R package for cleaning data from Electronic Health Record systems, focused on cleaning height and weight measurements.
This package implements the Daymont et al. algorithm, as specified in Supplemental File 3 within the Supplementary Material published with that paper.
Carrie Daymont, Michelle E Ross, A Russell Localio, Alexander G Fiks, Richard C Wasserman, Robert W Grundmeier, Automated identification of implausible values in growth data from pediatric electronic health records, Journal of the American Medical Informatics Association, Volume 24, Issue 6, November 2017, Pages 1080–1087, https://doi.org/10.1093/jamia/ocx037
This package also includes an R version of the SAS macro published by the CDC for calculating percentiles and Z-scores of pediatric growth observations and utilities for working with both functions. As of summer 2021, it also supports cleaning anthropometric measurements for adults up to age 65. The adult algorithm has not yet been published in a peer-reviewed publication, but is described in detail at Adult algorithm.
The growthcleanr
package processes data prepared in a
specific format to identify biologically implausible height and weight
measurements. It bases these evaluations on techniques which use
patient-specific longitudinal analysis and variations from published
growth trajectory charts for pediatric subjects. These techniques are
performed in a specific order which refines and improves results
throughout the process.
Results from growthcleanr
include a flag for each
measurement indicating whether it is to be included or excluded based on
plausibility, with a variety of specific types of exclusions identified
distinctly. These flags can be analyzed further by researchers studying
anthropometric EHR data to determine which measurements to include or
exclude in their own studies. No values are deleted or otherwise
removed; each is only flagged in a new column.
To start running growthcleanr
, an R installation with a
variety of additional packages is required, as is a growth measurement
dataset prepared for use in growthcleanr
.
The rest of this documentation includes:
growthcleanr
with large data sourcesFor a detailed history of released versions, see the Changelog
orNEWS.md
. Tagged releases, starting with 1.2.3 in January
2021, are listed at
GitHub.