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finalfit (version 1.0.2)

ff_row_totals: Add row totals to summary_factorlist() output

Description

This adds a total and missing count to variables. This is useful for continuous variables. Compare this to summary_factorlist(total_col = TRUE) which includes a count for each dummy variable as a factor and mean (sd) or median (iqr) for continuous variables.

Usage

ff_row_totals(df.in, .data, dependent, explanatory,
  missing_column = TRUE, na_include_dependent = FALSE,
  na_complete_cases = FALSE, total_name = "Total N",
  na_name = "Missing N")

finalfit_row_totals(df.in, .data, dependent, explanatory, missing_column = TRUE, na_include_dependent = FALSE, na_complete_cases = FALSE, total_name = "Total N", na_name = "Missing N")

Arguments

df.in

summary_factorlist() output.

.data

Data frame used to create summary_factorlist().

dependent

Character. Name of dependent variable.

explanatory

Character vector of any length: name(s) of explanatory variables.

missing_column

Logical. Include a column of counts of missing data.

na_include_dependent

Logical. When TRUE, missing data in the dependent variable is included in totals.

na_complete_cases

Logical. When TRUE, missing data counts for variables are for compelte cases across all included variables.

total_name

Character. Name of total column.

na_name

Character. Name of missing column.

Value

Data frame.

Examples

Run this code
# NOT RUN {
explanatory = c("age.factor", "sex.factor", "obstruct.factor", "perfor.factor")
dependent = 'mort_5yr'
colon_s %>%
 summary_factorlist(dependent, explanatory) %>%
	ff_row_totals(colon_s, dependent, explanatory)
# }

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