teal
application to analyze and report outliers 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
outliers module tm_outliers()
:
app
variablelibrary(teal.modules.general) # used to create the app
library(dplyr) # used to modify data sets
Inside this app 3 datasets will be used
ADSL
A wide data set with subject dataADRS
A long data set with response data for subjects at
different time points of the studyADLB
A long data set with lab measurements for each
subject<- teal_data()
data <- within(data, {
data <- teal.modules.general::rADSL
ADSL <- teal.modules.general::rADRS
ADRS <- teal.modules.general::rADLB
ADLB
})<- c("ADSL", "ADRS", "ADLB")
datanames datanames(data) <- datanames
join_keys(data) <- default_cdisc_join_keys[datanames]
app
variableThis 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_outliers()
using different combinations of data sets.
# configuration for the single wide dataset
<- tm_outliers(
mod1 label = "Single wide dataset",
outlier_var = data_extract_spec(
dataname = "ADSL",
select = select_spec(
label = "Select variable:",
choices = variable_choices(data[["ADSL"]], c("AGE", "BMRKR1")),
selected = "AGE",
fixed = FALSE
)
),categorical_var = data_extract_spec(
dataname = "ADSL",
select = select_spec(
label = "Select variables:",
choices = variable_choices(
"ADSL"]],
data[[subset = names(Filter(isTRUE, sapply(data[["ADSL"]], is.factor)))
),selected = "RACE",
multiple = FALSE,
fixed = FALSE
)
)
)
# configuration for the wide and long datasets
<- tm_outliers(
mod2 label = "Wide and long datasets",
outlier_var = list(
data_extract_spec(
dataname = "ADSL",
select = select_spec(
label = "Select variable:",
choices = variable_choices(data[["ADSL"]], c("AGE", "BMRKR1")),
selected = "AGE",
fixed = FALSE
)
),data_extract_spec(
dataname = "ADLB",
select = select_spec(
label = "Select variable:",
choices = variable_choices(data[["ADLB"]], c("AVAL", "CHG2")),
selected = "AVAL",
multiple = FALSE,
fixed = FALSE
)
)
),categorical_var =
data_extract_spec(
dataname = "ADSL",
select = select_spec(
label = "Select variables:",
choices = variable_choices(
"ADSL"]],
data[[subset = names(Filter(isTRUE, sapply(data[["ADSL"]], is.factor)))
),selected = "RACE",
multiple = FALSE,
fixed = FALSE
)
)
)
# configuration for the multiple long datasets
<- tm_outliers(
mod3 label = "Multiple long datasets",
outlier_var = list(
data_extract_spec(
dataname = "ADRS",
select = select_spec(
label = "Select variable:",
choices = variable_choices(data[["ADRS"]], c("ADY", "EOSDY")),
selected = "ADY",
fixed = FALSE
)
),data_extract_spec(
dataname = "ADLB",
select = select_spec(
label = "Select variable:",
choices = variable_choices(data[["ADLB"]], c("AVAL", "CHG2")),
selected = "AVAL",
multiple = FALSE,
fixed = FALSE
)
)
),categorical_var = list(
data_extract_spec(
dataname = "ADRS",
select = select_spec(
label = "Select variables:",
choices = variable_choices(data[["ADRS"]], c("ARM", "ACTARM")),
selected = "ARM",
multiple = FALSE,
fixed = FALSE
)
),data_extract_spec(
dataname = "ADLB",
select = select_spec(
label = "Select variables:",
choices = variable_choices(
"ADLB"]],
data[[subset = names(Filter(isTRUE, sapply(data[["ADLB"]], is.factor)))
),selected = "RACE",
multiple = FALSE,
fixed = FALSE
)
)
)
)
# initialize the app
<- init(
app data = data,
modules = modules(
# tm_outliers ----
modules(
label = "Outliers module",
mod1,
mod2,
mod3
)
) )
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.
shinyApp(app$ui, app$server, options = list(height = 1024, width = 1024))