knitr::opts_chunk$set( collapse = TRUE, comment = "#>" )
The derivation of visit variables like AVISIT
, AVISITN
, AWLO
,
AWHI
, ... or period, subperiod, or phase variables like APERIOD
,
TRT01A
, TRT02A
, ASPER
, PHSDTM
, PHEDTM
, ... is highly
study-specific. Therefore {admiral}
cannot provide functions which derive
these variables. However, for common scenarios like visit assignments
based on time windows or deriving BDS period variables from ADSL period
variables, functions are provided which support those derivations.
The examples of this vignette require the following packages.
library(admiral) library(tibble) library(dplyr, warn.conflicts = FALSE) library(lubridate)
library(admiraldev)
AVISIT
, AVISITN
, AWLO
, AWHI
, ...) {#visits}The most common ways of deriving AVISIT
and AVISITN
are:
VISIT
and
VISITNUM
).The former can be achieved simply by calling mutate()
, like in the
vignettes and the template scripts.
For the latter a (study-specific) reference dataset needs to be created
which provides for each visit the start and end day (AWLO
and AWHI
)
and the values of other visit related variables (AVISIT
, AVISITN
,
AWTARGET
, ...).
windows <- tribble( ~AVISIT, ~AWLO, ~AWHI, ~AVISITN, ~AWTARGET, "BASELINE", -30, 1, 0, 1, "WEEK 1", 2, 7, 1, 5, "WEEK 2", 8, 15, 2, 11, "WEEK 3", 16, 22, 3, 19, "WEEK 4", 23, 30, 4, 26 )
Then the visits can be assigned based on the analysis day (ADY
) by
calling derive_vars_joined()
:
adbds <- tribble( ~USUBJID, ~ADY, "1", -33, "1", -2, "1", 3, "1", 24, "2", NA, ) adbds1 <- adbds %>% derive_vars_joined( dataset_add = windows, filter_join = AWLO <= ADY & ADY <= AWHI, join_type = "all", )
dataset_vignette(adbds1)
If periods, subperiods, or phases are used, in the simpler of ADaM applications the corresponding variables have to be consistent across all datasets. This can be achieved by defining the periods, subperiods, or phases once and then using this definition for all datasets. The definition can be stored in ADSL or in a separate dataset. In this vignette's examples, this separate dataset is called period/phase reference dataset depending what data it contains.
Note that periods, subperiods, or phases can be defined differently across datasets (for instance, they may be different across safety and efficacy analyses) in which case the start/stop dates should be defined in the individual datasets, instead of in ADSL. However, this vignette will not cover this scenario.
The sections below showcase the available tools in {admiral}
to work with period,
subperiod and phase variables. However, at some point study specific code will
always be required. There are two options:
Study specific code is used to first derive the variables PxxSwSDT
and
PxxSwEDT
in ADSL. Then create_period_dataset()
and
derive_vars_joined()
can be used to derive period/subperiod
variables like ASPER
or ASPRSDT
in BDS and OCCDS datasets. See an example
dataset here.
Study specific code is used to derive a dataset with one
observation per patient, period, and subperiod (see period
reference dataset). Then derive_vars_period()
can be
used to derive PxxSwSDT
and PxxSwEDT
in ADSL and
derive_vars_joined()
can be used to derive period/subperiod
variables like ASPER
or ASPRSDT
in BDS and OCCDS datasets.
It depends on the specific definition of the periods/subperiods which option works best. If the definition is based on other ADSL variables, the first option would work best. If the definition is based on vertically structured data like exposure data (EX dataset), the second option should be used. This vignette contains examples for both workflows.
The {admiral}
functions expect separate reference datasets for periods, subperiods,
and phases. For periods the numeric variable APERIOD
is expected, for
subperiods the numeric variables APERIOD
and ASPER
, and for phases
the numeric variable APHASEN
.
The period/phase reference dataset should be created according to the design and ADaM needs of the study in question. It should contain one observation per subject and period, subperiod, or phase. See the next section for an example dataset.
Consider a simple crossover study with the following design:
Given this design, an option could be to split the study into two periods:
Alternatively (or additionally) one could split into two phases:
Below, we present two example workflows: one where where a period reference dataset is created from the exposure dataset EX, and the other where a phase reference dataset is created using ADSL variables.
Below we create a period reference dataset starting from the exposure dataset EX. Consider the following exposure dataset:
ex <- tribble( ~STUDYID, ~USUBJID, ~VISIT, ~EXTRT, ~EXSTDTC, "xyz", "1", "Day 1", "Drug X", "2022-01-02", "xyz", "1", "Week 4", "Drug X", "2022-02-05", "xyz", "1", "Week 8", "Drug X", "2022-03-01", "xyz", "1", "Week 12", "Drug X", "2022-04-03", "xyz", "1", "Week 16", "Drug Y", "2022-05-03", "xyz", "1", "Week 20", "Drug Y", "2022-06-02", "xyz", "1", "Week 24", "Drug Y", "2022-07-01", "xyz", "1", "Week 28", "Drug Y", "2022-08-04", "xyz", "2", "Day 1", "Drug Y", "2023-10-20", "xyz", "2", "Week 4", "Drug Y", "2023-11-21", "xyz", "2", "Week 8", "Drug Y", "2023-12-19", "xyz", "2", "Week 12", "Drug Y", "2024-01-19", "xyz", "2", "Week 16", "Drug X", "2024-02-20", "xyz", "2", "Week 20", "Drug X", "2024-03-17", "xyz", "2", "Week 24", "Drug X", "2024-04-22", "xyz", "2", "Week 28", "Drug X", "2024-05-21" )
Then to create a period reference dataset, code like this (or similar) would suffice:
period_ref <- ex %>% # Select visits marking the start of each period filter(VISIT %in% c("Day 1", "Week 16")) %>% # Create APERIOD, APERSDT, TRTA based on SDTM counterparts mutate( APERIOD = case_when( VISIT == "Day 1" ~ 1, VISIT == "Week 16" ~ 2 ), TRTA = EXTRT, APERSDT = convert_dtc_to_dt(EXSTDTC) ) %>% # Create APEREDT based on start date of next period arrange(USUBJID, APERSDT) %>% group_by(USUBJID) %>% mutate( APEREDT = lead(APERSDT) - 1 # one day before start of next period ) %>% # Tidy up ungroup() %>% select(-starts_with("EX"), -VISIT)
dataset_vignette(period_ref)
The workflow above populates the Period End Date APEREDT
for all periods
except the last one. The value of the last period could then be populated
with the End of Study Date (EOSDT
) from ADSL, to obtain:
adsl <- tribble( ~STUDYID, ~USUBJID, ~TRTSDT, ~TRTEDT, ~EOSDT, "xyz", "1", ymd("2022-01-02"), ymd("2022-08-04"), ymd("2022-09-10"), "xyz", "2", ymd("2023-10-20"), ymd("2024-05-21"), ymd("2024-06-30") ) period_ref <- period_ref %>% left_join(adsl, by = c("STUDYID", "USUBJID")) %>% mutate(APEREDT = case_when( APERIOD == "1" ~ APEREDT, APERIOD == "2" ~ EOSDT )) %>% select(-EOSDT, -TRTSDT, -TRTEDT)
dataset_vignette(period_ref)
If the treatment start and end dates are already included in ADSL, we can derive the phase variables directly in ADSL and create a phase reference dataset by employing create_period_dataset()
. Here is an example command to achieve this goal:
adsl1 <- adsl %>% mutate( PH1SDT = TRTSDT, PH1EDT = TRTEDT + 28, APHASE1 = "TREATMENT", PH2SDT = TRTEDT + 29, PH2EDT = EOSDT, APHASE2 = "FUP" ) phase_ref <- create_period_dataset( adsl1, new_vars = exprs(PHSDT = PHwSDT, PHEDT = PHwEDT, APHASE = APHASEw) )
dataset_vignette(phase_ref)
If a period/phase reference dataset is available, the ADSL variables for
periods, subperiods, or phases can be created from this dataset by
calling derive_vars_period()
.
For example the period reference dataset from the previous section can
be used to add the period variables (APxxSDT
, APxxEDT
)
to ADSL:
adsl2 <- derive_vars_period( adsl, dataset_ref = period_ref, new_vars = exprs(APxxSDT = APERSDT, APxxEDT = APEREDT) )
dataset_vignette( adsl2, display_vars = exprs(STUDYID, USUBJID, AP01SDT, AP01EDT, AP02SDT, AP02EDT) )
If a period/phase reference dataset is available, BDS and OCCDS variables for
periods, subperiods, or phases can be created by calling
derive_vars_joined()
.
For example the variables APHASEN
, PHSDT
, PHEDT
, APHASE
can be
derived from the phase reference dataset defined above.
adae <- tribble( ~STUDYID, ~USUBJID, ~ASTDT, "xyz", "1", "2022-01-31", "xyz", "1", "2022-05-02", "xyz", "1", "2022-09-03", "xyz", "1", "2022-09-09", "xyz", "2", "2023-12-25", "xyz", "2", "2024-06-19", ) %>% mutate(ASTDT = ymd(ASTDT)) adae1 <- adae %>% derive_vars_joined( dataset_add = phase_ref, by_vars = exprs(STUDYID, USUBJID), filter_join = PHSDT <= ASTDT & ASTDT <= PHEDT, join_type = "all" )
dataset_vignette(adae1)
TRTxxP
, TRTxxA
, TRTP
, TRTA
, ...)In studies with multiple periods the treatment can differ by period,
e.g. for a crossover trial - see the previous section
for an example design showcasing this. CDISC defines variables for planned and
actual treatments in ADSL (TRTxxP
, TRTxxA
, TRxxPGy
, TRxxAGy
,
...) and corresponding variables in BDS and OCCDS datasets (TRTP
,
TRTA
, TRTPGy
, TRTAGy
, ...). They can be derived in the same way
(and same step) as the period, subperiod, and phase variables.
If the treatment information is included in the period/phase reference
dataset, the treatment ADSL variables can be created by calling
derive_vars_period()
. This is showcased below using the period reference
dataset from previous sections.
adsl <- derive_vars_period( adsl, dataset_ref = period_ref, new_vars = exprs( APxxSDT = APERSDT, APxxEDT = APEREDT, TRTxxA = TRTA ) )
dataset_vignette( adsl, display_vars = exprs(STUDYID, USUBJID, TRT01A, TRT02A, AP01SDT, AP01EDT, AP02SDT, AP02EDT) )
If a period/phase reference dataset is available, BDS and OCCDS variables for
treatment can be created by calling derive_vars_joined()
.
For example the variables APERIOD
and TRTA
can be derived from the
period reference dataset defined above.
adae <- tribble( ~STUDYID, ~USUBJID, ~ASTDT, "xyz", "1", "2022-01-31", "xyz", "1", "2022-05-02", "xyz", "1", "2022-08-24", "xyz", "1", "2022-09-09", "xyz", "2", "2023-12-25", "xyz", "2", "2024-06-07", ) %>% mutate(ASTDT = ymd(ASTDT)) adae2 <- adae %>% derive_vars_joined( dataset_add = period_ref, by_vars = exprs(STUDYID, USUBJID), new_vars = exprs(APERIOD, TRTA), join_vars = exprs(APERSDT, APEREDT), join_type = "all", filter_join = APERSDT <= ASTDT & ASTDT <= APEREDT )
dataset_vignette(adae2)
If no period/phase reference dataset is available but period/phase variables are in
ADSL, then the former can again be created from ADSL by calling create_period_dataset()
, as was showcased here.
This time, when calling create_period_dataset()
we just need to make sure we include TRTA = TRTxxA
as part of the new_vars
argument to create the treatment variables as well.
period_ref1 <- adsl %>% create_period_dataset( new_vars = exprs(APERSDT = APxxSDT, APEREDT = APxxEDT, TRTA = TRTxxA) )
dataset_vignette(period_ref1)
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