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survival (version 3.8-3)

survSplit: Split a survival data set at specified times

Description

Given a survival data set and a set of specified cut times, split each record into multiple subrecords at each cut time. The new data set will be in `counting process' format, with a start time, stop time, and event status for each record.

Usage

survSplit(formula, data, subset, na.action=na.pass,
            cut, start="tstart", id, zero=0, episode,
                              end="tstop", event="event")

Value

New, longer, data frame.

Arguments

formula

a model formula

data

a data frame

subset, na.action

rows of the data to be retained

cut

the vector of timepoints to cut at

start

character string with the name of a start time variable (will be created if needed)

id

character string with the name of new id variable to create (optional). This can be useful if the data set does not already contain an identifier.

zero

If start doesn't already exist, this is the time that the original records start.

episode

character string with the name of new episode variable (optional)

end

character string with the name of event time variable

event

character string with the name of censoring indicator

Details

Each interval in the original data is cut at the given points; if an original row were (15, 60] with a cut vector of (10,30, 40) the resulting data set would have intervals of (15,30], (30,40] and (40, 60].

Each row in the final data set will lie completely within one of the cut intervals. Which interval for each row of the output is shown by the episode variable, where 1= less than the first cutpoint, 2= between the first and the second, etc. For the example above the values would be 2, 3, and 4.

The routine is called with a formula as the first argument. The right hand side of the formula can be used to delimit variables that should be retained; normally one will use ~ . as a shorthand to retain them all. The routine will try to retain variable names, e.g. Surv(adam, joe, fred)~. will result in a data set with those same variable names for tstart, end, and event options rather than the defaults. Any user specified values for these options will be used if they are present, of course. However, the routine is not sophisticated; it only does this substitution for simple names. A call of Surv(time, stat==2) for instance will not retain "stat" as the name of the event variable.

Rows of data with a missing time or status are copied across unchanged, unless the na.action argument is changed from its default value of na.pass. But in the latter case any row that is missing for any variable will be removed, which is rarely what is desired.

See Also

Surv, cut, reshape

Examples

Run this code
fit1 <- coxph(Surv(time, status) ~ karno + age + trt, veteran)
plot(cox.zph(fit1)[1])
# a cox.zph plot of the data suggests that the effect of Karnofsky score
#  begins to diminish by 60 days and has faded away by 120 days.
# Fit a model with separate coefficients for the three intervals.
#
vet2 <- survSplit(Surv(time, status) ~., veteran,
                   cut=c(60, 120), episode ="timegroup")
fit2 <- coxph(Surv(tstart, time, status) ~ karno* strata(timegroup) +
                age + trt, data= vet2)
c(overall= coef(fit1)[1],
  t0_60  = coef(fit2)[1],
  t60_120= sum(coef(fit2)[c(1,4)]),
  t120   = sum(coef(fit2)[c(1,5)]))

# Sometimes we want to split on one scale and analyse on another
#  Add a "current age" variable to the mgus2 data set.
temp1 <- mgus2
temp1$endage <- mgus2$age + mgus2$futime/12    # futime is in months
temp1$startage <- temp1$age
temp2 <- survSplit(Surv(age, endage, death) ~ ., temp1, cut=25:100,
                   start= "age1", end= "age2")

# restore the time since enrollment scale
temp2$time1 <- (temp2$age1 - temp2$startage)*12
temp2$time2 <- (temp2$age2 - temp2$startage)*12

# In this data set, initial age and current age have similar utility
mfit1 <- coxph(Surv(futime, death) ~ age + sex, data=mgus2)
mfit2 <- coxph(Surv(time1, time2, death) ~ age1 + sex, data=temp2)

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