# NOT RUN {
# Patients risks are usually known from Phase I.
# If not, these risk scores can be simulated.
# define possible patient risk scores
risks <- c(0.001, 0.01, 0.1, 0.002, 0.02, 0.2)
# sample risk population of size n = 100
set.seed(2046)
patient_risks <- sample(x = risks, size = 100, replace = TRUE)
# control limit can be obtained with racusum_limit_sim(),
# here it is set to an arbitrary value (2.96),
# or dynamic control limits with racusum_limit_dpcl()
##### RA-CUSUM of in-control process
# simulate patient outcome for performace as expected
set.seed(2046)
patient_outcomes <- as.logical(rbinom(
n = 100,
size = 1,
prob = patient_risks
))
racusum(patient_risks,
patient_outcomes,
limit = 2.96
)
#### RA-CUSUM of out-of-control process
# simulate patient outcome for deviating performance
set.seed(2046)
patient_outcomes <- as.logical(rbinom(n = 100, size = 1, prob = patient_risks * 2))
#'
racusum(patient_risks,
patient_outcomes,
limit = 2.96
)
# }
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