Analyzing High-Dimensional Gene Expression and DNA Methylation Data with R Chapman & Hall/CRC Computational Biology Series
Auteur : Zhang Hongmei
Analyzing high-dimensional gene expression and DNA methylation data with R is the first practical book that shows a ``pipeline" of analytical methods with concrete examples starting from raw gene expression and DNA methylation data at the genome scale. Methods on quality control, data pre-processing, data mining, and further assessments are presented in the book, and R programs based on simulated data and real data are included. Codes with example data are all reproducible.
Features:
· Provides a sequence of analytical tools for genome-scale gene expression data and DNA methylation data, starting from quality control and pre-processing of raw genome-scale data.
· Organized by a parallel presentation with explanation on statistical methods and corresponding R packages/functions in quality control, pre-processing, and data analyses (e.g., clustering and networks).
· Includes source codes with simulated and real data to reproduce the results. Readers are expected to gain the ability to independently analyze genome-scaled expression and methylation data and detect potential biomarkers.
This book is ideal for students majoring in statistics, biostatistics, and bioinformatics and researchers with an interest in high dimensional genetic and epigenetic studies.
Genome-Scale Genetic and Epigenetic Data. Methods for Data Pre-Processing. Data Mining. Genetic and Epigenetic Factor Selections. Network Construction and Analyses.
Hongmei Zhang is a Biostatistician at the University of Memphis. She has been working with gene expression and DNA methylation data and her methodological research interest is to develop corresponding statistical methods. She has been teaching courses in this field for a number of years.
Date de parution : 05-2020
15.6x23.4 cm
Date de parution : 05-2020
15.6x23.4 cm
Thèmes d’Analyzing High-Dimensional Gene Expression and DNA... :
Mots-clés :
DNA Methylation; DNA Methylation Data; statistical genetics; CpG Site; bioinformatics; Adaptive Lasso; epigenetics; Epigenetic Data; data mining; RNA Seq Data; NOVA1; SVA; DNAm; Scad Penalty; Microarray Gene Expression Data Set; Cell Type Compositions; Candidate Graphs; Data Set; Elastic Net; Bayesian Networks; Mutual Clusters; Divisive Clustering; CEL File; Clustering Objects; DNA Methylation Measure; Cell Type Proportions; RF; Elastic Net Penalty; Scad