knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) library(admiraldev)
This article describes creating an ADRS
ADaM with oncology endpoint parameters
based on iRECIST. It shows a similar way of deriving the endpoints presented in
Creating ADRS (Including Non-standard Endpoints). Most of the endpoints
are derived by calling admiral::derive_extreme_event()
.
This vignette follows the iRECIST guidelines, for more information user may visit https://recist.eortc.org/irecist/
Examples are currently presented and tested using ADSL
(ADaM) and
RS
(SDTM) inputs. However, other domains could be used. The RS
test data
contains iRECIST response for target, non-target and overall response. Further
pre-processing and considerations may be needed if iRECIST are only collected
after RECIST 1.1 progression and input data contains multiple response criteria.
The functions and workflow could similarly be used to create an intermediary
ADEVENT
ADaM.
Note: All examples assume CDISC SDTM and/or ADaM format as input unless otherwise specified.
To start, all data frames needed for the creation of ADRS
should be read into
the environment. This will be a company specific process. Some of the data
frames needed may be ADSL
, RS
and TU
. For this vignette we assume that
RS
provides the response values "iCR"
, "iPR"
, "iSD"
,
"NON-iCR/NON-iUPD"
, "iUPD"
, "iCPD"
, and "NE"
. All examples can be easily
modified to consider other response values (see Handling Different Input
Response Values).
For example purpose, the SDTM and ADaM datasets (based on CDISC Pilot
test data)---which are included in {pharmaversesdtm}
and {pharmaverseadam}
---are used.
library(admiral) library(admiralonco) library(dplyr) library(pharmaverseadam) library(pharmaversesdtm) library(lubridate) library(stringr) data("adsl") # iRECIST oncology sdtm data data("rs_onco_irecist") rs <- rs_onco_irecist rs <- convert_blanks_to_na(rs)
# select subjects from adsl such that there is one subject without RS data rs_subjects <- unique(rs$USUBJID) adsl_subjects <- unique(adsl$USUBJID) adsl <- filter( adsl, USUBJID %in% union(rs_subjects, setdiff(adsl_subjects, rs_subjects)[1]) )
At this step, it may be useful to join ADSL
to your RS
domain. Only
the ADSL
variables used for derivations are selected at this step. The
rest of the relevant ADSL
would be added later.
adsl_vars <- exprs(RANDDT) adrs <- derive_vars_merged( rs, dataset_add = adsl, new_vars = adsl_vars, by_vars = get_admiral_option("subject_keys") )
dataset_vignette( adrs, display_vars = exprs(USUBJID, RSTESTCD, RSDTC, VISIT, RANDDT), filter = RSTESTCD == "OVRLRESP" )
The first step involves company-specific pre-processing of records for
the required input to the downstream parameter functions. Note that this
could be needed multiple times (e.g. once for investigator and once for
Independent Review Facility (IRF)/Blinded Independent Central Review
(BICR) records). It could even involve merging input data from other
sources besides RS
, such as ADTR
.
This step would include any required selection/derivation of ADT
or applying
any necessary partial date imputations, updating AVAL
(e.g. this should be
ordered from best to worst response), and setting analysis flag ANL01FL
.
Common options for ANL01FL
would be to set null for invalid assessments or
those occurring after new anti-cancer therapy, or to only flag assessments on or
after date of first treatment/randomization, or rules to cover the case when a
patient has multiple observations per visit (e.g. by selecting the worst value).
Another consideration could be extra potential protocol-specific sources of
Progressive Disease such as radiological assessments, which could be
pre-processed here to create a PD record to feed downstream derivations.
For the derivation of the parameters it is expected that the subject
identifier variables (usually STUDYID
and USUBJID
) and ADT
are a
unique key. This can be achieved by deriving an analysis flag
(ANLzzFL
). See Derive ANL01FL
for an example.
The below shows an example of a possible company-specific implementation of this step.
In this case we use the overall response records from RS
from the
investigator as our starting point. The parameter details such as
PARAMCD
, PARAM
etc will always be company-specific, but an example
is shown below so that you can trace through how these records feed into
the other parameter derivations.
adrs <- adrs %>% filter(RSEVAL == "INVESTIGATOR" & RSTESTCD == "OVRLRESP") %>% mutate( PARAMCD = "OVR", PARAM = "Overall Response by Investigator", PARCAT1 = "Tumor Response", PARCAT2 = "Investigator", PARCAT3 = "iRECIST" )
dataset_vignette( adrs, display_vars = exprs(USUBJID, VISIT, RSTESTCD, RSEVAL, PARAMCD, PARAM, PARCAT1, PARCAT2, PARCAT3) )
ADT
, ADTF
, AVISIT
etcIf your data collection allows for partial dates, you could apply a
company-specific imputation rule at this stage when deriving ADT
. For
this example, here we impute missing day to last possible date.
adrs <- adrs %>% derive_vars_dt( dtc = RSDTC, new_vars_prefix = "A", highest_imputation = "D", date_imputation = "last" ) %>% mutate(AVISIT = VISIT)
dataset_vignette( adrs, display_vars = exprs(USUBJID, AVISIT, PARAMCD, PARAM, RSSTRESC, RSDTC, ADT, ADTF) )
AVALC
and AVAL
Here we populate AVALC
and create the numeric version as AVAL
(ordered from worst to best response, followed by NE
and MISSING). The AVAL
values are not considered in
the parameter derivations below, and so changing AVAL
here would not change
the result of those derivations. However, please note that the ordering of AVAL
will be used to determine ANL01FL
in the subsequent step, ensure that the appropriate
mode
is being set in the admiral::derive_var_extreme_flag()
.
iRECIST ordering will be used or if you'd like to provide your own company-specific ordering here you could do this as follows:
aval_resp_new <- function(arg) { case_when( arg == "NE" ~ 8, arg == "MISSING" ~ 7, arg == "iCR" ~ 6, arg == "iPR" ~ 5, arg == "iSD" ~ 4, arg == "NON-iCR/NON-iUPD" ~ 3, arg == "iUPD" ~ 2, arg == "iCPD" ~ 1, TRUE ~ NA_real_ ) } adrs <- adrs %>% mutate( AVALC = RSSTRESC, AVAL = aval_resp_new(AVALC) )
dataset_vignette( adrs, display_vars = exprs(USUBJID, AVISIT, PARAMCD, PARAM, RSSTRESC, AVALC, AVAL) )
ANL01FL
) {#anl01fl}When deriving ANL01FL
this is an opportunity to exclude any records
that should not contribute to any downstream parameter derivations. In
the below example this includes only selecting valid assessments and
those occurring on or after randomization date. If there is more than
one assessment at a date, the worst one is flagged.
adrs <- adrs %>% restrict_derivation( derivation = derive_var_extreme_flag, args = params( by_vars = c(get_admiral_option("subject_keys"), exprs(ADT)), order = exprs(AVAL, RSSEQ), new_var = ANL01FL, mode = "first" ), filter = !is.na(AVAL) & AVALC != "MISSING" & ADT >= RANDDT )
dataset_vignette( adrs, display_vars = exprs(USUBJID, AVISIT, PARAMCD, PARAM, AVALC, ADT, RANDDT, ANL01FL) )
Here is an alternative example where those records occurring after new
anti-cancer therapy are additionally excluded (where NACTDT
would be
pre-derived as first date of new anti-cancer therapy. See {admiralonco}
Creating and Using New Anti-Cancer Start Date for deriving this
variable).
adrs <- adrs %>% mutate( ANL01FL = case_when( !is.na(AVAL) & ADT >= RANDDT & ADT < NACTDT ~ "Y", TRUE ~ NA_character_ ) )
ANL02FL
) {#anl02fl}To restrict response data up to and including first reported progressive disease
ANL02FL
flag could be created by using {admiral}
function
admiral::derive_var_relative_flag()
.
adrs <- adrs %>% derive_var_relative_flag( by_vars = get_admiral_option("subject_keys"), order = exprs(ADT, RSSEQ), new_var = ANL02FL, condition = AVALC == "iCPD", mode = "first", selection = "before", inclusive = TRUE )
dataset_vignette( adrs, display_vars = exprs(USUBJID, AVISIT, PARAMCD, AVALC, ADT, ANL01FL, ANL02FL) )
For most parameter derivations the post-baseline overall response assessments up to and including first iCPD are considered.
ovr <- filter(adrs, PARAMCD == "OVR" & ANL01FL == "Y" & ANL02FL == "Y")
dataset_vignette( ovr, display_vars = exprs(USUBJID, AVISIT, AVALC, ADT, RANDDT) )
The building blocks for the events that contribute to deriving common endpoints like what constitutes a responder, or a Best Overall Response of complete response (CR), ... are predefined in admiralonco for RECIST 1.1 (see Pre-Defined Response Event Objects). New Response Event Objects are needed for iRECIST and any study-specific needs.
icpd_y <- event_joined( description = paste( "Define confirmed progressive disease (iCPD) as", "iUPD followed by iCPD with only other iUPD and NE responses in between" ), dataset_name = "ovr", join_vars = exprs(AVALC, ADT), join_type = "after", first_cond_upper = AVALC.join == "iCPD", condition = AVALC == "iUPD" & all(AVALC.join %in% c("iCPD", "iUPD", "NE")), set_values_to = exprs(AVALC = "Y") ) iupd_y <- event_joined( description = paste( "Define unconfirmed progressive disease (iUPD) as", "iUPD followed only by other iUPD or NE responses" ), dataset_name = "ovr", join_vars = exprs(AVALC, ADT), join_type = "all", condition = ADT <= ADT.join & AVALC == "iUPD" & all(AVALC.join %in% c("iUPD", "NE")), set_values_to = exprs(AVALC = "Y") ) no_data_n <- event( description = "Define no response for all patients in adsl (should be used as last event)", dataset_name = "adsl", condition = TRUE, set_values_to = exprs(AVALC = "N"), keep_source_vars = adsl_vars ) no_data_missing <- event( description = paste( "Define missing response (MISSING) for all patients in adsl (should be used", "as last event)" ), dataset_name = "adsl", condition = TRUE, set_values_to = exprs(AVALC = "MISSING"), keep_source_vars = adsl_vars )
If RS
contains other response values than the iRECIST responses, the event()
and event_joined()
can be adjusted to cover this scenario. For example, if
RECIST responses ("CR"
, "PR"
, "SD"
, ...) are collected up to first PD and
iRECIST responses ("iCR"
, "iPR"
, "iSD"
, ...) thereafter, the event()
object defining unconfirmed response can be adjusted in the following way.
irsp_y <- event( description = "Define CR, iCR, PR, or iPR as (unconfirmed) response", dataset_name = "ovr", condition = AVALC %in% c("CR", "iCR", "PR", "iPR"), set_values_to = exprs(AVALC = "Y") )
Now that we have the input records prepared above with any
company-specific requirements, we can start to derive new parameter
records. For the parameter derivations, all values except those
overwritten by set_values_to
argument are kept from the earliest
occurring input record fulfilling the required criteria.
When an iCPD
occurs, the date of progression would be the first occurrence of iUPD
in that block.
For example, when we have values of iUPD
, iUPD
, and iCPD
, the iRECIST PD
date would
be the first occurrence of iUPD
. In cases where we have SD
, SD
, iUPD
, PR
, PR
, iUPD
, and iCPD
,
the iRECIST PD
date would be the second occurrence of iUPD
.
The function admiral::derive_extreme_records()
, in conjunction with the event icpd_y
,
could be used to find the date of the first iUPD
.
For the Unconfirmed Progressive Disease Parameter, it can be of interest to look at iUPD
that has
never been confirmed and no subsequent iSD
, iPR
or iCR
has been observed.
adrs <- adrs %>% derive_extreme_event( by_vars = get_admiral_option("subject_keys"), order = exprs(ADT), mode = "first", source_datasets = list( ovr = ovr, adsl = adsl ), events = list(icpd_y, no_data_n), set_values_to = exprs( PARAMCD = "ICPD", PARAM = "iRECIST Confirmation of Disease Progression by Investigator", PARCAT1 = "Tumor Response", PARCAT2 = "Investigator", PARCAT3 = "iRECIST", AVAL = yn_to_numeric(AVALC), ANL01FL = "Y" ) ) ovr_orig <- ovr ovr <- ovr %>% group_by(!!!get_admiral_option("subject_keys")) %>% filter(ADT >= max_cond(var = ADT, cond = AVALC == "iUPD")) %>% ungroup(!!!get_admiral_option("subject_keys")) adrs <- adrs %>% derive_extreme_event( by_vars = get_admiral_option("subject_keys"), order = exprs(ADT), mode = "first", source_datasets = list( ovr = ovr, adsl = adsl ), events = list(iupd_y, no_data_n), set_values_to = exprs( PARAMCD = "IUPD", PARAM = "iRECIST Unconfirmed Disease Progression by Investigator", PARCAT1 = "Tumor Response", PARCAT2 = "Investigator", PARCAT3 = "iRECIST", AVAL = yn_to_numeric(AVALC), ANL01FL = "Y" ) ) ovr <- ovr_orig
dataset_vignette( adrs, display_vars = exprs(USUBJID, AVISIT, PARAMCD, PARAM, AVALC, ADT, ANL01FL), filter = PARAMCD %in% c("ICPD", "IUPD") )
For progressive disease and response shown in steps here and below, in our
examples we show these as ADRS
parameters, but they could equally be
achieved via ADSL
dates or ADEVENT
parameters.If you prefer to store
as an ADSL date, then the function admiral::derive_var_extreme_dt()
could be used to find the date of first iCPD
as a variable, rather than
as a new parameter record.
The function admiral::derive_extreme_event()
can then be used to find the date
of first response. In the below example, the response condition has been defined
as iCR
or iPR
via the event irsp_y
that was created for iRECIST.
irsp_y <- event( description = "Define iCR or iPR as (unconfirmed) response", dataset_name = "ovr", condition = AVALC %in% c("iCR", "iPR"), set_values_to = exprs(AVALC = "Y") ) adrs <- adrs %>% derive_extreme_event( by_vars = get_admiral_option("subject_keys"), order = exprs(ADT), mode = "first", events = list(irsp_y, no_data_n), source_datasets = list( ovr = ovr, adsl = adsl ), set_values_to = exprs( PARAMCD = "IRSP", PARAM = "iRECIST Response by Investigator (confirmation not required)", PARCAT1 = "Tumor Response", PARCAT2 = "Investigator", PARCAT3 = "iRECIST", AVAL = yn_to_numeric(AVALC), ANL01FL = "Y" ) )
dataset_vignette( adrs, display_vars = exprs(USUBJID, AVISIT, PARAMCD, PARAM, AVALC, ADT, ANL01FL), filter = PARAMCD == "IRSP" )
The function admiral::derive_extreme_event()
can then be used to derive the
clinical benefit parameter, which we define as a patient having had a response
or a sustained period of time before first iUPD
. This could also be known as
disease control. In this example the "sustained period" has been defined as 42
days after randomization date via the created icb_y
event.
icb_y <- event( description = paste( "Define iCR, iPR, iSD, or NON-iCR/NON-iUPD occuring at least 42 days after", "randomization as clinical benefit" ), dataset_name = "ovr", condition = AVALC %in% c("iCR", "iPR", "iSD", "NON-iCR/NON-iUPD") & ADT >= RANDDT + 42, set_values_to = exprs(AVALC = "Y") )
Please note that the result AVALC = "Y"
is defined by the first two events
specified for events
. For subjects with observations fulfilling both events
the one with the earlier date should be selected (and not the first one in the
list). Thus ignore_event_order
and tmp_event_nr_var
are not specified.
adrs <- adrs %>% derive_extreme_event( by_vars = get_admiral_option("subject_keys"), order = exprs(desc(AVALC), ADT), mode = "first", events = list(irsp_y, icb_y, no_data_n), source_datasets = list( ovr = ovr, adsl = adsl ), set_values_to = exprs( PARAMCD = "ICB", PARAM = "iRECIST Clinical Benefit by Investigator (confirmation for response not required)", PARCAT1 = "Tumor Response", PARCAT2 = "Investigator", PARCAT3 = "iRECIST", AVAL = yn_to_numeric(AVALC), ANL01FL = "Y" ), check_type = "none" )
dataset_vignette( adrs, display_vars = exprs(USUBJID, AVISIT, PARAMCD, PARAM, AVALC, ADT, RANDDT, ANL01FL), filter = PARAMCD == "ICB" )
The function admiral::derive_extreme_event()
can be used to derive the best
overall response (without confirmation required) parameter. Similar to the above
function you can optionally decide what period would you consider an iSD
or
NON-iCR/NON-iUPD
as being eligible from. In this example, 42 days after
randomization date has been used again.
Please note that the order of the events specified for events
is important.
For example, a subject with iPR
, iPR
, iCR
qualifies for both ibor_icr
and
ibor_ipr
. As ibor_icr
is listed before ibor_ipr
, iCR
is selected as best overall
response for this subject.
ibor_icr <- event( description = "Define complete response (iCR) for best overall response (iBOR)", dataset_name = "ovr", condition = AVALC == "iCR", set_values_to = exprs(AVALC = "iCR") ) ibor_ipr <- event( description = "Define partial response (iPR) for best overall response (iBOR)", dataset_name = "ovr", condition = AVALC == "iPR", set_values_to = exprs(AVALC = "iPR") ) ibor_isd <- event( description = paste( "Define stable disease (iSD) for best overall response (iBOR) as iCR, iPR, or iSD", "occurring at least 42 days after randomization" ), dataset_name = "ovr", condition = AVALC %in% c("iCR", "iPR", "iSD") & ADT >= RANDDT + 42, set_values_to = exprs(AVALC = "iSD") ) ibor_non_icriupd <- event( description = paste( "Define NON-iCR/NON-iUPD for best overall response (iBOR) as NON-iCR/NON-iUPD", "occuring at least 42 days after randomization" ), dataset_name = "ovr", condition = AVALC == "NON-iCR/NON-iUPD" & ADT >= RANDDT + 42, set_values_to = exprs(AVALC = "NON-iCR/NON-iUPD") ) ibor_icpd <- event_joined( description = paste( "Define confirmed progressive disease (iCPD) for best overall response (iBOR) as", "iUPD followed by iCPD with only other iUPD and NE responses in between" ), dataset_name = "ovr", join_vars = exprs(AVALC, ADT), join_type = "after", first_cond_upper = AVALC.join == "iCPD", condition = AVALC == "iUPD" & all(AVALC.join %in% c("iCPD", "iUPD", "NE")), set_values_to = exprs(AVALC = "iCPD") ) ibor_iupd <- event( description = "Define unconfirmed progressive disease (iUPD) for best overall response (iBOR)", dataset_name = "ovr", condition = AVALC == "iUPD", set_values_to = exprs(AVALC = "iUPD") ) ibor_ne <- event( description = paste( "Define not evaluable (NE) for best overall response (iBOR) as iCR, iPR, iSD,", "NON-iCR/NON-iUPD, or NE (should be specified after ibor_isd and ibor_non_icriupd)" ), dataset_name = "ovr", condition = AVALC %in% c("iCR", "iPR", "iSD", "NON-iCR/NON-iUPD", "NE"), set_values_to = exprs(AVALC = "NE") ) adrs <- adrs %>% derive_extreme_event( by_vars = get_admiral_option("subject_keys"), tmp_event_nr_var = event_nr, order = exprs(event_nr, ADT), mode = "first", source_datasets = list( ovr = ovr, adsl = adsl ), events = list(ibor_icr, ibor_ipr, ibor_isd, ibor_non_icriupd, ibor_icpd, ibor_iupd, ibor_ne, no_data_missing), set_values_to = exprs( PARAMCD = "IBOR", PARAM = "iRECIST Best Overall Response by Investigator (confirmation not required)", PARCAT1 = "Tumor Response", PARCAT2 = "Investigator", PARCAT3 = "iRECIST", AVAL = aval_resp_new(AVALC), ANL01FL = "Y" ) )
dataset_vignette( adrs, display_vars = exprs(USUBJID, AVISIT, PARAMCD, PARAM, AVALC, ADT, RANDDT, ANL01FL), filter = PARAMCD == "IBOR" )
Any of the above response parameters can be repeated for "confirmed" responses
only. For these the function admiral::derive_extreme_event()
can be used with
different events. Some of the other functions from above can then be re-used
passing in these confirmed response records. See the examples below of derived
parameters requiring confirmation. The assessment and the confirmatory
assessment here need to occur at least 28 days apart (without any +1 applied to
this calculation of days between visits), using the icrsp_y_cr
,
icrsp_y_ipr
, icbor_icr
, and icbor_ipr
event. Here the confirmation period
and the keep_source_vars
argument is updated, as well as the first_cond_upper
and
condition
for the iRECIST values.
confirmation_period <- 28 icrsp_y_icr <- event_joined( description = paste( "Define confirmed response as iCR followed by iCR at least", confirmation_period, "days later and at most one NE in between" ), dataset_name = "ovr", join_vars = exprs(AVALC, ADT), join_type = "after", order = exprs(ADT), first_cond_upper = AVALC.join == "iCR" & ADT.join >= ADT + days(confirmation_period), condition = AVALC == "iCR" & all(AVALC.join %in% c("iCR", "NE")) & count_vals(var = AVALC.join, val = "NE") <= 1, set_values_to = exprs(AVALC = "Y") ) icrsp_y_ipr <- event_joined( description = paste( "Define confirmed response as iPR followed by iCR or iPR at least", confirmation_period, "days later at most one NE in between, and no iPR after iCR" ), dataset_name = "ovr", join_vars = exprs(AVALC, ADT), join_type = "after", order = exprs(ADT), first_cond_upper = AVALC.join %in% c("iCR", "iPR") & ADT.join >= ADT + days(confirmation_period), condition = AVALC == "iPR" & all(AVALC.join %in% c("iCR", "iPR", "NE")) & count_vals(var = AVALC.join, val = "NE") <= 1 & ( min_cond( var = ADT.join, cond = AVALC.join == "iCR" ) > max_cond(var = ADT.join, cond = AVALC.join == "iPR") | count_vals(var = AVALC.join, val = "iCR") == 0 | count_vals(var = AVALC.join, val = "iPR") == 0 ), set_values_to = exprs(AVALC = "Y") ) icbor_icr <- event_joined( description = paste( "Define complete response (iCR) for confirmed best overall response (iCBOR) as", "iCR followed by iCR at least", confirmation_period, "days later and at most one NE in between" ), dataset_name = "ovr", join_vars = exprs(AVALC, ADT), join_type = "after", first_cond_upper = AVALC.join == "iCR" & ADT.join >= ADT + confirmation_period, condition = AVALC == "iCR" & all(AVALC.join %in% c("iCR", "NE")) & count_vals(var = AVALC.join, val = "NE") <= 1, set_values_to = exprs(AVALC = "iCR") ) icbor_ipr <- event_joined( description = paste( "Define partial response (iPR) for confirmed best overall response (iCBOR) as", "iPR followed by iCR or iPR at least", confirmation_period, "days later, at most one NE in between and no iPR after iCR" ), dataset_name = "ovr", join_vars = exprs(AVALC, ADT), join_type = "after", first_cond_upper = AVALC.join %in% c("iCR", "iPR") & ADT.join >= ADT + confirmation_period, condition = AVALC == "iPR" & all(AVALC.join %in% c("iCR", "iPR", "NE")) & count_vals(var = AVALC.join, val = "NE") <= 1 & ( min_cond( var = ADT.join, cond = AVALC.join == "iCR" ) > max_cond(var = ADT.join, cond = AVALC.join == "iPR") | count_vals(var = AVALC.join, val = "iCR") == 0 | count_vals(var = AVALC.join, val = "iPR") == 0 ), set_values_to = exprs(AVALC = "iPR") )
Please note that the result AVALC = "Y"
for confirmed clinical benefit is
defined by the first two events specified for events
. For subjects with
observations fulfilling both events the one with the earlier date should be
selected (and not the first one in the list).
adrs <- adrs %>% derive_extreme_event( by_vars = get_admiral_option("subject_keys"), order = exprs(desc(AVALC), ADT), mode = "first", source_datasets = list( ovr = ovr, adsl = adsl ), events = list(icrsp_y_icr, icrsp_y_ipr, no_data_n), set_values_to = exprs( PARAMCD = "ICRSP", PARAM = "iRECIST Confirmed Response by Investigator", PARCAT1 = "Tumor Response", PARCAT2 = "Investigator", PARCAT3 = "iRECIST", AVAL = yn_to_numeric(AVALC), ANL01FL = "Y" ) ) adrs <- adrs %>% derive_extreme_event( by_vars = get_admiral_option("subject_keys"), order = exprs(desc(AVALC), ADT), mode = "first", events = list(icrsp_y_icr, icrsp_y_ipr, icb_y, no_data_n), source_datasets = list( ovr = ovr, adsl = adsl ), set_values_to = exprs( PARAMCD = "ICCB", PARAM = "iRECIST Confirmed Clinical Benefit by Investigator", PARCAT1 = "Tumor Response", PARCAT2 = "Investigator", PARCAT3 = "iRECIST", AVAL = yn_to_numeric(AVALC), ANL01FL = "Y" ), check_type = "none" ) adrs <- adrs %>% derive_extreme_event( by_vars = get_admiral_option("subject_keys"), tmp_event_nr_var = event_nr, order = exprs(event_nr, ADT), mode = "first", events = list(icbor_icr, icbor_ipr, ibor_isd, ibor_non_icriupd, ibor_icpd, ibor_iupd, ibor_ne, no_data_missing), source_datasets = list( ovr = ovr, adsl = adsl ), set_values_to = exprs( PARAMCD = "ICBOR", PARAM = "iRECIST Best Confirmed Overall Response by Investigator", PARCAT1 = "Tumor Response", PARCAT2 = "Investigator", PARCAT3 = "iRECIST", AVAL = aval_resp(AVALC), ANL01FL = "Y" ) )
dataset_vignette( adrs, display_vars = exprs(USUBJID, AVISIT, PARAMCD, PARAM, AVALC, ADT, RANDDT, ANL01FL), filter = PARAMCD %in% c("ICRSP", "ICCB", "ICBOR") )
The following parameters may also be added:
IBCP - iRECIST Best Overall Response of CR/PR by Investigator (confirmation not required)
ICBCP - iRECIST Best Confirmed Overall Response of CR/PR by Investigator
IOVRB - iRECIST Overall Response by BICR
ILSTA - iRECIST Last Disease Assessment by Investigator
IMDIS - iRECIST Measurable Disease at Baseline by Investigator
For examples on the additional endpoints, please see Creating ADRS (Including Non-standard Endpoints).
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