coxme | R Documentation |
Fit a Cox model containing mixed (random and fixed) effects. Assume a Gaussian distribution for the random effects.
coxme(formula, data, weights, subset, na.action, init, control,
ties = c("efron", "breslow"),
varlist, vfixed, vinit, x = FALSE, y = TRUE,
refine.n = 0, random, fixed, variance, ...)
formula |
a two-sided formula with a survival object as the left hand side of a
|
data |
an optional data frame containing the variables named in the |
subset , weights , na.action |
further model specifications arguments as in |
init |
optional initial values for the fixed effects. |
control |
optional list of control options. See |
ties |
method for handling exact ties in the survival time. |
varlist |
the variance family to be used for each random term. If there are
multiple terms it will be a list of variance functions.
The default is |
vfixed |
optional named list or vector used to fix the value of one or more of the variance terms at a constant. |
vinit |
optional named list or vector giving suggested starting values for the variance. |
x |
if TRUE the X matrix (fixed effects) is included in the output object |
y |
if TRUE the y variable (survival time) is included in the output object |
refine.n |
number of samples to be used in a monte-carlo estimate of possible error in the log-likelihood of the fitted model due to inadequacy of the Laplace approximation. |
fixed , random , variance |
In the preliminary version of |
... |
any other arguments are passed forward to |
An object of class coxme
.
Terry Therneau
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.
coxmeFull
, coxmeMlist
,
coxme.object
# A non-significant institution effect
fit1 <- coxph(Surv(time, status) ~ ph.ecog + age, data=lung,
subset=(!is.na(inst)))
fit2 <- coxme(Surv(time, status) ~ ph.ecog + age + (1|inst), lung)
anova(fit1, fit2)
# Shrinkage effects (equivalent to ridge regression)
temp <- with(lung, scale(cbind(age, wt.loss, meal.cal)))
rfit <- coxme(Surv(time, status) ~ ph.ecog + (temp | 1), data=lung)
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