NEWS.md
Support for EUCAST Clinical Breakpoints v11.0 (2021), effective in the eucast_rules()
function and in as.rsi()
to interpret MIC and disk diffusion values. This is now the default guideline in this package.
eucast_dosage()
to get a data.frame
with advised dosages of a certain bug-drug combination, which is based on the new dosage
data setdosage
to fuel the new eucast_dosage()
function and to make this data available in a structured wayexample_isolates
now reflects the latest EUCAST rulesAdded argument only_rsi_columns
for some functions, which defaults to FALSE
, to indicate if the functions must only be applied to columns that are of class <rsi>
(i.e., transformed with as.rsi()
). This increases speed since automatic determination of antibiotic columns is not needed anymore. Affected functions are:
ab_class()
and its wrappers, such as aminoglycosides()
, carbapenems()
, penicillins()
)filter_ab_class()
and its wrappers, such as filter_aminoglycosides()
, filter_carbapenems()
, filter_penicillins()
)eucast_rules()
mdro()
(including wrappers such as brmo()
, mrgn()
and eucast_exceptional_phenotypes()
)guess_ab_col()
Functions oxazolidinones()
(an antibiotic selector function) and filter_oxazolidinones()
(an antibiotic filter function) to select/filter on e.g. linezolid and tedizolid
library(dplyr)
x <- example_isolates %>% select(date, hospital_id, oxazolidinones())
#> Selecting oxazolidinones: column 'LNZ' (linezolid)
x <- example_isolates %>% filter_oxazolidinones()
#> Filtering on oxazolidinones: value in column `LNZ` (linezolid) is either "R", "S" or "I"
Support for custom MDRO guidelines, using the new custom_mdro_guideline()
function, please see mdro()
for additional info
Function isolate_identifier()
, which will paste a microorganism code with all antimicrobial results of a data set into one string for each row. This is useful to compare isolates, e.g. between institutions or regions, when there is no genotyping available.
ggplot()
generics for classes <mic>
and <disk>
Function mo_is_yeast()
, which determines whether a microorganism is a member of the taxonomic class Saccharomycetes or the taxonomic order Saccharomycetales:
mo_kingdom(c("Aspergillus", "Candida"))
#> [1] "Fungi" "Fungi"
mo_is_yeast(c("Aspergillus", "Candida"))
#> [1] FALSE TRUE
# usage for filtering data:
example_isolates[which(mo_is_yeast()), ] # base R
example_isolates %>% filter(mo_is_yeast()) # dplyr
The mo_type()
function has also been updated to reflect this change:
mo_url()
) will now lead to https://lpsn.dsmz.de
rsi
, <mic>
, and <disk>
:
translate
)plot()
and with ggplot2 using ggplot()
on any vector of MIC and disk diffusion valuesis.rsi()
and is.rsi.eligible()
now return a vector of TRUE
/FALSE
when the input is a data set, by iterating over all columnsmo_is_gram_negative()
, mo_is_gram_positive()
, mo_is_intrinsic_resistant()
, first_isolate()
, mdro()
) now work with dplyr
s group_by()
againfirst_isolate()
can be used with group_by()
(also when using a dot .
as input for the data) and now returns the names of the groupsmicroorganisms.codes
(which contains popular LIS and WHONET codes for microorganisms) for some species of Mycobacterium that previously incorrectly returned M. africanum
antibiotics
data set"PNV"
will now correctly be interpreted as PHN
, the antibiotic code for phenoxymethylpenicillin (‘peni V’)mdro(..., verbose = TRUE)
for German guideline (3MGRN and 4MGRN) and Dutch guideline (BRMO, only P. aeruginosa)is.rsi.eligible()
now detects if the column name resembles an antibiotic name or code and now returns TRUE
immediately if the input contains any of the values “R”, “S” or “I”. This drastically improves speed, also for a lot of other functions that rely on automatic determination of antibiotic columns.get_episode()
and is_new_episode()
now support less than a day as value for argument episode_days
(e.g., to include one patient/test per hour)ampc_cephalosporin_resistance
in eucast_rules()
now also applies to value “I” (not only “S”)print()
and summary()
on a Principal Components Analysis object (pca()
) now print additional group info if the original data was grouped using dplyr::group_by()
guess_ab_col()
. As this also internally improves the reliability of first_isolate()
and mdro()
, this might have a slight impact on the results of those functions.mo_name()
when used in other languages than Englishlike()
function (and its fast alias %like%
) now always use Perl compatibility, improving speed for many functions in this package (e.g., as.mo()
is now up to 4 times faster)random_disk()
and random_mic()
now have an expanded range in their randomisationmo_genus("GISA")
will return "Staphylococcus"
library(AMR)
) now is ~50 times faster than before, in costs of package size (which increased by ~3 MB)Functions get_episode()
and is_new_episode()
to determine (patient) episodes which are not necessarily based on microorganisms. The get_episode()
function returns the index number of the episode per group, while the is_new_episode()
function returns values TRUE
/FALSE
to indicate whether an item in a vector is the start of a new episode. They also support dplyr
s grouping (i.e. using group_by()
):
library(dplyr)
example_isolates %>%
group_by(patient_id, hospital_id) %>%
filter(is_new_episode(date, episode_days = 60))
Functions mo_is_gram_negative()
and mo_is_gram_positive()
as wrappers around mo_gramstain()
. They always return TRUE
or FALSE
(except when the input is NA
or the MO code is UNKNOWN
), thus always return FALSE
for species outside the taxonomic kingdom of Bacteria.
Function mo_is_intrinsic_resistant()
to test for intrinsic resistance, based on EUCAST Intrinsic Resistance and Unusual Phenotypes v3.2 from 2020.
Functions random_mic()
, random_disk()
and random_rsi()
for random value generation. The functions random_mic()
and random_disk()
take microorganism names and antibiotic names as input to make generation more realistic.
New argument ampc_cephalosporin_resistance
in eucast_rules()
to correct for AmpC de-repressed cephalosporin-resistant mutants
Interpretation of antimicrobial resistance - as.rsi()
:
as.rsi()
can now be set by the user, using the reference_data
argument. This allows for using own interpretation guidelines. The user-set data must have the same structure as rsi_translation
.as.rsi()
on a data.frameas.rsi()
on a data.frame in older R versionsas.rsi()
on a data.frame will not print a message anymore if the values are already clean R/SI valuesas.rsi()
on MICs or disk diffusion while there is intrinsic antimicrobial resistance, a warning will be thrown to remind about thisas.rsi()
on a data.frame
that only contains one column for antibiotic interpretationsSome functions are now context-aware when used inside dplyr
verbs, such as filter()
, mutate()
and summarise()
. This means that then the data argument does not need to be set anymore. This is the case for the new functions:
… and for the existing functions:
first_isolate()
,key_antibiotics()
,mdro()
,brmo()
,mrgn()
,mdr_tb()
,mdr_cmi2012()
,eucast_exceptional_phenotypes()
# to select first isolates that are Gram-negative
# and view results of cephalosporins and aminoglycosides:
library(dplyr)
example_isolates %>%
filter(first_isolate(), mo_is_gram_negative()) %>%
select(mo, cephalosporins(), aminoglycosides()) %>%
as_tibble()
For antibiotic selection functions (such as cephalosporins()
, aminoglycosides()
) to select columns based on a certain antibiotic group, the dependency on the tidyselect
package was removed, meaning that they can now also be used without the need to have this package installed and now also work in base R function calls (they rely on R 3.2 or later):
# above example in base R:
example_isolates[which(first_isolate() & mo_is_gram_negative()),
c("mo", cephalosporins(), aminoglycosides())]
For all function arguments in the code, it is now defined what the exact type of user input should be (inspired by the typed
package). If the user input for a certain function does not meet the requirements for a specific argument (such as the class or length), an informative error will be thrown. This makes the package more robust and the use of it more reproducible and reliable. In total, more than 420 arguments were defined.
Fix for set_mo_source()
, that previously would not remember the file location of the original file
Deprecated function p_symbol()
that not really fits the scope of this package. It will be removed in a future version. See here for the source code to preserve it.
Updated coagulase-negative staphylococci determination with Becker et al. 2020 (PMID 32056452), meaning that the species S. argensis, S. caeli, S. debuckii, S. edaphicus and S. pseudoxylosus are now all considered CoNS
Fix for using argument reference_df
in as.mo()
and mo_*()
functions that contain old microbial codes (from previous package versions)
Fixed a bug where mo_uncertainties()
would not return the results based on the MO matching score
Fixed a bug where as.mo()
would not return results for known laboratory codes for microorganisms
Fixed a bug where as.ab()
would sometimes fail
Better tibble printing for MIC values
Fix for plotting MIC values with plot()
Added plot()
generic to class <disk>
LA-MRSA and CA-MRSA are now recognised as an abbreviation for Staphylococcus aureus, meaning that e.g. mo_genus("LA-MRSA")
will return "Staphylococcus"
and mo_is_gram_positive("LA-MRSA")
will return TRUE
.
Fix for printing class NA
Fix for mo_shortname()
when the input contains NA
If as.mo()
takes more than 30 seconds, some suggestions will be done to improve speed
options()
were all removed in favour of a new internal environment pkg_env
sapply()
calls with vapply()
)Support for ‘EUCAST Expert Rules’ / ‘EUCAST Intrinsic Resistance and Unusual Phenotypes’ version 3.2 of May 2020. With this addition to the previously implemented version 3.1 of 2016, the eucast_rules()
function can now correct for more than 180 different antibiotics and the mdro()
function can determine multidrug resistance based on more than 150 different antibiotics. All previously implemented versions of the EUCAST rules are now maintained and kept available in this package. The eucast_rules()
function consequently gained the arguments version_breakpoints
(at the moment defaults to v10.0, 2020) and version_expertrules
(at the moment defaults to v3.2, 2020). The example_isolates
data set now also reflects the change from v3.1 to v3.2. The mdro()
function now accepts guideline == "EUCAST3.1"
and guideline == "EUCAST3.2"
.
A new vignette and website page with info about all our public and freely available data sets, that can be downloaded as flat files or in formats for use in R, SPSS, SAS, Stata and Excel: https://msberends.github.io/AMR/articles/datasets.html
Data set intrinsic_resistant
. This data set contains all bug-drug combinations where the ‘bug’ is intrinsic resistant to the ‘drug’ according to the latest EUCAST insights. It contains just two columns: microorganism
and antibiotic
.
Curious about which enterococci are actually intrinsic resistant to vancomycin?
Support for veterinary ATC codes
Support for skimming classes <rsi>
, <mic>
, <disk>
and <mo>
with the skimr
package
Although advertised that this package should work under R 3.0.0, we still had a dependency on R 3.6.0. This is fixed, meaning that our package should now work under R 3.0.0.
Improvements for as.rsi()
:
Support for using dplyr
’s across()
to interpret MIC values or disk zone diameters, which also automatically determines the column with microorganism names or codes.
Cleaning columns in a data.frame now allows you to specify those columns with tidy selection, e.g. as.rsi(df, col1:col9)
Big speed improvement for interpreting MIC values and disk zone diameters. When interpreting 5,000 MIC values of two antibiotics (10,000 values in total), our benchmarks showed a total run time going from 80.7-85.1 seconds to 1.8-2.0 seconds.
Added argument ‘add_intrinsic_resistance’ (defaults to FALSE
), that considers intrinsic resistance according to EUCAST
Fixed a bug where in EUCAST rules the breakpoint for R would be interpreted as “>=” while this should have been “<”
Added intelligent data cleaning to as.disk()
, so numbers can also be extracted from text and decimal numbers will always be rounded up:
Improvements for as.mo()
:
mo_matching_score()
. Any user input value that could mean more than one taxonomic entry is now considered ‘uncertain’. Instead of a warning, a message will be thrown and the accompanying mo_uncertainties()
has been changed completely; it now prints all possible candidates with their matching score.mo_*
functions like mo_name()
on microoganism IDs.ignore_pattern
to as.mo()
which can also be given to mo_*
functions like mo_name()
, to exclude known non-relevant input from analysing. This can also be set with the option AMR_ignore_pattern
.get_locale()
now uses at default Sys.getenv("LANG")
or, if LANG
is not set, Sys.getlocale()
. This can be overwritten by setting the option AMR_locale
.
Big speed improvement for eucast_rules()
Overall speed improvement by tweaking joining functions
Function mo_shortname()
now returns the genus for input where the species is unknown
BORSA is now recognised as an abbreviation for Staphylococcus aureus, meaning that e.g. mo_genus("BORSA")
will return “Staphylococcus”
Added a feature from AMR 1.1.0 and earlier again, but now without other package dependencies: tibble
printing support for classes <rsi>
, <mic>
, <disk>
, <ab>
and <mo>
. When using tibble
s containing antimicrobial columns (class <rsi>
), “S” will print in green, “I” will print in yellow and “R” will print in red. Microbial IDs (class <mo>
) will emphasise on the genus and species, not on the kingdom.
Names of antiviral agents in data set antivirals
now have a starting capital letter, like it is the case in the antibiotics
data set
Updated the documentation of the WHONET
data set to clarify that all patient names are fictitious
Small as.ab()
algorithm improvements
Fix for combining MIC values with raw numbers, i.e. c(as.mic(2), 2)
previously failed but now returns a valid MIC class
ggplot_rsi()
and geom_rsi()
gained arguments minimum
and language
, to influence the internal use of rsi_df()
Changes in the antibiotics
data set:
PEN
)PNV
) was removed, since its actual entry ‘Phenoxymethylpenicillin’ (code PHN
) already existedantibiotics$group
) of ‘Linezolid’ (LNZ
), ‘Cycloserine’ (CYC
), ‘Tedizolid’ (TZD
) and ‘Thiacetazone’ (THA
) is now “Oxazolidinones” instead of “Other antibacterials”Added support for using unique()
on classes <rsi>
, <mic>
, <disk>
, <ab>
and <mo>
Added argument excess
to the kurtosis()
function (defaults to FALSE
), to return the excess kurtosis, defined as the kurtosis minus three.
portion_R()
, portion_S()
and portion_I()
that were deprecated since version 0.9.0 (November 2019) and were replaced with proportion_R()
, proportion_S()
and proportion_I()
base
packageSuggests
field of the DESCRIPTION
fileFunction ab_from_text()
to retrieve antimicrobial drug names, doses and forms of administration from clinical texts in e.g. health care records, which also corrects for misspelling since it uses as.ab()
internally
Tidyverse selection helpers for antibiotic classes, that help to select the columns of antibiotics that are of a specific antibiotic class, without the need to define the columns or antibiotic abbreviations. They can be used in any function that allows selection helpers, like dplyr::select()
and tidyr::pivot_longer()
:
library(dplyr)
# Columns 'IPM' and 'MEM' are in the example_isolates data set
example_isolates %>%
select(carbapenems())
#> Selecting carbapenems: `IPM` (imipenem), `MEM` (meropenem)
Added mo_domain()
as an alias to mo_kingdom()
Added function filter_penicillins()
to filter isolates on a specific result in any column with a name in the antimicrobial ‘penicillins’ class (more specific: ATC subgroup Beta-lactam antibacterials, penicillins)
Added official antimicrobial names to all filter_ab_class()
functions, such as filter_aminoglycosides()
Added antibiotics code “FOX1” for cefoxitin screening (abbreviation “cfsc”) to the antibiotics
data set
Added Monuril as trade name for fosfomycin
Added argument conserve_capped_values
to as.rsi()
for interpreting MIC values - it makes sure that values starting with “<” (but not “<=”) will always return “S” and values starting with “>” (but not “>=”) will always return “R”. The default behaviour of as.rsi()
has not changed, so you need to specifically do as.rsi(..., conserve_capped_values = TRUE)
.
Big speed improvement for using any function on microorganism codes from earlier package versions (prior to AMR
v1.2.0), such as as.mo()
, mo_name()
, first_isolate()
, eucast_rules()
, mdro()
, etc.
As a consequence, very old microbial codes (from AMR
v0.5.0 and lower) are not supported anymore. Use as.mo()
on your microorganism names or codes to transform them to current abbreviations used in this package.
Improvements for susceptibility()
and resistance()
and all count_*()
, proportion_*()
functions:
dplyr::all_of()
) now works againImprovements for as.ab()
:
as.ab()
, making many more input errors translatable, such as digitalised health care records, using too few or too many vowels or consonants and many moreas.ab()
would return an error on invalid input valuesas.ab()
function will now throw a note if more than 1 antimicrobial drug could be retrieved from a single input value.Fixed a bug where eucast_rules()
would not work on a tibble when the tibble
or dplyr
package was loaded
Fixed a bug for CLSI 2019 guidelines (using as.rsi()
), that also included results for animals. It now only contains interpretation guidelines for humans.
All *_join_microorganisms()
functions and bug_drug_combinations()
now return the original data class (e.g. tibble
s and data.table
s)
For functions rsi_df()
, proportion_df()
and count_df()
:
count_df()
) when all antibiotics in the data set have only NA
sImproved auto-determination for columns of types <mo>
and <Date>
Fixed a bug in bug_drug_combinations()
for when only one antibiotic was in the input data
Changed the summary for class <rsi>
, to highlight the %SI vs. %R
Improved error handling, giving more useful info when functions return an error
Any progress bar will now only show in interactive mode (i.e. not in R Markdown)
Speed improvement for mdro()
and filter_ab_class()
New option arrows_textangled
for ggplot_pca()
to indicate whether the text at the end of the arrows should be angled (defaults to TRUE
, as it was in previous versions)
Added parenteral DDD to benzylpenicillin
Fixed a bug where as.mic()
could not handle dots without a leading zero (like "<=.25
)
Removed code dependency on all other R packages, making this package fully independent of the development process of others. This is a major code change, but will probably not be noticeable by most users.
Making this package independent of especially the tidyverse (e.g. packages dplyr
and tidyr
) tremendously increases sustainability on the long term, since tidyverse functions change quite often. Good for users, but hard for package maintainers. Most of our functions are replaced with versions that only rely on base R, which keeps this package fully functional for many years to come, without requiring a lot of maintenance to keep up with other packages anymore. Another upside it that this package can now be used with all versions of R since R-3.0.0 (April 2013). Our package is being used in settings where the resources are very limited. Fewer dependencies on newer software is helpful for such settings.
Negative effects of this change are:
freq()
that was borrowed from the cleaner
package was removed. Use cleaner::freq()
, or run library("cleaner")
before you use freq()
.mo
or rsi
in a tibble will no longer be in colour and printing rsi
in a tibble will show the class <ord>
, not <rsi>
anymore. This is purely a visual effect.mo_*
family (like mo_name()
and mo_gramstain()
) are noticeably slower when running on hundreds of thousands of rows.mo
and ab
now both also inherit class character
, to support any data transformation. This change invalidates code that checks for class length == 1.first_isolate()
), since some bacterial names might be renamed to other genera or other (sub)species. This is expected behaviour.eucast_rules()
function no longer applies “other” rules at default that are made available by this package (like setting ampicillin = R when ampicillin + enzyme inhibitor = R). The default input value for rules
is now c("breakpoints", "expert")
instead of "all"
, but this can be changed by the user. To return to the old behaviour, set options(AMR.eucast_rules = "all")
.antibiotics
data set these two rules:
eucast_rules()
ab_url()
to return the direct URL of an antimicrobial agent from the official WHO websiteas.ab()
, so that e.g. as.ab("ampi sul")
and ab_name("ampi sul")
workab_atc()
and ab_group()
now return NA
if no antimicrobial agent could be foundset_mo_source()
to make sure that column mo
will always be the second columnp.symbol()
- it was replaced with p_symbol()
read.4d()
, that was only useful for reading data from an old test database.pca()
functionggplot_pca()
functionas.mo()
(and consequently all mo_*
functions, that use as.mo()
internally):
SPE
for species, like "ESCSPE"
for Escherichia coli
antibiotics
data setas.rsi()
for years 2010-2019 (thanks to Anthony Underwood)Fixed important floating point error for some MIC comparisons in EUCAST 2020 guideline
Interpretation from MIC values (and disk zones) to R/SI can now be used with mutate_at()
of the dplyr
package:
Added antibiotic abbreviations for a laboratory manufacturer (GLIMS) for cefuroxime, cefotaxime, ceftazidime, cefepime, cefoxitin and trimethoprim/sulfamethoxazole
Added uti
(as abbreviation of urinary tract infections) as argument to as.rsi()
, so interpretation of MIC values and disk zones can be made dependent on isolates specifically from UTIs
Info printing in functions eucast_rules()
, first_isolate()
, mdro()
and resistance_predict()
will now at default only print when R is in an interactive mode (i.e. not in RMarkdown)
This software is now out of beta and considered stable. Nonetheless, this package will be developed continually.
as.rsi()
and inferred resistance and susceptibility using eucast_rules()
.Support for LOINC codes in the antibiotics
data set. Use ab_loinc()
to retrieve LOINC codes, or use a LOINC code for input in any ab_*
function:
Support for SNOMED CT codes in the microorganisms
data set. Use mo_snomed()
to retrieve SNOMED codes, or use a SNOMED code for input in any mo_*
function:
mo_snomed("S. aureus")
#> [1] 115329001 3092008 113961008
mo_name(115329001)
#> [1] "Staphylococcus aureus"
mo_gramstain(115329001)
#> [1] "Gram-positive"
as.mo()
function previously wrote to the package folder to improve calculation speed for previously calculated results. This is no longer the case, to comply with CRAN policies. Consequently, the function clear_mo_history()
was removed.as.rsi()
as.mo()
(and consequently all mo_*
functions, that use as.mo()
internally):
as.mo("Methicillin-resistant S.aureus")
as.disk()
limited to a maximum of 50 millimeterstidyverse
as.ab()
: support for drugs starting with “co-” like co-amoxiclav, co-trimoxazole, co-trimazine and co-trimazole (thanks to Peter Dutey)antibiotics
data set (thanks to Peter Dutey):
RIF
) to rifampicin/isoniazid (RFI
). Please note that the combination rifampicin/isoniazid has no DDDs defined, so e.g. ab_ddd("Rimactazid")
will now return NA
.SMX
) to trimethoprim/sulfamethoxazole (SXT
)microorganisms
data set, which means that the new order Enterobacterales now consists of a part of the existing family Enterobacteriaceae, but that this family has been split into other families as well (like Morganellaceae and Yersiniaceae). Although published in 2016, this information is not yet in the Catalogue of Life version of 2019. All MDRO determinations with mdro()
will now use the Enterobacterales order for all guidelines before 2016 that were dependent on the Enterobacteriaceae family.
Functions susceptibility()
and resistance()
as aliases of proportion_SI()
and proportion_R()
, respectively. These functions were added to make it more clear that “I” should be considered susceptible and not resistant.
library(dplyr)
example_isolates %>%
group_by(bug = mo_name(mo)) %>%
summarise(amoxicillin = resistance(AMX),
amox_clav = resistance(AMC)) %>%
filter(!is.na(amoxicillin) | !is.na(amox_clav))
Support for a new MDRO guideline: Magiorakos AP, Srinivasan A et al. “Multidrug-resistant, extensively drug-resistant and pandrug-resistant bacteria: an international expert proposal for interim standard definitions for acquired resistance.” Clinical Microbiology and Infection (2012).
mdro()
functionmdro(...., verbose = TRUE)
) returns an informative data set where the reason for MDRO determination is given for every isolate, and an list of the resistant antimicrobial agentsData set antivirals
, containing all entries from the ATC J05 group with their DDDs for oral and parenteral treatment
as.mo()
:
Now allows “ou” where “au” should have been used and vice versa
More intelligent way of coping with some consonants like “l” and “r”
Added a score (a certainty percentage) to mo_uncertainties()
, that is calculated using the Levenshtein distance:
as.mo(c("Stafylococcus aureus",
"staphylokok aureuz"))
#> Warning:
#> Results of two values were guessed with uncertainty. Use mo_uncertainties() to review them.
#> Class 'mo'
#> [1] B_STPHY_AURS B_STPHY_AURS
mo_uncertainties()
#> "Stafylococcus aureus" -> Staphylococcus aureus (B_STPHY_AURS, score: 95.2%)
#> "staphylokok aureuz" -> Staphylococcus aureus (B_STPHY_AURS, score: 85.7%)
as.atc()
- this function was replaced by ab_atc()
portion_*
functions to proportion_*
. All portion_*
functions are still available as deprecated functions, and will return a warning when used.as.rsi()
over a data set, it will now print the guideline that will be used if it is not specified by the usereucast_rules()
:
eucast_rules()
are now applied first and not as last anymore. This is to improve the dependency on certain antibiotics for the official EUCAST rules. Please see ?eucast_rules
.as.rsi()
where the input is NA
mdro()
and eucast_rules()
antibiotics
data setexample_isolates
data set to better reflect realitymo_info()
clean
to cleaner
, as this package was renamed accordingly upon CRAN requestDetermination of first isolates now excludes all ‘unknown’ microorganisms at default, i.e. microbial code "UNKNOWN"
. They can be included with the new argument include_unknown
:
first_isolate(..., include_unknown = TRUE)
For WHONET users, this means that all records/isolates with organism code "con"
(contamination) will be excluded at default, since as.mo("con") = "UNKNOWN"
. The function always shows a note with the number of ‘unknown’ microorganisms that were included or excluded.
For code consistency, classes ab
and mo
will now be preserved in any subsetting or assignment. For the sake of data integrity, this means that invalid assignments will now result in NA
:
# how it works in base R:
x <- factor("A")
x[1] <- "B"
#> Warning message:
#> invalid factor level, NA generated
# how it now works similarly for classes 'mo' and 'ab':
x <- as.mo("E. coli")
x[1] <- "testvalue"
#> Warning message:
#> invalid microorganism code, NA generated
This is important, because a value like "testvalue"
could never be understood by e.g. mo_name()
, although the class would suggest a valid microbial code.
Function freq()
has moved to a new package, clean
(CRAN link), since creating frequency tables actually does not fit the scope of this package. The freq()
function still works, since it is re-exported from the clean
package (which will be installed automatically upon updating this AMR
package).
Renamed data set septic_patients
to example_isolates
Function bug_drug_combinations()
to quickly get a data.frame
with the results of all bug-drug combinations in a data set. The column containing microorganism codes is guessed automatically and its input is transformed with mo_shortname()
at default:
x <- bug_drug_combinations(example_isolates)
#> NOTE: Using column `mo` as input for `col_mo`.
x[1:4, ]
#> mo ab S I R total
#> 1 A. baumannii AMC 0 0 3 3
#> 2 A. baumannii AMK 0 0 0 0
#> 3 A. baumannii AMP 0 0 3 3
#> 4 A. baumannii AMX 0 0 3 3
#> NOTE: Use 'format()' on this result to get a publicable/printable format.
# change the transformation with the FUN argument to anything you like:
x <- bug_drug_combinations(example_isolates, FUN = mo_gramstain)
#> NOTE: Using column `mo` as input for `col_mo`.
x[1:4, ]
#> mo ab S I R total
#> 1 Gram-negative AMC 469 89 174 732
#> 2 Gram-negative AMK 251 0 2 253
#> 3 Gram-negative AMP 227 0 405 632
#> 4 Gram-negative AMX 227 0 405 632
#> NOTE: Use 'format()' on this result to get a publicable/printable format.
You can format this to a printable format, ready for reporting or exporting to e.g. Excel with the base R format()
function:
format(x, combine_IR = FALSE)
Additional way to calculate co-resistance, i.e. when using multiple antimicrobials as input for portion_*
functions or count_*
functions. This can be used to determine the empiric susceptibility of a combination therapy. A new argument only_all_tested
(which defaults to FALSE
) replaces the old also_single_tested
and can be used to select one of the two methods to count isolates and calculate portions. The difference can be seen in this example table (which is also on the portion
and count
help pages), where the %SI is being determined:
# --------------------------------------------------------------------
# only_all_tested = FALSE only_all_tested = TRUE
# ----------------------- -----------------------
# Drug A Drug B include as include as include as include as
# numerator denominator numerator denominator
# -------- -------- ---------- ----------- ---------- -----------
# S or I S or I X X X X
# R S or I X X X X
# <NA> S or I X X - -
# S or I R X X X X
# R R - X - X
# <NA> R - - - -
# S or I <NA> X X - -
# R <NA> - - - -
# <NA> <NA> - - - -
# --------------------------------------------------------------------
Since this is a major change, usage of the old also_single_tested
will throw an informative error that it has been replaced by only_all_tested
.
tibble
printing support for classes rsi
, mic
, disk
, ab
mo
. When using tibble
s containing antimicrobial columns, values S
will print in green, values I
will print in yellow and values R
will print in red. Microbial IDs (class mo
) will emphasise on the genus and species, not on the kingdom.
as.mo()
(of which some led to additions to the microorganisms
data set). Many thanks to all contributors that helped improving the algorithms.
B_ENTRC_FAE
could have been both E. faecalis and E. faecium. Its new code is B_ENTRC_FCLS
and E. faecium has become B_ENTRC_FACM
. Also, the Latin character æ (ae) is now preserved at the start of each genus and species abbreviation. For example, the old code for Aerococcus urinae was B_ARCCC_NAE
. This is now B_AERCC_URIN
. IMPORTANT: Old microorganism IDs are still supported, but support will be dropped in a future version. Use as.mo()
on your old codes to transform them to the new format. Using functions from the mo_*
family (like mo_name()
and mo_gramstain()
) on old codes, will throw a warning.as.ab()
, including bidirectional language supportmdro()
function, to determine multi-drug resistant organismseucast_rules()
:
eucast_rules(..., verbose = TRUE)
) returns more informative and readable outputAMR:::get_column_abx()
)atc
- using as.atc()
is now deprecated in favour of ab_atc()
and this will return a character, not the atc
class anymoreabname()
, ab_official()
, atc_name()
, atc_official()
, atc_property()
, atc_tradenames()
, atc_trivial_nl()
mo_shortname()
mo_*
functions where the coercion uncertainties and failures would not be available through mo_uncertainties()
and mo_failures()
anymorecountry
argument of mdro()
in favour of the already existing guideline
argument to support multiple guidelines within one countryname
of RIF
is now Rifampicin instead of Rifampinantibiotics
data set is now sorted by name and all cephalosporins now have their generation between bracketsguess_ab_col()
which is now 30 times faster for antibiotic abbreviationsfilter_ab_class()
to be more reliable and to support 5th generation cephalosporinsavailability()
now uses portion_R()
instead of portion_IR()
, to comply with EUCAST insightsage()
and age_groups()
now have a na.rm
argument to remove empty valuesp.symbol()
to p_symbol()
(the former is now deprecated and will be removed in a future version)x
in age_groups()
will now introduce NA
s and not return an error anymorekey_antibiotics()
on foreign systemsmdr_tb()
as.mic()
)Function rsi_df()
to transform a data.frame
to a data set containing only the microbial interpretation (S, I, R), the antibiotic, the percentage of S/I/R and the number of available isolates. This is a convenient combination of the existing functions count_df()
and portion_df()
to immediately show resistance percentages and number of available isolates:
Support for all scientifically published pathotypes of E. coli to date (that we could find). Supported are:
All these lead to the microbial ID of E. coli:
as.mo("UPEC")
# B_ESCHR_COL
mo_name("UPEC")
# "Escherichia coli"
mo_gramstain("EHEC")
# "Gram-negative"
Function mo_info()
as an analogy to ab_info()
. The mo_info()
prints a list with the full taxonomy, authors, and the URL to the online database of a microorganism
Function mo_synonyms()
to get all previously accepted taxonomic names of a microorganism
count_df()
and portion_df()
are now lowercaseas.ab()
and as.mo()
to understand even more severely misspelled inputas.ab()
now allows spaces for coercing antibiotics namesggplot2
methods for automatically determining the scale type of classes mo
and ab
"bacteria"
from getting coerced by as.ab()
because Bacterial is a brand name of trimethoprim (TMP)eucast_rules()
and mdro()
latest_annual_release
from the catalogue_of_life_version()
functionPVM1
from the antibiotics
data set as this was a duplicate of PME
as.mo()
plot()
and barplot()
for MIC and RSI classesas.mo()
as.rsi()
on an MIC value (created with as.mic()
), a disk diffusion value (created with the new as.disk()
) or on a complete date set containing columns with MIC or disk diffusion values.mo_name()
as alias of mo_fullname()
mdr_tb()
) and added a new vignette about MDR. Read this tutorial here on our website.first_isolate()
where missing species would lead to incorrect FALSEs. This bug was not present in AMR v0.5.0, but was in v0.6.0 and v0.6.1.eucast_rules()
where antibiotics from WHONET software would not be recognisedantibiotics
data set:
ab
contains a human readable EARS-Net code, used by ECDC and WHO/WHONET - this is the primary identifier used in this packageatc
contains the ATC code, used by WHO/WHOCCcid
contains the CID code (Compound ID), used by PubChemAMX
for amoxicillinatc_certe
, ab_umcg
and atc_trivial_nl
have been removedatc_*
functions are superceded by ab_*
functionsggplot_rsi()
:
colours
to set the bar colourstitle
, subtitle
, caption
, x.title
and y.title
to set titles and axis descriptionsguess_ab_col()
microorganisms.old
data set, which leads to better results finding when using the as.mo()
functionportion_df()
and count_df()
this means that their new argument combine_SI
is TRUE at default. Our plotting function ggplot_rsi()
also reflects this change since it uses count_df()
internally.age()
function gained a new argument exact
to determine ages with decimalsguess_mo()
, guess_atc()
, EUCAST_rules()
, interpretive_reading()
, rsi()
freq()
):
speed improvement for microbial IDs
fixed factor level names for R Markdown
when all values are unique it now shows a message instead of a warning
support for boxplots:
age_groups()
, to let groups of fives and tens end with 100+ instead of 120+freq()
for when all values are NA
first_isolate()
for when dates are missingguess_ab_col()
as.mo()
now gently interprets any number of whitespace characters (like tabs) as one spaceas.mo()
now returns UNKNOWN
for "con"
(WHONET ID of ‘contamination’) and returns NA
for "xxx"
(WHONET ID of ‘no growth’)as.mo()
microorganisms.codes
and cleaned it upmo_shortname()
where species would not be determined correctlyeucast_rules()
with verbose = TRUE
New website!
We’ve got a new website: https://msberends.gitlab.io/AMR (built with the great pkgdown
)
BREAKING: removed deprecated functions, arguments and references to ‘bactid’. Use as.mo()
to identify an MO code.
Catalogue of Life as a new taxonomic source for data about microorganisms, which also contains all ITIS data we used previously. The microorganisms
data set now contains:
All ~55,000 (sub)species from the kingdoms of Archaea, Bacteria and Protozoa
All ~3,000 (sub)species from these orders of the kingdom of Fungi: Eurotiales, Onygenales, Pneumocystales, Saccharomycetales and Schizosaccharomycetales (covering at least like all species of Aspergillus, Candida, Pneumocystis, Saccharomyces and Trichophyton)
All ~2,000 (sub)species from ~100 other relevant genera, from the kingdoms of Animalia and Plantae (like Strongyloides and Taenia)
All ~15,000 previously accepted names of included (sub)species that have been taxonomically renamed
The responsible author(s) and year of scientific publication
This data is updated annually - check the included version with the new function catalogue_of_life_version()
.
Due to this change, some mo
codes changed (e.g. Streptococcus changed from B_STRPTC
to B_STRPT
). A translation table is used internally to support older microorganism IDs, so users will not notice this difference.
New function mo_rank()
for the taxonomic rank (genus, species, infraspecies, etc.)
New function mo_url()
to get the direct URL of a species from the Catalogue of Life
Support for data from WHONET and EARS-Net (European Antimicrobial Resistance Surveillance Network):
first_isolate()
and eucast_rules()
, all arguments will be filled in automatically.antibiotics
data set now contains a column ears_net
.as.mo()
now knows all WHONET species abbreviations too, because almost 2,000 microbial abbreviations were added to the microorganisms.codes
data set.New filters for antimicrobial classes. Use these functions to filter isolates on results in one of more antibiotics from a specific class:
filter_aminoglycosides()
filter_carbapenems()
filter_cephalosporins()
filter_1st_cephalosporins()
filter_2nd_cephalosporins()
filter_3rd_cephalosporins()
filter_4th_cephalosporins()
filter_fluoroquinolones()
filter_glycopeptides()
filter_macrolides()
filter_tetracyclines()
The antibiotics
data set will be searched, after which the input data will be checked for column names with a value in any abbreviations, codes or official names found in the antibiotics
data set. For example:
septic_patients %>% filter_glycopeptides(result = "R")
# Filtering on glycopeptide antibacterials: any of `vanc` or `teic` is R
septic_patients %>% filter_glycopeptides(result = "R", scope = "all")
# Filtering on glycopeptide antibacterials: all of `vanc` and `teic` is R
All ab_*
functions are deprecated and replaced by atc_*
functions:
ab_property -> atc_property()
ab_name -> atc_name()
ab_official -> atc_official()
ab_trivial_nl -> atc_trivial_nl()
ab_certe -> atc_certe()
ab_umcg -> atc_umcg()
ab_tradenames -> atc_tradenames()
These functions use as.atc()
internally. The old atc_property
has been renamed atc_online_property()
. This is done for two reasons: firstly, not all ATC codes are of antibiotics (ab) but can also be of antivirals or antifungals. Secondly, the input must have class atc
or must be coerable to this class. Properties of these classes should start with the same class name, analogous to as.mo()
and e.g. mo_genus
.
New functions set_mo_source()
and get_mo_source()
to use your own predefined MO codes as input for as.mo()
and consequently all mo_*
functions
Support for the upcoming dplyr
version 0.8.0
New function guess_ab_col()
to find an antibiotic column in a table
New function mo_failures()
to review values that could not be coerced to a valid MO code, using as.mo()
. This latter function will now only show a maximum of 10 uncoerced values and will refer to mo_failures()
.
New function mo_uncertainties()
to review values that could be coerced to a valid MO code using as.mo()
, but with uncertainty.
New function mo_renamed()
to get a list of all returned values from as.mo()
that have had taxonomic renaming
New function age()
to calculate the (patients) age in years
New function age_groups()
to split ages into custom or predefined groups (like children or elderly). This allows for easier demographic AMR data analysis per age group.
New function ggplot_rsi_predict()
as well as the base R plot()
function can now be used for resistance prediction calculated with resistance_predict()
:
x <- resistance_predict(septic_patients, col_ab = "amox")
plot(x)
ggplot_rsi_predict(x)
Functions filter_first_isolate()
and filter_first_weighted_isolate()
to shorten and fasten filtering on data sets with antimicrobial results, e.g.:
septic_patients %>% filter_first_isolate(...)
# or
filter_first_isolate(septic_patients, ...)
is equal to:
septic_patients %>%
mutate(only_firsts = first_isolate(septic_patients, ...)) %>%
filter(only_firsts == TRUE) %>%
select(-only_firsts)
New function availability()
to check the number of available (non-empty) results in a data.frame
New vignettes about how to conduct AMR analysis, predict antimicrobial resistance, use the G-test and more. These are also available (and even easier readable) on our website: https://msberends.gitlab.io/AMR.
eucast_rules()
:
septic_patients
now reflects these changeseucast_rules(..., verbose = TRUE)
to get a data set with all changed per bug and drug combination.microorganisms.oldDT
, microorganisms.prevDT
, microorganisms.unprevDT
and microorganismsDT
since they were no longer needed and only contained info already available in the microorganisms
data setantibiotics
data set, from the Pharmaceuticals Community Register of the European Commissionatc_group1_nl
and atc_group2_nl
from the antibiotics
data setatc_ddd()
and atc_groups()
have been renamed atc_online_ddd()
and atc_online_groups()
. The old functions are deprecated and will be removed in a future version.guess_mo()
is now deprecated in favour of as.mo()
and will be removed in future versionsguess_atc()
is now deprecated in favour of as.atc()
and will be removed in future versionsas.mo()
:
Now handles incorrect spelling, like i
instead of y
and f
instead of ph
:
# mo_fullname() uses as.mo() internally
mo_fullname("Sthafilokockus aaureuz")
#> [1] "Staphylococcus aureus"
mo_fullname("S. klossi")
#> [1] "Staphylococcus kloosii"
Uncertainty of the algorithm is now divided into four levels, 0 to 3, where the default allow_uncertain = TRUE
is equal to uncertainty level 2. Run ?as.mo
for more info about these levels.
# equal:
as.mo(..., allow_uncertain = TRUE)
as.mo(..., allow_uncertain = 2)
# also equal:
as.mo(..., allow_uncertain = FALSE)
as.mo(..., allow_uncertain = 0)
Using as.mo(..., allow_uncertain = 3)
could lead to very unreliable results.
Implemented the latest publication of Becker et al. (2019), for categorising coagulase-negative Staphylococci
All microbial IDs that found are now saved to a local file ~/.Rhistory_mo
. Use the new function clean_mo_history()
to delete this file, which resets the algorithms.
Incoercible results will now be considered ‘unknown’, MO code UNKNOWN
. On foreign systems, properties of these will be translated to all languages already previously supported: German, Dutch, French, Italian, Spanish and Portuguese:
mo_genus("qwerty", language = "es")
# Warning:
# one unique value (^= 100.0%) could not be coerced and is considered 'unknown': "qwerty". Use mo_failures() to review it.
#> [1] "(género desconocido)"
Fix for vector containing only empty values
Finds better results when input is in other languages
Better handling for subspecies
Better handling for Salmonellae, especially the ‘city like’ serovars like Salmonella London
Understanding of highly virulent E. coli strains like EIEC, EPEC and STEC
There will be looked for uncertain results at default - these results will be returned with an informative warning
Manual (help page) now contains more info about the algorithms
Progress bar will be shown when it takes more than 3 seconds to get results
Support for formatted console text
Console will return the percentage of uncoercable input
first_isolate()
:
septic_patients
data set this yielded a difference of 0.15% more isolatescol_patientid
), when this argument was left blankcol_keyantibiotics()
), when this argument was left blankoutput_logical
, the function will now always return a logical valuefilter_specimen
to specimen_group
, although using filter_specimen
will still workportion
functions, that low counts can influence the outcome and that the portion
functions may camouflage this, since they only return the portion (albeit being dependent on the minimum
argument)microorganisms.certe
and microorganisms.umcg
into microorganisms.codes
mo_taxonomy()
now contains the kingdom toois.rsi.eligible()
using the new threshold
argumentscale_rsi_colours()
mo
will now return the top 3 and the unique count, e.g. using summary(mo)
rsi
and mic
as.rsi()
:
"HIGH S"
will return S
freq()
function):
Support for tidyverse quasiquotation! Now you can create frequency tables of function outcomes:
Header info is now available as a list, with the header
function
The argument header
is now set to TRUE
at default, even for markdown
Added header info for class mo
to show unique count of families, genera and species
Now honours the decimal.mark
setting, which just like format
defaults to getOption("OutDec")
The new big.mark
argument will at default be ","
when decimal.mark = "."
and "."
otherwise
Fix for header text where all observations are NA
New argument droplevels
to exclude empty factor levels when input is a factor
Factor levels will be in header when present in input data (maximum of 5)
Fix for using select()
on frequency tables
scale_y_percent()
now contains the limits
argumentmdro()
, key_antibiotics()
and eucast_rules()
resistance_predict()
function)as.mic()
to support more values ending in (several) zeroes%like%
, it will now return the callcount_all
to get all available isolates (that like all portion_*
and count_*
functions also supports summarise
and group_by
), the old n_rsi
is now an alias of count_all
get_locale
to determine language for language-dependent output for some mo_*
functions. This is now the default value for their language
argument, by which the system language will be used at default.microorganismsDT
, microorganisms.prevDT
, microorganisms.unprevDT
and microorganisms.oldDT
to improve the speed of as.mo
. They are for reference only, since they are primarily for internal use of as.mo
.read.4D
to read from the 4D database of the MMB department of the UMCGmo_authors
and mo_year
to get specific values about the scientific reference of a taxonomic entryFunctions MDRO
, BRMO
, MRGN
and EUCAST_exceptional_phenotypes
were renamed to mdro
, brmo
, mrgn
and eucast_exceptional_phenotypes
EUCAST_rules
was renamed to eucast_rules
, the old function still exists as a deprecated function
Big changes to the eucast_rules
function:
rules
to specify which rules should be applied (expert rules, breakpoints, others or all)verbose
which can be set to TRUE
to get very specific messages about which columns and rows were affectedseptic_patients
now reflects these changespipe
for piperacillin (J01CA12), also to the mdro
functionAdded column kingdom
to the microorganisms data set, and function mo_kingdom
to look up values
Tremendous speed improvement for as.mo
(and subsequently all mo_*
functions), as empty values wil be ignored a priori
Fewer than 3 characters as input for as.mo
will return NA
Function as.mo
(and all mo_*
wrappers) now supports genus abbreviations with “species” attached
as.mo("E. species") # B_ESCHR
mo_fullname("E. spp.") # "Escherichia species"
as.mo("S. spp") # B_STPHY
mo_fullname("S. species") # "Staphylococcus species"
Added argument combine_IR
(TRUE/FALSE) to functions portion_df
and count_df
, to indicate that all values of I and R must be merged into one, so the output only consists of S vs. IR (susceptible vs. non-susceptible)
Fix for portion_*(..., as_percent = TRUE)
when minimal number of isolates would not be met
Added argument also_single_tested
for portion_*
and count_*
functions to also include cases where not all antibiotics were tested but at least one of the tested antibiotics includes the target antimicribial interpretation, see ?portion
Using portion_*
functions now throws a warning when total available isolate is below argument minimum
Functions as.mo
, as.rsi
, as.mic
, as.atc
and freq
will not set package name as attribute anymore
Frequency tables - freq()
:
Support for grouping variables, test with:
Support for (un)selecting columns:
Check for hms::is.hms
Now prints in markdown at default in non-interactive sessions
No longer adds the factor level column and sorts factors on count again
Support for class difftime
New argument na
, to choose which character to print for empty values
New argument header
to turn the header info off (default when markdown = TRUE
)
New argument title
to manually setbthe title of the frequency table
first_isolate
now tries to find columns to use as input when arguments are left blank
Improvements for MDRO algorithm (function mdro
)
Data set septic_patients
is now a data.frame
, not a tibble anymore
Removed diacritics from all authors (columns microorganisms$ref
and microorganisms.old$ref
) to comply with CRAN policy to only allow ASCII characters
Fix for mo_property
not working properly
Fix for eucast_rules
where some Streptococci would become ceftazidime R in EUCAST rule 4.5
Support for named vectors of class mo
, useful for top_freq()
ggplot_rsi
and scale_y_percent
have breaks
argument
AI improvements for as.mo
:
"CRS"
-> Stenotrophomonas maltophilia
"CRSM"
-> Stenotrophomonas maltophilia
"MSSA"
-> Staphylococcus aureus
"MSSE"
-> Staphylococcus epidermidis
Fix for join
functions
Speed improvement for is.rsi.eligible
, now 15-20 times faster
In g.test
, when sum(x)
is below 1000 or any of the expected values is below 5, Fisher’s Exact Test will be suggested
ab_name
will try to fall back on as.atc
when no results are found
Removed the addin to view data sets
Percentages will now will rounded more logically (e.g. in freq
function)
The data set microorganisms
now contains all microbial taxonomic data from ITIS (kingdoms Bacteria, Fungi and Protozoa), the Integrated Taxonomy Information System, available via https://itis.gov. The data set now contains more than 18,000 microorganisms with all known bacteria, fungi and protozoa according ITIS with genus, species, subspecies, family, order, class, phylum and subkingdom. The new data set microorganisms.old
contains all previously known taxonomic names from those kingdoms.
New functions based on the existing function mo_property
:
mo_phylum
, mo_class
, mo_order
, mo_family
, mo_genus
, mo_species
, mo_subspecies
mo_fullname
, mo_shortname
mo_type
, mo_gramstain
mo_ref
They also come with support for German, Dutch, French, Italian, Spanish and Portuguese:
mo_gramstain("E. coli")
# [1] "Gram negative"
mo_gramstain("E. coli", language = "de") # German
# [1] "Gramnegativ"
mo_gramstain("E. coli", language = "es") # Spanish
# [1] "Gram negativo"
mo_fullname("S. group A", language = "pt") # Portuguese
# [1] "Streptococcus grupo A"
Furthermore, former taxonomic names will give a note about the current taxonomic name:
mo_gramstain("Esc blattae")
# Note: 'Escherichia blattae' (Burgess et al., 1973) was renamed 'Shimwellia blattae' (Priest and Barker, 2010)
# [1] "Gram negative"
Functions count_R
, count_IR
, count_I
, count_SI
and count_S
to selectively count resistant or susceptible isolates
count_df
(which works like portion_df
) to get all counts of S, I and R of a data set with antibiotic columns, with support for grouped variablesFunction is.rsi.eligible
to check for columns that have valid antimicrobial results, but do not have the rsi
class yet. Transform the columns of your raw data with: data %>% mutate_if(is.rsi.eligible, as.rsi)
Functions as.mo
and is.mo
as replacements for as.bactid
and is.bactid
(since the microoganisms
data set not only contains bacteria). These last two functions are deprecated and will be removed in a future release. The as.mo
function determines microbial IDs using intelligent rules:
as.mo("E. coli")
# [1] B_ESCHR_COL
as.mo("MRSA")
# [1] B_STPHY_AUR
as.mo("S group A")
# [1] B_STRPTC_GRA
And with great speed too - on a quite regular Linux server from 2007 it takes us less than 0.02 seconds to transform 25,000 items:
thousands_of_E_colis <- rep("E. coli", 25000)
microbenchmark::microbenchmark(as.mo(thousands_of_E_colis), unit = "s")
# Unit: seconds
# min median max neval
# 0.01817717 0.01843957 0.03878077 100
Added argument reference_df
for as.mo
, so users can supply their own microbial IDs, name or codes as a reference table
Renamed all previous references to bactid
to mo
, like:
EUCAST_rules
, first_isolate
and key_antibiotics
microorganisms
and septic_patients
Function labels_rsi_count
to print datalabels on a RSI ggplot2
model
Functions as.atc
and is.atc
to transform/look up antibiotic ATC codes as defined by the WHO. The existing function guess_atc
is now an alias of as.atc
.
Function ab_property
and its aliases: ab_name
, ab_tradenames
, ab_certe
, ab_umcg
and ab_trivial_nl
Introduction to AMR as a vignette
Removed clipboard functions as it violated the CRAN policy
Renamed septic_patients$sex
to septic_patients$gender
Added three antimicrobial agents to the antibiotics
data set: Terbinafine (D01BA02), Rifaximin (A07AA11) and Isoconazole (D01AC05)
Added 163 trade names to the antibiotics
data set, it now contains 298 different trade names in total, e.g.:
For first_isolate
, rows will be ignored when there’s no species available
Function ratio
is now deprecated and will be removed in a future release, as it is not really the scope of this package
Fix for as.mic
for values ending in zeroes after a real number
Small fix where B. fragilis would not be found in the microorganisms.umcg
data set
Added prevalence
column to the microorganisms
data set
Added arguments minimum
and as_percent
to portion_df
Support for quasiquotation in the functions series count_*
and portions_*
, and n_rsi
. This allows to check for more than 2 vectors or columns.
Edited ggplot_rsi
and geom_rsi
so they can cope with count_df
. The new fun
argument has value portion_df
at default, but can be set to count_df
.
Fix for ggplot_rsi
when the ggplot2
package was not loaded
Added datalabels function labels_rsi_count
to ggplot_rsi
Added possibility to set any argument to geom_rsi
(and ggplot_rsi
) so you can set your own preferences
Fix for joins, where predefined suffices would not be honoured
Added argument quote
to the freq
function
Added generic function diff
for frequency tables
Added longest en shortest character length in the frequency table (freq
) header of class character
Support for types (classes) list and matrix for freq
For lists, subsetting is possible:
rsi_df
was removed in favour of new functions portion_R
, portion_IR
, portion_I
, portion_SI
and portion_S
to selectively calculate resistance or susceptibility. These functions are 20 to 30 times faster than the old rsi
function. The old function still works, but is deprecated.
portion_df
to get all portions of S, I and R of a data set with antibiotic columns, with support for grouped variablesggplot2
geom_rsi
, facet_rsi
, scale_y_percent
, scale_rsi_colours
and theme_rsi
ggplot_rsi
to apply all above functions on a data set:
septic_patients %>% select(tobr, gent) %>% ggplot_rsi
will show portions of S, I and R immediately in a pretty plot?ggplot_rsi
as.bactid
and is.bactid
to transform/ look up microbial ID’s.guess_bactid
is now an alias of as.bactid
kurtosis
and skewness
that are lacking in base R - they are generic functions and have support for vectors, data.frames and matricesg.test
to perform the Χ2 distributed G-test, which use is the same as chisq.test
ratio
to transform a vector of values to a preset ratioratio(c(10, 500, 10), ratio = "1:2:1")
would return 130, 260, 130
%in%
or %like%
(and give them keyboard shortcuts), or to view the datasets that come with this packagep.symbol
to transform p values to their related symbols: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
clipboard_import
and clipboard_export
as helper functions to quickly copy and paste from/to software like Excel and SPSS. These functions use the clipr
package, but are a little altered to also support headless Linux servers (so you can use it in RStudio Server)freq
):
rsi
(antimicrobial resistance) to use as inputtable
to use as input: freq(table(x, y))
hist
and plot
to use a frequency table as input: hist(freq(df$age))
as.vector
, as.data.frame
, as_tibble
and format
freq(mydata, mycolumn)
is the same as mydata %>% freq(mycolumn)
top_freq
function to return the top/below n items as vectoroptions(max.print.freq = n)
where n is your preset valueresistance_predict
and added more examplesseptic_patients
data set to better reflect the realitymic
and rsi
classes now returns all values - use freq
to check distributionskey_antibiotics
function are now generic: 6 for broadspectrum ABs, 6 for Gram-positive specific and 6 for Gram-negative specific ABsabname
function%like%
now supports multiple patternsdata.frame
s with altered console printing to make it look like a frequency table. Because of this, the argument toConsole
is not longer needed.freq
where the class of an item would be lostseptic_patients
dataset and the column bactid
now has the new class "bactid"
microorganisms
dataset (especially for Salmonella) and the column bactid
now has the new class "bactid"
rsi
and mic
functions:
as.rsi("<=0.002; S")
will return S
as.mic("<=0.002; S")
will return <=0.002
as.mic("<= 0.002")
now worksrsi
and mic
do not add the attribute package.version
anymore"groups"
option for atc_property(..., property)
. It will return a vector of the ATC hierarchy as defined by the WHO. The new function atc_groups
is a convenient wrapper around this.atc_property
as it requires the host set by url
to be responsivefirst_isolate
algorithm to exclude isolates where bacteria ID or genus is unavailable924b62
) from the dplyr
package v0.7.5 and aboveguess_bactid
(now called as.bactid
)
yourdata %>% select(genus, species) %>% as.bactid()
now also worksn_rsi
to count cases where antibiotic test results were available, to be used in conjunction with dplyr::summarise
, see ?rsiguess_bactid
to determine the ID of a microorganism based on genus/species or known abbreviations like MRSAguess_atc
to determine the ATC of an antibiotic based on name, trade name, or known abbreviationsfreq
to create frequency tables, with additional info in a headerMDRO
to determine Multi Drug Resistant Organisms (MDRO) with support for country-specific guidelines.
BRMO
and MRGN
are wrappers for Dutch and German guidelines, respectively"points"
or "keyantibiotics"
, see ?first_isolate
tibble
s and data.table
srsi
class for vectors that contain only invalid antimicrobial interpretationsablist
to antibiotics
bactlist
to microorganisms
antibiotics
datasetmicroorganisms
datasetseptic_patients
join
functions%like%
to make it case insensitivefirst_isolate
and EUCAST_rules
column names are now case-insensitiveas.rsi
and as.mic
now add the package name and version as attributesREADME.md
with more examplestestthat
package