-Titulo Original : Bioinformatics With Python Cookbook Learn How To Use Modern Python Bioinformatics Libraries And Applications To Do Cutting-edge Research In Computational Biology, 2nd Edition
-Fabricante :
Packt Publishing
-Descripcion Original:
Discover modern, next-generation sequencing libraries from Python ecosystem to analyze large amounts of biological data Key Features Perform complex bioinformatics analysis using the most important Python libraries and applications Implement next-generation sequencing, metagenomics, automating analysis, population genetics, and more Explore various statistical and machine learning techniques for bioinformatics data analysis Book Description 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. Youll learn modern programming techniques to analyze large amounts of biological data. With the help of real-world examples, youll 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. Youll 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, youll be able to use and implement modern programming techniques and frameworks to deal with the ever-increasing deluge of bioinformatics data. What you will learn Learn how to process large next-generation sequencing (NGS) datasets Work with genomic dataset using the FASTQ, BAM, and VCF formats Learn to perform sequence comparison and phylogenetic reconstruction Perform complex analysis with protemics data Use Python to interact with Galaxy servers Use High-performance computing techniques with Dask and Spark Visualize protein dataset interactions using Cytoscape Use PCA and Decision Trees, two machine learning techniques, with biological datasets Who this book is for This book is for Data data Scientistsscientists, Bioinformatics bioinformatics analysts, researchers, and Python developers who want to address intermediate-to-advanced biological and bioinformatics problems using a recipe-based approach. Working knowledge of the Python programming language is expected. Table of Contents Python and the Surrounding Software Ecology Next-generation Sequencing Working with Genomes Population Genetics Population Genetics Simulation Phylogenetics Using the Protein Data Bank Bioinformatics pipelines Python for Big Genomics Datasets Other Topics in Bioinformatics Machine learning in Bioinformatics About the Author Tiago Antao is a bioinformatician currently working in the field of genomics. He was originally a computer scientist that crossed over to computational biology with a MSc in Bioinformatics from the Faculty of Sciences of the University of Porto, Portugal and a PhD on the spread of drug resistant malaria from the Liverpool School of Tropical Medicine in the UK. Is is one of the co-authors of Biopython a major bioinformatics package written in Python. In his post-doctoral career, he has worked with human datasets at the University of Cambridge (UK) and with mosquito whole genome sequence data at the University of Oxford (UK) and currently works as a research scientist at the University of Montana.
-Fabricante :
Packt Publishing
-Descripcion Original:
Discover modern, next-generation sequencing libraries from Python ecosystem to analyze large amounts of biological data Key Features Perform complex bioinformatics analysis using the most important Python libraries and applications Implement next-generation sequencing, metagenomics, automating analysis, population genetics, and more Explore various statistical and machine learning techniques for bioinformatics data analysis Book Description 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. Youll learn modern programming techniques to analyze large amounts of biological data. With the help of real-world examples, youll 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. Youll 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, youll be able to use and implement modern programming techniques and frameworks to deal with the ever-increasing deluge of bioinformatics data. What you will learn Learn how to process large next-generation sequencing (NGS) datasets Work with genomic dataset using the FASTQ, BAM, and VCF formats Learn to perform sequence comparison and phylogenetic reconstruction Perform complex analysis with protemics data Use Python to interact with Galaxy servers Use High-performance computing techniques with Dask and Spark Visualize protein dataset interactions using Cytoscape Use PCA and Decision Trees, two machine learning techniques, with biological datasets Who this book is for This book is for Data data Scientistsscientists, Bioinformatics bioinformatics analysts, researchers, and Python developers who want to address intermediate-to-advanced biological and bioinformatics problems using a recipe-based approach. Working knowledge of the Python programming language is expected. Table of Contents Python and the Surrounding Software Ecology Next-generation Sequencing Working with Genomes Population Genetics Population Genetics Simulation Phylogenetics Using the Protein Data Bank Bioinformatics pipelines Python for Big Genomics Datasets Other Topics in Bioinformatics Machine learning in Bioinformatics About the Author Tiago Antao is a bioinformatician currently working in the field of genomics. He was originally a computer scientist that crossed over to computational biology with a MSc in Bioinformatics from the Faculty of Sciences of the University of Porto, Portugal and a PhD on the spread of drug resistant malaria from the Liverpool School of Tropical Medicine in the UK. Is is one of the co-authors of Biopython a major bioinformatics package written in Python. In his post-doctoral career, he has worked with human datasets at the University of Cambridge (UK) and with mosquito whole genome sequence data at the University of Oxford (UK) and currently works as a research scientist at the University of Montana.

