Computes sample size(s) for 2-sample binomial problem given vector or scalar probabilities in the two groups.
samplesize.bin(alpha, beta, pit, pic, rho=0.5)
scalar ONE-SIDED test size, or two-sided size/2
scalar or vector of powers
hypothesized treatment probability of success
hypothesized control probability of success
proportion of the sample devoted to treated group (
TOTAL sample size(s)
Rick Chappell Dept. of Statistics and Human Oncology University of Wisconsin at Madison chappell@stat.wisc.edu
# NOT RUN {
alpha <- .05
beta <- c(.70,.80,.90,.95)
# N1 is a matrix of total sample sizes whose
# rows vary by hypothesized treatment success probability and
# columns vary by power
# See Meinert's book for formulae.
N1 <- samplesize.bin(alpha, beta, pit=.55, pic=.5)
N1 <- rbind(N1, samplesize.bin(alpha, beta, pit=.60, pic=.5))
N1 <- rbind(N1, samplesize.bin(alpha, beta, pit=.65, pic=.5))
N1 <- rbind(N1, samplesize.bin(alpha, beta, pit=.70, pic=.5))
attr(N1,"dimnames") <- NULL
#Accounting for 5% noncompliance in the treated group
inflation <- (1/.95)**2
print(round(N1*inflation+.5,0))
# }
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