Created
January 13, 2012 19:30
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Simulation for determining sample size in Repeated Measures ANOVA
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# Simulation study for sample size between/within | |
# got Treat + Sham between subjects | |
# got Time within subjects | |
nPerGroup <- 30 | |
nTime <- 4 | |
muTreat <- c(37, 32, 20, 15) | |
muSham <- c(37, 32, 25, 22) | |
stdevs <- c(12, 10, 8, 6) | |
stdiff <- 9 | |
nSim <- 1000 | |
# set up the indep var data | |
Subject <- factor(1:(nPerGroup*2)) | |
Time <- factor(1:nTime, labels = c("0min", "15min", "48hrs", "96hrs")) | |
theData <- expand.grid(Time, Subject) | |
names(theData) <- c("Time", "Subject") | |
tmp <- rep(c("Treat", "Sham"), each = nPerGroup * nTime) | |
theData$Method <- factor(tmp) | |
# to set up variance-covariance matrix | |
ones <- rep(1, nTime) | |
A <- stdevs^2 %o% ones | |
B <- (A + t(A) + (stdiff^2)*(diag(nTime) - ones %o% ones))/2 | |
# can run it through once to check that it works | |
library(MASS) | |
tmp1 <- mvrnorm(nPerGroup, mu = muTreat, Sigma = B) | |
tmp2 <- mvrnorm(nPerGroup, mu = muSham, Sigma = B) | |
theData$NDI <- c(as.vector(t(tmp1)), as.vector(t(tmp2))) | |
aovComp <- aov(NDI ~ Time*Method + Error(Subject/Time), theData) | |
summary(aovComp) | |
# some descriptive statistics and graphs | |
print(model.tables(aovComp, "means"), digits = 3) | |
boxplot(NDI ~ Time, data = theData) | |
boxplot(NDI ~ Method, data = theData) | |
boxplot(NDI ~ Time*Method, data = theData) | |
with(theData, interaction.plot(Time, Method, NDI)) | |
############################################### | |
# for power estimate run the below | |
# don't forget to set up theData and var-cov | |
library(MASS) | |
runTest <- function(){ | |
tmp1 <- mvrnorm(nPerGroup, mu = muTreat, Sigma = B) | |
tmp2 <- mvrnorm(nPerGroup, mu = muSham, Sigma = B) | |
theData$NDI <- c(as.vector(t(tmp1)), as.vector(t(tmp2))) | |
aovComp <- aov(NDI ~ Time*Method + Error(Subject/Time), theData) | |
b <- summary(aovComp)$'Error: Subject:Time'[[1]][2,5] | |
b < 0.05 | |
} | |
# here is estimate of power for given nPerGroup | |
mean(replicate(nSim, runTest())) |
Hi gjkerns, I first found this ost of yours on R-bloggers and I'm trying to use it, but I can't run the 'stdevs' command in line 25. Is it supposed to be a standard deviation command or is there something special about it - and if the latter, which package does it belong to? I'm an R and git newbie so I hope you don't mind my asking this question here! -Tory.
Hi, Tory
This is a very good example.
'stdevs' is a variable defined in line 9 if you run the code from the beginning. Hope this helps. Good Luck.
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Hi gjkerns, I first found this ost of yours on R-bloggers and I'm trying to use it, but I can't run the 'stdevs' command in line 25. Is it supposed to be a standard deviation command or is there something special about it - and if the latter, which package does it belong to? I'm an R and git newbie so I hope you don't mind my asking this question here! -Tory.