")
sbgnview.obj <- SBGNview(
    gene.data = cancer.ds,
    gene.id.type = "ENTREZID",
    input.sbgn = "R-HSA-877300",
    output.file = "demo.SummarizedExperiment",
    show.pathway.name = TRUE,
    max.gene.value = 1,
    min.gene.value = -1,
    mid.gene.value = 0,
    node.sum = "mean",
    output.format = c("png"),
    
    font.size = 2.3,
    org = "hsa",
    
    text.length.factor.complex = 3,
    if.scale.compartment.font.size = TRUE,
    node.width.adjust.factor.compartment = 0.04
   )
sbgnview.objFigure 4.3: SBGNview of a cancer dataset gse16873
sessionInfo()## R version 4.4.1 (2024-06-14)
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## 
## attached base packages:
## [1] stats4    stats     graphics  grDevices utils     datasets  methods  
## [8] base     
## 
## other attached packages:
##  [1] gage_2.56.0                 SummarizedExperiment_1.36.0
##  [3] Biobase_2.66.0              GenomicRanges_1.58.0       
##  [5] GenomeInfoDb_1.42.0         IRanges_2.40.0             
##  [7] S4Vectors_0.44.0            BiocGenerics_0.52.0        
##  [9] MatrixGenerics_1.18.0       matrixStats_1.4.1          
## [11] SBGNview_1.20.0             SBGNview.data_1.19.0       
## [13] pathview_1.46.0             knitr_1.48                 
## 
## loaded via a namespace (and not attached):
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## [13] pkgconfig_2.0.3         Matrix_1.7-1            graph_1.84.0           
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## [49] memoise_2.0.1           evaluate_1.0.1          rbibutils_2.3          
## [52] rlang_1.1.4             DBI_1.2.3               Rgraphviz_2.50.0       
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