ABSTRACT

Richly illustrated in color, Statistics and Data Analysis for Microarrays Using R and Bioconductor, Second Edition provides a clear and rigorous description of powerful analysis techniques and algorithms for mining and interpreting biological information. Omitting tedious details, heavy formalisms, and cryptic notations, the text takes a hands-on, example-based approach that teaches students the basics of R and microarray technology as well as how to choose and apply the proper data analysis tool to specific problems.

New to the Second Edition
Completely updated and double the size of its predecessor, this timely second edition replaces the commercial software with the open source R and Bioconductor environments. Fourteen new chapters cover such topics as the basic mechanisms of the cell, reliability and reproducibility issues in DNA microarrays, basic statistics and linear models in R, experiment design, multiple comparisons, quality control, data pre-processing and normalization, Gene Ontology analysis, pathway analysis, and machine learning techniques. Methods are illustrated with toy examples and real data and the R code for all routines is available on an accompanying downloadable resource.

With all the necessary prerequisites included, this best-selling book guides students from very basic notions to advanced analysis techniques in R and Bioconductor. The first half of the text presents an overview of microarrays and the statistical elements that form the building blocks of any data analysis. The second half introduces the techniques most commonly used in the analysis of microarray data.

chapter 1|4 pages

Introduction

chapter 2|34 pages

The cell and its basic mechanisms

chapter 3|30 pages

Microarrays

chapter 5|30 pages

Image processing

chapter 6|74 pages

Introduction to R

chapter 7|14 pages

Bioconductor: principles and illustrations

chapter 8|54 pages

Elements of statistics

chapter 9|38 pages

Probability distributions

chapter 10|38 pages

Basic statistics in R

chapter 11|22 pages

Statistical hypothesis testing

chapter 12|34 pages

Classical approaches to data analysis

chapter 13|38 pages

Analysis of Variance – ANOVA

chapter 14|30 pages

Linear models in R

chapter 15|28 pages

Experiment design

chapter 16|24 pages

Multiple comparisons

chapter 17|52 pages

Analysis and visualization tools

chapter 18|68 pages

Cluster analysis

chapter 19|58 pages

Quality control

chapter 20|56 pages

Data preprocessing and normalization

chapter 22|14 pages

The Gene Ontology (GO)

chapter 24|20 pages

Uses, misuses, and abuses in GO profiling

chapter 27|10 pages

ID Mapping issues

chapter 28|48 pages

Pathway analysis

chapter 29|26 pages

Machine learning techniques

chapter 30|4 pages

The road ahead