These functions can be used to count resistant/susceptible microbial isolates. All functions support quasiquotation with pipes, can be used in dplyrs summarise and support grouped variables, see Examples.

count_R and count_IR can be used to count resistant isolates, count_S and count_SI can be used to count susceptible isolates.

count_R(..., also_single_tested = FALSE)

count_IR(..., also_single_tested = FALSE)

count_I(..., also_single_tested = FALSE)

count_SI(..., also_single_tested = FALSE)

count_S(..., also_single_tested = FALSE)

count_all(...)

n_rsi(...)

count_df(data, translate_ab = "name", language = get_locale(),
  combine_IR = FALSE)

Arguments

...

one or more vectors (or columns) with antibiotic interpretations. They will be transformed internally with as.rsi if needed.

also_single_tested

a logical to indicate whether (in combination therapies) also observations should be included where not all antibiotics were tested, but at least one of the tested antibiotics contains a target interpretation (e.g. S in case of portion_S and R in case of portion_R). This would lead to selection bias in almost all cases.

data

a data.frame containing columns with class rsi (see as.rsi)

translate_ab

a column name of the antibiotics data set to translate the antibiotic abbreviations to, using ab_property

language

language of the returned text, defaults to system language (see get_locale) and can also be set with getOption("AMR_locale"). Use language = NULL or language = "" to prevent translation.

combine_IR

a logical to indicate whether all values of I and R must be merged into one, so the output only consists of S vs. IR (susceptible vs. non-susceptible)

Source

Wickham H. Tidy Data. The Journal of Statistical Software, vol. 59, 2014. http://vita.had.co.nz/papers/tidy-data.html

Value

Integer

Details

These functions are meant to count isolates. Use the portion_* functions to calculate microbial resistance.

n_rsi is an alias of count_all. They can be used to count all available isolates, i.e. where all input antibiotics have an available result (S, I or R). Their use is equal to n_distinct. Their function is equal to count_S(...) + count_IR(...).

count_df takes any variable from data that has an "rsi" class (created with as.rsi) and counts the amounts of R, I and S. The resulting tidy data (see Source) data.frame will have three rows (S/I/R) and a column for each variable with class "rsi".

Read more on our website!

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.

See also

portion_* to calculate microbial resistance and susceptibility.

Examples

# NOT RUN {
# septic_patients is a data set available in the AMR package. It is true, genuine data.
?septic_patients

# Count resistant isolates
count_R(septic_patients$AMX)
count_IR(septic_patients$AMX)

# Or susceptible isolates
count_S(septic_patients$AMX)
count_SI(septic_patients$AMX)

# Count all available isolates
count_all(septic_patients$AMX)
n_rsi(septic_patients$AMX)

# Since n_rsi counts available isolates, you can
# calculate back to count e.g. non-susceptible isolates.
# This results in the same:
count_IR(septic_patients$AMX)
portion_IR(septic_patients$AMX) * n_rsi(septic_patients$AMX)

library(dplyr)
septic_patients %>%
  group_by(hospital_id) %>%
  summarise(R  = count_R(CIP),
            I  = count_I(CIP),
            S  = count_S(CIP),
            n1 = count_all(CIP),  # the actual total; sum of all three
            n2 = n_rsi(CIP),      # same - analogous to n_distinct
            total = n())          # NOT the number of tested isolates!

# Count co-resistance between amoxicillin/clav acid and gentamicin,
# so we can see that combination therapy does a lot more than mono therapy.
# Please mind that `portion_S` calculates percentages right away instead.
count_S(septic_patients$AMC)   # S = 1342 (71.4%)
count_all(septic_patients$AMC) # n = 1879

count_S(septic_patients$GEN)   # S = 1372 (74.0%)
count_all(septic_patients$GEN) # n = 1855

with(septic_patients,
     count_S(AMC, GEN))         # S = 1660 (92.3%)
with(septic_patients,           # n = 1798
     n_rsi(AMC, GEN))

# Get portions S/I/R immediately of all rsi columns
septic_patients %>%
  select(AMX, CIP) %>%
  count_df(translate = FALSE)

# It also supports grouping variables
septic_patients %>%
  select(hospital_id, AMX, CIP) %>%
  group_by(hospital_id) %>%
  count_df(translate = FALSE)

# }