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The {safetyGraphics} shiny app can be used to display a wide variety of charts. This vignette provides details about the charting process including step-by-step instructions for adding new charts and technical specifications, but first we need to talk about a 2nd package …
While this is technically a vignette for {safetyGraphics}, the {safetyCharts} package is just as important here. The roles of the packages can be summarized in just a few words:
The {safetyGraphics} platform displays charts from {safetyCharts}.
This relationship is central to the technical framework for the safetyGraphics app. By itself, the safetyGraphics
platform really doesn’t do much! In fact, none of the content on the Charts tab is actually found in the safetyGraphics
package; it’s all imported from elsewhere! As you’ve probably guessed, the default charts live in the safetyCharts
package. safetyCharts
has over a dozen charts that are configured to work with {safetyGraphics}, but can also easily be used independently.
While {safetyGraphics} and {safetyCharts} are designed to work seamlessly together, users can also add charts from other packages. In fact, several charts in {safetyCharts} are just wrappers that load charts from other packages for use in {safetyGraphics}. The rest of this vignette provides a series of step-by-step examples detailing how this process works for different types of charts.
To add a chart to safetyGraphics, two components are required:
The configuration file captures metadata about the chart for use in the app and is typically saved as a YAML file. Several example configuration files are provided in the examples below, and YAML Configuration files for {safetyCharts} are saved here.
The chart function typically takes a list of settings
and a list of data
as inputs and returns a chart object ready to be displayed in the app. Details of charting functions vary somewhat for different chart types, as explained in the examples below.
A full technical specification of this chart configuration framework is provided in Appendix 1.
Once you’ve created the configuration and chart functions, the chart can be added to the app via the charts
parameter in safetyGraphicsApp()
. Consider this simple “Hello World” example:
# Chart Function
helloWorld <- function(data, settings){
plot(-1:1, -1:1)
text(runif(20, -1,1),runif(20, -1,1),"Hello World")
}
# Chart Configuration
helloworld_chart<-list(
env="safetyGraphics",
name="HelloWorld",
label="Hello World!",
type="plot",
domain="aes",
workflow=list(
main="helloWorld"
)
)
safetyGraphicsApp(charts=list(helloworld_chart))
It’s also easy to add a custom chart to the default charts provided in {safetyCharts} using the makeChartConfig()
function:
charts <- makeChartConfig(packages="safetyCharts") # or just makeChartConfig() since safetyCharts is included by default
charts$helloworld<-helloworld_chart
safetyGraphicsApp(charts=charts)
Here’s our Hello World the chart running in the app:
Now let’s consider a more complex example that makes use of the data
and settings
provided in safetyGraphics
. In this section, we use {ggplot2} to create a spaghetti plot for tracking outliers in lab data. First, consider the following code which creates a stand-alone plot for a single data set:
# Use sample clinical trial data sets from the {safetyData} package
library(safetyData)
library(ggplot2)
library(dplyr)
# Define data mapping using a format similar to a reactive safetyGraphics mapping
settings <- list(
id_col="USUBJID",
value_col="LBSTRESN",
measure_col="LBTEST",
studyday_col="LBDY"
)
# Define a plotting function that takes data and settings as inputs
spaghettiPlot <- function( data, settings ){
# define plot aes - note use of standard evaluation!
plot_aes <- aes(
x=.data[[settings$studyday_col]],
y=.data[[settings$value_col]],
group=.data[[settings$id_col]]
)
#create the plot
p<-ggplot(data = data, plot_aes) +
geom_path(alpha=0.15) +
facet_wrap(
settings$measure_col,
scales="free_y"
)
return(p)
}
spaghettiPlot(
safetyData::sdtm_lb %>%
filter(LBTEST %in% c("Albumin","Bilirubin","Calcium","Chloride")),
settings
)
Running the code above should create a plot with 4 panels:
With minor modifications, this chart can be added to the {safetyGraphics} shiny app, which allows us to create the chart with any mappings/data combination loaded in the app. The spaghettiPlot()
function above is already written to work with safetyGraphics, so we just need to create the chart configuration object. This time we’ll capture the configuration in a YAML file.
env: safetyGraphics
label: Spaghetti Plot
name: spaghettiPlot
type: plot
domain:
- labs
workflow:
main: spaghettiPlot
links:
safetyCharts: https://github.com/SafetyGraphics/safetycharts
With the charting function loaded in to our session and the configuration file saved in our working directory as spaghetti.yaml
, we can add the chart to the app as follows:
library(yaml)
charts <- makeChartConfig()
charts$spaghetti<-prepareChart(read_yaml('spaghetti.yaml'))
safetyGraphicsApp(charts=charts)
Under the charts tab, you’ll see:
If you look closely at the spaghettiPlot()
code above, you’ll noticed some details that make the chart work in the app:
data
and settings
as inputs. This is the expected parameterization for most charts in {safetyGraphics}.settings
use parameters that are defined on the mapping tab. Behind the scenes, these are defined in the safetyGraphics::meta
.spaghettiPlot
function is referenced in the main
item the YAML workflow
. This tells the app which function to use to draw the chart..data[[]]
pronoun in the chart function to access columns in the data based on the current settings. See these references for a lot more detail about functional programming in the tidyverse:
This example is inspired by safetyCharts::safety_outlier_explorer
- the charting function and yaml configuration file on are GitHub.
{safetyGraphics} also supports defining charts as Shiny Modules. Once you’re familiar with modules, they are relatively straightforward to use with safetyGraphics.
Let’s take a look at a simple module that extends the functionality of the static chart from the example above. Once again, this example is based upon safetyCharts
, and you can see the code and config on GitHub.
The config object for a module differs from a static chart is that the workflow section of the YAML file must specify ui
and server
functions instead of a main
charting function. This example defines a simple UI function that allows users to select which lab measurements should be included in the spaghetti plot from example 1:
safetyOutlierExplorer_ui <- function(id) {
ns <- NS(id)
sidebar<-sidebarPanel(
selectizeInput(
ns("measures"),
"Select Measures",
multiple=TRUE,
choices=c("")
)
)
main<-mainPanel(plotOutput(ns("outlierExplorer")))
ui<-fluidPage(
sidebarLayout(
sidebar,
main,
position = c("right"),
fluid=TRUE
)
)
return(ui)
}
Next we define a server function that populates the control for selecting measurements and then draws the plot using safetyCharts::safety_outlier_explorer()
charting function - which is based on the spaghetti()
function! Note that the server function takes a single reactive params
object containing the data (params$data
) and settings (param$settings
) as input.
safetyOutlierExplorer_server <- function(input, output, session, params) {
ns <- session$ns
# Populate control with measures and select all by default
observe({
measure_col <- params()$settings$measure_col
measures <- unique(params()$data[[measure_col]])
updateSelectizeInput(
session,
"measures",
choices = measures,
selected = measures
)
})
# customize selected measures based on input
settingsR <- reactive({
settings <- params()$settings
settings$measure_values <- input$measures
return(settings)
})
#draw the chart
output$outlierExplorer <- renderPlot({safety_outlier_explorer(params()$data, settingsR())})
}
Finally, the YAML configuration file looks like this - just the workflow and label changes from Example 1:
env: safetyGraphics
label: Outlier Explorer - Module
name: outlierExplorerMod
type: module
package: safetyCharts
domain:
- labs
workflow:
ui: safetyOutlierExplorer_ui
server: safetyOutlierExplorer_server
links:
safetyCharts: https://github.com/SafetyGraphics/safetycharts
Initializing the app as usual by adding it to the chart list: charts$outlierMod<-prepareChart(read_yaml('outlierMod.yaml'))
Unselecting a few measures gives the following display:
You can also add custom htmlwidgets to safetyGraphics. In fact, many of the default charts imported from safetyCharts are javascript libraries that are imported as htmlwidgets. Like shiny modules, htmlwidgets are relatively simple to use once you are familiar with the basics.
The biggest differences between widgets and other charts in safetyGraphics are:
widget
item giving the name of the widget in the YAML workflow.list(data=data, settings=settings)
) to the x
parameter in htmlwidget::createWidget
.Items 1 and 2 above are simple enough, but #3 is likely to create problems unless the widget is designed specifically for usage with safetyGraphics. That is, if the widget isn’t expecting x$settings
to be a list that it uses to configure the chart, it probably isn’t going to work as expected.
Fortunately, there’s a workaround built in to safetyGraphics in the form of init
workflow functions. Init functions run before the chart is drawn, and can be used to create custom parameterizations. The init function should take data
and settings
as inputs and return params
which should be a list which is then provided to the chart (see the appendix for more details). The init function for the the interactive AE Explorer is a good example. It starts by merging demographics and adverse event data and then proceeds to create a customized settings object to match the configuration requirements of the javascript chart renderer. This init function is then saved under workflow$init
in the chart config object.
The rest of the chart configuration YAML is similar to the examples above, and the chart is once again by passing the chart config object to safetyGraphicsApp()
All of our examples so far have been focused on creating charts in our 3 default data domains (labs, adverse events and demographics), but there is no requirement that limits charts to these three data types. The data domains in the app are determined by a meta
data frame that defines the columns and fields used in safetyGraphics charts, and customizing meta
allows us to create charts for any desired data domains.
Generally speaking there are 3 steps to add a chart in a new domain:
Consider the following example, that modifies a chart from the labs
domain for use on ECG data:
adeg <- readr::read_csv("https://physionet.org/files/ecgcipa/1.0.0/adeg.csv?download")
ecg_meta <-tibble::tribble(
~text_key, ~domain, ~label, ~description, ~standard_adam, ~standard_sdtm,
"id_col", "custom_ecg", "ID column", "Unique subject identifier variable name.", "USUBJID", "USUBJID",
"value_col", "custom_ecg", "Value column", "QT result variable name.", "AVAL", "EGSTRESN",
"measure_col", "custom_ecg", "Measure column", "QT measure variable name", "PARAM", "EGTEST",
"studyday_col", "custom_ecg", "Study Day column", "Visit day variable name", "ADY", "EGDY",
"visit_col", "custom_ecg", "Visit column", "Visit variable name", "ATPT", "EGTPT",
"visitn_col", "custom_ecg", "Visit number column", "Visit number variable name", "ATPTN", NA,
"period_col", "custom_ecg", "Period column", "Period variable name", "APERIOD", NA,
"unit_col", "custom_ecg", "Unit column", "Unit of measure variable name", "AVALU", "EGSTRESU"
) %>% mutate(
col_key = text_key,
type="column"
)
qtOutliers<-prepare_chart(read_yaml('https://raw.githubusercontent.com/SafetyGraphics/safetyCharts/dev/inst/config/safetyOutlierExplorer.yaml') )
qtOutliers$label <- "QT Outlier explorer"
qtOutliers$domain <- "custom_ecg"
qtOutliers$meta <- ecg_meta
safetyGraphicsApp(
domainData=list(custom_ecg=adeg),
charts=list(qtOutliers)
)
As of safetyGraphics v2.1, metadata can be saved directly to the chart object using chart$meta
as shown in the example above.
Alternatively, metadata can be saved as a data object in the chart$package
namespace. Chart-specific metadata should be saved as meta_{chart$name}
while domain-level metadata should be named meta_{chart$domain}
. It’s fine to use a combination of these approaches as appropriate for your chart. See ?safetyGraphics::makeMeta
for more detail.
The diagram above summarizes the various components of the safetyGraphics charting framework:
safetyGraphicsApp()
function allows users to specify which charts to include in the shiny app via the charts
parameter, which expects a list
of charts.charts
is itself defined as a list
that provides configuration details for a single chart. These configuration lists have several required parameters, which are described in the technical specification below.chart$functions
below for full details.Each item in the charts
list should be a list() with the following parameters:
env
: Environment for the chart. Must be set to “safetyGraphics” or the chart is dropped. Type: character. Requiredname
: Name of the chart. Type: character. Requiredtype:
: Type of chart. Valid options are: “plot”,“htmlwidget”,“html”,“table” and “module”. Type: character. Requiredlabel
: A short description of the chart. chart$name is used if not provided. Type: character. Optionaldomain
: The data domain(s) used in the chart. Type: character. Requiredpackage
: The package where the {htmlwidget} is saved. Type: character. Required when chart$type
is “htmlwidget”meta
: Table of chart-specific metadata. Metadata can also be saved as {package}::meta_{chart}
or {package::meta_{domain}
. See ?safetyGraphics::makeMeta
for more detail.order
: Order in which to display the chart. If order is a negative number, the chart is dropped. Defaults to 999999. Type: Integer. Optionallinks
: Named list of link names/urls to be shown in the chart header. Type: list of character. Optionalpath
: Full path of the YAML file. Auto-generated by makeChartConfig()
Type: character optionalworkflow
: Names of functions used to create the chart. Should be loaded in global environment or included in chart$package
before calling prepareChart()
. Supported parameters are listed below. Type: list of character. Required
workflow$main
: name of the function to draw the chart. The function should take data
and settings
parameters unless the input parameters are customized by an init
function. Required, unless chart$type
is “htmlwidget” or “module”)workflow$init: name of initialization function that runs before chart is drawn via the
mainfunction. Should take
dataand
settingsas input and return a list of parameters accepted by the
main` function. Optionalworkflow$widget
: name or widget saved in chart$package
to be passed to htmlwidgets::createWidget
Required when chart$type
is “htmlwidget”workflow$ui
and workflow$server
: names of functions to render shiny ui and server. Automatically generated in prepareChart()
unless chart$type
is “module”. Required when chart$type
is ‘module’functions
: a list of functions used to create the chart. Typically generated at runtime by prepareChart()
using information in chart$workflow
, chart$type
and chart$package
. Not recommended to generate manually. Type: list of functions. RequiredThis appendix describe the technical process used to render a chart when safetyGraphicsApp() is called with the default parameters.
safetyGraphicsApp()
is called with charts
and chartSettingsPath
as NULL (the default).app_startup
is called, which then immediately calls makeChartConfig()
.makeChartConfig()
looks for charts in the safetyCharts package (the default) since no path was specified. The function looks for the package in all current .libPaths()
and then looks in the inst/config
folder once the package is found.makeChartConfig
loads YAML configuration files in the specified directories and saves them to a list. name
and path
parameters are added.makeChartConfig
calls prepareChart
for each chart configuration. prepareChart
sets default values for order
, name
and export
, and then binds relevant functions to a chart$functions
list based on the chart’s type
, workflow
and package
.app_startup()
which runs a few actions on each chart:
chart$functions
is missing, prepareChart
is called (not relevant in the default workflow, but useful for adding custom charts)chart$order
is negative, the chart is dropped with a message.chart$env
is not “safetyGraphics”, the chart is dropped with a message.chart$domains
has elements not found in the dataDomains
passed to `app_startup(), the chart is dropped with a message.charts
are re-ordered based on chart$order
app_startup
passes the updated list of charts to makeMeta
assuming no meta
object was provided. makeMeta
combines metadata from all charts in to a single data.frame. Charts can save metadata as chart.meta
, {package}::meta_{chart}
or {package}::meta_{domain}
.app_startup
returns the list of charts and associated metadata to safetyGraphicsApp
which then then passes them along to safetyGraphicsServer
as the charts
parameter.safetyGraphicsServer
then creates modules for each chart. First, UIs
are created via chartsNav()
which then calls:
makeChartSummary
to create the chart header with links and metadata and …ChartsTabUI
which then calls chart$functions$ui
to create the proper UI element based on chart$type
.safetyGraphicsServer
draws the charts using chartsTab()
which:
params
object containing mappings and data using makeChartParams()
which:
domainData
based on chart$domain
charts$functions$init
if providedchart$type
of “htmlwidget”chart$functions$server
and chart$functions$main
makeChartExport()
safetyGraphicsServer
passes the charts to settingsTab
, which uses them to help populate the charts
and code
subtabs.These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.