Welcome to xportr
! We have designed xportr
to help get your xpt
files ready for transport either to a clinical data set validator
application or to a regulatory agency. This package has the
functionality to associate metadata information to a local R data frame,
perform data set level validation checks and convert into a transport
v5
file(xpt).
As always, we welcome your feedback. If you spot a bug, would like to see a new feature, or if any documentation is unclear - submit an issue on xportr’s GitHub page.
This package is available from CRAN and can be installed by running: asdf
install.packages("xportr")
devtools::install_github("https://github.com/atorus-research/xportr.git", ref = "devel")
xportr
is designed for clinical programmers to create CDISC compliant
xpt files- ADaM or SDTM. Essentially, this package has two big
components to it
- Writing xpt files with well-defined metadata
- Checking compliance of the data sets.
The first set of tools are designed to allow a clinical programmer to build a CDISC compliant xpt file directly from R. The second set of tools are to perform checks on your data sets before you send them off to any validators or data reviewers.
- Variable names must start with a letter (not an underscore), be comprised of only uppercase letters (A-Z), numerals (0-9) and be free of non-ASCII characters, symbols, and underscores.
- Allotted length for each column containing character (text) data should be set to the maximum length of the variable used across all data sets (≤ 200)
- Coerces variables to only numeric or character types
- Display format support for numeric float and date/time values
- Variables names are ≤ 8 characters.
- Variable labels are ≤ 40 characters.
- Data set labels are ≤ 40 characters.
- Presence of non-ASCII characters in Variable Names, Labels or data set labels.
NOTE: Each check has associated messages and warning.
Objective: Create a fully compliant v5 xpt ADSL
dataset that was
developed using R.
To do this we will need to do the following:
- Apply types
- Apply lengths
- Apply variable labels
- Apply formats
- Re-order the variables
- Apply a dataset label
- Write out a version 5 xpt file
All of which can be done using a well-defined specification file and the
{xportr}
package!
First we will start with our ADSL
dataset created in R. This example
ADSL
dataset is taken from the
{admiral}
package.
The script that generates this ADSL
dataset can be created by using
this command admiral::use_ad_template("adsl")
. This ADSL
dataset has
306 observations and 48 variables.
library(dplyr)
library(admiral)
library(xportr)
adsl <- admiral::admiral_adsl
We have created a dummy specification file called
ADaM_admiral_spec.xlsx
found in the specs
folder of this package.
You can use
system.file(paste0("specs/", "ADaM_admiral_spec.xlsx"), package = "xportr")
to access this file.
spec_path <- system.file(paste0("specs/", "ADaM_admiral_spec.xlsx"), package = "xportr")
var_spec <- readxl::read_xlsx(spec_path, sheet = "Variables") %>%
dplyr::rename(type = "Data Type") %>%
rlang::set_names(tolower)
Each xportr_
function has been written in a way to take in a part of
the specification file and apply that piece to the dataset. Setting
verbose = "warn"
will send appropriate warning message to the console.
We have suppressed the warning for the sake of brevity.
adsl %>%
xportr_type(var_spec, "ADSL", verbose = "warn") %>%
xportr_length(var_spec, "ADSL", verbose = "warn") %>%
xportr_label(var_spec, "ADSL", verbose = "warn") %>%
xportr_order(var_spec, "ADSL", verbose = "warn") %>%
xportr_format(var_spec, "ADSL", verbose = "warn") %>%
xportr_write("adsl.xpt", label = "Subject-Level Analysis Dataset")
The xportr_metadata()
function can reduce duplication by setting the
variable specification and domain explicitly at the top of a pipeline.
If you would like to use the verbose
argument, you will need to set in
each function call.
adsl %>%
xportr_metadata(var_spec, "ADSL") %>%
xportr_type() %>%
xportr_length() %>%
xportr_label() %>%
xportr_order() %>%
xportr_format() %>%
xportr_write("adsl.xpt", label = "Subject-Level Analysis Dataset")
That’s it! We now have a xpt file created in R with all appropriate
types, lengths, labels, ordering and formats. Please check out the Get
Started
for more information and detailed walk through of each xportr_
function.
We are in talks with other Pharma companies involved with the
{pharmaverse}
to enhance this package to
play well with other downstream and upstream packages.