324 PART 6 Analyzing Survival Data
Considering More Complicated
Comparisons
The log-rank test is good for comparing survival between two or more groups. But
it doesn’t extend well to more complicated situations. What if you want to do one
of the following?»
» Test whether survival depends on age or some other continuous variable»
» Test the simultaneous effect of several variables, or their interactions, on
survival»
» Correct for the presence of confounding variables or other covariates
In other areas of statistical testing, such situations are handled by regression
techniques. Survival analysis regression uses survival outcomes with censored
observations, and can accommodate these analyses. We describe survival regres-
sion in Chapter 23.
Estimating the Sample Size Needed for
Survival Comparisons
We introduce power and sample size in Chapter 3. Calculating the sample size for
survival comparisons is complicated by several factors:»
» The need to specify an alternative hypothesis: This hypothesis can take the
form of a hazard ratio, described in Chapter 23, where the null hypothesis is
that the hazard ratio = 1. Or, you can hypothesize the difference between two
median survival times.»
» The impact of censoring: How censoring impacts sample size needed
depends on the accrual rate, dropout rate, and the length of follow-up.»
» The shape of the survival curves: For sample-size calculations, it is often
assumed that the survival curve is exponential, but that may not be realistic.
In Chapter 4, we recommend using free software G*Power for your sample-size
calculations. However, because G*Power does not offer a survival sample-size
estimator, for this, we recommend you use another free software package called
PS (Power and Sample Size Calculation), which is available from Vanderbilt