--- title: "Comparing Two pathfindR Results" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{Comparing Two pathfindR Results} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r, include = FALSE} knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 8, fig.height = 4, fig.align = "center" ) suppressPackageStartupMessages(library(pathfindR)) ``` The function `combine_pathfindR_results()` allows combination of two pathfindR active-subnetwork-oriented enrichment analysis results for investigating common and distinct terms between the groups. Below is an example for comparing results using two different rheumatoid arthritis-related data sets (`example_pathfindR_output` and `example_comparison_output`). ```{r compare2res} combined_df <- combine_pathfindR_results( result_A = example_pathfindR_output, result_B = example_comparison_output, plot_common = FALSE ) ``` By default, `combine_pathfindR_results()` plots the term-gene graph for the common terms in the combined results. For not plotting the graph, set `plot_common = FALSE`. The function `combined_results_graph()` can be used to create this graph (using only selected terms etc.) later on. By default, the function creates the graph using all common terms: ```{r compare_graph1} combined_results_graph(combined_df) ``` By supplying a vector of selected terms to the `selected_terms` arguments, you may plot the term-gene graph for the selected terms: ```{r compare_graph2, fig.width=8, fig.height=4} combined_results_graph( combined_df, selected_terms = c("hsa04144", "hsa04141", "hsa04140") ) ``` By default, `combined_results_graph()` creates the graph using term IDs. To use term descriptions instead, set `use_description = TRUE`: ```{r compare_graph3, eval=FALSE} combined_results_graph( combined_df, use_description = TRUE, selected_terms = combined_df$Term_Description[1:4] ) ``` For changing the layout of the graph (`"auto"` by default), you may use the `layout` argument. For changing how the sizes of the term nodes are determined, you may use the `node_size` argument. The options are `"num_genes"` (default) and `"p_val"` for using the number of significant genes in the term and the -log10(p) value of the term, respectively: ```{r compare_graph4, eval=FALSE} combined_results_graph( combined_df, selected_terms = c("hsa04144", "hsa04141", "hsa04140"), node_size = "p_val" ) ```