8.5 KiB
AMR
(for R)
(TLDR - to find out how to conduct AMR analysis, please continue reading here to get started.
AMR
is a free and open-source R package to simplify the analysis and prediction of Antimicrobial Resistance (AMR) and to work with microbial and antimicrobial properties by using evidence-based methods.
We created this package for academic research at the Faculty of Medical Sciences of the University of Groningen and the Medical Microbiology & Infection Prevention (MMBI) department of the University Medical Center Groningen (UMCG). This R package is free software; you can freely use and distribute it for both personal and commercial (but not patent) purposes under the terms of the GNU General Public License version 2.0 (GPL-2), as published by the Free Software Foundation. Read further about our GPL-2 licence here.
This package is ready-to-use for a professional environment by specialists in the following fields:
Medical Microbiology:
- Epidemiologists (both clinical microbiological and research)
- Research Microbiologists
- Biomedical Researchers
- Research Pharmacologists
Veterinary Microbiology:
- Research Veterinarians
- Veterinary Epidemiologists
- Biomedical Researchers
Microbial Ecology:
- Soil Microbiologists
- Extremophile Researchers
- Astrobiologists
Other specialists in any of the above fields:
- Data Scientists/Data Analysts
- Biotechnologists
- Biochemists
- Geneticists
- Molecular Biologists/Microbiologists
Developers:
- Package developers for R
- Software developers
- Web application developers
Get this package
This package is available on the official R network (CRAN). Install this package in R with:
install.packages("AMR")
It will be downloaded and installed automatically.
Get started
To find out how to conduct AMR analysis, please continue reading here to get started or click the links in the 'How to' menu.
Short introduction
This package contains the complete microbial taxonomic data (with all nine taxonomic ranks - from kingdom to subspecies) from the publicly available Integrated Taxonomic Information System (ITIS, https://www.itis.gov).
All (sub)species from the taxonomic kingdoms Bacteria, Fungi and Protozoa are included in this package, as well as all previously accepted names known to ITIS. Furthermore, the responsible authors and year of publication are available. This allows users to use authoritative taxonomic information for their data analysis on any microorganism, not only human pathogens. It also helps to quickly determine the Gram stain of bacteria, since all bacteria are classified into subkingdom Negibacteria or Posibacteria. ITIS is a partnership of U.S., Canadian, and Mexican agencies and taxonomic specialists.
The AMR
package basically does four important things:
-
It cleanses existing data, by transforming it to reproducible and profound classes, making the most efficient use of R. These functions all use artificial intelligence to guess results that you would expect:
- Use
as.mo()
to get an ID of a microorganism. The IDs are human readable for the trained eye - the ID of Klebsiella pneumoniae is "B_KLBSL_PNE" (B stands for Bacteria) and the ID of S. aureus is "B_STPHY_AUR". The function takes almost any text as input that looks like the name or code of a microorganism like "E. coli", "esco" and "esccol". Evenas.mo("MRSA")
will return the ID of S. aureus. Moreover, it can group all coagulase negative and positive Staphylococci, and can transform Streptococci into Lancefield groups. To find bacteria based on your input, it uses Artificial Intelligence to look up values in the included ITIS data, consisting of more than 18,000 microorganisms. - Use
as.rsi()
to transform values to valid antimicrobial results. It produces just S, I or R based on your input and warns about invalid values. Even values like "<=0.002; S" (combined MIC/RSI) will result in "S". - Use
as.mic()
to cleanse your MIC values. It produces a so-called factor (called ordinal in SPSS) with valid MIC values as levels. A value like "<=0.002; S" (combined MIC/RSI) will result in "<=0.002". - Use
as.atc()
to get the ATC code of an antibiotic as defined by the WHO. This package contains a database with most LIS codes, official names, DDDs and even trade names of antibiotics. For example, the values "Furabid", "Furadantin", "nitro" all return the ATC code of Nitrofurantoine.
- Use
-
It enhances existing data and adds new data from data sets included in this package.
- Use
eucast_rules()
to apply EUCAST expert rules to isolates. - Use
first_isolate()
to identify the first isolates of every patient using guidelines from the CLSI (Clinical and Laboratory Standards Institute).- You can also identify first weighted isolates of every patient, an adjusted version of the CLSI guideline. This takes into account key antibiotics of every strain and compares them.
- Use
mdro()
(abbreviation of Multi Drug Resistant Organisms) to check your isolates for exceptional resistance with country-specific guidelines or EUCAST rules. Currently, national guidelines for Germany and the Netherlands are supported. - The data set
microorganisms
contains the complete taxonomic tree of more than 18,000 microorganisms (bacteria, fungi/yeasts and protozoa). Furthermore, the colloquial name and Gram stain are available, which enables resistance analysis of e.g. different antibiotics per Gram stain. The package also contains functions to look up values in this data set likemo_genus()
,mo_family()
,mo_gramstain()
or evenmo_phylum()
. As they useas.mo()
internally, they also use artificial intelligence. For example,mo_genus("MRSA")
andmo_genus("S. aureus")
will both return"Staphylococcus"
. They also come with support for German, Dutch, Spanish, Italian, French and Portuguese. These functions can be used to add new variables to your data. - The data set
antibiotics
contains the ATC code, LIS codes, official name, trivial name and DDD of both oral and parenteral administration. It also contains a total of 298 trade names. Use functions likeab_name()
andab_tradenames()
to look up values. Theab_*
functions useas.atc()
internally so they support AI to guess your expected result. For example,ab_name("Fluclox")
,ab_name("Floxapen")
andab_name("J01CF05")
will all return"Flucloxacillin"
. These functions can again be used to add new variables to your data.
- Use
-
It analyses the data with convenient functions that use well-known methods.
- Calculate the resistance (and even co-resistance) of microbial isolates with the
portion_R()
,portion_IR()
,portion_I()
,portion_SI()
andportion_S()
functions. Similarly, the number of isolates can be determined with thecount_R()
,count_IR()
,count_I()
,count_SI()
andcount_S()
functions. All these functions can be used with thedplyr
package (e.g. in conjunction withsummarise()
) - Plot AMR results with
geom_rsi()
, a function made for theggplot2
package - Predict antimicrobial resistance for the nextcoming years using logistic regression models with the
resistance_predict()
function - Conduct descriptive statistics to enhance base R: calculate
kurtosis()
,skewness()
and create frequency tables withfreq()
- Calculate the resistance (and even co-resistance) of microbial isolates with the
-
It teaches the user how to use all the above actions.
- The package contains extensive help pages with many examples.
- It also contains an example data set called
septic_patients
. This data set contains:- 2,000 blood culture isolates from anonymised septic patients between 2001 and 2017 in the Northern Netherlands
- Results of 40 antibiotics (each antibiotic in its own column) with a total of 38,414 antimicrobial results
- Real and genuine data