# ==================================================================== # # TITLE: # # AMR: An R Package for Working with Antimicrobial Resistance Data # # # # SOURCE CODE: # # https://github.com/msberends/AMR # # # # PLEASE CITE THIS SOFTWARE AS: # # 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. # # https://doi.org/10.18637/jss.v104.i03 # # # # 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. # # # # 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. # # # # Visit our website for the full manual and a complete tutorial about # # how to conduct AMR data analysis: https://msberends.github.io/AMR/ # # ==================================================================== # #' Transform Input to an Antibiotic ID #' #' Use this function to determine the antibiotic drug code of one or more antibiotics. The data set [antibiotics] will be searched for abbreviations, official names and synonyms (brand names). #' @param x a [character] vector to determine to antibiotic ID #' @param flag_multiple_results a [logical] to indicate whether a note should be printed to the console that probably more than one antibiotic drug code or name can be retrieved from a single input value. #' @param info a [logical] to indicate whether a progress bar should be printed - the default is `TRUE` only in interactive mode #' @param ... arguments passed on to internal functions #' @rdname as.ab #' @inheritSection WHOCC WHOCC #' @details All entries in the [antibiotics] data set have three different identifiers: a human readable EARS-Net code (column `ab`, used by ECDC and WHONET), an ATC code (column `atc`, used by WHO), and a CID code (column `cid`, Compound ID, used by PubChem). The data set contains more than 5,000 official brand names from many different countries, as found in PubChem. Not that some drugs contain multiple ATC codes. #' #' All these properties will be searched for the user input. The [as.ab()] can correct for different forms of misspelling: #' #' * Wrong spelling of drug names (such as "tobramicin" or "gentamycin"), which corrects for most audible similarities such as f/ph, x/ks, c/z/s, t/th, etc. #' * Too few or too many vowels or consonants #' * Switching two characters (such as "mreopenem", often the case in clinical data, when doctors typed too fast) #' * Digitalised paper records, leaving artefacts like 0/o/O (zero and O's), B/8, n/r, etc. #' #' Use the [`ab_*`][ab_property()] functions to get properties based on the returned antibiotic ID, see *Examples*. #' #' Note: the [as.ab()] and [`ab_*`][ab_property()] functions may use very long regular expression to match brand names of antimicrobial drugs. This may fail on some systems. #' #' You can add your own manual codes to be considered by [as.ab()] and all [`ab_*`][ab_property()] functions, see [add_custom_antimicrobials()]. #' @section Source: #' World Health Organization (WHO) Collaborating Centre for Drug Statistics Methodology: \url{https://www.whocc.no/atc_ddd_index/} #' #' European Commission Public Health PHARMACEUTICALS - COMMUNITY REGISTER: \url{https://ec.europa.eu/health/documents/community-register/html/reg_hum_atc.htm} #' @aliases ab #' @return A [character] [vector] with additional class [`ab`] #' @seealso #' * [antibiotics] for the [data.frame] that is being used to determine ATCs #' * [ab_from_text()] for a function to retrieve antimicrobial drugs from clinical text (from health care records) #' @inheritSection AMR Reference Data Publicly Available #' @export #' @examples #' # these examples all return "ERY", the ID of erythromycin: #' as.ab("J01FA01") #' as.ab("J 01 FA 01") #' as.ab("Erythromycin") #' as.ab("eryt") #' as.ab(" eryt 123") #' as.ab("ERYT") #' as.ab("ERY") #' as.ab("eritromicine") # spelled wrong, yet works #' as.ab("Erythrocin") # trade name #' as.ab("Romycin") # trade name #' #' # spelling from different languages and dyslexia are no problem #' ab_atc("ceftriaxon") #' ab_atc("cephtriaxone") # small spelling error #' ab_atc("cephthriaxone") # or a bit more severe #' ab_atc("seephthriaaksone") # and even this works #' #' # use ab_* functions to get a specific properties (see ?ab_property); #' # they use as.ab() internally: #' ab_name("J01FA01") #' ab_name("eryt") #' #' \donttest{ #' if (require("dplyr")) { #' # you can quickly rename 'sir' columns using set_ab_names() with dplyr: #' example_isolates %>% #' set_ab_names(where(is.sir), property = "atc") #' } #' } as.ab <- function(x, flag_multiple_results = TRUE, info = interactive(), ...) { meet_criteria(x, allow_class = c("character", "numeric", "integer", "factor"), allow_NA = TRUE) meet_criteria(flag_multiple_results, allow_class = "logical", has_length = 1) meet_criteria(info, allow_class = "logical", has_length = 1) if (is.ab(x)) { return(x) } if (all(x %in% c(AMR_env$AB_lookup$ab, NA))) { # all valid AB codes, but not yet right class return(set_clean_class(x, new_class = c("ab", "character") )) } initial_search <- is.null(list(...)$initial_search) already_regex <- isTRUE(list(...)$already_regex) fast_mode <- isTRUE(list(...)$fast_mode) x_bak <- x x <- toupper(x) # remove diacritics x <- iconv(x, from = "UTF-8", to = "ASCII//TRANSLIT") x <- gsub('"', "", x, fixed = TRUE) x <- gsub("(specimen|specimen date|specimen_date|spec_date|gender|^dates?$)", "", x, ignore.case = TRUE, perl = TRUE) # penicillin is a special case: we call it so, but then mean benzylpenicillin x[x %like_case% "^PENICILLIN" & x %unlike_case% "[ /+-]"] <- "benzylpenicillin" x_bak_clean <- x if (already_regex == FALSE) { x_bak_clean <- generalise_antibiotic_name(x_bak_clean) } x <- unique(x_bak_clean) # this means that every x is in fact generalise_antibiotic_name(x) x_new <- rep(NA_character_, length(x)) x_unknown <- character(0) x_unknown_ATCs <- character(0) note_if_more_than_one_found <- function(found, index, from_text) { if (isTRUE(initial_search) && isTRUE(length(from_text) > 1)) { abnames <- ab_name(from_text, tolower = TRUE, initial_search = FALSE) if (ab_name(found[1L], language = NULL) %like% "(clavulanic acid|(avi|tazo|mono|vabor)bactam)") { abnames <- abnames[!abnames %in% c("clavulanic acid", "avibactam", "tazobactam", "vaborbactam", "monobactam")] } if (length(abnames) > 1) { message_( "More than one result was found for item ", index, ": ", vector_and(abnames, quotes = FALSE) ) } } found[1L] } # Fill in names, AB codes, CID codes and ATC codes directly (`x` is already clean and uppercase) known_names <- x %in% AMR_env$AB_lookup$generalised_name x_new[known_names] <- AMR_env$AB_lookup$ab[match(x[known_names], AMR_env$AB_lookup$generalised_name)] known_codes_ab <- x %in% AMR_env$AB_lookup$ab known_codes_atc <- vapply(FUN.VALUE = logical(1), x, function(x_) x_ %in% unlist(AMR_env$AB_lookup$atc), USE.NAMES = FALSE) known_codes_cid <- x %in% AMR_env$AB_lookup$cid x_new[known_codes_ab] <- AMR_env$AB_lookup$ab[match(x[known_codes_ab], AMR_env$AB_lookup$ab)] x_new[known_codes_atc] <- AMR_env$AB_lookup$ab[vapply( FUN.VALUE = integer(1), x[known_codes_atc], function(x_) { which(vapply( FUN.VALUE = logical(1), AMR_env$AB_lookup$atc, function(atc) x_ %in% atc ))[1L] }, USE.NAMES = FALSE )] x_new[known_codes_cid] <- AMR_env$AB_lookup$ab[match(x[known_codes_cid], AMR_env$AB_lookup$cid)] previously_coerced <- x %in% AMR_env$ab_previously_coerced$x x_new[previously_coerced & is.na(x_new)] <- AMR_env$ab_previously_coerced$ab[match(x[is.na(x_new) & x %in% AMR_env$ab_previously_coerced$x], AMR_env$ab_previously_coerced$x)] already_known <- known_names | known_codes_ab | known_codes_atc | known_codes_cid | previously_coerced # fix for NAs x_new[is.na(x)] <- NA already_known[is.na(x)] <- FALSE if (isTRUE(initial_search) && sum(already_known) < length(x)) { progress <- progress_ticker(n = sum(!already_known), n_min = 25, print = info) # start if n >= 25 on.exit(close(progress)) } for (i in which(!already_known)) { if (isTRUE(initial_search)) { progress$tick() } if (is.na(x[i]) || is.null(x[i])) { next } if (identical(x[i], "") || # prevent "bacteria" from coercing to TMP, since Bacterial is a brand name of it: identical(tolower(x[i]), "bacteria")) { x_unknown <- c(x_unknown, x_bak[x[i] == x_bak_clean][1]) next } if (x[i] %like_case% "[A-Z][0-9][0-9][A-Z][A-Z][0-9][0-9]") { # seems an ATC code, but the available ones are in `already_known`, so: x_unknown <- c(x_unknown, x[i]) x_unknown_ATCs <- c(x_unknown_ATCs, x[i]) x_new[i] <- NA_character_ next } if (fast_mode == FALSE && flag_multiple_results == TRUE && x[i] %like% "[ ]") { from_text <- tryCatch(suppressWarnings(ab_from_text(x[i], initial_search = FALSE, translate_ab = FALSE)[[1]]), error = function(e) character(0) ) } else { from_text <- character(0) } # old code for phenoxymethylpenicillin (Peni V) if (x[i] == "PNV") { x_new[i] <- "PHN" next } # exact LOINC code loinc_found <- unlist(lapply( AMR_env$AB_lookup$generalised_loinc, function(s) x[i] %in% s )) found <- AMR_env$AB_lookup$ab[loinc_found == TRUE] if (length(found) > 0) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # exact synonym synonym_found <- unlist(lapply( AMR_env$AB_lookup$generalised_synonyms, function(s) x[i] %in% s )) found <- AMR_env$AB_lookup$ab[synonym_found == TRUE] if (length(found) > 0) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # exact abbreviation abbr_found <- unlist(lapply( AMR_env$AB_lookup$generalised_abbreviations, # require at least 2 characters for abbreviations function(s) x[i] %in% s && nchar(x[i]) >= 2 )) found <- AMR_env$AB_lookup$ab[abbr_found == TRUE] if (length(found) > 0) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # length of input is quite long, and Levenshtein distance is only max 2 if (nchar(x[i]) >= 10) { levenshtein <- as.double(utils::adist(x[i], AMR_env$AB_lookup$generalised_name)) if (any(levenshtein <= 2)) { found <- AMR_env$AB_lookup$ab[which(levenshtein <= 2)] x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } } # allow characters that resemble others, but only continue when having more than 3 characters if (nchar(x[i]) <= 3) { x_unknown <- c(x_unknown, x_bak[x[i] == x_bak_clean][1]) next } x_spelling <- x[i] if (already_regex == FALSE) { x_spelling <- gsub("[IY]+", "[IY]+", x_spelling, perl = TRUE) x_spelling <- gsub("(C|K|Q|QU|S|Z|X|KS)+", "(C|K|Q|QU|S|Z|X|KS)+", x_spelling, perl = TRUE) x_spelling <- gsub("(PH|F|V)+", "(PH|F|V)+", x_spelling, perl = TRUE) x_spelling <- gsub("(TH|T)+", "(TH|T)+", x_spelling, perl = TRUE) x_spelling <- gsub("A+", "A+", x_spelling, perl = TRUE) x_spelling <- gsub("E+", "E+", x_spelling, perl = TRUE) x_spelling <- gsub("O+", "O+", x_spelling, perl = TRUE) # allow any ending of -in/-ine and -im/-ime x_spelling <- gsub("(\\[IY\\]\\+(N|M)|\\[IY\\]\\+(N|M)E\\+?)$", "[IY]+(N|M)E*", x_spelling, perl = TRUE) # allow any ending of -ol/-ole x_spelling <- gsub("(O\\+L|O\\+LE\\+)$", "O+LE*", x_spelling, perl = TRUE) # allow any ending of -on/-one x_spelling <- gsub("(O\\+N|O\\+NE\\+)$", "O+NE*", x_spelling, perl = TRUE) # replace multiple same characters to single one with '+', like "ll" -> "l+" x_spelling <- gsub("(.)\\1+", "\\1+", x_spelling, perl = TRUE) # replace spaces and slashes with a possibility on both x_spelling <- gsub("[ /]", "( .*|.*/)", x_spelling, perl = TRUE) # correct for digital reading text (OCR) x_spelling <- gsub("[NRD8B]", "[NRD8B]", x_spelling, perl = TRUE) x_spelling <- gsub("(O|0)", "(O|0)+", x_spelling, perl = TRUE) x_spelling <- gsub("++", "+", x_spelling, fixed = TRUE) } # try if name starts with it found <- AMR_env$AB_lookup[which(AMR_env$AB_lookup$generalised_name %like% paste0("^", x_spelling)), "ab", drop = TRUE] if (length(found) > 0) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # try if name ends with it found <- AMR_env$AB_lookup[which(AMR_env$AB_lookup$generalised_name %like% paste0(x_spelling, "$")), "ab", drop = TRUE] if (nchar(x[i]) >= 4 && length(found) > 0) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # and try if any synonym starts with it synonym_found <- unlist(lapply( AMR_env$AB_lookup$generalised_synonyms, function(s) any(s %like% paste0("^", x_spelling)) )) found <- AMR_env$AB_lookup$ab[synonym_found == TRUE] if (length(found) > 0) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # INITIAL SEARCH - More uncertain results ---- if (isTRUE(initial_search) && fast_mode == FALSE) { # only run on first try # try by removing all spaces if (x[i] %like% " ") { found <- suppressWarnings(as.ab(gsub(" +", "", x[i], perl = TRUE), initial_search = FALSE)) if (length(found) > 0 && !is.na(found)) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } } # try by removing all spaces and numbers if (x[i] %like% " " || x[i] %like% "[0-9]") { found <- suppressWarnings(as.ab(gsub("[ 0-9]", "", x[i], perl = TRUE), initial_search = FALSE)) if (length(found) > 0 && !is.na(found)) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } } # transform back from other languages and try again x_translated <- paste( lapply( strsplit(x[i], "[^A-Z0-9]"), function(y) { for (i in seq_len(length(y))) { for (lang in LANGUAGES_SUPPORTED[LANGUAGES_SUPPORTED != "en"]) { y[i] <- ifelse(tolower(y[i]) %in% tolower(TRANSLATIONS[, lang, drop = TRUE]), TRANSLATIONS[which(tolower(TRANSLATIONS[, lang, drop = TRUE]) == tolower(y[i]) & !isFALSE(TRANSLATIONS$fixed)), "pattern"], y[i] ) } } generalise_antibiotic_name(y) } )[[1]], collapse = "/" ) x_translated_guess <- suppressWarnings(as.ab(x_translated, initial_search = FALSE)) if (!is.na(x_translated_guess)) { x_new[i] <- x_translated_guess next } # now also try to coerce brandname combinations like "Amoxy/clavulanic acid" x_translated <- paste( lapply( strsplit(x_translated, "[^A-Z0-9 ]"), function(y) { for (i in seq_len(length(y))) { y_name <- suppressWarnings(ab_name(y[i], language = NULL, initial_search = FALSE)) y[i] <- ifelse(!is.na(y_name), y_name, y[i] ) } generalise_antibiotic_name(y) } )[[1]], collapse = "/" ) x_translated_guess <- suppressWarnings(as.ab(x_translated, initial_search = FALSE)) if (!is.na(x_translated_guess)) { x_new[i] <- x_translated_guess next } # try by removing all trailing capitals if (x[i] %like_case% "[a-z]+[A-Z]+$") { found <- suppressWarnings(as.ab(gsub("[A-Z]+$", "", x[i], perl = TRUE), initial_search = FALSE)) if (!is.na(found)) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } } # keep only letters found <- suppressWarnings(as.ab(gsub("[^A-Z]", "", x[i], perl = TRUE), initial_search = FALSE)) if (!is.na(found)) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # try from a bigger text, like from a health care record, see ?ab_from_text # already calculated above if flag_multiple_results = TRUE if (flag_multiple_results == TRUE) { found <- from_text[1L] } else { found <- tryCatch(suppressWarnings(ab_from_text(x[i], initial_search = FALSE, translate_ab = FALSE)[[1]][1L]), error = function(e) NA_character_ ) } if (!is.na(found)) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # first 5 except for cephalosporins, then first 7 (those cephalosporins all start quite the same!) found <- suppressWarnings(as.ab(substr(x[i], 1, 5), initial_search = FALSE)) if (!is.na(found) && ab_group(found, initial_search = FALSE) %unlike% "cephalosporins") { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } found <- suppressWarnings(as.ab(substr(x[i], 1, 7), initial_search = FALSE)) if (!is.na(found)) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # make all consonants facultative search_str <- gsub("([BCDFGHJKLMNPQRSTVWXZ])", "\\1*", x[i], perl = TRUE) found <- suppressWarnings(as.ab(search_str, initial_search = FALSE, already_regex = TRUE)) # keep at least 4 normal characters if (nchar(gsub(".\\*", "", search_str, perl = TRUE)) < 4) { found <- NA } if (!is.na(found)) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # make all vowels facultative search_str <- gsub("([AEIOUY])", "\\1*", x[i], perl = TRUE) found <- suppressWarnings(as.ab(search_str, initial_search = FALSE, already_regex = TRUE)) # keep at least 5 normal characters if (nchar(gsub(".\\*", "", search_str, perl = TRUE)) < 5) { found <- NA } if (!is.na(found)) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # allow misspelling of vowels x_spelling <- gsub("A+", "[AEIOU]+", x_spelling, fixed = TRUE) x_spelling <- gsub("E+", "[AEIOU]+", x_spelling, fixed = TRUE) x_spelling <- gsub("I+", "[AEIOU]+", x_spelling, fixed = TRUE) x_spelling <- gsub("O+", "[AEIOU]+", x_spelling, fixed = TRUE) x_spelling <- gsub("U+", "[AEIOU]+", x_spelling, fixed = TRUE) found <- suppressWarnings(as.ab(x_spelling, initial_search = FALSE, already_regex = TRUE)) if (!is.na(found)) { x_new[i] <- note_if_more_than_one_found(found, i, from_text) next } # try with switched character, like "mreopenem" for (j in seq_len(nchar(x[i]))) { x_switched <- paste0( # beginning part: substr(x[i], 1, j - 1), # here is the switching of 2 characters: substr(x[i], j + 1, j + 1), substr(x[i], j, j), # ending part: substr(x[i], j + 2, nchar(x[i])) ) found <- suppressWarnings(as.ab(x_switched, initial_search = FALSE)) if (!is.na(found)) { break } } if (!is.na(found)) { x_new[i] <- found[1L] next } } # end of initial_search = TRUE # not found x_unknown <- c(x_unknown, x_bak[x[i] == x_bak_clean][1]) } if (isTRUE(initial_search) && sum(already_known) < length(x)) { close(progress) } # save to package env to save time for next time if (isTRUE(initial_search)) { AMR_env$ab_previously_coerced <- AMR_env$ab_previously_coerced[which(!AMR_env$ab_previously_coerced$x %in% x), , drop = FALSE] AMR_env$ab_previously_coerced <- unique(rbind_AMR( AMR_env$ab_previously_coerced, data.frame( x = x, ab = x_new, x_bak = x_bak[match(x, x_bak_clean)], stringsAsFactors = FALSE ) )) } # take failed ATC codes apart from rest if (length(x_unknown_ATCs) > 0 && fast_mode == FALSE) { warning_( "in `as.ab()`: these ATC codes are not (yet) in the antibiotics data set: ", vector_and(x_unknown_ATCs), "." ) } x_unknown <- x_unknown[!x_unknown %in% x_unknown_ATCs] x_unknown <- c( x_unknown, AMR_env$ab_previously_coerced$x_bak[which(AMR_env$ab_previously_coerced$x %in% x & is.na(AMR_env$ab_previously_coerced$ab))] ) if (length(x_unknown) > 0 && fast_mode == FALSE) { warning_( "in `as.ab()`: these values could not be coerced to a valid antimicrobial ID: ", vector_and(x_unknown), "." ) } x_result <- x_new[match(x_bak_clean, x)] if (length(x_result) == 0) { x_result <- NA_character_ } set_clean_class(x_result, new_class = c("ab", "character") ) } #' @rdname as.ab #' @export is.ab <- function(x) { inherits(x, "ab") } # will be exported using s3_register() in R/zzz.R pillar_shaft.ab <- function(x, ...) { out <- trimws(format(x)) out[is.na(x)] <- font_na(NA) # add the names to the drugs as mouse-over! if (tryCatch(isTRUE(getExportedValue("ansi_has_hyperlink_support", ns = asNamespace("cli"))()), error = function(e) FALSE)) { out[!is.na(x)] <- font_url(url = ab_name(x[!is.na(x)], language = NULL), txt = out[!is.na(x)]) } create_pillar_column(out, align = "left", min_width = 4) } # will be exported using s3_register() in R/zzz.R type_sum.ab <- function(x, ...) { "ab" } #' @method print ab #' @export #' @noRd print.ab <- function(x, ...) { cat("Class 'ab'\n") print(as.character(x), quote = FALSE) } #' @method as.data.frame ab #' @export #' @noRd as.data.frame.ab <- function(x, ...) { nm <- deparse1(substitute(x)) if (!"nm" %in% names(list(...))) { as.data.frame.vector(as.ab(x), ..., nm = nm) } else { as.data.frame.vector(as.ab(x), ...) } } #' @method [ ab #' @export #' @noRd "[.ab" <- function(x, ...) { y <- NextMethod() attributes(y) <- attributes(x) y } #' @method [[ ab #' @export #' @noRd "[[.ab" <- function(x, ...) { y <- NextMethod() attributes(y) <- attributes(x) y } #' @method [<- ab #' @export #' @noRd "[<-.ab" <- function(i, j, ..., value) { y <- NextMethod() attributes(y) <- attributes(i) return_after_integrity_check(y, "antimicrobial drug code", AMR_env$AB_lookup$ab) } #' @method [[<- ab #' @export #' @noRd "[[<-.ab" <- function(i, j, ..., value) { y <- NextMethod() attributes(y) <- attributes(i) return_after_integrity_check(y, "antimicrobial drug code", AMR_env$AB_lookup$ab) } #' @method c ab #' @export #' @noRd c.ab <- function(...) { x <- list(...)[[1L]] y <- NextMethod() attributes(y) <- attributes(x) return_after_integrity_check(y, "antimicrobial drug code", AMR_env$AB_lookup$ab) } #' @method unique ab #' @export #' @noRd unique.ab <- function(x, incomparables = FALSE, ...) { y <- NextMethod() attributes(y) <- attributes(x) y } #' @method rep ab #' @export #' @noRd rep.ab <- function(x, ...) { y <- NextMethod() attributes(y) <- attributes(x) y } generalise_antibiotic_name <- function(x) { x <- toupper(x) # remove suffices x <- gsub("_(MIC|RSI|SIR|DIS[CK])$", "", x, perl = TRUE) # remove disk concentrations, like LVX_NM -> LVX x <- gsub("_[A-Z]{2}[0-9_.]{0,3}$", "", x, perl = TRUE) # remove part between brackets if that's followed by another string x <- gsub("(.*)+ [(].*[)]", "\\1", x) # keep only max 1 space x <- trimws2(gsub(" +", " ", x, perl = TRUE)) # non-character, space or number should be a slash x <- gsub("[^A-Z0-9 -]", "/", x, perl = TRUE) # spaces around non-characters must be removed: amox + clav -> amox/clav x <- gsub("(.*[A-Z0-9]) ([^A-Z0-9].*)", "\\1\\2", x, perl = TRUE) x <- gsub("(.*[^A-Z0-9]) ([A-Z0-9].*)", "\\1\\2", x, perl = TRUE) # remove hyphen after a starting "co" x <- gsub("^CO-", "CO", x, perl = TRUE) # replace operators with a space x <- gsub("(/| AND | WITH | W/|[+]|[-])+", " ", x, perl = TRUE) x } get_translate_ab <- function(translate_ab) { translate_ab <- as.character(translate_ab)[1L] if (translate_ab %in% c("TRUE", "official")) { return("name") } else if (translate_ab %in% c(NA_character_, "FALSE")) { return(FALSE) } else { translate_ab <- tolower(translate_ab) stop_ifnot(translate_ab %in% colnames(AMR::antibiotics), "invalid value for 'translate_ab', this must be a column name of the antibiotics data set\n", "or TRUE (equals 'name') or FALSE to not translate at all.", call = FALSE ) translate_ab } }