--- title: "Using scatterplot matrix" author: "NEST CoreDev" output: rmarkdown::html_vignette runtime: shiny vignette: > %\VignetteIndexEntry{Using scatterplot matrix} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- # `teal` application to use scatter plot matrix with various datasets types This vignette will guide you through the four parts to create a `teal` application using various types of datasets using the scatter plot matrix module `tm_g_scatterplotmatrix()`: 1. Load libraries 2. Create data sets 3. Create an `app` variable 4. Run the app ## 1 - Load libraries ```{r echo=TRUE, message=FALSE, warning=FALSE, results="hide"} library(teal.modules.general) # used to create the app library(dplyr) # used to modify data sets ``` ## 2 - Create data sets Inside this app 4 datasets will be used 1. `ADSL` A wide data set with subject data 2. `ADRS` A long data set with response data for subjects at different time points of the study 3. `ADTTE` A long data set with time to event data 4. `ADLB` A long data set with lab measurements for each subject ```{r echo=TRUE, message=FALSE, warning=FALSE, results="hide"} data <- teal_data() data <- within(data, { ADSL <- teal.modules.general::rADSL %>% mutate(TRTDUR = round(as.numeric(TRTEDTM - TRTSDTM), 1)) ADRS <- teal.modules.general::rADRS ADTTE <- teal.modules.general::rADTTE ADLB <- teal.modules.general::rADLB %>% mutate(CHGC = as.factor(case_when( CHG < 1 ~ "N", CHG > 1 ~ "P", TRUE ~ "-" ))) }) datanames <- c("ADSL", "ADRS", "ADTTE", "ADLB") datanames(data) <- datanames join_keys(data) <- default_cdisc_join_keys[datanames] ``` ## 3 - Create an `app` variable This is the most important section. We will use the `teal::init()` function to create an app. The data will be handed over using `teal.data::teal_data()`. The app itself will be constructed by multiple calls of `tm_g_scatterplotmatrix()` using different combinations of data sets. ```{r echo=TRUE, message=FALSE, warning=FALSE, results="hide"} # configuration for the single wide dataset mod1 <- tm_g_scatterplotmatrix( label = "Single wide dataset", variables = data_extract_spec( dataname = "ADSL", select = select_spec( label = "Select variables:", choices = variable_choices(data[["ADSL"]]), selected = c("AGE", "RACE", "SEX", "BMRKR1", "BMRKR2"), multiple = TRUE, fixed = FALSE, ordered = TRUE ) ) ) # configuration for the one long datasets mod2 <- tm_g_scatterplotmatrix( "One long dataset", variables = data_extract_spec( dataname = "ADTTE", select = select_spec( choices = variable_choices(data[["ADTTE"]], c("AVAL", "BMRKR1", "BMRKR2")), selected = c("AVAL", "BMRKR1", "BMRKR2"), multiple = TRUE, fixed = FALSE, ordered = TRUE, label = "Select variables:" ) ) ) # configuration for the two long datasets mod3 <- tm_g_scatterplotmatrix( label = "Two long datasets", variables = list( data_extract_spec( dataname = "ADRS", select = select_spec( label = "Select variables:", choices = variable_choices(data[["ADRS"]]), selected = c("AVAL", "AVALC"), multiple = TRUE, fixed = FALSE, ordered = TRUE, ), filter = filter_spec( label = "Select endpoints:", vars = c("PARAMCD", "AVISIT"), choices = value_choices(data[["ADRS"]], c("PARAMCD", "AVISIT"), c("PARAM", "AVISIT")), selected = "OVRINV - SCREENING", multiple = FALSE ) ), data_extract_spec( dataname = "ADTTE", select = select_spec( label = "Select variables:", choices = variable_choices(data[["ADTTE"]]), selected = c("AVAL", "CNSR"), multiple = TRUE, fixed = FALSE, ordered = TRUE ), filter = filter_spec( label = "Select parameters:", vars = "PARAMCD", choices = value_choices(data[["ADTTE"]], "PARAMCD", "PARAM"), selected = "OS", multiple = TRUE ) ) ) ) # initialize the app app <- init( data = data, modules = modules( modules( label = "Scatterplot matrix", mod1, mod2, mod3 ) ) ) ``` ## 4 - Run the app A simple `shiny::shinyApp()` call will let you run the app. Note that app is only displayed when running this code inside an `R` session. ```{r, echo=TRUE, results="hide"} shinyApp(app$ui, app$server, options = list(height = 1024, width = 1024)) ```