Count Patients with Marked Laboratory Abnormalities
Source:R/abnormal_by_marked.R
abnormal_by_marked.RdPrimary analysis variable .var indicates whether single, replicated or last marked laboratory
abnormality was observed (factor). Additional analysis variables are id (character or factor)
and direction (factor) indicating the direction of the abnormality. Denominator is number of
patients with at least one valid measurement during the analysis.
For
Single, not lastandLast or replicated: Numerator is number of patients withSingle, not lastandLast or replicatedlevels, respectively.For
Any: Numerator is the number of patients with either single or replicated marked abnormalities.
Usage
s_count_abnormal_by_marked(
df,
.var = "AVALCAT1",
.spl_context,
category = list(single = "SINGLE", last_replicated = c("LAST", "REPLICATED")),
variables = list(id = "USUBJID", param = "PARAM", direction = "abn_dir")
)
a_count_abnormal_by_marked(
df,
.var = "AVALCAT1",
.spl_context,
category = list(single = "SINGLE", last_replicated = c("LAST", "REPLICATED")),
variables = list(id = "USUBJID", param = "PARAM", direction = "abn_dir")
)
count_abnormal_by_marked(
lyt,
var,
...,
.stats = NULL,
.formats = NULL,
.labels = NULL,
.indent_mods = NULL
)Arguments
- df
(
data.frame)
data set containing all analysis variables.- .var, var
(
string)
single variable name that is passed byrtableswhen requested by a statistics function.- .spl_context
(
data.frame)
gives information about ancestor split states that is passed byrtables.- category
(
list)
with different marked category names for single and last or replicated.- variables
(named
listofstring)
list of additional analysis variables.- lyt
(
layout)
input layout where analyses will be added to.- ...
additional arguments for the lower level functions.
- .stats
(
character)
statistics to select for the table.- .formats
(named
characterorlist)
formats for the statistics.- .labels
(named
character)
labels for the statistics (without indent).- .indent_mods
(named
integer)
indent modifiers for the labels. Defaults to 0, which corresponds to the unmodified default behavior. Can be negative.
Value
s_count_abnormal_by_marked()returns statisticcount_fractionwithSingle, not last,Last or replicated, andAnyresults.
a_count_abnormal_by_marked()returns the corresponding list with formattedrtables::CellValue().
count_abnormal_by_marked()returns a layout object suitable for passing to further layouting functions, or tortables::build_table(). Adding this function to anrtablelayout will add formatted rows containing the statistics froms_count_abnormal_by_marked()to the table layout.
Functions
s_count_abnormal_by_marked(): Statistics function for patients with marked lab abnormalities.a_count_abnormal_by_marked(): Formatted analysis function which is used asafunincount_abnormal_by_marked().count_abnormal_by_marked(): Layout-creating function which can take statistics function arguments and additional format arguments. This function is a wrapper forrtables::analyze().
Note
Single, not last and Last or replicated levels are mutually exclusive. If a patient has
abnormalities that meet both the Single, not last and Last or replicated criteria, then the
patient will be counted only under the Last or replicated category.
Examples
library(dplyr)
df <- data.frame(
USUBJID = as.character(c(rep(1, 5), rep(2, 5), rep(1, 5), rep(2, 5))),
ARMCD = factor(c(rep("ARM A", 5), rep("ARM B", 5), rep("ARM A", 5), rep("ARM B", 5))),
ANRIND = factor(c(
"NORMAL", "HIGH", "HIGH", "HIGH HIGH", "HIGH",
"HIGH", "HIGH", "HIGH HIGH", "NORMAL", "HIGH HIGH", "NORMAL", "LOW", "LOW", "LOW LOW", "LOW",
"LOW", "LOW", "LOW LOW", "NORMAL", "LOW LOW"
)),
ONTRTFL = rep(c("", "Y", "Y", "Y", "Y", "Y", "Y", "Y", "Y", "Y"), 2),
PARAMCD = factor(c(rep("CRP", 10), rep("ALT", 10))),
AVALCAT1 = factor(rep(c("", "", "", "SINGLE", "REPLICATED", "", "", "LAST", "", "SINGLE"), 2)),
stringsAsFactors = FALSE
)
df <- df %>%
mutate(abn_dir = factor(
case_when(
ANRIND == "LOW LOW" ~ "Low",
ANRIND == "HIGH HIGH" ~ "High",
TRUE ~ ""
),
levels = c("Low", "High")
))
# Select only post-baseline records.
df <- df %>% filter(ONTRTFL == "Y")
df_crp <- df %>%
filter(PARAMCD == "CRP") %>%
droplevels()
full_parent_df <- list(df_crp, "not_needed")
cur_col_subset <- list(rep(TRUE, nrow(df_crp)), "not_needed")
spl_context <- data.frame(
split = c("PARAMCD", "GRADE_DIR"),
full_parent_df = I(full_parent_df),
cur_col_subset = I(cur_col_subset)
)
map <- unique(
df[df$abn_dir %in% c("Low", "High") & df$AVALCAT1 != "", c("PARAMCD", "abn_dir")]
) %>%
lapply(as.character) %>%
as.data.frame() %>%
arrange(PARAMCD, abn_dir)
basic_table() %>%
split_cols_by("ARMCD") %>%
split_rows_by("PARAMCD") %>%
summarize_num_patients(
var = "USUBJID",
.stats = "unique_count"
) %>%
split_rows_by(
"abn_dir",
split_fun = trim_levels_to_map(map)
) %>%
count_abnormal_by_marked(
var = "AVALCAT1",
variables = list(
id = "USUBJID",
param = "PARAMCD",
direction = "abn_dir"
)
) %>%
build_table(df = df)
#> ARM A ARM B
#> ————————————————————————————————————————————
#> ALT (n) 1 1
#> Low
#> Single, not last 1 (100%) 0
#> Last or replicated 0 1 (100%)
#> Any Abnormality 1 (100%) 1 (100%)
#> CRP (n) 1 1
#> High
#> Single, not last 1 (100%) 0
#> Last or replicated 0 1 (100%)
#> Any Abnormality 1 (100%) 1 (100%)
basic_table() %>%
split_cols_by("ARMCD") %>%
split_rows_by("PARAMCD") %>%
summarize_num_patients(
var = "USUBJID",
.stats = "unique_count"
) %>%
split_rows_by(
"abn_dir",
split_fun = trim_levels_in_group("abn_dir")
) %>%
count_abnormal_by_marked(
var = "AVALCAT1",
variables = list(
id = "USUBJID",
param = "PARAMCD",
direction = "abn_dir"
)
) %>%
build_table(df = df)
#> ARM A ARM B
#> ————————————————————————————————————————————
#> ALT (n) 1 1
#> Low
#> Single, not last 1 (100%) 0
#> Last or replicated 0 1 (100%)
#> Any Abnormality 1 (100%) 1 (100%)
#> CRP (n) 1 1
#> High
#> Single, not last 1 (100%) 0
#> Last or replicated 0 1 (100%)
#> Any Abnormality 1 (100%) 1 (100%)