This example data set has the exact same structure as an export file from WHONET. Such files can be used with this package, as this example data set shows. The data itself was based on our example_isolates data set.
WHONET
    A data.frame with 500 observations and 53 variables:
Identification number
 ID of the sample
Specimen number
 ID of the specimen
Organism
 Name of the microorganism. Before analysis, you should transform this to a valid microbial class, using as.mo().
Country
 Country of origin
Laboratory
 Name of laboratory
Last name
 Last name of patient
First name
 Initial of patient
Sex
 Gender of patient
Age
 Age of patient
Age category
 Age group, can also be looked up using age_groups()
Date of admission
 Date of hospital admission
Specimen date
 Date when specimen was received at laboratory
Specimen type
 Specimen type or group
Specimen type (Numeric)
 Translation of "Specimen type"
Reason
 Reason of request with Differential Diagnosis
Isolate number
 ID of isolate
Organism type
 Type of microorganism, can also be looked up using mo_type()
Serotype
 Serotype of microorganism
Beta-lactamase
 Microorganism produces beta-lactamase?
ESBL
 Microorganism produces extended spectrum beta-lactamase?
Carbapenemase
 Microorganism produces carbapenemase?
MRSA screening test
 Microorganism is possible MRSA?
Inducible clindamycin resistance
 Clindamycin can be induced?
Comment
 Other comments
Date of data entry
 Date this data was entered in WHONET
AMP_ND10:CIP_EE
 28 different antibiotics. You can lookup the abbreviations in the antibiotics data set, or use e.g. ab_name("AMP") to get the official name immediately. Before analysis, you should transform this to a valid antibiotic class, using as.rsi().
On our website https://msberends.gitlab.io/AMR you can find a comprehensive tutorial about how to conduct AMR analysis, the complete documentation of all functions (which reads a lot easier than here in R) and an example analysis using WHONET data.