Nothing
test_that('dfcrm_dose_selector matches dfcrm.', {
# Example 1 - Empiric model, non-standard scale parameter
skeleton <- c(0.1, 0.2, 0.4, 0.55)
target <- 0.2
scale = sqrt(0.75)
outcomes <- '2NNT 2NNN 3NTT 2NNT'
# Dose selection model
model <- get_dfcrm(skeleton = skeleton, target = target, scale = scale)
x <- model %>% fit(outcomes)
# dfcrm model
y <- dfcrm::crm(prior = skeleton, target = target, scale = scale,
tox = c(0,0,1, 0,0,0, 0,1,1, 0,0,1),
level = c(2,2,2, 2,2,2, 3,3,3, 2,2,2))
expect_equal(recommended_dose(x), y$mtd)
expect_equal(round(mean_prob_tox(x), 2), round(y$ptox, 2))
expect_equal(x$dfcrm_fit$model, 'empiric')
expect_equal(x$dfcrm_fit$prior.var, 0.75)
# Example 2 - Logit model, non-standard intercept parameter
skeleton <- c(0.1, 0.2, 0.33, 0.45, 0.6, 0.7, 0.8)
target <- 0.33
outcomes <- '1NNN 2NNN 3NTT 2NNN 3TNN 3TNT 2NNN'
# Dose selection model
model <- get_dfcrm(skeleton = skeleton, target = target, intcpt = 4,
model = 'logistic')
x <- model %>% fit(outcomes)
# dfcrm model
y <- dfcrm::crm(prior = skeleton, target = target, intcpt = 4,
model = 'logistic',
tox = c(0,0,0, 0,0,0, 0,1,1, 0,0,0, 1,0,0, 1,0,1, 0,0,0),
level = c(1,1,1, 2,2,2, 3,3,3, 2,2,2, 3,3,3, 3,3,3, 2,2,2))
expect_equal(recommended_dose(x), y$mtd)
expect_equal(round(mean_prob_tox(x), 2), round(y$ptox, 2))
expect_equal(x$dfcrm_fit$model, 'logistic')
expect_equal(x$dfcrm_fit$intcpt, 4)
})
test_that('dfcrm_selector supports correct interface.', {
skeleton <- c(0.05, 0.1, 0.25, 0.4, 0.6)
target <- 0.25
model_fitter <- get_dfcrm(skeleton = skeleton, target = target)
# Example 1, using outcome string
x <- fit(model_fitter, '1NNN 2NTT')
expect_equal(tox_target(x), 0.25)
expect_true(is.numeric(tox_target(x)))
expect_equal(num_patients(x), 6)
expect_true(is.integer(num_patients(x)))
expect_equal(cohort(x), c(1,1,1, 2,2,2))
expect_true(is.integer(cohort(x)))
expect_equal(length(cohort(x)), num_patients(x))
expect_equal(doses_given(x), c(1,1,1, 2,2,2))
expect_true(is.integer(doses_given(x)))
expect_equal(length(doses_given(x)), num_patients(x))
expect_equal(tox(x), c(0,0,0, 0,1,1))
expect_true(is.integer(tox(x)))
expect_equal(length(tox(x)), num_patients(x))
expect_equal(num_tox(x), 2)
expect_true(is.integer(num_tox(x)))
expect_true(all((model_frame(x) - data.frame(patient = c(1,2,3,4,5,6),
cohort = c(1,1,1,2,2,2),
dose = c(1,1,1,2,2,2),
tox = c(0,0,0,0,1,1))) == 0))
expect_equal(nrow(model_frame(x)), num_patients(x))
expect_equal(num_doses(x), 5)
expect_true(is.integer(tox(x)))
expect_equal(dose_indices(x), 1:5)
expect_true(is.integer(dose_indices(x)))
expect_equal(length(dose_indices(x)), num_doses(x))
expect_equal(recommended_dose(x), 1)
expect_true(is.integer(recommended_dose(x)))
expect_equal(length(recommended_dose(x)), 1)
expect_equal(continue(x), TRUE)
expect_true(is.logical(continue(x)))
expect_equal(n_at_dose(x), c(3,3,0,0,0))
expect_true(is.integer(n_at_dose(x)))
expect_equal(length(n_at_dose(x)), num_doses(x))
expect_equal(n_at_dose(x, dose = 0), 0)
expect_true(is.integer(n_at_dose(x, dose = 0)))
expect_equal(length(n_at_dose(x, dose = 0)), 1)
expect_equal(n_at_dose(x, dose = 1), 3)
expect_true(is.integer(n_at_dose(x, dose = 1)))
expect_equal(length(n_at_dose(x, dose = 1)), 1)
expect_equal(n_at_dose(x, dose = 'recommended'), 3)
expect_true(is.integer(n_at_dose(x, dose = 'recommended')))
expect_equal(length(n_at_dose(x, dose = 'recommended')), 1)
expect_equal(n_at_recommended_dose(x), 3)
expect_true(is.integer(n_at_recommended_dose(x)))
expect_equal(length(n_at_recommended_dose(x)), 1)
expect_equal(is_randomising(x), FALSE)
expect_true(is.logical(is_randomising(x)))
expect_equal(length(is_randomising(x)), 1)
expect_equal(unname(prob_administer(x)), c(0.5,0.5,0,0,0))
expect_true(is.numeric(prob_administer(x)))
expect_equal(length(prob_administer(x)), num_doses(x))
expect_equal(tox_at_dose(x), c(0,2,0,0,0))
expect_true(is.integer(tox_at_dose(x)))
expect_equal(length(tox_at_dose(x)), num_doses(x))
expect_true(is.numeric(empiric_tox_rate(x)))
expect_equal(length(empiric_tox_rate(x)), num_doses(x))
expect_true(is.numeric(mean_prob_tox(x)))
expect_equal(length(mean_prob_tox(x)), num_doses(x))
expect_true(is.numeric(median_prob_tox(x)))
expect_equal(length(median_prob_tox(x)), num_doses(x))
expect_true(is.logical(dose_admissible(x)))
expect_equal(length(dose_admissible(x)), num_doses(x))
expect_true(is.numeric(prob_tox_quantile(x, p = 0.9)))
expect_equal(length(prob_tox_quantile(x, p = 0.9)), num_doses(x))
expect_true(is.numeric(prob_tox_exceeds(x, 0.5)))
expect_equal(length(prob_tox_exceeds(x, 0.5)), num_doses(x))
expect_true(is.logical(supports_sampling(x)))
expect_true(is.data.frame(prob_tox_samples(x)))
expect_true(is.data.frame(prob_tox_samples(x, tall = TRUE)))
# Expect summary to not error. This is how that is tested, apparently:
expect_error(summary(x), NA)
expect_output(print(x))
expect_true(tibble::is_tibble(as_tibble(x)))
expect_true(nrow(as_tibble(x)) >= num_doses(x))
# Example 2, using trivial outcome string
x <- fit(model_fitter, '')
expect_equal(tox_target(x), 0.25)
expect_true(is.numeric(tox_target(x)))
expect_equal(num_patients(x), 0)
expect_true(is.integer(num_patients(x)))
expect_equal(cohort(x), integer(0))
expect_true(is.integer(cohort(x)))
expect_equal(length(cohort(x)), num_patients(x))
expect_equal(doses_given(x), integer(0))
expect_true(is.integer(doses_given(x)))
expect_equal(length(doses_given(x)), num_patients(x))
expect_equal(tox(x), integer(0))
expect_true(is.integer(tox(x)))
expect_equal(length(tox(x)), num_patients(x))
expect_equal(num_tox(x), 0)
expect_true(is.integer(num_tox(x)))
mf <- model_frame(x)
expect_equal(nrow(mf), 0)
expect_equal(ncol(mf), 4)
expect_equal(num_doses(x), 5)
expect_true(is.integer(num_doses(x)))
expect_equal(dose_indices(x), 1:5)
expect_true(is.integer(dose_indices(x)))
expect_equal(length(dose_indices(x)), num_doses(x))
expect_equal(recommended_dose(x), 1)
expect_true(is.integer(recommended_dose(x)))
expect_equal(length(recommended_dose(x)), 1)
expect_equal(continue(x), TRUE)
expect_true(is.logical(continue(x)))
expect_equal(n_at_dose(x), c(0,0,0,0,0))
expect_true(is.integer(n_at_dose(x)))
expect_equal(length(n_at_dose(x)), num_doses(x))
expect_equal(n_at_dose(x, dose = 0), 0)
expect_true(is.integer(n_at_dose(x, dose = 0)))
expect_equal(length(n_at_dose(x, dose = 0)), 1)
expect_equal(n_at_dose(x, dose = 1), 0)
expect_true(is.integer(n_at_dose(x, dose = 1)))
expect_equal(length(n_at_dose(x, dose = 1)), 1)
expect_equal(n_at_dose(x, dose = 'recommended'), 0)
expect_true(is.integer(n_at_dose(x, dose = 'recommended')))
expect_equal(length(n_at_dose(x, dose = 'recommended')), 1)
expect_equal(n_at_recommended_dose(x), 0)
expect_true(is.integer(n_at_recommended_dose(x)))
expect_equal(length(n_at_recommended_dose(x)), 1)
expect_equal(is_randomising(x), FALSE)
expect_true(is.logical(is_randomising(x)))
expect_equal(length(is_randomising(x)), 1)
expect_true(is.numeric(prob_administer(x)))
expect_equal(length(prob_administer(x)), num_doses(x))
expect_equal(tox_at_dose(x), c(0,0,0,0,0))
expect_true(is.integer(tox_at_dose(x)))
expect_equal(length(tox_at_dose(x)), num_doses(x))
expect_true(is.numeric(empiric_tox_rate(x)))
expect_equal(length(empiric_tox_rate(x)), num_doses(x))
expect_true(is.numeric(mean_prob_tox(x)))
expect_equal(length(mean_prob_tox(x)), num_doses(x))
expect_true(is.numeric(median_prob_tox(x)))
expect_equal(length(median_prob_tox(x)), num_doses(x))
expect_true(is.logical(dose_admissible(x)))
expect_equal(length(dose_admissible(x)), num_doses(x))
expect_true(is.numeric(prob_tox_quantile(x, p = 0.9)))
expect_equal(length(prob_tox_quantile(x, p = 0.9)), num_doses(x))
expect_true(is.numeric(prob_tox_exceeds(x, 0.5)))
expect_equal(length(prob_tox_exceeds(x, 0.5)), num_doses(x))
expect_true(is.logical(supports_sampling(x)))
expect_true(is.data.frame(prob_tox_samples(x)))
expect_true(is.data.frame(prob_tox_samples(x, tall = TRUE)))
# Expect summary to not error. This is how that is tested, apparently:
expect_error(summary(x), NA)
expect_output(print(x))
expect_true(tibble::is_tibble(as_tibble(x)))
expect_true(nrow(as_tibble(x)) >= num_doses(x))
# Example 3, using tibble of outcomes
outcomes <- tibble(
cohort = c(1,1,1, 2,2,2),
dose = c(1,1,1, 2,2,2),
tox = c(0,0, 0,0, 1,1)
)
x <- fit(model_fitter, outcomes)
expect_equal(tox_target(x), 0.25)
expect_true(is.numeric(tox_target(x)))
expect_equal(num_patients(x), 6)
expect_true(is.integer(num_patients(x)))
expect_equal(cohort(x), c(1,1,1, 2,2,2))
expect_true(is.integer(cohort(x)))
expect_equal(length(cohort(x)), num_patients(x))
expect_equal(doses_given(x), c(1,1,1, 2,2,2))
expect_true(is.integer(doses_given(x)))
expect_equal(length(doses_given(x)), num_patients(x))
expect_equal(tox(x), c(0,0,0, 0,1,1))
expect_true(is.integer(tox(x)))
expect_equal(length(tox(x)), num_patients(x))
expect_equal(num_tox(x), 2)
expect_true(is.integer(num_tox(x)))
expect_true(all((model_frame(x) - data.frame(patient = c(1,2,3,4,5,6),
cohort = c(1,1,1,2,2,2),
dose = c(1,1,1,2,2,2),
tox = c(0,0,0,0,1,1))) == 0))
expect_equal(nrow(model_frame(x)), num_patients(x))
expect_equal(num_doses(x), 5)
expect_true(is.integer(tox(x)))
expect_equal(dose_indices(x), 1:5)
expect_true(is.integer(dose_indices(x)))
expect_equal(length(dose_indices(x)), num_doses(x))
expect_equal(recommended_dose(x), 1)
expect_true(is.integer(recommended_dose(x)))
expect_equal(length(recommended_dose(x)), 1)
expect_equal(continue(x), TRUE)
expect_true(is.logical(continue(x)))
expect_equal(n_at_dose(x), c(3,3,0,0,0))
expect_true(is.integer(n_at_dose(x)))
expect_equal(length(n_at_dose(x)), num_doses(x))
expect_equal(n_at_dose(x, dose = 0), 0)
expect_true(is.integer(n_at_dose(x, dose = 0)))
expect_equal(length(n_at_dose(x, dose = 0)), 1)
expect_equal(n_at_dose(x, dose = 1), 3)
expect_true(is.integer(n_at_dose(x, dose = 1)))
expect_equal(length(n_at_dose(x, dose = 1)), 1)
expect_equal(n_at_dose(x, dose = 'recommended'), 3)
expect_true(is.integer(n_at_dose(x, dose = 'recommended')))
expect_equal(length(n_at_dose(x, dose = 'recommended')), 1)
expect_equal(n_at_recommended_dose(x), 3)
expect_true(is.integer(n_at_recommended_dose(x)))
expect_equal(length(n_at_recommended_dose(x)), 1)
expect_equal(is_randomising(x), FALSE)
expect_true(is.logical(is_randomising(x)))
expect_equal(length(is_randomising(x)), 1)
expect_equal(unname(prob_administer(x)), c(0.5,0.5,0,0,0))
expect_true(is.numeric(prob_administer(x)))
expect_equal(length(prob_administer(x)), num_doses(x))
expect_equal(tox_at_dose(x), c(0,2,0,0,0))
expect_true(is.integer(tox_at_dose(x)))
expect_equal(length(tox_at_dose(x)), num_doses(x))
expect_true(is.numeric(empiric_tox_rate(x)))
expect_equal(length(empiric_tox_rate(x)), num_doses(x))
expect_true(is.numeric(mean_prob_tox(x)))
expect_equal(length(mean_prob_tox(x)), num_doses(x))
expect_true(is.numeric(median_prob_tox(x)))
expect_equal(length(median_prob_tox(x)), num_doses(x))
expect_true(is.logical(dose_admissible(x)))
expect_equal(length(dose_admissible(x)), num_doses(x))
expect_true(is.numeric(prob_tox_quantile(x, p = 0.9)))
expect_equal(length(prob_tox_quantile(x, p = 0.9)), num_doses(x))
expect_true(is.numeric(prob_tox_exceeds(x, 0.5)))
expect_equal(length(prob_tox_exceeds(x, 0.5)), num_doses(x))
expect_true(is.logical(supports_sampling(x)))
expect_true(is.data.frame(prob_tox_samples(x)))
expect_true(is.data.frame(prob_tox_samples(x, tall = TRUE)))
# Expect summary to not error. This is how that is tested, apparently:
expect_error(summary(x), NA)
expect_output(print(x))
expect_true(tibble::is_tibble(as_tibble(x)))
expect_true(nrow(as_tibble(x)) >= num_doses(x))
})
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