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This package is built by the NHS-R community to provide tools for drawing statistical process control (SPC) charts. This package supports the NHSE/I programme ‘Making Data Count’, and allows users to draw XmR charts, use change points, and apply rules with summary indicators for when rules are breached.
Please be aware that this package is in the early stages of development, and features may change.
As the package develops there will be a full release to CRAN if
possible, but until that time you can install from GitHub using the {remotes}
package with:
# install.packages("remotes")
::install_github("https://github.com/nhs-r-community/NHSRplotthedots", build_vignettes = TRUE) remotes
Welcome to the NHS-R community’s package for building a specific type of statistical process control (SPC) chart, the XmR chart. We are aiming to support the NHS England and NHS Improvement’s ‘Making Data Count’ programme, please see here for more details. The programme encourages boards, managers, and analyst teams to present data in ways that show change over time, and drive better understanding of indicators than ‘RAG’ (red, amber, green) rated board reports often present.
The help-files, and vignette within this package tell you more about
the possible options for controlling the charts, but below is a simple
example of the type of chart the package produces. We will use the
ae_attendances
dataset from the {NHSRdatasets}
package and a bit of {dplyr}
code to select some
organisations.
library(NHSRplotthedots)
library(NHSRdatasets)
library(tidyverse)
<- ae_attendances %>%
sub_set filter(org_code == "RQM", type == 1, period < as.Date("2018-04-01"))
%>%
sub_set ptd_spc(value_field = breaches, date_field = period, improvement_direction = "decrease")
This plot is ok on it’s own, but we can specify more control options
when we pass it on, using the {dplyr}
pipe function below:
%>%
to the plot argument.
%>%
sub_set ptd_spc(value_field = breaches, date_field = period, improvement_direction = "decrease") %>%
plot(y_axis_label = "4-hour wait breaches",
main_title = "SPC of A&E waiting time breaches for RQM")
or, equivalently:
%>%
sub_set ptd_spc(value_field = breaches, date_field = period, improvement_direction = "decrease") %>%
ptd_create_ggplot(y_axis_label = "4-hour wait breaches",
main_title = "SPC of A&E waiting time breaches for RQM")
To find out more about the ptd_spc()
function, you can
view the help with:
?ptd_spc
Details on the extra plot controls can be found using:
?ptd_create_ggplot
To view the vignette (worked example), use:
vignette("intro", package = "NHSRplotthedots")
vignette(package = "NHSRplotthedots")
This is an NHS-R Community project that is open for anyone to contribute to in any way that they are able. If you want to learn more about this please join the discussion at the NHS-R Community Slack group and the specific channel #proj-shiny-spc.
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.