%\VignetteIndexEntry{BonEV} \documentclass[11pt]{article} \usepackage{amsmath,epsfig,fullpage,hyperref} \usepackage{underscore} \parindent 0in %\newcommand{\Robject}[1]{{\texttt{#1}}} %\newcommand{\Rfunction}[1]{{\texttt{#1}}} %\newcommand{\Rpackage}[1]{{\textit{#1}}} \begin{document} \SweaveOpts{concordance=TRUE} \title{\bf Introduction to BonEV package} \author{Dongmei Li} \maketitle \begin{center} Clinical and Translational Science Institute, University of Rochester School of Medicine and Dentistry, Rochester, NY 14642-0708\\ \end{center} \tableofcontents %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%% \section{Overview} This document provides an introduction to the {\tt BonEV} package. The {\tt BonEv} package calculates the adjusted P-values from user-provided raw P-values through the Bon-EV multiple testing procedure that controls the false discovery rates at user-defined level alpha. The Bon-EV multiple testing procedure is developed based on the Bonferroni procedure with integrated estimates from the Benjamini-Hochberg procedure and the Storey's q-value procedure. It controls false discovery rates through controlling the expected number of false discoveries. %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%% \section{Getting started} The {\tt BonEV} package can be installed and loaded through the following R code. Install the {\tt BonEV} package with: %code 1 <>= install.packages("BonEV") @ Load the {\tt BonEV} package with: %code 2 <>= library(BonEV) @ %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%% \section{{\tt Bon_EV} function} There is one function in the {\tt BonEV} package: {\tt Bon_EV}. The function requires raw P-values in the vector format and user-defined alpha level for false discovery rates control. {\tt Bon_EV} will generate adjusted P-values from the Bon-EV multiple testing procedure that is developed based on the Bonferroni procedure with integrated estimates from the Benjamini-Hochberg procedure and the Storey's q-value procedure. {\tt Bon_EV} controls false discovery rates through controlling the expected number of false discoveries. The following is an example using the {\tt Bon_EV} function. The raw P-values in the hedenfalk data set from the qvalue package are used as the input to get adjusted P-values from the Bon-EV multiple testing procedure with the false discovery rate controlled at level alpha = 0.05. Then, the adjusted P-values from the Bon-EV multiple testing procedure are compared with adjusted P-values obtained from the Benjamini-Hochberg and Storey's q-value procedures. %code 3 <>= library(qvalue) data(hedenfalk) library(BonEV) pvalues <- hedenfalk$p adjp <- Bon_EV(pvalues, 0.05) summary(adjp) results <- cbind(adjp$raw_P_value, adjp$BH_adjp, adjp$Storey_adjp, adjp$Bon_EV_adjp) colnames(results) <- c("raw_P_value", "BH_adjp", "Storey_adjp", "Bon_EV_adjp") results[1:20,] summary(results) ##Compare with Benjami-Hochberg and Storey's q-value procedures sum(adjp$raw_P_value <= 0.05) sum(adjp$BH_adjp <= 0.05) sum(adjp$Storey_adjp <= 0.05) sum(adjp$Bon_EV_adjp <= 0.05) @ \end{document}