Absolute population weighted residuals vs population predictions, conditioned on covariates, for Xpose 4
This is a plot of absolute population weighted residuals (|WRES|) vs
population predictions (PRED) conditioned by covariates, a specific function
in Xpose 4. It is a wrapper encapsulating arguments to the
xpose.plot.default function. Most of the options take their default
values from xpose.data object but may be overridden by supplying them as
arguments.
absval.wres.vs.pred.by.cov( object, ylb = "|WRES|", type = "p", smooth = TRUE, ids = FALSE, idsdir = "up", main = "Default", ... )
object |
An xpose.data object. |
ylb |
A string giving the label for the y-axis. |
type |
Type of plot. The default is points only ("p"), but lines ("l") and both ("b") are also available. |
smooth |
Logical value indicating whether an x-y smooth should be superimposed. The default is TRUE. |
ids |
Logical. Should id labels on points be shown? |
idsdir |
Direction for displaying point labels. The default is "up", since we are displaying absolute values. |
main |
The title of the plot. If |
... |
Other arguments passed to |
Each of the covariates in the Xpose data object, as specified in
object@Prefs@Xvardef$Covariates, is evaluated in turn, creating a
stack of plots.
A wide array of extra options controlling xyplots are available. See
xpose.plot.default for details.
Returns a stack of xyplots of |WRES| vs PRED, conditioned on covariates.
E. Niclas Jonsson, Mats Karlsson, Andrew Hooker & Justin Wilkins
Other specific functions:
absval.cwres.vs.cov.bw(),
absval.cwres.vs.pred.by.cov(),
absval.cwres.vs.pred(),
absval.iwres.cwres.vs.ipred.pred(),
absval.iwres.vs.cov.bw(),
absval.iwres.vs.idv(),
absval.iwres.vs.ipred.by.cov(),
absval.iwres.vs.ipred(),
absval.iwres.vs.pred(),
absval.wres.vs.cov.bw(),
absval.wres.vs.idv(),
absval.wres.vs.pred(),
absval_delta_vs_cov_model_comp,
addit.gof(),
autocorr.cwres(),
autocorr.iwres(),
autocorr.wres(),
basic.gof(),
basic.model.comp(),
cat.dv.vs.idv.sb(),
cat.pc(),
cov.splom(),
cwres.dist.hist(),
cwres.dist.qq(),
cwres.vs.cov(),
cwres.vs.idv.bw(),
cwres.vs.idv(),
cwres.vs.pred.bw(),
cwres.vs.pred(),
cwres.wres.vs.idv(),
cwres.wres.vs.pred(),
dOFV.vs.cov(),
dOFV.vs.id(),
dOFV1.vs.dOFV2(),
data.checkout(),
dv.preds.vs.idv(),
dv.vs.idv(),
dv.vs.ipred.by.cov(),
dv.vs.ipred.by.idv(),
dv.vs.ipred(),
dv.vs.pred.by.cov(),
dv.vs.pred.by.idv(),
dv.vs.pred.ipred(),
dv.vs.pred(),
gof(),
ind.plots.cwres.hist(),
ind.plots.cwres.qq(),
ind.plots(),
ipred.vs.idv(),
iwres.dist.hist(),
iwres.dist.qq(),
iwres.vs.idv(),
kaplan.plot(),
par_cov_hist,
par_cov_qq,
parm.vs.cov(),
parm.vs.parm(),
pred.vs.idv(),
ranpar.vs.cov(),
runsum(),
wres.dist.hist(),
wres.dist.qq(),
wres.vs.idv.bw(),
wres.vs.idv(),
wres.vs.pred.bw(),
wres.vs.pred(),
xpose.VPC.both(),
xpose.VPC.categorical(),
xpose.VPC(),
xpose4-package
## Not run: ## We expect to find the required NONMEM run and table files for run ## 5 in the current working directory xpdb5 <- xpose.data(5) ## Here we load the example xpose database data(simpraz.xpdb) xpdb <- simpraz.xpdb ## A vanilla plot absval.wres.vs.pred.by.cov(xpdb) ## Custom axis labels absval.wres.vs.pred.by.cov(xpdb, ylb="|CWRES|", xlb="PRED") ## Custom colours and symbols, IDs absval.wres.vs.pred.by.cov(xpdb, cex=0.6, pch=3, col=1, ids=TRUE) ## End(Not run)
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