This article describes creating a BDS finding ADaM. Examples are currently presented and tested in the context of ADVS. However, the examples could be applied to other BDS Finding ADaMs such as ADEG, ADLB, etc. where a single result is captured in an SDTM Finding domain on a single date and/or time.
Note: All examples assume CDISC SDTM and/or ADaM format as input unless otherwise specified.
ADT
, ADTM
, ADY
, ADTF
, ATMF
)PARAMCD
, PARAM
, PARAMN
, PARCAT1
AVAL
, AVALC
)BSA
, BMI
, or MAP
for ADVS
)APHASE
, AVISIT
, APERIOD
)ONTRTFL
)ANRIND
)BASETYPE
, ABLFL
, BASE
, BASEC
, BNRIND
)CHG
, PCHG
)SHIFT1
)R2BASE
)ANL01FL
)TRTA
, TRTP
)ASEQ
AVALCATy
)CRITy
, CRITyFL
, CRITyFN
)To start, all data frames needed for the creation of ADVS
should be read into the environment. This will be a company specific process. Some of the data frames needed may be VS
and ADSL
.
For example purpose, the CDISC Pilot SDTM and ADaM datasets—which are included in pharmaversesdtm—are used.
library(admiral)
library(dplyr, warn.conflicts = FALSE)
library(pharmaversesdtm)
library(lubridate)
library(stringr)
library(tibble)
vs <- pharmaversesdtm::vs
adsl <- admiral::admiral_adsl
vs <- convert_blanks_to_na(vs)
At this step, it may be useful to join ADSL
to your VS
domain. Only the ADSL
variables used for derivations are selected at this step. The rest of the relevant ADSL
variables would be added later.
adsl_vars <- exprs(TRTSDT, TRTEDT, TRT01A, TRT01P)
advs <- derive_vars_merged(
vs,
dataset_add = adsl,
new_vars = adsl_vars,
by_vars = exprs(STUDYID, USUBJID)
)
ADT
, ADTM
, ADY
, ADTF
, ATMF
)
The function derive_vars_dt()
can be used to derive ADT
. This function allows the user to impute the date as well.
Example calls:
advs <- derive_vars_dt(advs, new_vars_prefix = "A", dtc = VSDTC)
If imputation is needed and the date is to be imputed to the first of the month, the call would be:
advs <- derive_vars_dt(
advs,
new_vars_prefix = "A",
dtc = VSDTC,
highest_imputation = "M"
)
Similarly, ADTM
may be created using the function derive_vars_dtm()
. Imputation may be done on both the date and time components of ADTM
.
# CDISC Pilot data does not contain times and the output of the derivation
# ADTM is not presented.
advs <- derive_vars_dtm(
advs,
new_vars_prefix = "A",
dtc = VSDTC,
highest_imputation = "M"
)
By default, the variable ADTF
for derive_vars_dt()
or ADTF
and ATMF
for derive_vars_dtm()
will be created and populated with the controlled terminology outlined in the ADaM IG for date imputations.
See also Date and Time Imputation.
Once ADT
is derived, the function derive_vars_dy()
can be used to derive ADY
. This example assumes both ADT
and TRTSDT
exist on the data frame.
advs <-
derive_vars_dy(advs, reference_date = TRTSDT, source_vars = exprs(ADT))
PARAMCD
, PARAM
, PARAMN
, PARCAT1
To assign parameter level values such as PARAMCD
, PARAM
, PARAMN
, PARCAT1
, etc., a lookup can be created to join to the source data.
For example, when creating ADVS
, a lookup based on the SDTM --TESTCD
value may be created:
VSTESTCD |
PARAMCD |
PARAM |
PARAMN |
PARCAT1 |
PARCAT1N |
---|---|---|---|---|---|
HEIGHT | HEIGHT | Height (cm) | 1 | Subject Characteristic | 1 |
WEIGHT | WEIGHT | Weight (kg) | 2 | Subject Characteristic | 1 |
DIABP | DIABP | Diastolic Blood Pressure (mmHg) | 3 | Vital Sign | 2 |
MAP | MAP | Mean Arterial Pressure | 4 | Vital Sign | 2 |
PULSE | PULSE | Pulse Rate (beats/min) | 5 | Vital Sign | 2 |
SYSBP | SYSBP | Systolic Blood Pressure (mmHg) | 6 | Vital Sign | 2 |
TEMP | TEMP | Temperature (C) | 7 | Vital Sign | 2 |
This lookup may now be joined to the source data:
At this stage, only PARAMCD
is required to perform the derivations. Additional derived parameters may be added, so only PARAMCD
is joined to the datasets at this point. All other variables related to PARAMCD
(e.g. PARAM
, PARCAT1
, …) will be added when all PARAMCD
are derived.
advs <- derive_vars_merged_lookup(
advs,
dataset_add = param_lookup,
new_vars = exprs(PARAMCD),
by_vars = exprs(VSTESTCD)
)
#> All `VSTESTCD` are mapped.
Please note, it may be necessary to include other variables in the join. For example, perhaps the PARAMCD
is based on VSTESTCD
and VSPOS
, it may be necessary to expand this lookup or create a separate look up for PARAMCD
.
If more than one lookup table, e.g., company parameter mappings and project parameter mappings, are available, consolidate_metadata()
can be used to consolidate these into a single lookup table.
Additionally note that each parameter is mapped to only one PARCAT1
variable. This is described in section 3.3.4.1 of the ADaM Implementation Guide, version 1.3: “Any given PARAM
may be associated with at-most one level of PARCATy
(e.g., one level of PARCAT1
and one level of PARCAT2
)”.
AVAL
, AVALC
)
The mapping of AVAL
and AVALC
is left to the ADaM programmer. An example mapping may be:
advs <- mutate(
advs,
AVAL = VSSTRESN
)
In this example, as is often the case for ADVS, all AVAL
values are numeric without any corresponding non-redundant text value for AVALC
. Per recommendation in ADaMIG v1.3 we do not map AVALC
.
BSA
, BMI
or MAP
for ADVS
)
Optionally derive new parameters creating PARAMCD
and AVAL
. Note that only variables specified in the by_vars
argument will be populated in the newly created records. This is relevant to the functions derive_param_map
, derive_param_bsa
, derive_param_bmi
, and derive_param_qtc
.
Below is an example of creating Mean Arterial Pressure
for ADVS
, see also Example 3 in section below Derive New Rows for alternative way of creating new parameters.
advs <- derive_param_map(
advs,
by_vars = exprs(STUDYID, USUBJID, !!!adsl_vars, VISIT, VISITNUM, ADT, ADY, VSTPT, VSTPTNUM),
set_values_to = exprs(PARAMCD = "MAP"),
get_unit_expr = VSSTRESU,
filter = VSSTAT != "NOT DONE" | is.na(VSSTAT)
)
Likewise, function call below, to create parameter Body Surface Area
(BSA) and Body Mass Index
(BMI) for ADVS
domain. Note that if height is collected only once use constant_by_vars
to specify the subject-level variable to merge on. Otherwise BSA and BMI are only calculated for visits where both are collected.
advs <- derive_param_bsa(
advs,
by_vars = exprs(STUDYID, USUBJID, !!!adsl_vars, VISIT, VISITNUM, ADT, ADY, VSTPT, VSTPTNUM),
method = "Mosteller",
set_values_to = exprs(PARAMCD = "BSA"),
get_unit_expr = VSSTRESU,
filter = VSSTAT != "NOT DONE" | is.na(VSSTAT),
constant_by_vars = exprs(USUBJID)
)
advs <- derive_param_bmi(
advs,
by_vars = exprs(STUDYID, USUBJID, !!!adsl_vars, VISIT, VISITNUM, ADT, ADY, VSTPT, VSTPTNUM),
set_values_to = exprs(PARAMCD = "BMI"),
get_unit_expr = VSSTRESU,
filter = VSSTAT != "NOT DONE" | is.na(VSSTAT),
constant_by_vars = exprs(USUBJID)
)
Similarly, for ADEG
, the parameters QTCBF
QTCBS
and QTCL
can be created with a function call. See example below for PARAMCD
= QTCF
.
adeg <- tibble::tribble(
~USUBJID, ~EGSTRESU, ~PARAMCD, ~AVAL, ~VISIT,
"P01", "msec", "QT", 350, "CYCLE 1 DAY 1",
"P01", "msec", "QT", 370, "CYCLE 2 DAY 1",
"P01", "msec", "RR", 842, "CYCLE 1 DAY 1",
"P01", "msec", "RR", 710, "CYCLE 2 DAY 1"
)
adeg <- derive_param_qtc(
adeg,
by_vars = exprs(USUBJID, VISIT),
method = "Fridericia",
set_values_to = exprs(PARAMCD = "QTCFR"),
get_unit_expr = EGSTRESU
)
Similarly, for ADLB
, the function derive_param_wbc_abs()
can be used to create new parameter for lab differentials converted to absolute values. See example below:
adlb <- tibble::tribble(
~USUBJID, ~PARAMCD, ~AVAL, ~PARAM, ~VISIT,
"P01", "WBC", 33, "Leukocyte Count (10^9/L)", "CYCLE 1 DAY 1",
"P01", "WBC", 38, "Leukocyte Count (10^9/L)", "CYCLE 2 DAY 1",
"P01", "LYMLE", 0.90, "Lymphocytes (fraction of 1)", "CYCLE 1 DAY 1",
"P01", "LYMLE", 0.70, "Lymphocytes (fraction of 1)", "CYCLE 2 DAY 1"
)
derive_param_wbc_abs(
dataset = adlb,
by_vars = exprs(USUBJID, VISIT),
set_values_to = exprs(
PARAMCD = "LYMPH",
PARAM = "Lymphocytes Abs (10^9/L)",
DTYPE = "CALCULATION"
),
get_unit_expr = extract_unit(PARAM),
wbc_code = "WBC",
diff_code = "LYMLE",
diff_type = "fraction"
)
When all PARAMCD
have been derived and added to the dataset, the other information from the look-up table (PARAM
, PARAMCAT1
,…) should be added.
# Derive PARAM and PARAMN
advs <- derive_vars_merged(
advs,
dataset_add = select(param_lookup, -VSTESTCD),
by_vars = exprs(PARAMCD)
)
APHASE
, AVISIT
, APERIOD
)
Categorical timing variables are protocol and analysis dependent. Below is a simple example.
advs <- advs %>%
mutate(
AVISIT = case_when(
str_detect(VISIT, "SCREEN") ~ NA_character_,
str_detect(VISIT, "UNSCHED") ~ NA_character_,
str_detect(VISIT, "RETRIEVAL") ~ NA_character_,
str_detect(VISIT, "AMBUL") ~ NA_character_,
!is.na(VISIT) ~ str_to_title(VISIT)
),
AVISITN = as.numeric(case_when(
VISIT == "BASELINE" ~ "0",
str_detect(VISIT, "WEEK") ~ str_trim(str_replace(VISIT, "WEEK", ""))
)),
ATPT = VSTPT,
ATPTN = VSTPTNUM
)
count(advs, VISITNUM, VISIT, AVISITN, AVISIT)
#> # A tibble: 15 × 5
#> VISITNUM VISIT AVISITN AVISIT n
#> <dbl> <chr> <dbl> <chr> <int>
#> 1 1 SCREENING 1 NA NA 102
#> 2 2 SCREENING 2 NA NA 78
#> 3 3 BASELINE 0 Baseline 96
#> 4 3.5 AMBUL ECG PLACEMENT NA NA 65
#> 5 4 WEEK 2 2 Week 2 96
#> 6 5 WEEK 4 4 Week 4 80
#> 7 6 AMBUL ECG REMOVAL NA NA 52
#> 8 7 WEEK 6 6 Week 6 48
#> 9 8 WEEK 8 8 Week 8 48
#> 10 9 WEEK 12 12 Week 12 48
#> 11 10 WEEK 16 16 Week 16 48
#> 12 11 WEEK 20 20 Week 20 32
#> 13 12 WEEK 24 24 Week 24 32
#> 14 13 WEEK 26 26 Week 26 32
#> 15 201 RETRIEVAL NA NA 26
count(advs, VSTPTNUM, VSTPT, ATPTN, ATPT)
#> # A tibble: 4 × 5
#> VSTPTNUM VSTPT ATPTN ATPT n
#> <dbl> <chr> <dbl> <chr> <int>
#> 1 815 AFTER LYING DOWN FOR 5 MINUTES 815 AFTER LYING DOWN FOR 5 MI… 232
#> 2 816 AFTER STANDING FOR 1 MINUTE 816 AFTER STANDING FOR 1 MINU… 232
#> 3 817 AFTER STANDING FOR 3 MINUTES 817 AFTER STANDING FOR 3 MINU… 232
#> 4 NA NA NA NA 187
For assigning visits based on time windows and deriving periods, subperiods, and phase variables see the “Visit and Period Variables” vignette.
ONTRTFL
)
In some analyses, it may be necessary to flag an observation as on-treatment. The admiral function derive_var_ontrtfl()
can be used.
For example, if on-treatment is defined as any observation between treatment start and treatment end, the flag may be derived as:
advs <- derive_var_ontrtfl(
advs,
start_date = ADT,
ref_start_date = TRTSDT,
ref_end_date = TRTEDT
)
This function returns the original data frame with the column ONTRTFL
added. Additionally, this function does have functionality to handle a window on the ref_end_date
. For example, if on-treatment is defined as between treatment start and treatment end plus 60 days, the call would be:
advs <- derive_var_ontrtfl(
advs,
start_date = ADT,
ref_start_date = TRTSDT,
ref_end_date = TRTEDT,
ref_end_window = 60
)
In addition, the function does allow you to filter out pre-treatment observations that occurred on the start date. For example, if observations with VSTPT == PRE
should not be considered on-treatment when the observation date falls between the treatment start and end date, the user may specify this using the filter_pre_timepoint
parameter:
advs <- derive_var_ontrtfl(
advs,
start_date = ADT,
ref_start_date = TRTSDT,
ref_end_date = TRTEDT,
filter_pre_timepoint = ATPT == "AFTER LYING DOWN FOR 5 MINUTES"
)
Lastly, the function does allow you to create any on-treatment flag based on the analysis needs. For example, if variable ONTR01FL
is needed, showing the on-treatment flag during Period 01, you need to set new var = ONTR01FL
. In addition, for Period 01 Start Date and Period 01 End Date, you need ref_start_date = AP01SDT
and ref_end_date = AP01EDT
.
advs <- derive_var_ontrtfl(
advs,
new_var = ONTR01FL,
start_date = ASTDT,
end_date = AENDT,
ref_start_date = AP01SDT,
ref_end_date = AP01EDT,
span_period = TRUE
)
ANRIND
)
The admiral function derive_var_anrind()
may be used to derive the reference range indicator ANRIND
.
This function requires the reference range boundaries to exist on the data frame (ANRLO
, ANRHI
) and also accommodates the additional boundaries A1LO
and A1HI
.
The function is called as:
advs <- derive_var_anrind(advs)
BASETYPE
, ABLFL
, BASE
, BNRIND
)
The BASETYPE
should be derived using the function derive_basetype_records()
. The parameter basetypes
of this function requires a named list of expression detailing how the BASETYPE
should be assigned. Note, if a record falls into multiple expressions within the basetypes expression, a row will be produced for each BASETYPE
.
advs <- derive_basetype_records(
dataset = advs,
basetypes = exprs(
"LAST: AFTER LYING DOWN FOR 5 MINUTES" = ATPTN == 815,
"LAST: AFTER STANDING FOR 1 MINUTE" = ATPTN == 816,
"LAST: AFTER STANDING FOR 3 MINUTES" = ATPTN == 817,
"LAST" = is.na(ATPTN)
)
)
count(advs, ATPT, ATPTN, BASETYPE)
#> # A tibble: 4 × 4
#> ATPT ATPTN BASETYPE n
#> <chr> <dbl> <chr> <int>
#> 1 AFTER LYING DOWN FOR 5 MINUTES 815 LAST: AFTER LYING DOWN FOR 5 MINUT… 232
#> 2 AFTER STANDING FOR 1 MINUTE 816 LAST: AFTER STANDING FOR 1 MINUTE 232
#> 3 AFTER STANDING FOR 3 MINUTES 817 LAST: AFTER STANDING FOR 3 MINUTES 232
#> 4 NA NA LAST 187
It is important to derive BASETYPE
first so that it can be utilized in subsequent derivations. This will be important if the data frame contains multiple values for BASETYPE
.
Next, the analysis baseline flag ABLFL
can be derived using the admiral function derive_var_extreme_flag()
. For example, if baseline is defined as the last non-missing AVAL
prior or on TRTSDT
, the function call for ABLFL
would be:
advs <- restrict_derivation(
advs,
derivation = derive_var_extreme_flag,
args = params(
by_vars = exprs(STUDYID, USUBJID, BASETYPE, PARAMCD),
order = exprs(ADT, ATPTN, VISITNUM),
new_var = ABLFL,
mode = "last"
),
filter = (!is.na(AVAL) & ADT <= TRTSDT & !is.na(BASETYPE))
)
Note: Additional examples of the derive_var_extreme_flag()
function can be found above.
Lastly, the BASE
, and BNRIND
columns can be derived using the admiral function derive_var_base()
. Example calls are:
advs <- derive_var_base(
advs,
by_vars = exprs(STUDYID, USUBJID, PARAMCD, BASETYPE),
source_var = AVAL,
new_var = BASE
)
advs <- derive_var_base(
advs,
by_vars = exprs(STUDYID, USUBJID, PARAMCD, BASETYPE),
source_var = ANRIND,
new_var = BNRIND
)
CHG
, PCHG
)
Change and percent change from baseline can be derived using the admiral functions derive_var_chg()
and derive_var_pchg()
. These functions expect AVAL
and BASE
to exist in the data frame. The CHG
is simply AVAL - BASE
and the PCHG
is (AVAL - BASE) / absolute value (BASE) * 100
. Examples calls are:
advs <- derive_var_chg(advs)
advs <- derive_var_pchg(advs)
If the variables should not be derived for all records, e.g., for post-baseline records only, restrict_derivation()
can be used.
SHIFT1
)
Shift variables can be derived using the admiral function derive_var_shift()
. This function derives a character shift variable concatenating shift in values based on a user-defined pairing, e.g., shift from baseline reference range BNRIND
to analysis reference range ANRIND
. Examples calls are:
advs <- derive_var_shift(advs,
new_var = SHIFT1,
from_var = BNRIND,
to_var = ANRIND
)
If the variables should not be derived for all records, e.g., for post-baseline records only, restrict_derivation()
can be used.
R2BASE
)
Analysis ratio variables can be derived using the admiral function derive_var_analysis_ratio()
. This function derives a ratio variable based on user-specified pair. For example, Ratio to Baseline is calculated by AVAL / BASE
and the function appends a new variable R2BASE
to the dataset. This function can also derive R2AyHI
and R2AyLO
values. Examples calls are:
advs <- derive_var_analysis_ratio(advs,
numer_var = AVAL,
denom_var = BASE
)
advs <- derive_var_analysis_ratio(advs,
numer_var = AVAL,
denom_var = ANRLO,
new_var = R01ANRLO
)
If the variables should not be derived for all records, e.g., for post-baseline records only, restrict_derivation()
can be used.
ANL01FL
)
In most finding ADaMs, an analysis flag is derived to identify the appropriate observation(s) to use for a particular analysis when a subject has multiple observations within a particular timing period.
In this situation, an analysis flag (e.g. ANLxxFL
) may be used to choose the appropriate record for analysis.
This flag may be derived using the admiral function derive_var_extreme_flag()
. For this example, we will assume we would like to choose the latest and highest value by USUBJID
, PARAMCD
, AVISIT
, and ATPT
.
advs <- restrict_derivation(
advs,
derivation = derive_var_extreme_flag,
args = params(
by_vars = exprs(STUDYID, USUBJID, BASETYPE, PARAMCD, AVISIT),
order = exprs(ADT, ATPTN, AVAL),
new_var = ANL01FL,
mode = "last"
),
filter = !is.na(AVISITN)
)
Another common example would be flagging the worst value for a subject, parameter, and visit. For this example, we will assume we have 3 PARAMCD
values (SYSBP
, DIABP
, and RESP
). We will also assume high is worst for SYSBP
and DIABP
and low is worst for RESP
.
advs <- slice_derivation(
advs,
derivation = derive_var_extreme_flag,
args = params(
by_vars = exprs(STUDYID, USUBJID, BASETYPE, PARAMCD, AVISIT),
order = exprs(ADT, ATPTN),
new_var = WORSTFL,
mode = "first"
),
derivation_slice(
filter = PARAMCD %in% c("SYSBP", "DIABP") & (!is.na(AVISIT) & !is.na(AVAL))
),
derivation_slice(
filter = PARAMCD %in% "PULSE" & (!is.na(AVISIT) & !is.na(AVAL)),
args = params(mode = "last")
)
) %>%
arrange(STUDYID, USUBJID, BASETYPE, PARAMCD, AVISIT)
TRTA
, TRTP
)
TRTA
and TRTP
must match at least one value of the character treatment variables in ADSL (e.g., TRTxxA
/TRTxxP
, TRTSEQA
/TRTSEQP
, TRxxAGy
/TRxxPGy
).
An example of a simple implementation for a study without periods could be:
advs <- mutate(advs, TRTP = TRT01P, TRTA = TRT01A)
count(advs, TRTP, TRTA, TRT01P, TRT01A)
#> # A tibble: 2 × 5
#> TRTP TRTA TRT01P TRT01A n
#> <chr> <chr> <chr> <chr> <int>
#> 1 Placebo Placebo Placebo Placebo 640
#> 2 Xanomeline Low Dose Xanomeline Low Dose Xanomeline Low Dose Xanomeline … 243
For studies with periods see the “Visit and Period Variables” vignette.
ASEQ
The admiral function derive_var_obs_number()
can be used to derive ASEQ
. An example call is:
advs <- derive_var_obs_number(
advs,
new_var = ASEQ,
by_vars = exprs(STUDYID, USUBJID),
order = exprs(PARAMCD, ADT, AVISITN, VISITNUM, ATPTN),
check_type = "error"
)
AVALCATy
)
We can use the derive_vars_cat()
function to derive the categorization variables.
avalcat_lookup <- exprs(
~PARAMCD, ~condition, ~AVALCAT1, ~AVALCA1N,
"HEIGHT", AVAL > 140, ">140 cm", 1,
"HEIGHT", AVAL <= 140, "<= 140 cm", 2
)
advs <- advs %>%
derive_vars_cat(
definition = avalcat_lookup,
by_vars = exprs(PARAMCD)
)
CRITy
, CRITyFL
, CRITyFN
)
For deriving criterion variables (CRITy
, CRITyFL
, CRITyFN
) admiral provides derive_vars_crit_flag()
. It ensures that they are derived in an ADaM-compliant way (see documentation of the function for details).
In most cases the criterion depends on the parameter. The higher order functions restrict_derivation()
and slice_derivation()
are useful in this case. In the following example the criterion flags for systolic and diastolic blood pressure from the ADaM IG are derived.
The first criterion is based on AVAL
and is derived for systolic and diastolic blood pressure. slice_derivation()
us used to specify the condition and description of the criterion depending on the parameter.
advs <- advs %>%
slice_derivation(
derivation = derive_vars_crit_flag,
args = params(
values_yn = TRUE,
create_numeric_flag = TRUE
),
derivation_slice(
filter = PARAMCD == "SYSBP",
args = params(
condition = AVAL > 160,
description = "Systolic Pressure > 160"
)
),
derivation_slice(
filter = PARAMCD == "DIABP",
args = params(
condition = AVAL > 95,
description = "Diastolic Pressure > 95"
)
)
)
The second criterion is based on AVAL
and CHG
and is derived for systolic blood pressure only. Thus restrict_derivation()
is used.
advs <- advs %>%
restrict_derivation(
derivation = derive_vars_crit_flag,
args = params(
condition = AVAL > 160 & CHG > 10,
description = "Systolic Pressure > 160 and Change from Baseline in Systolic Pressure > 10",
crit_nr = 2,
values_yn = TRUE,
create_numeric_flag = TRUE
),
filter = PARAMCD == "SYSBP"
)
If needed, the other ADSL
variables can now be added. List of ADSL variables already merged held in vector adsl_vars
advs <- advs %>%
derive_vars_merged(
dataset_add = select(adsl, !!!negate_vars(adsl_vars)),
by_vars = exprs(STUDYID, USUBJID)
)
When deriving new rows for a data frame, it is essential the programmer takes time to insert this derivation in the correct location of the code. The location will vary depending on what previous computations should be retained on the new record and what computations must be done with the new records.
To add a new record based on the selection of a certain criterion (e.g. minimum, maximum) derive_extreme_records()
can be used. The new records include all variables of the selected records.
For each subject and Vital Signs parameter, add a record holding last valid observation before end of treatment. Set AVISIT
to "End of Treatment"
and assign a unique AVISITN
value.
advs_ex1 <- advs %>%
derive_extreme_records(
dataset_add = advs,
by_vars = exprs(STUDYID, USUBJID, PARAMCD),
order = exprs(ADT, AVISITN, ATPTN, AVAL),
mode = "last",
filter_add = (4 < AVISITN & AVISITN <= 12 & ANL01FL == "Y"),
set_values_to = exprs(
AVISIT = "End of Treatment",
AVISITN = 99,
DTYPE = "LOV"
)
)
For each subject and Vital Signs parameter, add a record holding the minimum value before end of treatment. If the minimum is attained by multiple observations the first one is selected. Set AVISIT
to "Minimum on Treatment"
and assign a unique AVISITN
value.
advs_ex1 <- advs %>%
derive_extreme_records(
dataset_add = advs,
by_vars = exprs(STUDYID, USUBJID, PARAMCD),
order = exprs(AVAL, ADT, AVISITN, ATPTN),
mode = "first",
filter_add = (4 < AVISITN & AVISITN <= 12 & ANL01FL == "Y" & !is.na(AVAL)),
set_values_to = exprs(
AVISIT = "Minimum on Treatment",
AVISITN = 98,
DTYPE = "MINIMUM"
)
)
For adding new records based on aggregating records derive_summary_records()
can be used. For the new records only the variables specified by by_vars
and set_values_to
are populated.
For each subject, Vital Signs parameter, visit, and date add a record holding the average value for observations on that date. Set DTYPE
to AVERAGE
.
advs_ex2 <- derive_summary_records(
advs,
dataset_add = advs,
by_vars = exprs(STUDYID, USUBJID, PARAMCD, VISITNUM, ADT),
set_values_to = exprs(
AVAL = mean(AVAL, na.rm = TRUE),
DTYPE = "AVERAGE"
)
)
PARAMCD
)
Use function derive_param_computed()
to create a new PARAMCD
. Note that only variables specified in the by_vars
argument will be populated in the newly created records.
Below is an example of creating Mean Arterial Pressure
(PARAMCD = MAP2
) with an alternative formula.
advs_ex3 <- derive_param_computed(
advs,
by_vars = exprs(USUBJID, VISIT, ATPT),
parameters = c("SYSBP", "DIABP"),
set_values_to = exprs(
AVAL = (AVAL.SYSBP - AVAL.DIABP) / 3 + AVAL.DIABP,
PARAMCD = "MAP2",
PARAM = "Mean Arterial Pressure 2 (mmHg)"
)
)
Adding labels and attributes for SAS transport files is supported by the following packages:
metacore: establish a common foundation for the use of metadata within an R session.
metatools: enable the use of metacore objects. Metatools can be used to build datasets or enhance columns in existing datasets as well as checking datasets against the metadata.
xportr: functionality to associate all metadata information to a local R data frame, perform data set level validation checks and convert into a transport v5 file(xpt).
NOTE: All these packages are in the experimental phase, but the vision is to have them associated with an End to End pipeline under the umbrella of the pharmaverse. An example of applying metadata and perform associated checks can be found at the pharmaverse E2E example.