frailty {survival} | R Documentation |
The frailty function allows one to add a simple random effects term to a Cox or survreg model.
frailty(x, distribution="gamma", ...) frailty.gamma(x, sparse = (nclass > 5), theta, df, eps = 1e-05, method = c("em","aic", "df", "fixed"), ...) frailty.gaussian(x, sparse = (nclass > 5), theta, df, method =c("reml","aic", "df", "fixed"), ...) frailty.t(x, sparse = (nclass > 5), theta, df, eps = 1e-05, tdf = 5,method = c("aic", "df", "fixed"), ...)
x |
the variable to be entered as a random effect. It is always treated as a factor. |
distribution |
either the |
... |
Arguments for specific distribution, including (but not limited to) |
sparse |
cutoff for using a sparse coding of the data matrix.
If the total number of levels of |
theta |
if specified, this fixes the variance of the random effect.
If not, the variance is a parameter, and a best solution is sought.
Specifying this implies |
df |
if specified, this fixes the degrees of freedom for the random effect.
Specifying this implies |
method |
the method used to select a solution for theta, the variance of the
random effect.
The |
tdf |
the degrees of freedom for the t-distribution. |
eps |
convergence critera for the iteration on theta. |
The frailty
plugs into the general penalized
modeling framework provided by the coxph
and survreg
routines.
This framework deals with likelihood, penalties, and degrees of freedom;
these aspects work well with either parent routine.
Therneau, Grambsch, and Pankratz show how maximum likelihood estimation for
the Cox model with a gamma frailty can be accomplished using a general
penalized routine, and Ripatti and Palmgren work through a similar argument
for the Cox model with a gaussian frailty. Both of these are specific to
the Cox model.
Use of gamma/ml or gaussian/reml with
survreg
does not lead to valid results.
The extensible structure of the penalized methods is such that the penalty
function, such as frailty
or
pspine
, is completely separate from the modeling
routine. The strength of this is that a user can plug in any penalization
routine they choose. A weakness is that it is very difficult for the
modeling routine to know whether a sensible penalty routine has been
supplied.
For Cox models the coxme
package has replaced superseded
this method.
this function is used in the model statment of either
coxph
or survreg
.
It's results are used internally.
S Ripatti and J Palmgren, Estimation of multivariate frailty models using penalized partial likelihood, Biometrics, 56:1016-1022, 2000.
T Therneau, P Grambsch and VS Pankratz, Penalized survival models and frailty, J Computational and Graphical Statistics, 12:156-175, 2003.
# Random institutional effect coxph(Surv(time, status) ~ age + frailty(inst, df=4), lung) # Litter effects for the rats data rfit2a <- survreg(Surv(time, status) ~ rx + frailty.gaussian(litter, df=13, sparse=FALSE), rats ) rfit2b <- survreg(Surv(time, status) ~ rx + frailty.gaussian(litter, df=13, sparse=TRUE), rats )