Introduction and Data files

This dataset contains nine tissues (heart, hippocampus, hypothalamus, kidney, liver, prefrontal cortex, skeletal muscle, small intestine, and spleen) from C57BL/6J mice that were fed 2-deoxyglucose (6g/L) through their drinking water for 96hrs or 4wks. 96hr mice were given their 2DG treatment 2 weeks after the other cohort started the 4 week treatment. The organs from the mice were harvested and processed for metabolomics and transcriptomics. The data in this document pertains to the transcriptomics data only. The counts that were used were FPKM normalized before being log transformed. It was determined that sample A113 had low RNAseq quality and through further analyses with PCA, MA plots, and clustering was an outlier and will be removed for the rest of the analyses performed. This document will determine the contribution of each main effect or their combination to each pathway identified, across modules.

needed.packages <- c("tidyverse", "here", "functional", "gplots", "dplyr", "GeneOverlap", "R.utils", "reshape2","magrittr","data.table", "RColorBrewer","preprocessCore", "ARTool","emmeans", "phia", "gProfileR", "WGCNA","plotly", "pheatmap", "pander", "GSVA", "kableExtra","downloadthis")
for(i in 1:length(needed.packages)){library(needed.packages[i], character.only = TRUE)}

source(here("source_files","WGCNA_source.R"))
source(here("source_files","plot_theme.R"))
tdata.FPKM.sample.info <- readRDS(here("Data","20190406_RNAseq_B6_4wk_2DG_counts_phenotypes.RData"))

tdata.FPKM <- readRDS(here("Data","20190406_RNAseq_B6_4wk_2DG_counts_numeric.RData"))

log.tdata.FPKM <- log(tdata.FPKM + 1)
log.tdata.FPKM <- as.data.frame(log.tdata.FPKM)

log.tdata.FPKM.sample.info <- cbind(log.tdata.FPKM, tdata.FPKM.sample.info[,27238:27240])

log.tdata.FPKM.sample.info <- log.tdata.FPKM.sample.info %>% rownames_to_column() %>% filter(rowname != "A113") %>% column_to_rownames()

log.tdata.FPKM.subset <- log.tdata.FPKM[,colMeans(log.tdata.FPKM != 0) > 0.5] 

log.tdata.FPKM.sample.info.subset <- cbind(log.tdata.FPKM.subset,tdata.FPKM.sample.info[,27238:27240])
log.tdata.FPKM.sample.info.subset <- log.tdata.FPKM.sample.info.subset %>% rownames_to_column() %>% filter(rowname != "A113") %>% column_to_rownames()

log.tdata.FPKM.sample.info.subset.hippocampus <- log.tdata.FPKM.sample.info.subset %>% rownames_to_column() %>% filter(Tissue == "Hippocampus") %>% column_to_rownames()


log.data.FPKM.subset.hippocampus <- log.tdata.FPKM.sample.info.subset.hippocampus %>%
  dplyr::select(-c("Time", "Tissue", "Treatment")) %>%
  t()

modules <- readRDS(here("Data","Hippocampus","log.tdata.FPKM.sample.info.subset.hippocampus.WGCNA.module.membership.RData"))

Gene Set Variation Analysis

Gene Set Variation Analysis is a non-parametric, unsupervised method that assesses gene set enrichment. The method is performed using the R package GSVA. It is performed without phenotypes, which allows for complex experimental studies to be assessed for pathway enrichment. Gene sets can be provided or pulled down from websites that store pre-defined gene sets. The gene sets used for this dataset were determined by assessing pathways present within each module through WGCNA. To obtain these pathways WGCNA was performed to cluster genes into modules. Overrepresented pathways were identified within each module using gProfiler2. To assess enrichment of pathways, Gene set variation analysis (GSVA) was performed. Genes of interest need to be compared to a gene set. To create this gene set, a complete ensembl gene list was assessed using gProfiler2 to identify pathways, regardless of significance. Each set of genes within each module was then assessed against the gene set to perform GSVA.

ANOVA

Aligned rank transformation was used to determine which factors significantly altered each pathway. If a factor or interaction with more than two factors is identified as significant then contrast statements are performed using emmeans() or testInteraction() to identify which factors are significantly different.

Antiquewhite

print.gsva.table(w = 1, gsva.table.list$table.module, gsva.table.list$tES)

Bisque2

print.gsva.table(w = 2, gsva.table.list$table.module, gsva.table.list$tES)

Blanchedalmond

print.gsva.table(w = 3, gsva.table.list$table.module, gsva.table.list$tES)

Blue1

print.gsva.table(w = 4, gsva.table.list$table.module, gsva.table.list$tES)

Blue3

print.gsva.table(w = 5, gsva.table.list$table.module, gsva.table.list$tES)

Brown1

print.gsva.table(w = 6, gsva.table.list$table.module, gsva.table.list$tES)

Brown2

print.gsva.table(w = 7, gsva.table.list$table.module, gsva.table.list$tES)

Chocolate

print.gsva.table(w = 8, gsva.table.list$table.module, gsva.table.list$tES)

Chocolate2

print.gsva.table(w = 9, gsva.table.list$table.module, gsva.table.list$tES)

Chocolate3

print.gsva.table(w = 10, gsva.table.list$table.module, gsva.table.list$tES)

Coral1

print.gsva.table(w = 11, gsva.table.list$table.module, gsva.table.list$tES)

Darkgoldenrod1

print.gsva.table(w = 12, gsva.table.list$table.module, gsva.table.list$tES)

Darkgoldenrod4

print.gsva.table(w = 13, gsva.table.list$table.module, gsva.table.list$tES)

Darkgrey

print.gsva.table(w = 14, gsva.table.list$table.module, gsva.table.list$tES)

Darkolivegreen

print.gsva.table(w = 15, gsva.table.list$table.module, gsva.table.list$tES)

Darkseagreen2

print.gsva.table(w = 16, gsva.table.list$table.module, gsva.table.list$tES)

Darkslateblue

print.gsva.table(w = 17, gsva.table.list$table.module, gsva.table.list$tES)

Deeppink

print.gsva.table(w = 18, gsva.table.list$table.module, gsva.table.list$tES)

Deepskyblue4

print.gsva.table(w = 19, gsva.table.list$table.module, gsva.table.list$tES)

Dodgerblue1

print.gsva.table(w = 20, gsva.table.list$table.module, gsva.table.list$tES)

Dodgerblue3

print.gsva.table(w = 21, gsva.table.list$table.module, gsva.table.list$tES)

Firebrick2

print.gsva.table(w = 22, gsva.table.list$table.module, gsva.table.list$tES)

Firebrick3

print.gsva.table(w = 23, gsva.table.list$table.module, gsva.table.list$tES)

Goldenrod4

print.gsva.table(w = 24, gsva.table.list$table.module, gsva.table.list$tES)

Green

print.gsva.table(w = 25, gsva.table.list$table.module, gsva.table.list$tES)

Green3

print.gsva.table(w = 26, gsva.table.list$table.module, gsva.table.list$tES)

Grey

print.gsva.table(w = 27, gsva.table.list$table.module, gsva.table.list$tES)

Indianred1

print.gsva.table(w = 28, gsva.table.list$table.module, gsva.table.list$tES)

Indianred2

print.gsva.table(w = 29, gsva.table.list$table.module, gsva.table.list$tES)

Indianred4

print.gsva.table(w = 30, gsva.table.list$table.module, gsva.table.list$tES)

Khaki3

print.gsva.table(w = 31, gsva.table.list$table.module, gsva.table.list$tES)

Lavenderblush1

print.gsva.table(w = 32, gsva.table.list$table.module, gsva.table.list$tES)

Lavenderblush2

print.gsva.table(w = 33, gsva.table.list$table.module, gsva.table.list$tES)

Lavenderblush3

print.gsva.table(w = 34, gsva.table.list$table.module, gsva.table.list$tES)

Orange3

print.gsva.table(w = 35, gsva.table.list$table.module, gsva.table.list$tES)

Orangered1

print.gsva.table(w = 36, gsva.table.list$table.module, gsva.table.list$tES)

Pink1

print.gsva.table(w = 37, gsva.table.list$table.module, gsva.table.list$tES)

Pink4

print.gsva.table(w = 38, gsva.table.list$table.module, gsva.table.list$tES)

Rosybrown3

print.gsva.table(w = 39, gsva.table.list$table.module, gsva.table.list$tES)

Salmon1

print.gsva.table(w = 40, gsva.table.list$table.module, gsva.table.list$tES)

Slateblue1

print.gsva.table(w = 41, gsva.table.list$table.module, gsva.table.list$tES)

Tan1

print.gsva.table(w = 42, gsva.table.list$table.module, gsva.table.list$tES)

Tan4

print.gsva.table(w = 43, gsva.table.list$table.module, gsva.table.list$tES)

Tomato

print.gsva.table(w = 44, gsva.table.list$table.module, gsva.table.list$tES)

Turquoise

print.gsva.table(w = 45, gsva.table.list$table.module, gsva.table.list$tES)

Analysis performed by Ann Wells

The Carter Lab The Jackson Laboratory 2023

ann.wells@jax.org