Book Image

Bioinformatics with Python Cookbook - Second Edition

By : Tiago Antao
Book Image

Bioinformatics with Python Cookbook - Second Edition

By: Tiago Antao

Overview of this book

Bioinformatics is an active research field that uses a range of simple-to-advanced computations to extract valuable information from biological data. This book covers next-generation sequencing, genomics, metagenomics, population genetics, phylogenetics, and proteomics. You'll learn modern programming techniques to analyze large amounts of biological data. With the help of real-world examples, you'll convert, analyze, and visualize datasets using various Python tools and libraries. This book will help you get a better understanding of working with a Galaxy server, which is the most widely used bioinformatics web-based pipeline system. This updated edition also includes advanced next-generation sequencing filtering techniques. You'll also explore topics such as SNP discovery using statistical approaches under high-performance computing frameworks such as Dask and Spark. By the end of this book, you'll be able to use and implement modern programming techniques and frameworks to deal with the ever-increasing deluge of bioinformatics data.
Table of Contents (16 chapters)
Title Page
About Packt
Contributors
Preface
Index

Introduction


Phylogenetics is the application of molecular sequencing to study the evolutionary relationship among organisms. The typical way to illustrate this process is through the use of phylogenetic trees. The computation of these trees from genomic data is an active field of research with many real-world applications.

We will take the practical approach mentioned in this book to a new level: most of the recipes here are inspired by a recent study on the Ebola virus, researching the recent Ebola outbreak in Africa. This study is called Genomic surveillance elucidates Ebola virus origin and transmission during the 2014 outbreak, by Gire et al., published on Science, and is available at http://www.sciencemag.org/content/345/6202/1369.short. Here, we will try to follow a similar methodology to arrive at similar results from the paper.

In this chapter, we will use DendroPy (a phylogenetics library) and Biopython.