The hardware and bandwidth for this mirror is donated by dogado GmbH, the Webhosting and Full Service-Cloud Provider. Check out our Wordpress Tutorial.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]dogado.de.
The Visual predictive checks (VPC) shown below are only intended to
demonstrate the various options available in xpose and should not be
used as reference for modeling practice. Furthermore, the plots are only
based on 20 simulations to minimize the computing time of the examples,
the size of the xpdb_ex_pk
object and of the xpose package
in general.
VPC can be created either by:
The VPC functionality in xpose is build around the vpc R package. For more details about the way the vpc package works, please check the github repository.
The VPC computing and plotting parts have been separated into two
distinct functions: vpc_data()
and vpc()
respectively. This allows to:
The generated VPC data is stored in the xpdb under specials datasets and can be used later on.
xpdb_w_vpc <- vpc_data(xpdb_ex_pk) # Compute and store VPC data
xpdb_w_vpc # The vpc data is now listed under the xpdb "special" data
run001.lst overview:
- Software: nonmem 7.3.0
- Attached files (memory usage 1.6 Mb):
+ obs tabs: $prob no.1: catab001.csv, cotab001, patab001, sdtab001
+ sim tabs: $prob no.2: simtab001.zip
+ output files: run001.cor, run001.cov, run001.ext, run001.grd, run001.phi, run001.shk
+ special: vpc continuous (#3)
- gg_theme: theme_readable
- xp_theme: theme_xp_default
- Options: dir = data, quiet = FALSE, manual_import = NULL
Multiple VPC data can be stored in an xpdb, but only one of each
vpc_type
.
vpc_data()
vpc_type
allows to specify the type of VPC
to be computed: “continuous” (default), “categorical”, “censored”,
“time-to-event”.stratify
options defines up to two stratifying
variable to be used when computing the VPC data. The
stratify
variables can either be provided as a character
vector (stratify = c('SEX', 'MED1')
) or a formula
(stratify = SEX~MED1
) . The former will result in the use
of ggforce::facet_wrap_paginate()
and the latter of
ggforce::facet_grid_paginate()
when creating the plot. With
“categorical” VPC the “group” variable will also be added by
default.opt
argument. The opt
argument expects the output from the vpc_opt()
functions
argument.vpc()
vpc_type
works similarly to
vpc_data()
and is only required if several VPC data are
associated with the xpdb.smooth = TRUE/FALSE
allows to switch between
smooth and squared shaded areas.area_fill
and line_linetype
each require three
values for the low, median and high percentiles respectively.To create VPC using the xpdb data, at least one simulation and one
estimation problem need to present. Hence in the case of NONMEM the run
used to generate the xpdb should contain several$PROBLEM
.
In vpc_data()
the problem number can be specified for the
observation (obs_problem
) and the simulation
(sim_problem
). By default xpose picks the last one of each
to generate the VPC.
run001.lst overview:
- Software: nonmem 7.3.0
- Attached files (memory usage 1.5 Mb):
+ obs tabs: $prob no.1: catab001.csv, cotab001, patab001, sdtab001
+ sim tabs: $prob no.2: simtab001.zip
+ output files: run001.cor, run001.cov, run001.ext, run001.grd, run001.phi, run001.shk
+ special: <none>
- gg_theme: theme_readable
- xp_theme: theme_xp_default
- Options: dir = data, quiet = FALSE, manual_import = NULL
The vpc_data()
contains an argument
psn_folder
which can be used to point to a PsN generated VPC
folder. As in most xpose function template_titles
keywords
can be used to automatize the process
e.g. psn_folder = '@dir/@run_vpc'
where @dir
and @run
will be automatically translated to initial
(i.e. when the xpdb was generated) run directory and run number
'analysis/models/pk/run001_vpc'
.
In this case, the data will be read from the /m1
sub-folder (or m1.zip
if compressed). Note that PsN drops unused
columns to reduce the simtab file size. Thus, in order to allow for more
flexibility in R, it is recommended to use multiple stratifying
variables (-stratify_on=VAR1,VAR2
) and the prediction
corrected (-predcorr
adds the PRED column to the output)
options in PsN to
avoid having to rerun PsN to add these
variables later on. In addition, -dv
, -idv
,
-lloq
, -uloq
, -predcorr
and
-stratify_on
PsN options are
automatically applied to xpose VPC.
The PsN generated binning can also applied to xpose VPC with the
vpc_data()
option psn_bins = TRUE
(disabled by
default). However PsN and the vpc
package work slightly differently so the results may not be optimal and
the output should be evaluated carefully.
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.
Health stats visible at Monitor.