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DNA Methylation Microarrays Experimental Design and Statistical Analysis

Langue : Anglais

Auteurs :

Couverture de l’ouvrage DNA Methylation Microarrays

Providing an interface between dry-bench bioinformaticians and wet-lab biologists, DNA Methylation Microarrays: Experimental Design and Statistical Analysis presents the statistical methods and tools to analyze high-throughput epigenomic data, in particular, DNA methylation microarray data. Since these microarrays share the same underlying principles as gene expression microarrays, many of the analyses in the text also apply to microarray-based gene expression and histone modification (ChIP-on-chip) studies.

After introducing basic statistics, the book describes wet-bench technologies that produce the data for analysis and explains how to preprocess the data to remove systematic artifacts resulting from measurement imperfections. It then explores differential methylation and genomic tiling arrays. Focusing on exploratory data analysis, the next several chapters show how cluster and network analyses can link the functions and roles of unannotated DNA elements with known ones. The book concludes by surveying the open source software (R and Bioconductor), public databases, and other online resources available for microarray research.

Requiring only limited knowledge of statistics and programming, this book helps readers gain a solid understanding of the methodological foundations of DNA microarray analysis.

Preface. Applied Statistics. DNA Methylation Microarrays and Quality Control. Experimental Design. Data Normalization. Significant Differential Methylation. High-Density Genomic Tiling Arrays. Cluster Analysis. Statistical Classification. Interdependency Network of DNA Methylation. Time Series Experiment. Online Annotations. Public Microarray Data Repositories. Open Source Software for Microarray Data Analysis. References. Index.
Professional Practice & Development
Sun-Chong Wang, Art Petronis
Written from the perspective of an analyst who interacts closely with biology colleagues who have only minimal knowledge of statistics and programming, DNA Methylation Microarrays provides a solid understanding of methodological foundations and enables critical thinking for advanced studies. Using graphics to illustrate the results, the book presents examples based on real biological data from a variety of cellular samples with array hybridizations performed in the laboratory. It covers quality control, experimental design, normalization, significant differential methylation, clustering, dependence networks, and online annotations.