MDR.RmdWith the function mdro(), you can determine multi-drug resistant organisms (MDRO). It currently support these guidelines:
As an example, I will make a data set to determine multi-drug resistant TB:
# a helper function to get a random vector with values S, I and R
# with the probabilities 50%-10%-40%
sample_rsi <- function() {
  sample(c("S", "I", "R"),
         size = 5000,
         prob = c(0.5, 0.1, 0.4),
         replace = TRUE)
}
my_TB_data <- data.frame(rifampicin = sample_rsi(),
                         isoniazid = sample_rsi(),
                         gatifloxacin = sample_rsi(),
                         ethambutol = sample_rsi(),
                         pyrazinamide = sample_rsi(),
                         moxifloxacin = sample_rsi(),
                         kanamycin = sample_rsi())Because all column names are automatically verified for valid drug names or codes, this would have worked exactly the same:
my_TB_data <- data.frame(RIF = sample_rsi(),
                         INH = sample_rsi(),
                         GAT = sample_rsi(),
                         ETH = sample_rsi(),
                         PZA = sample_rsi(),
                         MFX = sample_rsi(),
                         KAN = sample_rsi())The data set looks like this now:
head(my_TB_data)
#   rifampicin isoniazid gatifloxacin ethambutol pyrazinamide moxifloxacin
# 1          I         R            R          R            S            R
# 2          S         R            S          S            R            R
# 3          R         R            S          R            R            S
# 4          S         S            S          S            R            R
# 5          R         S            S          S            S            R
# 6          I         S            S          R            R            S
#   kanamycin
# 1         R
# 2         I
# 3         S
# 4         R
# 5         R
# 6         SWe can now add the interpretation of MDR-TB to our data set:
my_TB_data$mdr <- mdr_tb(my_TB_data)
# NOTE: No column found as input for `col_mo`, assuming all records contain Mycobacterium tuberculosis.
# Determining multidrug-resistant organisms (MDRO), according to:
# Guideline: Companion handbook to the WHO guidelines for the programmatic management of drug-resistant tuberculosis
# Version:   WHO/HTM/TB/2014.11
# Author:    WHO (World Health Organization)
# Source:    https://www.who.int/tb/publications/pmdt_companionhandbook/en/
# NOTE: Reliability might be improved if these antimicrobial results would be available too: CAP (capreomycin), RIB (rifabutin), RFP (rifapentine)We also created a package dedicated to data cleaning and checking, called the clean package. It gets automatically installed with the AMR package, so we only have to load it:
It contains the freq() function, to create a frequency table:
Frequency table
Class: factor > ordered (numeric)
Length: 5,000 (of which NA: 0 = 0.00%)
Levels: 5: Negative < Mono-resistance < Poly-resistance < Multidrug resistance…
Unique: 5
| Item | Count | Percent | Cum. Count | Cum. Percent | |
|---|---|---|---|---|---|
| 1 | Mono-resistance | 3308 | 66.2% | 3308 | 66.2% | 
| 2 | Negative | 643 | 12.9% | 3951 | 79.0% | 
| 3 | Multidrug resistance | 570 | 11.4% | 4521 | 90.4% | 
| 4 | Poly-resistance | 263 | 5.3% | 4784 | 95.7% | 
| 5 | Extensive drug resistance | 216 | 4.3% | 5000 | 100.0% |