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eider is an R package for extracting machine learning features from tabular data, in particular health records, in a declarative manner.
Features are specified as JSON objects which contain all the necessary information required to perform a given calculation. For example, the following calculates the number of total rows per patient id
in the table labelled ae2
(details on how to specify this table are in the function documentation).
{
"source_table": "ae2",
"transformation_type": "COUNT",
"grouping_column": "id",
"absent_default_value": 0,
"output_feature_name": "total_ae_attendances"
}
The output of this is a column named total_ae_attendances
, containing the number of rows per patient, and with a value of 0 for any patients who do not appear in the ae2
table.
This declarative approach provides an alternative to traditional, imperative-style, dplyr
pipelines which can be more difficult to reason about, especially when a series of features is being extracted and merged together. As features are specified without reference to a specific programming language or paradigm, it also encourages code that is concise, easy to read, and maintainable.
eider
is a collaboration between The Alan Turing Institute, Public Health Scotland, and the Universities of Edinburgh and Durham. It grew out of a desire to generalise the feature extraction process for health data, specifically the SPARRA (Scottish Patients At Risk of Readmission and Admission) project (GitHub repo), and to allow similar analyses to be carried out in different contexts.
Install via CRAN:
Alternatively, install eider
from its source code on GitHub using:
install.packages("devtools")
devtools::install_github("alan-turing-institute/eider", build_vignettes = TRUE)
The package documentation is available online. In particular, the package articles contain a series of vignettes which provide detailed guidance on the package and its features.
If you are making changes to the library itself, first clone the repository:
git clone git@github.com:alan-turing-institute/eider.git
You will need to install the lintr
, pkgdown
, devtools
R packages to build documentation, run tests, and lint. Then, from the repository root, you can use the following commands:
make doc
generates all function documentation, and also generates the README.md
file from README.rmd
make lint
lints the project directorymake test
runs all testsYou can also use pre-commit
to run all of these before committing, to ensure that you do not commit incomplete code. Firstly, install pre-commit
according to the instructions on the webpage above. Then run pre-commit install
.
What about vignettes? Well, building vignettes is slightly more complicated. You can perform a one-time build from the R console using pkgdown::build_site()
, but running this every time you edit a file gets tiring quickly. To automate this, first install the package with make install
, and install a working version of Python and also entr
(the latter is available on Homebrew via brew install entr
). Then run make vig
: this will monitor your vignette RMarkdown files, rebuild the vignettes any time they are changed, and launch a HTTP server on port 8000 to view the files. If you change any library code you will have to run make install
again before rerunning make vig
.
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.