PsmCurves
objectA generic function for creating a PsmCurves
object.
create_PsmCurves(object, ...)# S3 method for flexsurvreg_list
create_PsmCurves(
object,
input_data,
n = 1000,
uncertainty = c("normal", "bootstrap", "none"),
est_data = NULL,
...
)
# S3 method for params_surv_list
create_PsmCurves(object, input_data, ...)
Returns an R6Class
object of class PsmCurves
.
An object of the appropriate class containing either fitted survival models or parameters of survival models.
Further arguments passed to or from other methods. Passed to create_params.partsurvfit()
when object
is of class flexsurvreg_list
.
An object of class expanded_hesim_data
returned by
expand.hesim_data()
. Must be expanded by the data tables "strategies"
and
"patients"
.
Number of random observations to draw. Not used if uncertainty = "none"
.
Method determining how parameter uncertainty should be handled.
If "normal"
, then parameters are randomly drawn from their multivariate normal
distribution. If "bootstrap"
, then parameters are bootstrapped using bootstrap
.
If "none"
, then only point estimates are returned.
A data.table
or data.frame
of estimation data
used to fit survival models during bootstrap replications.
Disease models may either be created from a fitted statistical
model or from a parameter object. In the case of the former, input_data
is a data frame like object that is used to look for variables from
the statistical model that are required for simulation. In this sense,
input_data
is very similar to the newdata
argument in most predict()
methods (e.g., see predict.lm()
). In other words, variables used in the
formula
of the statistical model must also be in input_data
.
In the case of the latter, the columns of input_data
must be named in a
manner that is consistent with the parameter object. In the typical case
(e.g., with params_surv
or params_mlogit
), the parameter object
contains coefficients from a regression model, usually stored as matrix
where rows index parameter samples (i.e., for a probabilistic sensitivity
analysis) and columns index model terms. In such instances, there must
be one column from input_data
with the same name as each model term in the
coefficient matrix; that is, the columns in input_data
are matched with
the columns of the coefficient matrices by name. If there are model terms
in the coefficient matrices that are not contained in input_data
, then
an error will be thrown.
See PsmCurves
and Psm
for examples. PsmCurves
provides
an example in which a model is parameterized both with
(via create_PsmCurves.flexsurvreg_list()
) and without (via
create_PsmCurves.params_surv_list()
) access to patient-level data.
The Psm
example shows how state probabilities, costs, and utilities can
be computed from predicted survival curves.