## ---- warning = FALSE, include = FALSE---------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----setup, warning = FALSE, message = FALSE---------------------------------- library(dabestr) ## ---- warning = FALSE--------------------------------------------------------- set.seed(12345) # Fix the seed so the results are reproducible. # pop_size = 10000 # Size of each population. N <- 20 # The number of samples taken from each population # Create samples c1 <- rnorm(N, mean = 3, sd = 0.4) c2 <- rnorm(N, mean = 3.5, sd = 0.75) c3 <- rnorm(N, mean = 3.25, sd = 0.4) t1 <- rnorm(N, mean = 3.5, sd = 0.5) t2 <- rnorm(N, mean = 2.5, sd = 0.6) t3 <- rnorm(N, mean = 3, sd = 0.75) # Add a `gender` column for coloring the data. gender <- c(rep("Male", N / 2), rep("Female", N / 2)) # Add an `id` column for paired data plotting. id <- 1:N # Combine samples and gender into a DataFrame. df <- tibble::tibble( `Control 1` = c1, `Control 2` = c2, `Control 3` = c3, `Test 1` = t1, `Test 2` = t2, `Test 3` = t3, Gender = gender, ID = id ) df <- df %>% tidyr::gather(key = Group, value = Measurement, -ID, -Gender) ## ----------------------------------------------------------------------------- knitr::kable(head(df)) ## ---- warning = FALSE--------------------------------------------------------- unpaired <- load(df, x = Group, y = Measurement, idx = list( c("Control 1", "Test 1"), c("Control 2", "Test 2"), c("Control 3", "Test 3") ), minimeta = TRUE ) ## ---- warning = FALSE--------------------------------------------------------- print(unpaired) ## ---- warning = FALSE--------------------------------------------------------- unpaired.mean_diff <- mean_diff(unpaired) print(unpaired.mean_diff) ## ---- warning = FALSE--------------------------------------------------------- unpaired.mean_diff$boot_result ## ---- warning = FALSE--------------------------------------------------------- dabest_plot(unpaired.mean_diff) ## ---- warning = FALSE--------------------------------------------------------- dabest_plot(unpaired.mean_diff, show_mini_meta = FALSE) ## ---- warning = FALSE--------------------------------------------------------- paired.mean_diff <- load(df, x = Group, y = Measurement, idx = list( c("Control 1", "Test 1"), c("Control 2", "Test 2"), c("Control 3", "Test 3") ), paired = "baseline", id_col = ID, minimeta = TRUE ) %>% mean_diff() dabest_plot(paired.mean_diff, raw_marker_size = 0.5, raw_marker_alpha = 0.3)