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R Bioinformatics Cookbook

You're reading from   R Bioinformatics Cookbook Use R and Bioconductor to perform RNAseq, genomics, data visualization, and bioinformatic analysis

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Product type Paperback
Published in Oct 2019
Publisher Packt
ISBN-13 9781789950694
Length 316 pages
Edition 1st Edition
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Authors (2):
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Dr Dan Maclean Dr Dan Maclean
Author Profile Icon Dr Dan Maclean
Dr Dan Maclean
Dan MacLean Dan MacLean
Author Profile Icon Dan MacLean
Dan MacLean
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Toc

Table of Contents (13) Chapters Close

Preface 1. Performing Quantitative RNAseq FREE CHAPTER 2. Finding Genetic Variants with HTS Data 3. Searching Genes and Proteins for Domains and Motifs 4. Phylogenetic Analysis and Visualization 5. Metagenomics 6. Proteomics from Spectrum to Annotation 7. Producing Publication and Web-Ready Visualizations 8. Working with Databases and Remote Data Sources 9. Useful Statistical and Machine Learning Methods 10. Programming with Tidyverse and Bioconductor 11. Building Objects and Packages for Code Reuse 12. Other Books You May Enjoy

Useful Statistical and Machine Learning Methods

In bioinformatics, the statistical analysis of datasets of varied size and composition is a frequent task. R is, of course, a hugely powerful statistical language with abundant options for all sorts of tasks. In this chapter, we will focus a little on some of those useful but not so often discussed methods that, while none of them make up an analysis in and of themselves, can be powerful additions to the analyses that you likely do quite often. We'll look at recipes for simulating datasets and machine learning methods for class prediction and dimensionality reduction.

The following recipes will be covered in this chapter:

  • Correcting p-values to account for multiple hypotheses
  • Generating a simulated dataset to represent a background
  • Learning groupings within data and classifying with kNN
  • Predicting classes with random forests...
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