Skip to contents

REDCapCAST 24.11.4

This release attempts to solve problems hosting the shiny_cast app, while also implementing functions to preserve as much meta data as possible from the REDCap database when exporting data.

The hosting on shinyapps.io has given a lot of trouble recently. Modified package structure a little around the shiny_cast(), to accommodate an alternative hosting approach with all package functions included in a script instead of requiring the package.

  • NEW: A new option to raw_or_label in read_readcap_tables() has been added: “both”. Get raw values with REDCap labels applied as labels. Use as_factor() to format factors with original labels and use the gtsummary package to easily get beautiful tables with original labels from REDCap. Use fct_drop() to drop empty levels.

  • NEW: fct_drop() has been added with an extension to forcats::fct_drop(), that works across data.frames. Use as fct_drop().

  • CHANGE: the default data export method of easy_redcap() has been changed to use the new labelled data export with read_readcap_tables().

REDCapCAST 24.11.3

  • BUG: shiny_cast() fails to load as I missed loading REDCapCAST library in ui.r. Fixed. Tests would be great.

REDCapCAST 24.11.2

CRAN release: 2024-11-22

24.11.1 was rejected on CRAN based on wrong title capitalisation. This was an opportunity to extend the package overhaul. And this actually turned out to be a major step towards a very usable shiny app which have received most of the focus.

I have implemented option to specify categorical variables to factorize, but doing this with a modified version of {forcats} and {haven}’s as_factor(), that will preserve any attributes applied to the data to be able to upload and cast REDCap meta data from richly formatted data (use .rds). No matter the input type, all input is parsed using the default options from the {readr} package. Also to avoid mis-labelling, logicals are converted to factors as REDCap truefalse class follows different naming conversion compared to R. Also correct support for variable labels as field labels (use .rds formatted data and label with labelled::var_label())

Vignettes and documentation have been restructured.

This package has been detached from the REDCapRITS, which it was originally forked from. The data split function will be kept, while testing will be rewritten. This projects has evolved away from the original fork.

REDCapCAST 24.11.1

Revised tests.

Documentation has been slightly updated to highlight the shiny app for casting REDCap metadata. I am working on hosting my own Shiny Server.

Functions:

  • Bug: ‘form.name’ specified to ‘ds2dd_detailed()’ was ignored. Corrected to only be ignored if ‘form.sep’ is specified. Added handling of re-occurring form.sep pattern.

  • New: export_redcap_instrument() is a new version of create_instrument_meta(), that will only export a single instrument. Multiple instrument export can be done with lapply() or purrr::map(). This allows for inclusion of this functionality in the Shiny implementation and is easier to handle. create_instrument_meta() is deprecated.

  • Improved: shiny_cast() app has been updated to actually work if you install the package and not clones the whole repository.

Shiny:

  • New: Major overhaul of the app interface with the introduction of bslib for building the page. Also Detailed documentation added for the app workflow.

  • New: Export a REDCap instrument ready to add to your database based on an uploaded spreadsheet. This is thanks to the export_redcap_instrument() function. This functionality is intended for projects in production and adding instruments should be handled manually and not by API upload.

  • Bug: Export datadictionary with “” instead of “NA” for NAs. Upload to REDCap failed. Not anymore.

The shiny implementation is included with this package. Implementing in shinylive may be looked into again later.

REDCapCAST 24.10.3

CRAN release: 2024-10-03

Updated links and spelling.

REDCapCAST 24.10.1

Minor changes to pass tests and renv is out. rhub is really not running as smooth as previously.

REDCapCAST 24.6.1

CRAN release: 2024-06-07

Functions

  • Fix: read_redcap_tables(): field names testing allows to include “[form_name]_complete” fields.

  • Fix: ds2dd_detailed(): default record ID name is now “record_id”, the REDCap default. Default is still to use the first column name. Support was added to interpret column name prefix or suffix as instrument names. See the examples.

  • New: create_instrument_meta(): creates zip with instrument files to allow adding new instruments to project in production. Takes data dictionary as input and creates a zip for each instrument specified by the form_name column.

  • New: doc2dd(): function to convert document table to data dictionary. This allows to specify instrument or whole data dictionary in text document, which for most is easier to work with and easily modifiable. The generic case is a data frame with variable names as values in a column. This is a format like the REDCap data dictionary, but gives a few options for formatting. Has a few related functions for data handling and formatting. One interesting function is case_match_regex_list(), which allows for a dynamic dplyr::case_when()-like approach for regex-matching. I think it is neat at least.

Documentation and more

  • Dependencies: In order to deploy shiny_cast() with shinylive, I need to remove curl as a dependency. To accomplish this, the shiny_deploy() helper functions has been moved to the package project.aid. This was before realising that REDCapR has curl as dependency, which is the culprit. REDCapCAST is not going to be a shinylive web-app without removing REDCapR dependency or any other REDCap database interaction, which would defy the purpose. I’ll stick to hosted Shiny app instead.

REDCapCAST 24.2.1

CRAN release: 2024-02-28

Functions

  • Fix: ds2dd(): uses correct default dd column names. Will be deprecated.

  • Fix: easy_redcap(): fixed to actually allow project naming. also specifically asks for uri. widening updated to work.

  • Fix: redcap_wider(): updated to accept more formats and allow handling of simple projects without repeating instruments and not longitudinal.

  • Fix: read_redcap_tables(): now handles non-longitudinal project without repeatable instruments.

  • NEW: ds2dd_detailed(): extension of the ds2dd(), which serves to preserve as much metadata as possible automatically. Depends on a group of helper functions also introduced. Of special note is the guess_time_only_filter(), which will try to guess which columns/variables should be formatted as time only formats. Supports hms time format. DETAILED INSTRUCTION AND VIGNETTE IS PENDING.

  • NEW: read_redcap_instrument(): convenience function to retrieve complete instrument. Goes a little against the focused approach. With REDCapR::redcap_read() you can specify a form to download. You have to also specify the record id variable though. This is done for you with read_redcap_instrument(). Nothing fancy.

  • NEW: shiny_cast(): Shiny application to ease the process of converting a spreadsheet/data set to a REDCap database. The app runs locally and data is transferred securely. You can just create and upload the data dictionary, but you can also transfer the given data in the same process. I plan to host the app with shinyapps.io, but for now you can run it locally.

Other

I believe renv has now been added and runs correctly. After clone, do renv::restore() to install all necessary package to modify the package. This seems to always be back and forth. renv may be on its way out again.

Added a Code of Conduct.

REDCapCAST 24.1.1

CRAN release: 2024-01-09

Functions

  • Fix: read_redcap_tables(): checking form names based on data dictionary to allow handling of non-longitudinal projects. Prints invalid form names and invalid event names. If invalid form names are supplied to REDCapR::redcap_read() (which is the backbone), all forms are exported, which is not what we want with a focused approach. Invalid event names will give an output with a rather peculiar formatting. Checking of field names validity is also added.

REDCapCAST 23.12.1

CRAN release: 2023-12-20

One new function to ease secure dataset retrieval and a few bug fixes.

Functions

  • New: easy_redcap() function to ease the retrieval of a dataset with read_redcap_tables() with keyring-package based key storage, which handles secure API set, storage and retrieval. Relies on a small helper function, get_api_key(), which wraps relevant keyring-functions. Includes option to cast the data in a wide format with flag widen.data.
  • Fix: REDCap_split(): when using this function on its own, supplying a data set with check boxes would fail if metadata is supplied as a tibble. Metadata is now converted to data.frame. Fixed.
  • Fix: read_redcap_tables(): fixed bug when supplying events.

REDCapCAST 23.6.2

CRAN release: 2023-07-04

This version marks the introduction of a few helper functions to handle database creation.

Functions

REDCapCAST 23.6.1

CRAN release: 2023-06-06

Documentation:

  • Updated description.
  • Look! A hex icon!
  • Heading for CRAN.

REDCapCAST 23.4.1

Documentation:

  • Aiming for CRAN

REDCapCAST 23.3.2

Documentation:

  • Page added. Vignettes to follow.

  • GithubActions tests added and code coverage assessed. Badge galore..

REDCapCAST 23.3.1

New name: REDCapCAST

To reflect new functions and the limitation to only working in R, I have changed the naming of the fork, while still, of course, maintaining the status as a fork.

The versioning has moved to a monthly naming convention.

The main goal this package is to keep the option to only export a defined subset of the whole dataset from the REDCap server as is made possible through the REDCapR::redcap_read() function, and combine it with the work put into the REDCapRITS package and the handling of longitudinal projects and/or projects with repeated instruments.

Functions:

  • read_redcap_tables() NEW: this function is mainly an implementation of the combined use of REDCapR::readcap_read() and REDCap_split() to maintain the focused nature of REDCapR::readcap_read(), to only download the specified data. Also implements tests of valid form names and event names. The usual fall-back solution was to get all data.

  • redcap_wider() NEW: this function pivots the long data frames from read_redcap_tables() using tidyr::pivot_wider().

  • focused_metadata() NEW: a hidden helper function to enable a focused data acquisition approach to handle only a subset of metadata corresponding to the focused dataset.

Notes:

  • metadata handling IMPROVED: improved handling of different column names in matadata (DataDictionary) from REDCap dependent on whether it is acquired thorugh the api og downloaded from the server.