Book Image

R Bioinformatics Cookbook

By : Dan MacLean
Book Image

R Bioinformatics Cookbook

By: Dan MacLean

Overview of this book

Handling biological data effectively requires an in-depth knowledge of machine learning techniques and computational skills, along with an understanding of how to use tools such as edgeR and DESeq. With the R Bioinformatics Cookbook, you’ll explore all this and more, tackling common and not-so-common challenges in the bioinformatics domain using real-world examples. This book will use a recipe-based approach to show you how to perform practical research and analysis in computational biology with R. You will learn how to effectively analyze your data with the latest tools in Bioconductor, ggplot, and tidyverse. The book will guide you through the essential tools in Bioconductor to help you understand and carry out protocols in RNAseq, phylogenetics, genomics, and sequence analysis. As you progress, you will get up to speed with how machine learning techniques can be used in the bioinformatics domain. You will gradually develop key computational skills such as creating reusable workflows in R Markdown and packages for code reuse. By the end of this book, you’ll have gained a solid understanding of the most important and widely used techniques in bioinformatic analysis and the tools you need to work with real biological data.
Table of Contents (13 chapters)

Metagenomics

The use of high throughput sequencing has turbocharged metagenomics from a field focused on studying variation in single sequences such as the 16S ribosomal RNA (rRNA) sequence to studying entire genomes of the many species that may be present in a sample. The task of identifying species or taxa and their abundances in a sample is computationally challenging and requires the bioinformatician to deal with the preparation of sequences, assignment to taxa, comparisons of taxa, and quantifications. Packages for this have been developed by a wide range of specialist laboratories that have created new tools and new visualizations specific to working with sequences in metagenomics.

In this chapter, we'll look at recipes to carry out some complex analyses in metagenomics with R:

  • Loading in hierarchical taxonomic data using phyloseq
  • Rarefying counts to correct for sample...