mirror of
https://github.com/agdamsbo/stRoke.git
synced 2024-11-24 13:41:55 +01:00
250 lines
7.0 KiB
R
250 lines
7.0 KiB
R
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#' @title Calculates the probability of winning
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#' @description Calculates the probability of winning (winP). In the referenced
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#' article Zou et al (2022) proposes a method for calculating probability of
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#' winning with a confidence interval an p-value testing.
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#' @param data A data frame containing the response and group variable.
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#' @param response The name of the response variable.
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#' Takes first column if empty.
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#' @param group The name of the group variable.
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#' Takes second column if empty.
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#' @param alpha The alpha level for the hypothesis test. Default is 0.05.
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#' @param beta The beta level for the sample size calculation. Default is 0.2.
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#' @param group.ratio The ratio of group sizes. Default is 1.
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#' @param sample.size Flag to include sample size calculation. Default is FALSE.
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#' @param print.tables Flag to print cumulative tables. Default is FALSE.
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#' @param dec Numeric for decimals to print. Default is 3.
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#' @return A list containing the win_prob statistics.
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#' @export
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#' @importFrom stats pnorm qnorm xtabs
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#' @source \doi{10.1161/STROKEAHA.121.037744}
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#' @examples
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#' win_prob(data=stRoke::talos,response="mrs_6",group="rtreat")
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win_prob <-
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function(data,
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response = NULL,
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group = NULL,
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alpha = 0.05,
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beta = 0.2,
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group.ratio = 1,
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sample.size = FALSE,
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print.tables = FALSE,
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dec = 3) {
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if (is.null(response)) {
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response <- names(data)[1]
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}
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if (is.null(group)) {
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group <- names(data)[2]
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}
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group_levels <- levels(factor(data[, group]))
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if (length(group_levels) != 2) {
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stop("The group has to contain 2, and only 2 levels.")
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}
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if (!is.numeric(group.ratio)) {
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stop("Group ratio must be a numeric")
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}
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if (!is.logical(sample.size)) {
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stop("Sample size must be a logical")
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}
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# Internal helper function for calculating ranks
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freq_rank <- function(data, x = "Freq") {
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lapply(data, function(i) {
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rank <- c()
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n_i <- nrow(i)
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for (j in seq_len(n_i)) {
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if (j < n_i) {
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rank[j] <-
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((i[j, x] + 1) / 2 + (sum(i[seq_len(n_i)[(j + 1):n_i], x])))
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}
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if (j == n_i) {
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rank[j] <- (i[j, x] + 1) / 2
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}
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}
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cbind(i, rank)
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})
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}
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overall <-
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freq_rank(list(data.frame(xtabs(data = data[c(response)]))))[[1]]
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tbl <- xtabs(data = data[c(response, group)])
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tbl_df <- data.frame(tbl)
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prop_df <- data.frame(proportions(tbl, group))
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df <- cbind(tbl_df, prop = prop_df[, "Freq"])
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list_cum <- split(df, df[, group])
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list_cum <- lapply(list_cum, function(i) {
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data.frame(i, overall_rank = overall$rank)
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})
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list_cum <- freq_rank(list_cum)
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sum_a <- sum(df$Freq[df$rtreat == group_levels[1]])
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sum_b <- sum(df$Freq[df$rtreat == group_levels[2]])
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list_cum[[1]]$win_frac <-
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with(list_cum[[1]], overall_rank - rank) / sum_b
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list_cum[[2]]$win_frac <-
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with(list_cum[[2]], overall_rank - rank) / sum_a
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winP_a <- sum(with(list_cum[[1]], prop * win_frac))
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winP_b <- sum(with(list_cum[[2]], prop * win_frac))
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var_win_frac_a <-
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sum(with(list_cum[[1]], prop * win_frac ^ 2)) - winP_a ^ 2
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var_win_frac_b <-
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sum(with(list_cum[[2]], prop * win_frac ^ 2)) - winP_b ^ 2
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var_win_prob <- var_win_frac_a / sum_a + var_win_frac_b / sum_b
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se_win_prob <- sqrt(var_win_prob)
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ci_up <-
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exp(log(winP_a / (1 - winP_a)) - qnorm(1 - alpha / 2) * se_win_prob /
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(winP_a / (1 - winP_a))) /
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(1 + exp(log(winP_a / (1 - winP_a)) - qnorm(1 - alpha / 2) *
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se_win_prob / (winP_a / (1 - winP_a))))
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ci_lo <-
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exp(log(winP_b / (1 - winP_b)) + qnorm(1 - alpha / 2) * se_win_prob /
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(winP_b / (1 - winP_b))) /
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(1 + exp(log(winP_b / (1 - winP_b)) + qnorm(1 - alpha / 2) *
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se_win_prob / (winP_b / (1 - winP_b))))
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test_stat <-
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abs(log(winP_a / (1 - winP_a))) / (se_win_prob / (winP_a * (1 - winP_a)))
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p_val <- 2 * (1 - pnorm(test_stat))
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nnt <- 1 / (winP_a - 0.5)
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ss_n <- NA
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if (sample.size) {
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ss_n <-
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ceiling((group.ratio + 1) / group.ratio *
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(qnorm(1 - alpha / 2) + qnorm(1 - beta)) ^ 2 *
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(var_win_frac_a + group.ratio * var_win_frac_b) /
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(winP_a * (1 - winP_a) * log(winP_a / (1 - winP_a))) ^ 2
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)
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}
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out <- list(
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list_cum = list_cum,
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group_levels = group_levels,
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sum_a = sum_a,
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sum_b = sum_b,
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winP_a = winP_a,
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winP_b = winP_b,
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var_win_frac_a = var_win_frac_a,
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var_win_frac_b = var_win_frac_b,
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var_win_prob = var_win_prob,
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se_win_prob = se_win_prob,
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conf.int = c(ci_lo, ci_up),
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test_stat = test_stat,
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p_val = p_val,
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nnt = nnt,
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ss_n = ss_n,
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param.record = list(
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data = data,
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response = response,
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group = group,
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alpha = alpha,
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beta = beta,
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group.ratio = group.ratio,
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sample.size = sample.size,
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print.tables = print.tables,
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dec = dec
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)
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)
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class(out) <- c("win_Prob", class(out))
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return(out)
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}
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#' @title Prints win_prob results
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#' @param x win_prob results.
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#' @param ... ignored for now
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#' @return Prints win_prob statistics.
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#' @export
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print.win_Prob <- function (x, ...) {
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args <- list(...)
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cat("\t Zou et al's winP (doi: 10.1161/STROKEAHA.121.037744) \n\n")
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cat(
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sprintf(
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"Probability of a random observation in %s group
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will have a higher response score than a random
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observation in %s group:\n\n",
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x$group_levels[2],
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x$group_levels[1]
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)
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)
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cat(" ")
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cat(
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sprintf(
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"\t winP: %2.3f (%2.3f, %2.3f) p=%1.4f",
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x$winP_a,
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x$conf.int[1],
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x$conf.int[2],
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x$p_val
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)
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)
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cat("\n")
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cat("--------------------------------------------\n\n")
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cat(sprintf("The numbers needed to treat (NNT) are: %s\n\n",
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ceiling(x$nnt)))
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cat("\n")
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if (x$param.record$sample.size) {
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cat("--------------------------------------------\n\n")
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cat(
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sprintf(
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"\tWith %s/%s ratio = %s and beta = %s
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the sample size needed is: %s\n\n",
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x$group_levels[1],
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x$group_levels[2],
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x$param.record$group.ratio,
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x$param.record$beta,
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x$ss_n
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)
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)
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}
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cat("\n")
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if (x$param.record$print.tables) {
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cat("--------------------------------------------\n\n")
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lc <- lapply(x$list_cum, function(i, t = c("prop", "win_frac")) {
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i[t] <- round(i[t], x$param.record$dec)
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i[, !names(i) == x$param.record$group]
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})
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for (i in x$group_levels) {
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tab <- knitr::kable(lc[[i]], row.names = FALSE)
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cat(sprintf("Results for the %s group:\n", i))
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cat(sprintf("\t%s\n",
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tab))
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cat("\n")
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}
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}
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return(invisible(x))
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}
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