## ----setup, include=FALSE----------------------------------------------------- knitr::opts_chunk$set(echo = TRUE, fig.wide=TRUE) ## ----echo=FALSE, out.width = "20%"-------------------------------------------- knitr::include_graphics("figures/logo_gINTomics.png") # ## ----eval=FALSE--------------------------------------------------------------- # if (!require("BiocManager", quietly = TRUE)) # install.packages("BiocManager") # BiocManager::install("gINTomics") # # #devtools::install_github("angelovelle96/gINTomics") # ## ----message=FALSE------------------------------------------------------------ # loading packages library(gINTomics) library(MultiAssayExperiment) library(shiny) data("mmultiassay_ov") mmultiassay_ov ## ----message=FALSE------------------------------------------------------------ ## Here we just select part of the data o speed up the process tmp <- lapply(experiments(mmultiassay_ov), function(x) x[1:400,]) mmultiassay_ov <- MultiAssayExperiment(experiments = tmp) gene_exp_matrix <- as.matrix(assay(mmultiassay_ov[["gene_exp"]])) miRNA_exp_matrix <- as.matrix(assay(mmultiassay_ov[["miRNA_exp"]])) meth_matrix <- as.matrix(assay(mmultiassay_ov[["methylation"]])) gene_cnv_matrix <- as.matrix(assay(mmultiassay_ov[["cnv_data"]])) miRNA_cnv_matrix <- as.matrix(assay(mmultiassay_ov[["miRNA_cnv_data"]])) ## ----message=FALSE------------------------------------------------------------ new_multiassay <- create_multiassay(methylation = meth_matrix, gene_exp = gene_exp_matrix, cnv_data = gene_cnv_matrix, miRNA_exp = miRNA_exp_matrix, miRNA_cnv_data = miRNA_cnv_matrix) new_multiassay ## ----message=FALSE------------------------------------------------------------ gene_genomic_integration <- run_genomic_integration(expression = t(gene_exp_matrix), cnv_data = t(gene_cnv_matrix), methylation = t(meth_matrix)) summary(gene_genomic_integration) ## ----message=FALSE------------------------------------------------------------ gene_cnv_integration <- run_cnv_integration(expression = t(gene_exp_matrix), cnv_data = t(gene_cnv_matrix)) summary(gene_cnv_integration) ## ----message=FALSE------------------------------------------------------------ gene_met_integration <- run_met_integration(expression = t(gene_exp_matrix), methylation = t(meth_matrix)) summary(gene_met_integration) ## ----message=FALSE------------------------------------------------------------ tf_target_integration <- run_tf_integration(expression = t(gene_exp_matrix), type = "tf") summary(tf_target_integration) ## ----message=FALSE------------------------------------------------------------ miRNA_target_integration <- run_tf_integration(expression = t(gene_exp_matrix), tf_expression = t(miRNA_exp_matrix), type = "miRNA_target") summary(miRNA_target_integration) ## ----message=FALSE------------------------------------------------------------ tf_miRNA_integration <- run_tf_integration(expression = t(miRNA_exp_matrix), tf_expression = t(gene_exp_matrix), type = "tf_miRNA") summary(tf_miRNA_integration) ## ----message=FALSE------------------------------------------------------------ ## Here we run the model multiomics_integration <- run_multiomics(data = new_multiassay) summary(multiomics_integration) ## ----eval=FALSE--------------------------------------------------------------- # run_shiny(multiomics_integration) ## ----------------------------------------------------------------------------- data_table <- extract_model_res(multiomics_integration) data_table <- data_table[data_table$cov!="(Intercept)",] # plot_network(data_table, num_interactions = 200) ## ----------------------------------------------------------------------------- # plot_venn(data_table) ## ----------------------------------------------------------------------------- # plot_volcano(data_table, omics = "gene_genomic_res", cnv_met = "cnv") # plot_volcano(data_table, omics = "gene_genomic_res", cnv_met = "met") ## ----------------------------------------------------------------------------- # plot_ridge(data_table, omics = "gene_genomic_res", cnv_met = "cnv") # plot_ridge(data_table, omics = "gene_genomic_res", cnv_met = "met") ## ----eval=FALSE--------------------------------------------------------------- # # plot_chr_distribution(data_table = data_table, # # omics = "gene_genomic_res") # ## ----eval=FALSE--------------------------------------------------------------- # # plot_tf_distribution(data_table = data_table) # ## ----------------------------------------------------------------------------- #gen_enr <- run_genomic_enrich(multiomics_integration, qvalueCutoff = 1, pvalueCutoff = 0.05, pAdjustMethod = "none") #dot_plotly(gen_enr$cnv[[1]]$go) ## ----------------------------------------------------------------------------- sessionInfo()