This paper is motivated by medical studies in which the same patients with
multiple sclerosis are examined at several successive visits and described by
fractional anisotropy tract profiles, which can be represented as functions.
Since the observations for each patient are dependent random processes, they
follow a repeated measures design for functional data. To compare the results
for different visits, we thus consider functional repeated measures analysis of
variance. For this purpose, a pointwise test statistic is constructed by
adapting the classical test statistic for one-way repeated measures analysis of
variance to the functional data framework. By integrating and taking the
supremum of the pointwise test statistic, we create two global test statistics.
Apart from verifying the general null hypothesis on the equality of mean
functions corresponding to different objects, we also propose a simple method
for post hoc analysis. We illustrate the finite sample properties of
permutation and bootstrap testing procedures in an extensive simulation study.
Finally, we analyze a motivating real data example in detail