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# ==================================================================== #
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# TITLE: #
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# AMR: An R Package for Working with Antimicrobial Resistance Data #
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# #
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# SOURCE CODE: #
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# https://github.com/msberends/AMR #
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# #
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# PLEASE CITE THIS SOFTWARE AS: #
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# Berends MS, Luz CF, Friedrich AW, Sinha BNM, Albers CJ, Glasner C #
# (2022). AMR: An R Package for Working with Antimicrobial Resistance #
# Data. Journal of Statistical Software, 104(3), 1-31. #
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# https://doi.org/10.18637/jss.v104.i03 #
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# #
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# Developed at the University of Groningen and the University Medical #
# Center Groningen in The Netherlands, in collaboration with many #
# colleagues from around the world, see our website. #
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# #
# This R package is free software; you can freely use and distribute #
# it for both personal and commercial purposes under the terms of the #
# GNU General Public License version 2.0 (GNU GPL-2), as published by #
# the Free Software Foundation. #
# We created this package for both routine data analysis and academic #
# research and it was publicly released in the hope that it will be #
# useful, but it comes WITHOUT ANY WARRANTY OR LIABILITY. #
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# #
# Visit our website for the full manual and a complete tutorial about #
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# how to conduct AMR data analysis: https://msberends.github.io/AMR/ #
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# ==================================================================== #
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#' Antibiotic Selectors
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#'
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#' @description These functions allow for filtering rows and selecting columns based on antibiotic test results that are of a specific antibiotic class or group (according to the [antibiotics] data set), without the need to define the columns or antibiotic abbreviations.
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#'
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#' In short, if you have a column name that resembles an antimicrobial drug, it will be picked up by any of these functions that matches its pharmaceutical class: "cefazolin", "kefzol", "CZO" and "J01DB04" will all be picked up by [cephalosporins()].
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#' @param ab_class an antimicrobial class or a part of it, such as `"carba"` and `"carbapenems"`. The columns `group`, `atc_group1` and `atc_group2` of the [antibiotics] data set will be searched (case-insensitive) for this value.
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#' @param filter an [expression] to be evaluated in the [antibiotics] data set, such as `name %like% "trim"`
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#' @param only_sir_columns a [logical] to indicate whether only columns of class `sir` must be selected (default is `FALSE`), see [as.sir()]
#' @param only_treatable a [logical] to indicate whether antimicrobial drugs should be excluded that are only for laboratory tests (default is `TRUE`), such as gentamicin-high (`GEH`) and imipenem/EDTA (`IPE`)
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#' @param ... ignored, only in place to allow future extensions
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#' @details
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#' These functions can be used in data set calls for selecting columns and filtering rows. They work with base \R, the Tidyverse, and `data.table`. They are heavily inspired by the [Tidyverse selection helpers][tidyselect::language] such as [`everything()`][tidyselect::everything()], but are not limited to `dplyr` verbs. Nonetheless, they are very convenient to use with `dplyr` functions such as [`select()`][dplyr::select()], [`filter()`][dplyr::filter()] and [`summarise()`][dplyr::summarise()], see *Examples*.
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#'
#' All columns in the data in which these functions are called will be searched for known antibiotic names, abbreviations, brand names, and codes (ATC, EARS-Net, WHO, etc.) according to the [antibiotics] data set. This means that a selector such as [aminoglycosides()] will pick up column names like 'gen', 'genta', 'J01GB03', 'tobra', 'Tobracin', etc.
#'
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#' The [ab_class()] function can be used to filter/select on a manually defined antibiotic class. It searches for results in the [antibiotics] data set within the columns `group`, `atc_group1` and `atc_group2`.
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#' @section Full list of supported (antibiotic) classes:
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#'
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#' `r paste0(" * ", na.omit(sapply(DEFINED_AB_GROUPS, function(ab) ifelse(tolower(gsub("^AB_", "", ab)) %in% ls(envir = asNamespace("AMR")), paste0("[", tolower(gsub("^AB_", "", ab)), "()] can select: \\cr ", vector_and(paste0(ab_name(eval(parse(text = ab), envir = asNamespace("AMR")), language = NULL, tolower = TRUE), " (", eval(parse(text = ab), envir = asNamespace("AMR")), ")"), quotes = FALSE, sort = TRUE)), character(0)), USE.NAMES = FALSE)), "\n", collapse = "")`
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#' @rdname antibiotic_class_selectors
#' @name antibiotic_class_selectors
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#' @return (internally) a [character] vector of column names, with additional class `"ab_selector"`
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#' @export
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#' @inheritSection AMR Reference Data Publicly Available
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#' @examples
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#' # `example_isolates` is a data set available in the AMR package.
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#' # See ?example_isolates.
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#' example_isolates
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#'
#'
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#' # Examples sections below are split into 'base R', 'dplyr', and 'data.table':
#'
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#'
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#' # base R ------------------------------------------------------------------
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#'
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#' # select columns 'IPM' (imipenem) and 'MEM' (meropenem)
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#' example_isolates[, carbapenems()]
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#'
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#' # select columns 'mo', 'AMK', 'GEN', 'KAN' and 'TOB'
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#' example_isolates[, c("mo", aminoglycosides())]
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#'
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#' # select only antibiotic columns with DDDs for oral treatment
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#' example_isolates[, administrable_per_os()]
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#'
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#' # filter using any() or all()
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#' example_isolates[any(carbapenems() == "R"), ]
#' subset(example_isolates, any(carbapenems() == "R"))
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#'
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#' # filter on any or all results in the carbapenem columns (i.e., IPM, MEM):
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#' example_isolates[any(carbapenems()), ]
#' example_isolates[all(carbapenems()), ]
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#'
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#' # filter with multiple antibiotic selectors using c()
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#' example_isolates[all(c(carbapenems(), aminoglycosides()) == "R"), ]
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#'
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#' # filter + select in one go: get penicillins in carbapenem-resistant strains
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#' example_isolates[any(carbapenems() == "R"), penicillins()]
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#'
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#' # You can combine selectors with '&' to be more specific. For example,
#' # penicillins() would select benzylpenicillin ('peni G') and
#' # administrable_per_os() would select erythromycin. Yet, when combined these
#' # drugs are both omitted since benzylpenicillin is not administrable per os
#' # and erythromycin is not a penicillin:
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#' example_isolates[, penicillins() & administrable_per_os()]
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#'
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#' # ab_selector() applies a filter in the `antibiotics` data set and is thus
#' # very flexible. For instance, to select antibiotic columns with an oral DDD
#' # of at least 1 gram:
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#' example_isolates[, ab_selector(oral_ddd > 1 & oral_units == "g")]
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#'
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#' \donttest{
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#' # dplyr -------------------------------------------------------------------
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#'
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#' if (require("dplyr")) {
#' tibble(kefzol = random_sir(5)) %>%
#' select(cephalosporins())
#' }
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#'
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#' if (require("dplyr")) {
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#' # get AMR for all aminoglycosides e.g., per ward:
#' example_isolates %>%
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#' group_by(ward) %>%
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#' summarise(across(aminoglycosides(), resistance))
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#' }
#' if (require("dplyr")) {
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#' # You can combine selectors with '&' to be more specific:
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#' example_isolates %>%
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#' select(penicillins() & administrable_per_os())
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#' }
#' if (require("dplyr")) {
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#' # get AMR for only drugs that matter - no intrinsic resistance:
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#' example_isolates %>%
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#' filter(mo_genus() %in% c("Escherichia", "Klebsiella")) %>%
#' group_by(ward) %>%
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#' summarise(across(not_intrinsic_resistant(), resistance))
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#' }
#' if (require("dplyr")) {
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#' # get susceptibility for antibiotics whose name contains "trim":
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#' example_isolates %>%
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#' filter(first_isolate()) %>%
#' group_by(ward) %>%
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#' summarise(across(ab_selector(name %like% "trim"), susceptibility))
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#' }
#' if (require("dplyr")) {
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#' # this will select columns 'IPM' (imipenem) and 'MEM' (meropenem):
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#' example_isolates %>%
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#' select(carbapenems())
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#' }
#' if (require("dplyr")) {
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#' # this will select columns 'mo', 'AMK', 'GEN', 'KAN' and 'TOB':
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#' example_isolates %>%
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#' select(mo, aminoglycosides())
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#' }
#' if (require("dplyr")) {
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#' # any() and all() work in dplyr's filter() too:
#' example_isolates %>%
#' filter(
#' any(aminoglycosides() == "R"),
#' all(cephalosporins_2nd() == "R")
#' )
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#' }
#' if (require("dplyr")) {
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#' # also works with c():
#' example_isolates %>%
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#' filter(any(c(carbapenems(), aminoglycosides()) == "R"))
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#' }
#' if (require("dplyr")) {
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#' # not setting any/all will automatically apply all():
#' example_isolates %>%
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#' filter(aminoglycosides() == "R")
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#' }
#' if (require("dplyr")) {
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#' # this will select columns 'mo' and all antimycobacterial drugs ('RIF'):
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#' example_isolates %>%
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#' select(mo, ab_class("mycobact"))
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#' }
#' if (require("dplyr")) {
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#' # get bug/drug combinations for only glycopeptides in Gram-positives:
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#' example_isolates %>%
#' filter(mo_is_gram_positive()) %>%
#' select(mo, glycopeptides()) %>%
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#' bug_drug_combinations() %>%
#' format()
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#' }
#' if (require("dplyr")) {
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#' data.frame(
#' some_column = "some_value",
#' J01CA01 = "S"
#' ) %>% # ATC code of ampicillin
#' select(penicillins()) # only the 'J01CA01' column will be selected
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#' }
#' if (require("dplyr")) {
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#' # with recent versions of dplyr, this is all equal:
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#' x <- example_isolates[carbapenems() == "R", ]
#' y <- example_isolates %>% filter(carbapenems() == "R")
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#' z <- example_isolates %>% filter(if_all(carbapenems(), ~ .x == "R"))
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#' identical(x, y) && identical(y, z)
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#' }
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#'
#'
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#' # data.table --------------------------------------------------------------
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#'
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#' # data.table is supported as well, just use it in the same way as with
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#' # base R, but add `with = FALSE` if using a single AB selector.
#'
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#' if (require("data.table")) {
#' dt <- as.data.table(example_isolates)
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#'
#' # this does not work, it returns column *names*
#' dt[, carbapenems()]
#' }
#' if (require("data.table")) {
#' # so `with = FALSE` is required
#' dt[, carbapenems(), with = FALSE]
#' }
#'
#' # for multiple selections or AB selectors, `with = FALSE` is not needed:
#' if (require("data.table")) {
#' dt[, c("mo", aminoglycosides())]
#' }
#' if (require("data.table")) {
#' dt[, c(carbapenems(), aminoglycosides())]
#' }
#'
#' # row filters are also supported:
#' if (require("data.table")) {
#' dt[any(carbapenems() == "S"), ]
#' }
#' if (require("data.table")) {
#' dt[any(carbapenems() == "S"), penicillins(), with = FALSE]
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#' }
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#' }
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ab_class <- function ( ab_class ,
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only_sir_columns = FALSE ,
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only_treatable = TRUE ,
... ) {
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meet_criteria ( ab_class , allow_class = " character" , has_length = 1 , allow_NULL = TRUE )
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meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
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meet_criteria ( only_treatable , allow_class = " logical" , has_length = 1 )
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ab_select_exec ( NULL , only_sir_columns = only_sir_columns , ab_class_args = ab_class , only_treatable = only_treatable )
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}
#' @rdname antibiotic_class_selectors
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#' @details The [ab_selector()] function can be used to internally filter the [antibiotics] data set on any results, see *Examples*. It allows for filtering on a (part of) a certain name, and/or a group name or even a minimum of DDDs for oral treatment. This function yields the highest flexibility, but is also the least user-friendly, since it requires a hard-coded filter to set.
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#' @export
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ab_selector <- function ( filter ,
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only_sir_columns = FALSE ,
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only_treatable = TRUE ,
... ) {
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meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
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meet_criteria ( only_treatable , allow_class = " logical" , has_length = 1 )
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# get_current_data() has to run each time, for cases where e.g., filter() and select() are used in same call
# but it only takes a couple of milliseconds
vars_df <- get_current_data ( arg_name = NA , call = -2 )
# to improve speed, get_column_abx() will only run once when e.g. in a select or group call
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ab_in_data <- get_column_abx ( vars_df ,
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info = FALSE , only_sir_columns = only_sir_columns ,
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sort = FALSE , fn = " ab_selector"
)
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call <- substitute ( filter )
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agents <- tryCatch ( AMR_env $ AB_lookup [which ( eval ( call , envir = AMR_env $ AB_lookup ) ) , " ab" , drop = TRUE ] ,
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error = function ( e ) stop_ ( e $ message , call = -5 )
)
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agents <- ab_in_data [ab_in_data %in% agents ]
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message_agent_names (
function_name = " ab_selector" ,
agents = agents ,
ab_group = NULL ,
examples = " " ,
call = call
)
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structure ( unname ( agents ) ,
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class = c ( " ab_selector" , " character" )
)
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}
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#' @rdname antibiotic_class_selectors
#' @export
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aminoglycosides <- function ( only_sir_columns = FALSE , only_treatable = TRUE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
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meet_criteria ( only_treatable , allow_class = " logical" , has_length = 1 )
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ab_select_exec ( " aminoglycosides" , only_sir_columns = only_sir_columns , only_treatable = only_treatable )
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}
#' @rdname antibiotic_class_selectors
#' @export
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aminopenicillins <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " aminopenicillins" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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antifungals <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " antifungals" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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antimycobacterials <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " antimycobacterials" , only_sir_columns = only_sir_columns )
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}
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#' @rdname antibiotic_class_selectors
#' @export
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betalactams <- function ( only_sir_columns = FALSE , only_treatable = TRUE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
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meet_criteria ( only_treatable , allow_class = " logical" , has_length = 1 )
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ab_select_exec ( " betalactams" , only_sir_columns = only_sir_columns , only_treatable = only_treatable )
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}
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#' @rdname antibiotic_class_selectors
#' @export
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carbapenems <- function ( only_sir_columns = FALSE , only_treatable = TRUE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
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meet_criteria ( only_treatable , allow_class = " logical" , has_length = 1 )
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ab_select_exec ( " carbapenems" , only_sir_columns = only_sir_columns , only_treatable = only_treatable )
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}
#' @rdname antibiotic_class_selectors
#' @export
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cephalosporins <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " cephalosporins" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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cephalosporins_1st <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " cephalosporins_1st" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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cephalosporins_2nd <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " cephalosporins_2nd" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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cephalosporins_3rd <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " cephalosporins_3rd" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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cephalosporins_4th <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " cephalosporins_4th" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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cephalosporins_5th <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " cephalosporins_5th" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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fluoroquinolones <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " fluoroquinolones" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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glycopeptides <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " glycopeptides" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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lincosamides <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " lincosamides" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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lipoglycopeptides <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " lipoglycopeptides" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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macrolides <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " macrolides" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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oxazolidinones <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " oxazolidinones" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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penicillins <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " penicillins" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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polymyxins <- function ( only_sir_columns = FALSE , only_treatable = TRUE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
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meet_criteria ( only_treatable , allow_class = " logical" , has_length = 1 )
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ab_select_exec ( " polymyxins" , only_sir_columns = only_sir_columns , only_treatable = only_treatable )
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}
#' @rdname antibiotic_class_selectors
#' @export
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streptogramins <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " streptogramins" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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quinolones <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " quinolones" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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tetracyclines <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " tetracyclines" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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trimethoprims <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " trimethoprims" , only_sir_columns = only_sir_columns )
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}
#' @rdname antibiotic_class_selectors
#' @export
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ureidopenicillins <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
ab_select_exec ( " ureidopenicillins" , only_sir_columns = only_sir_columns )
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}
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#' @rdname antibiotic_class_selectors
#' @details The [administrable_per_os()] and [administrable_iv()] functions also rely on the [antibiotics] data set - antibiotic columns will be matched where a DDD (defined daily dose) for resp. oral and IV treatment is available in the [antibiotics] data set.
#' @export
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administrable_per_os <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
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# get_current_data() has to run each time, for cases where e.g., filter() and select() are used in same call
# but it only takes a couple of milliseconds
vars_df <- get_current_data ( arg_name = NA , call = -2 )
# to improve speed, get_column_abx() will only run once when e.g. in a select or group call
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ab_in_data <- get_column_abx ( vars_df ,
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info = FALSE , only_sir_columns = only_sir_columns ,
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sort = FALSE , fn = " administrable_per_os"
)
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agents_all <- AMR_env $ AB_lookup [which ( ! is.na ( AMR_env $ AB_lookup $ oral_ddd ) ) , " ab" , drop = TRUE ]
agents <- AMR_env $ AB_lookup [which ( AMR_env $ AB_lookup $ ab %in% ab_in_data & ! is.na ( AMR_env $ AB_lookup $ oral_ddd ) ) , " ab" , drop = TRUE ]
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agents <- ab_in_data [ab_in_data %in% agents ]
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message_agent_names (
function_name = " administrable_per_os" ,
agents = agents ,
ab_group = " administrable_per_os" ,
examples = paste0 (
" (such as " ,
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vector_or (
ab_name (
sample ( agents_all ,
size = min ( 5 , length ( agents_all ) ) ,
replace = FALSE
) ,
tolower = TRUE ,
language = NULL
) ,
quotes = FALSE
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) ,
" )"
)
)
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structure ( unname ( agents ) ,
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class = c ( " ab_selector" , " character" )
)
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}
#' @rdname antibiotic_class_selectors
#' @export
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administrable_iv <- function ( only_sir_columns = FALSE , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
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# get_current_data() has to run each time, for cases where e.g., filter() and select() are used in same call
# but it only takes a couple of milliseconds
vars_df <- get_current_data ( arg_name = NA , call = -2 )
# to improve speed, get_column_abx() will only run once when e.g. in a select or group call
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ab_in_data <- get_column_abx ( vars_df ,
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info = FALSE , only_sir_columns = only_sir_columns ,
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sort = FALSE , fn = " administrable_iv"
)
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agents_all <- AMR_env $ AB_lookup [which ( ! is.na ( AMR_env $ AB_lookup $ iv_ddd ) ) , " ab" , drop = TRUE ]
agents <- AMR_env $ AB_lookup [which ( AMR_env $ AB_lookup $ ab %in% ab_in_data & ! is.na ( AMR_env $ AB_lookup $ iv_ddd ) ) , " ab" , drop = TRUE ]
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agents <- ab_in_data [ab_in_data %in% agents ]
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message_agent_names (
function_name = " administrable_iv" ,
agents = agents ,
ab_group = " administrable_iv" ,
examples = " "
)
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structure ( unname ( agents ) ,
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class = c ( " ab_selector" , " character" )
)
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}
#' @rdname antibiotic_class_selectors
#' @inheritParams eucast_rules
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#' @details The [not_intrinsic_resistant()] function can be used to only select antibiotic columns that pose no intrinsic resistance for the microorganisms in the data set. For example, if a data set contains only microorganism codes or names of *E. coli* and *K. pneumoniae* and contains a column "vancomycin", this column will be removed (or rather, unselected) using this function. It currently applies `r format_eucast_version_nr(names(EUCAST_VERSION_EXPERT_RULES[1]))` to determine intrinsic resistance, using the [eucast_rules()] function internally. Because of this determination, this function is quite slow in terms of performance.
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#' @export
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not_intrinsic_resistant <- function ( only_sir_columns = FALSE , col_mo = NULL , version_expertrules = 3.3 , ... ) {
meet_criteria ( only_sir_columns , allow_class = " logical" , has_length = 1 )
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# get_current_data() has to run each time, for cases where e.g., filter() and select() are used in same call
# but it only takes a couple of milliseconds
vars_df <- get_current_data ( arg_name = NA , call = -2 )
# to improve speed, get_column_abx() will only run once when e.g. in a select or group call
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ab_in_data <- get_column_abx ( vars_df ,
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info = FALSE , only_sir_columns = only_sir_columns ,
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sort = FALSE , fn = " not_intrinsic_resistant"
)
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# intrinsic vars
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vars_df_R <- tryCatch (
sapply (
eucast_rules ( vars_df ,
col_mo = col_mo ,
version_expertrules = version_expertrules ,
rules = " expert" ,
info = FALSE
) ,
function ( col ) {
tryCatch ( ! any ( is.na ( col ) ) && all ( col == " R" ) ,
error = function ( e ) FALSE
)
}
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) ,
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error = function ( e ) stop_ ( " in not_intrinsic_resistant(): " , e $ message , call = FALSE )
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)
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agents <- ab_in_data [ab_in_data %in% names ( vars_df_R [which ( vars_df_R ) ] ) ]
if ( length ( agents ) > 0 &&
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message_not_thrown_before ( " not_intrinsic_resistant" , sort ( agents ) ) ) {
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agents_formatted <- paste0 ( " '" , font_bold ( agents , collapse = NULL ) , " '" )
agents_names <- ab_name ( names ( agents ) , tolower = TRUE , language = NULL )
need_name <- generalise_antibiotic_name ( agents ) != generalise_antibiotic_name ( agents_names )
agents_formatted [need_name ] <- paste0 ( agents_formatted [need_name ] , " (" , agents_names [need_name ] , " )" )
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message_ (
" For `not_intrinsic_resistant()` removing " ,
ifelse ( length ( agents ) == 1 , " column " , " columns " ) ,
vector_and ( agents_formatted , quotes = FALSE , sort = FALSE )
)
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}
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vars_df_R <- names ( vars_df_R ) [which ( ! vars_df_R ) ]
# find columns that are abx, but also intrinsic R
out <- unname ( intersect ( ab_in_data , vars_df_R ) )
structure ( out ,
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class = c ( " ab_selector" , " character" )
)
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}
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ab_select_exec <- function ( function_name ,
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only_sir_columns = FALSE ,
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only_treatable = FALSE ,
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ab_class_args = NULL ) {
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# get_current_data() has to run each time, for cases where e.g., filter() and select() are used in same call
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# but it only takes a couple of milliseconds
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vars_df <- get_current_data ( arg_name = NA , call = -3 )
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# to improve speed, get_column_abx() will only run once when e.g. in a select or group call
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ab_in_data <- get_column_abx ( vars_df ,
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info = FALSE , only_sir_columns = only_sir_columns ,
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sort = FALSE , fn = function_name
)
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# untreatable drugs
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if ( only_treatable == TRUE ) {
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untreatable <- AMR_env $ AB_lookup [which ( AMR_env $ AB_lookup $ name %like% " -high|EDTA|polysorbate|macromethod|screening|/nacubactam" ) , " ab" , drop = TRUE ]
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if ( any ( untreatable %in% names ( ab_in_data ) ) ) {
if ( message_not_thrown_before ( function_name , " ab_class" , " untreatable" , entire_session = TRUE ) ) {
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warning_ (
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" in `" , function_name , " ()`: some drugs were ignored since they cannot be used for treating patients: " ,
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vector_and (
ab_name ( names ( ab_in_data ) [names ( ab_in_data ) %in% untreatable ] ,
language = NULL ,
tolower = TRUE
) ,
quotes = FALSE ,
sort = TRUE
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) , " . They can be included using `" , function_name , " (only_treatable = FALSE)`. " ,
" This warning will be shown once per session."
)
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}
ab_in_data <- ab_in_data [ ! names ( ab_in_data ) %in% untreatable ]
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}
}
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if ( length ( ab_in_data ) == 0 ) {
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message_ ( " No antimicrobial drugs found in the data." )
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return ( NULL )
}
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if ( is.null ( ab_class_args ) || isTRUE ( function_name %in% c ( " antifungals" , " antimycobacterials" ) ) ) {
ab_group <- NULL
if ( isTRUE ( function_name == " antifungals" ) ) {
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abx <- AMR_env $ AB_lookup $ ab [which ( AMR_env $ AB_lookup $ group == " Antifungals" ) ]
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} else if ( isTRUE ( function_name == " antimycobacterials" ) ) {
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abx <- AMR_env $ AB_lookup $ ab [which ( AMR_env $ AB_lookup $ group == " Antimycobacterials" ) ]
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} else {
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# their upper case equivalent are vectors with class 'ab', created in data-raw/_pre_commit_checks.R
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# carbapenems() gets its codes from AMR:::AB_CARBAPENEMS
abx <- get ( paste0 ( " AB_" , toupper ( function_name ) ) , envir = asNamespace ( " AMR" ) )
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# manually added codes from add_custom_antimicrobials() must also be supported
if ( length ( AMR_env $ custom_ab_codes ) > 0 ) {
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custom_ab <- AMR_env $ AB_lookup [which ( AMR_env $ AB_lookup $ ab %in% AMR_env $ custom_ab_codes ) , ]
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check_string <- paste0 ( custom_ab $ group , custom_ab $ atc_group1 , custom_ab $ atc_group2 )
if ( function_name == " betalactams" ) {
find_group <- " beta-lactams"
} else if ( function_name %like% " cephalosporins_" ) {
find_group <- gsub ( " _(.*)$" , paste0 ( " (\\1 gen.)" ) , function_name )
} else {
find_group <- function_name
}
abx <- c ( abx , custom_ab $ ab [which ( check_string %like% find_group ) ] )
}
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ab_group <- function_name
}
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examples <- paste0 ( " (such as " , vector_or (
ab_name ( sample ( abx , size = min ( 2 , length ( abx ) ) , replace = FALSE ) ,
tolower = TRUE ,
language = NULL
) ,
quotes = FALSE
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) , " )" )
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} else {
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# this for the 'manual' ab_class() function
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abx <- subset (
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AMR_env $ AB_lookup ,
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group %like% ab_class_args |
atc_group1 %like% ab_class_args |
atc_group2 %like% ab_class_args
) $ ab
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ab_group <- find_ab_group ( ab_class_args )
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function_name <- " ab_class"
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examples <- paste0 ( " (such as " , find_ab_names ( ab_class_args , 2 ) , " )" )
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}
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# get the columns with a group names in the chosen ab class
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agents <- ab_in_data [names ( ab_in_data ) %in% abx ]
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message_agent_names (
function_name = function_name ,
agents = agents ,
ab_group = ab_group ,
examples = examples ,
ab_class_args = ab_class_args
)
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structure ( unname ( agents ) ,
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class = c ( " ab_selector" , " character" )
)
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}
#' @method c ab_selector
#' @export
#' @noRd
c.ab_selector <- function ( ... ) {
structure ( unlist ( lapply ( list ( ... ) , as.character ) ) ,
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class = c ( " ab_selector" , " character" )
)
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}
all_any_ab_selector <- function ( type , ... , na.rm = TRUE ) {
cols_ab <- c ( ... )
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result <- cols_ab [toupper ( cols_ab ) %in% c ( " S" , " I" , " R" ) ]
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if ( length ( result ) == 0 ) {
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message_ ( " Filtering " , type , " of columns " , vector_and ( font_bold ( cols_ab , collapse = NULL ) , quotes = " '" ) , ' to contain value "S", "I" or "R"' )
result <- c ( " S" , " I" , " R" )
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}
cols_ab <- cols_ab [ ! cols_ab %in% result ]
df <- get_current_data ( arg_name = NA , call = -3 )
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if ( type == " all" ) {
scope_fn <- all
} else {
scope_fn <- any
}
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x_transposed <- as.list ( as.data.frame ( t ( df [ , cols_ab , drop = FALSE ] ) , stringsAsFactors = FALSE ) )
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vapply (
FUN.VALUE = logical ( 1 ) ,
X = x_transposed ,
FUN = function ( y ) scope_fn ( y %in% result , na.rm = na.rm ) ,
USE.NAMES = FALSE
)
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}
#' @method all ab_selector
#' @export
#' @noRd
all.ab_selector <- function ( ... , na.rm = FALSE ) {
all_any_ab_selector ( " all" , ... , na.rm = na.rm )
}
#' @method any ab_selector
#' @export
#' @noRd
any.ab_selector <- function ( ... , na.rm = FALSE ) {
all_any_ab_selector ( " any" , ... , na.rm = na.rm )
}
#' @method all ab_selector_any_all
#' @export
#' @noRd
all.ab_selector_any_all <- function ( ... , na.rm = FALSE ) {
# this is all() on a logical vector from `==.ab_selector` or `!=.ab_selector`
# e.g., example_isolates %>% filter(all(carbapenems() == "R"))
# so just return the vector as is, only correcting for na.rm
out <- unclass ( c ( ... ) )
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if ( isTRUE ( na.rm ) ) {
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out <- out [ ! is.na ( out ) ]
}
out
}
#' @method any ab_selector_any_all
#' @export
#' @noRd
any.ab_selector_any_all <- function ( ... , na.rm = FALSE ) {
# this is any() on a logical vector from `==.ab_selector` or `!=.ab_selector`
# e.g., example_isolates %>% filter(any(carbapenems() == "R"))
# so just return the vector as is, only correcting for na.rm
out <- unclass ( c ( ... ) )
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if ( isTRUE ( na.rm ) ) {
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out <- out [ ! is.na ( out ) ]
}
out
}
#' @method == ab_selector
#' @export
#' @noRd
`==.ab_selector` <- function ( e1 , e2 ) {
calls <- as.character ( match.call ( ) )
fn_name <- calls [2 ]
fn_name <- gsub ( " ^(c\\()(.*)(\\))$" , " \\2" , fn_name )
if ( is_any ( fn_name ) ) {
type <- " any"
} else if ( is_all ( fn_name ) ) {
type <- " all"
} else {
type <- " all"
if ( length ( e1 ) > 1 ) {
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message_ (
" Assuming a filter on " , type , " " , length ( e1 ) , " " , gsub ( " [\\(\\)]" , " " , fn_name ) ,
" . Wrap around `all()` or `any()` to prevent this note."
)
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}
}
structure ( all_any_ab_selector ( type = type , e1 , e2 ) ,
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class = c ( " ab_selector_any_all" , " logical" )
)
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}
#' @method != ab_selector
#' @export
#' @noRd
`!=.ab_selector` <- function ( e1 , e2 ) {
calls <- as.character ( match.call ( ) )
fn_name <- calls [2 ]
fn_name <- gsub ( " ^(c\\()(.*)(\\))$" , " \\2" , fn_name )
if ( is_any ( fn_name ) ) {
type <- " any"
} else if ( is_all ( fn_name ) ) {
type <- " all"
} else {
type <- " all"
if ( length ( e1 ) > 1 ) {
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message_ (
" Assuming a filter on " , type , " " , length ( e1 ) , " " , gsub ( " [\\(\\)]" , " " , fn_name ) ,
" . Wrap around `all()` or `any()` to prevent this note."
)
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}
}
# this is `!=`, so turn around the values
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sir <- c ( " S" , " I" , " R" )
e2 <- sir [sir != e2 ]
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structure ( all_any_ab_selector ( type = type , e1 , e2 ) ,
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class = c ( " ab_selector_any_all" , " logical" )
)
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}
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#' @method & ab_selector
#' @export
#' @noRd
`&.ab_selector` <- function ( e1 , e2 ) {
# this is only required for base R, since tidyselect has already implemented this
# e.g., for: example_isolates[, penicillins() & administrable_per_os()]
structure ( intersect ( unclass ( e1 ) , unclass ( e2 ) ) ,
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class = c ( " ab_selector" , " character" )
)
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}
#' @method | ab_selector
#' @export
#' @noRd
`|.ab_selector` <- function ( e1 , e2 ) {
# this is only required for base R, since tidyselect has already implemented this
# e.g., for: example_isolates[, penicillins() | administrable_per_os()]
structure ( union ( unclass ( e1 ) , unclass ( e2 ) ) ,
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class = c ( " ab_selector" , " character" )
)
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}
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is_any <- function ( el1 ) {
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syscalls <- paste0 ( trimws2 ( deparse ( sys.calls ( ) ) ) , collapse = " " )
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el1 <- gsub ( " (.*),.*" , " \\1" , el1 )
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syscalls %like% paste0 ( " [^_a-zA-Z0-9]any\\(" , " (c\\()?" , el1 )
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}
is_all <- function ( el1 ) {
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syscalls <- paste0 ( trimws2 ( deparse ( sys.calls ( ) ) ) , collapse = " " )
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el1 <- gsub ( " (.*),.*" , " \\1" , el1 )
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syscalls %like% paste0 ( " [^_a-zA-Z0-9]all\\(" , " (c\\()?" , el1 )
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}
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find_ab_group <- function ( ab_class_args ) {
ab_class_args <- gsub ( " [^a-zA-Z0-9]" , " .*" , ab_class_args )
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AMR_env $ AB_lookup %pm>%
subset ( group %like% ab_class_args |
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atc_group1 %like% ab_class_args |
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atc_group2 %like% ab_class_args ) %pm>%
pm_pull ( group ) %pm>%
unique ( ) %pm>%
tolower ( ) %pm>%
sort ( ) %pm>%
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paste ( collapse = " /" )
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}
find_ab_names <- function ( ab_group , n = 3 ) {
ab_group <- gsub ( " [^a-zA-Z|0-9]" , " .*" , ab_group )
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# try popular first, they have DDDs
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drugs <- AMR_env $ AB_lookup [which ( ( ! is.na ( AMR_env $ AB_lookup $ iv_ddd ) | ! is.na ( AMR_env $ AB_lookup $ oral_ddd ) ) &
AMR_env $ AB_lookup $ name %unlike% " " &
AMR_env $ AB_lookup $ group %like% ab_group &
AMR_env $ AB_lookup $ ab %unlike% " [0-9]$" ) , ] $ name
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if ( length ( drugs ) < n ) {
# now try it all
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drugs <- AMR_env $ AB_lookup [which ( ( AMR_env $ AB_lookup $ group %like% ab_group |
AMR_env $ AB_lookup $ atc_group1 %like% ab_group |
AMR_env $ AB_lookup $ atc_group2 %like% ab_group ) &
AMR_env $ AB_lookup $ ab %unlike% " [0-9]$" ) , ] $ name
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}
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if ( length ( drugs ) == 0 ) {
return ( " ??" )
}
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vector_or (
ab_name ( sample ( drugs , size = min ( n , length ( drugs ) ) , replace = FALSE ) ,
tolower = TRUE ,
language = NULL
) ,
quotes = FALSE
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)
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}
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message_agent_names <- function ( function_name , agents , ab_group = NULL , examples = " " , ab_class_args = NULL , call = NULL ) {
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if ( message_not_thrown_before ( function_name , sort ( agents ) ) ) {
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if ( length ( agents ) == 0 ) {
if ( is.null ( ab_group ) ) {
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message_ ( " For `" , function_name , " ()` no antimicrobial drugs found" , examples , " ." )
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} else if ( ab_group == " administrable_per_os" ) {
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message_ ( " No orally administrable drugs found" , examples , " ." )
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} else if ( ab_group == " administrable_iv" ) {
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message_ ( " No IV administrable drugs found" , examples , " ." )
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} else {
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message_ ( " No antimicrobial drugs of class '" , ab_group , " ' found" , examples , " ." )
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}
} else {
agents_formatted <- paste0 ( " '" , font_bold ( agents , collapse = NULL ) , " '" )
agents_names <- ab_name ( names ( agents ) , tolower = TRUE , language = NULL )
need_name <- generalise_antibiotic_name ( agents ) != generalise_antibiotic_name ( agents_names )
agents_formatted [need_name ] <- paste0 ( agents_formatted [need_name ] , " (" , agents_names [need_name ] , " )" )
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message_ (
" For `" , function_name , " (" ,
ifelse ( function_name == " ab_class" ,
paste0 ( " \"" , ab_class_args , " \"" ) ,
ifelse ( ! is.null ( call ) ,
paste0 ( deparse ( call ) , collapse = " " ) ,
" "
)
) ,
" )` using " ,
ifelse ( length ( agents ) == 1 , " column " , " columns " ) ,
vector_and ( agents_formatted , quotes = FALSE , sort = FALSE )
)
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}
}
}