Nothing
suppressMessages(library(dplyr))
test_that("number of subjects, uneqal", {
p <- study_parameters(n1 = 5,
n2 = unequal_clusters(5, 7, 15),
n3 = 2,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, cluster, time) %>%
summarise(n = n()) %>%
.$n
x <- rep(c(5,7,15), each = 5)
rep(x, 2)
expect_equal(n, rep(x,2))
})
test_that("number of subjects, uneqal, dropout", {
p <- study_parameters(n1 = 5,
n2 = unequal_clusters(5, 7, 15),
n3 = 2,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout_weibull(0.2, 1),
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, cluster, time) %>%
summarise(n = n()) %>%
.$n
x <- rep(c(5,7,15), each = 5)
rep(x, 2)
expect_equal(n, rep(x,2))
})
test_that("number of subjects, per_treatment, uneqal", {
n2 <- per_treatment(unequal_clusters(5, 7, 15),
unequal_clusters(2, 4, 10, 20))
p <- study_parameters(n1 = 5,
n2 = n2,
n3 = 2,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, cluster, time) %>%
summarise(n = n()) %>%
.$n
x <- rep(c(5,7,15), each = 5)
x2 <- rep(c(2, 4, 10, 20), each = 5)
expect_equal(n, c(x, x2))
})
test_that("number of subjects, per_treatment, uneqal, dropout", {
n2 <- per_treatment(unequal_clusters(5, 7, 15),
unequal_clusters(2, 4, 10, 20))
p <- study_parameters(n1 = 5,
n2 = n2,
n3 = 2,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout_weibull(0.2, 1),
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, cluster, time) %>%
summarise(n = n()) %>%
.$n
x <- rep(c(5,7,15), each = 5)
x2 <- rep(c(2, 4, 10, 20), each = 5)
expect_equal(n, c(x, x2))
})
test_that("number of clusters, per_treatment", {
p <- study_parameters(n1 = 5,
n2 = 5,
n3 = per_treatment(10, 5),
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, cluster, time) %>%
summarise(n = n()) %>%
.$n
expect_equal(n, rep(5, 5*10 + 5*5))
n3 <- d %>%
group_by(treatment, time) %>%
summarise(n = length(unique(cluster))) %>%
.$n
expect_equal(n3, rep(c(10, 5), each = 5))
})
test_that("number of clusters, per_treatment, dropout", {
p <- study_parameters(n1 = 5,
n2 = 5,
n3 = per_treatment(10, 5),
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout_weibull(0.2, 1),
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, cluster, time) %>%
summarise(n = n()) %>%
.$n
expect_equal(n, rep(5, 5*10 + 5*5))
n3 <- d %>%
group_by(treatment, time) %>%
summarise(n = length(unique(cluster))) %>%
.$n
expect_equal(n3, rep(c(10, 5), each = 5))
})
# both n2 and n3 per treatment
test_that("number of clusters, per_treatment", {
p <- study_parameters(n1 = 5,
n2 = per_treatment(2, 5),
n3 = per_treatment(10, 5),
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout_weibull(0.2, 1),
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, cluster, time) %>%
summarise(n = n()) %>%
.$n
x <- rep(2, 5*10)
x2 <- rep(5, 5*5)
expect_equal(n, c(x, x2))
n3 <- d %>%
group_by(treatment, time) %>%
summarise(n = length(unique(cluster))) %>%
.$n
expect_equal(n3, rep(c(10, 5), each = 5))
})
# Weibull
test_that("proportion of dropout", {
p <- study_parameters(n1 = 10,
n2 = 25,
n3 = 25,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout_weibull(0.2, 1),
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
tx <- n %>% filter(treatment == 1)
cc <- n %>% filter(treatment == 0)
dp <- get_dropout(p)
expect_equal(tx$miss, dp$treatment, tolerance = 0.01)
expect_equal(cc$miss, dp$control, tolerance = 0.01)
expect_equal(cc$miss[10], 0.2)
expect_equal(tx$miss[10], 0.2)
})
test_that("proportion of dropout, per_treatment", {
dropout <- per_treatment(dropout_weibull(0.2, 1),
dropout_weibull(0.3, 3))
p <- study_parameters(n1 = 10,
n2 = 25,
n3 = 25,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
tx <- n %>% filter(treatment == 1)
cc <- n %>% filter(treatment == 0)
dp <- get_dropout(p)
expect_equal(tx$miss, dp$treatment, tolerance = 0.01)
expect_equal(cc$miss, dp$control, tolerance = 0.01)
expect_equal(cc$miss[10], 0.2, tolerance = 0.01)
expect_equal(tx$miss[10], 0.3, tolerance = 0.01)
})
test_that("proportion of dropout, only in control", {
dropout <- per_treatment(dropout_weibull(0.2, 1),
0)
p <- study_parameters(n1 = 10,
n2 = 25,
n3 = 25,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
tx <- n %>% filter(treatment == 1)
cc <- n %>% filter(treatment == 0)
dp <- get_dropout(p)
expect_equal(tx$miss, dp$treatment, tolerance = 0.01)
expect_equal(cc$miss, dp$control, tolerance = 0.01)
expect_equal(cc$miss[10], 0.2, tolerance = 0.01)
expect_equal(tx$miss[10], 0, tolerance = 0.01)
})
test_that("proportion of dropout, only in control", {
dropout <- per_treatment(dropout_weibull(0.2, 1),
0)
p <- study_parameters(n1 = 10,
n2 = 25,
n3 = 25,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout,
deterministic_dropout = FALSE,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
tx <- n %>% filter(treatment == 1)
expect_equal(tx$miss[10], 0, tolerance = 0.01)
})
test_that("proportion of dropout, only in tx", {
dropout <- per_treatment(0,
dropout_weibull(0.2, 1))
p <- study_parameters(n1 = 10,
n2 = 25,
n3 = 25,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
tx <- n %>% filter(treatment == 1)
cc <- n %>% filter(treatment == 0)
dp <- get_dropout(p)
expect_equal(tx$miss, dp$treatment, tolerance = 0.01)
expect_equal(cc$miss, dp$control, tolerance = 0.01)
expect_equal(cc$miss[10], 0, tolerance = 0.01)
expect_equal(tx$miss[10], 0.2, tolerance = 0.01)
})
test_that("proportion of dropout, only in tx", {
dropout <- per_treatment(0,
dropout_weibull(0.2, 1))
p <- study_parameters(n1 = 10,
n2 = 25,
n3 = 25,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout,
deterministic_dropout = FALSE,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
cc <- n %>% filter(treatment == 0)
expect_equal(cc$miss[10], 0, tolerance = 0.001)
})
## Manual dropout
test_that("proportion of dropout", {
dropout <- dropout_manual(seq(0,0.5, length.out = 10))
p <- study_parameters(n1 = 10,
n2 = 25,
n3 = 25,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
tx <- n %>% filter(treatment == 1)
cc <- n %>% filter(treatment == 0)
dp <- get_dropout(p)
expect_equal(tx$miss, dp$treatment, tolerance = 0.01)
expect_equal(cc$miss, dp$control, tolerance = 0.01)
expect_equal(dp$control, seq(0,0.5, length.out = 10))
expect_equal(dp$treatment, seq(0,0.5, length.out = 10))
expect_equal(cc$miss[10], 0.5, tolerance = 0.01)
expect_equal(tx$miss[10], 0.5, tolerance = 0.01)
})
# Manual dropout, per treatment
test_that("proportion of dropout, per_treatment", {
dropout <- per_treatment(dropout_manual(seq(0,0.5, length.out = 10)),
dropout_manual(seq(0,0.3, length.out = 10)))
p <- study_parameters(n1 = 10,
n2 = 25,
n3 = 25,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
tx <- n %>% filter(treatment == 1)
cc <- n %>% filter(treatment == 0)
dp <- get_dropout(p)
expect_equal(tx$miss, dp$treatment, tolerance = 0.01)
expect_equal(cc$miss, dp$control, tolerance = 0.01)
expect_equal(dp$control, seq(0,0.5, length.out = 10))
expect_equal(dp$treatment, seq(0,0.3, length.out = 10))
expect_equal(cc$miss[10], 0.5, tolerance = 0.01)
expect_equal(tx$miss[10], 0.3, tolerance = 0.01)
})
test_that("proportion of dropout, per_treatment", {
p <- study_parameters(n1 = 10,
n2 = 5,
n3 = 5,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
partially_nested = TRUE,
cohend = 0.5)
# partially nested
set.seed(3)
d <- simulate_data(p)
n <- d %>%
group_by(treatment) %>%
summarise(n = length(unique(slope_cluster))) %>%
.$n
expect_equal(n, c(1,5))
# not partially_nested
p <- update(p, partially_nested = FALSE)
d <- simulate_data(p)
n <- d %>%
group_by(treatment) %>%
summarise(n = length(unique(slope_cluster))) %>%
.$n
expect_equal(n, c(5,5))
})
# Multi para
test_that("multi_para #1", {
p <- study_parameters(n1 = 5:6,
n2 = unequal_clusters(5, 7, 15),
n3 = 2,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
cohend = 0.5)
d <- simulate_data(p)
n <- d %>% group_by(subject) %>%
summarise(n = n()) %>%
.$n
expect_true(all(n == 5))
})
# Different dropout patterns
test_that("multi_para #1", {
dropout <- c(dropout_weibull(0.1, 2),
dropout_weibull(0.2, 0.5))
p <- study_parameters(n1 = 5:6,
n2 = unequal_clusters(10, 25, 40, 50, 80, 100, 100),
n3 = 2,
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
dropout = dropout,
cohend = 0.5)
set.seed(5444)
d <- simulate_data(p)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
tx <- n %>% filter(treatment == 1)
cc <- n %>% filter(treatment == 0)
dp <- get_dropout(p)
expect_equal(tx$miss, dp$treatment, tolerance = 0.01)
expect_equal(cc$miss, dp$control, tolerance = 0.01)
expect_equal(cc$miss[5], 0.1, tolerance = 0.01)
expect_equal(tx$miss[5], 0.1, tolerance = 0.01)
## data set #2
d <- simulate_data(p, n = 2)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
n1 <- d %>%
group_by(subject) %>%
summarise(n = n()) %>%
.$n
tx <- n %>% filter(treatment == 1)
cc <- n %>% filter(treatment == 0)
dp <- get_dropout(p, n = 2)
expect_true(all(n1 == 6))
expect_equal(tx$miss, dp$treatment, tolerance = 0.01)
expect_equal(cc$miss, dp$control, tolerance = 0.01)
expect_equal(cc$miss[6], 0.1, tolerance = 0.01)
expect_equal(tx$miss[6], 0.1, tolerance = 0.01)
## data set #3 diff dropout
d <- simulate_data(p, 3)
n <- d %>% group_by(treatment, time) %>%
summarise(miss = mean(is.na(y)))
n1 <- d %>%
group_by(subject) %>%
summarise(n = n()) %>%
.$n
tx <- n %>% filter(treatment == 1)
cc <- n %>% filter(treatment == 0)
dp <- get_dropout(p, 3)
expect_true(all(n1 == 5))
expect_equal(tx$miss, dp$treatment, tolerance = 0.01)
expect_equal(cc$miss, dp$control, tolerance = 0.01)
expect_equal(cc$miss[5], 0.2, tolerance = 0.01)
expect_equal(tx$miss[5], 0.2, tolerance = 0.01)
})
test_that("proportion of dropout, per_treatment", {
p <- study_parameters(n1 = 10,
n2 = unequal_clusters(func = rpois(5, lambda = 5)),
sigma_subject_intercept = 1.44,
icc_pre_cluster = 0,
sigma_subject_slope = 0.2,
icc_slope = 0.05,
sigma_error = 1.44,
partially_nested = TRUE,
cohend = 0.5)
# partially nested
set.seed(3)
d <- simulate_data(p)
n <- d %>%
group_by(treatment) %>%
summarise(n = length(unique(slope_cluster))) %>%
.$n
expect_equal(n, c(1,5))
n2 <- d %>%
group_by(treatment, cluster) %>%
filter(time == 0) %>%
summarise(n = length(cluster)) %>%
.$n
expect_true(length(unique(n2)) > 1)
# not partially_nested
p <- update(p, partially_nested = FALSE)
d <- simulate_data(p)
n <- d %>%
group_by(treatment) %>%
summarise(n = length(unique(slope_cluster))) %>%
.$n
expect_equal(n, c(5,5))
n2 <- d %>%
group_by(treatment, cluster) %>%
filter(time == 0) %>%
summarise(n = length(cluster)) %>%
.$n
expect_true(length(unique(n2)) > 1)
# test prepped
prepped <- prepare_paras(p)
d <- simulate_data(prepped)
n <- d %>%
group_by(treatment) %>%
summarise(n = length(unique(slope_cluster))) %>%
.$n
expect_equal(n, c(5,5))
n2 <- d %>%
group_by(treatment, cluster) %>%
filter(time == 0) %>%
summarise(n = length(cluster)) %>%
.$n
expect_true(length(unique(n2)) > 1)
n2_2 <- as.integer(get_n2(prepped$control)$treatment)
expect_identical(rep(n2_2, 2), n2)
})
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