Imagen de portada de Amazon
Imagen de Amazon.com
Imagen de OpenLibrary

Introduction to Bioinformatics with R Edward Curry

Por: Tipo de material: TextoTextoIdioma: ENG Detalles de publicación: London Chapman & Hall/CRC 2020Edición: 1° EdiciónDescripción: 310 páginas Figuras, tablas 23.5 cmISBN:
  • 9781138495715
Tema(s): Clasificación CDD:
  • 570.15195 C976
Contenidos:
Contents -- Acknowledgements -- 1.Introduction -- 2.Introduction to R -- 3.An Introduction to LINUX for Biological Research -- 4.Statistical Methods for Data Analysis -- 5.Analyzing Generic Tabular Numeric Datasets in R -- 6.Functional Enrichment Analysis -- 7.Integrating Multiple Datasets in R -- 8.Analyzing Microarray Data in R -- 9.Analyzing DNA Methylation Microarray Data in R -- 10.DNA Analysis With Microarrays -- 11.Working with Sequencing Data -- 12.Genomic Sequence Profiling -- 13.ChIP-seq -- 14.RNA-seq -- 15.Bisulphite Sequencing -- 16.Final Notes -- Index.
Resumen: In biological research, the amount of data available to researchers has increased so much over recent years, it is becoming increasingly difficult to understand the current state of the art without some experience and understanding of data analytics and bioinformatics. An Introduction to Bioinformatics with R: A Practical Guide for Biologists leads the reader through the basics of computational analysis of data encountered in modern biological research. With no previous experience with statistics or programming required, readers will develop the ability to plan suitable analyses of biological datasets, and to use the R programming environment to perform these analyses. This is achieved through a series of case studies using R to answer research questions using molecular biology datasets. Broadly applicable statistical methods are explained, including linear and rank-based correlation, distance metrics and hierarchical clustering, hypothesis testing using linear regression, proportional hazards regression for survival data, and principal component analysis. These methods are then applied as appropriate throughout the case studies, illustrating how they can be used to answer research questions. Key Features: · Provides a practical course in computational data analysis suitable for students or researchers with no previous exposure to computer programming. · Describes in detail the theoretical basis for statistical analysis techniques used throughout the textbook, from basic principles · Presents walk-throughs of data analysis tasks using R and example datasets. All R commands are presented and explained in order to enable the reader to carry out these tasks themselves. · Uses outputs from a large range of molecular biology platforms including DNA methylation and genotyping microarrays; RNA-seq, genome sequencing, ChIP-seq and bisulphite sequencing; and high-throughput phenotypic screens. · Gives worked-out examples geared towards problems encountered in cancer research, which can also be applied across many areas of molecular biology and medical research. This book has been developed over years of training biological scientists and clinicians to analyse the large datasets available in their cancer research projects. It is appropriate for use as a textbook or as a practical book for biological scientists looking to gain bioinformatics skills.
Etiquetas de esta biblioteca: No hay etiquetas de esta biblioteca para este título. Ingresar para agregar etiquetas.
Valoración
    Valoración media: 0.0 (0 votos)
Existencias
Tipo de ítem Biblioteca actual Signatura topográfica Copia número Estado Código de barras
Libros Libros Biblioteca Universidad Regional Amazónica Ikiam 570.15195 C976 (Navegar estantería(Abre debajo)) Ej: 1/2 Disponible 005219
Libros Libros Biblioteca Universidad Regional Amazónica Ikiam 570.15195 C976 (Navegar estantería(Abre debajo)) Ej: 2/2 Disponible 005220

Contents -- Acknowledgements -- 1.Introduction -- 2.Introduction to R -- 3.An Introduction to LINUX for Biological Research -- 4.Statistical Methods for Data Analysis -- 5.Analyzing Generic Tabular Numeric Datasets in R -- 6.Functional Enrichment Analysis -- 7.Integrating Multiple Datasets in R -- 8.Analyzing Microarray Data in R -- 9.Analyzing DNA Methylation Microarray Data in R -- 10.DNA Analysis With Microarrays -- 11.Working with Sequencing Data -- 12.Genomic Sequence Profiling -- 13.ChIP-seq -- 14.RNA-seq -- 15.Bisulphite Sequencing -- 16.Final Notes -- Index.

In biological research, the amount of data available to researchers has increased so much over recent years, it is becoming increasingly difficult to understand the current state of the art without some experience and understanding of data analytics and bioinformatics. An Introduction to Bioinformatics with R: A Practical Guide for Biologists leads the reader through the basics of computational analysis of data encountered in modern biological research. With no previous experience with statistics or programming required, readers will develop the ability to plan suitable analyses of biological datasets, and to use the R programming environment to perform these analyses. This is achieved through a series of case studies using R to answer research questions using molecular biology datasets. Broadly applicable statistical methods are explained, including linear and rank-based correlation, distance metrics and hierarchical clustering, hypothesis testing using linear regression, proportional hazards regression for survival data, and principal component analysis. These methods are then applied as appropriate throughout the case studies, illustrating how they can be used to answer research questions.

Key Features:

· Provides a practical course in computational data analysis suitable for students or researchers with no previous exposure to computer programming.

· Describes in detail the theoretical basis for statistical analysis techniques used throughout the textbook, from basic principles

· Presents walk-throughs of data analysis tasks using R and example datasets. All R commands are presented and explained in order to enable the reader to carry out these tasks themselves.

· Uses outputs from a large range of molecular biology platforms including DNA methylation and genotyping microarrays; RNA-seq, genome sequencing, ChIP-seq and bisulphite sequencing; and high-throughput phenotypic screens.

· Gives worked-out examples geared towards problems encountered in cancer research, which can also be applied across many areas of molecular biology and medical research.

This book has been developed over years of training biological scientists and clinicians to analyse the large datasets available in their cancer research projects. It is appropriate for use as a textbook or as a practical book for biological scientists looking to gain bioinformatics skills.

No hay comentarios en este titulo.

para colocar un comentario.