View source: R/select_tpi_mtd.R
select_tpi_mtd | R Documentation |
This method selects dose by the algorithm for identifying the maximum
tolerable dose (MTD) described in Ji et al. (2007). This class is intended
to be used when a TPI trial has reached its maximum sample size. Thus, it
intends to make the final dose recommendation after the regular TPI dose
selection algorithm, as implemented by get_tpi
, including any
additional behaviours that govern stopping (etc), has gracefully concluded a
dose-finding trial. However, the class can be used in any scenario where
there is a target toxicity rate. See Examples. Note - this class will not
override the parent dose selector when the parent is advocating no dose. Thus
this class will not reinstate a dangerous dose.
select_tpi_mtd(
parent_selector_factory,
when = c("finally", "always"),
target = NULL,
exclusion_certainty,
alpha = 1,
beta = 1,
...
)
parent_selector_factory |
Object of type |
when |
Either of: 'finally' to select dose only when the parent dose-selector has finished, by returning continue() == FALSE; or 'always' to use this dose-selection algorithm for every dose decision. As per the authors' original intentions, the default is 'finally'. |
target |
We seek a dose with this probability of toxicity. If not provided, the value will be sought from the parent dose-selector. |
exclusion_certainty |
Numeric, threshold posterior certainty required to exclude a dose for being excessively toxic. The authors discuss values in the range 0.7 - 0.95. Set to a value > 1 to suppress the dose exclusion mechanism. The authors use the Greek letter xi for this parameter. |
alpha |
First shape parameter of the beta prior distribution on the probability of toxicity. |
beta |
Second shape parameter of the beta prior distribution on the probability of toxicity. |
... |
Extra args are passed onwards. |
an object of type selector_factory
.
Ji, Y., Li, Y., & Bekele, B. N. (2007). Dose-finding in phase I clinical trials based on toxicity probability intervals. Clinical Trials, 4(3), 235–244. https://doi.org/10.1177/1740774507079442
# This class is intended to make the final dose selection in a mTPI2 trial:
target <- 0.25
model <- get_tpi(num_doses = 5, target = target,
k1 = 1, k2 = 1.5,
exclusion_certainty = 0.95) %>%
stop_at_n(n = 12) %>%
select_tpi_mtd(exclusion_certainty = 0.95)
outcomes <- '1NNN 2NTN 2NNN 3NTT'
model %>% fit(outcomes) %>% recommended_dose()
# However, since behaviour is modular in this package, we can use this method
# to select dose at every dose decision if we wanted:
model2 <- get_tpi(num_doses = 5, target = target,
k1 = 1, k2 = 1.5,
exclusion_certainty = 0.95) %>%
select_tpi_mtd(when = 'always', exclusion_certainty = 0.95)
model2 %>% fit('1NNT') %>% recommended_dose()
model2 %>% fit('1NNN 2NNT') %>% recommended_dose()
# and with any underlying model:
skeleton <- c(0.05, 0.1, 0.25, 0.4, 0.6)
model3 <- get_dfcrm(skeleton = skeleton, target = target) %>%
select_tpi_mtd(when = 'always', exclusion_certainty = 0.95)
model3 %>% fit('1NNT') %>% recommended_dose()
model3 %>% fit('1NNN 2NNT') %>% recommended_dose()
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.