accelerate_yellow_fever_campaign()
accelerate yellow fever campaign
by adding planned yellow fever campaigns to the
provided values in df
. When a value is reported for a year and country, then this
value is kept, even after 2018. Some planned values are provided only for the
denominator. For some planned campaigns only the denominator is provided. When
this is the case, the numerator is calculated by taking the best historical
vaccination coverage achieved, or if not available by taking the best historical
coverage across all countries in 2018.
Usage
accelerate_yellow_fever_campaign(
df,
ind_ids = billion_ind_codes("hep"),
scenario_col = "scenario",
value_col = "value",
start_year = 2018,
end_year = 2025,
years_best_performance = 2015:2018,
default_scenario = "default",
scenario_name = "acceleration",
...
)
accelerate_yellow_fever_routine(df, scenario_name = "acceleration", ...)
Arguments
- df
Data frame in long format, where 1 row corresponds to a specific country, year, and indicator.
- ind_ids
Named vector of indicator codes for input indicators to the Billion. Although separate indicator codes can be used than the standard, they must be supplied as a named vector where the names correspond to the output of
billion_ind_codes()
.- scenario_col
Column name of column with scenario identifiers. Useful for calculating contributions on data in long format rather than wide format.
- value_col
Column name of column with indicator values.
- start_year
Base year for contribution calculation, defaults to 2018.
- end_year
End year(s) for contribution calculation, defaults to 2019 to 2025.
- years_best_performance
vector of years with the years in which the best performance should be found.
- default_scenario
name of the default scenario.
- scenario_name
name of scenario
- ...
additional parameters to to pass to
recycle_data
Details
Planned campaigns are the planned campaigns targets provided by WHO technical programs based on member states planification.
accelerate_yellow_fever_routine()
accelerate routine by aiming at a +20%
percent change between 2015 and 2025 AROC.
Runs:
scenario_aroc(df, aroc_type = "percent_change", percent_change = 20, baseline_year = 2015, target_year = 2025, small_is_best = FALSE)
See also
HEP acceleration scenarios
accelerate_cholera_campaign()
,
accelerate_detect()
,
accelerate_espar()
,
accelerate_measles_routine()
,
accelerate_meningitis_campaign()
,
accelerate_polio_routine()