Next-Generation Sequencing Data Analysis 2nd Edition
Grabbing the attention of anyone working with high-throughput sequencing, Next-Generation Sequencing Data Analysis, 2nd Edition by Xinkun Wang is a definitive, up-to-date guide for turning raw NGS data into meaningful biological insight. Clear, practical, and technically rigorous, this edition addresses the evolving challenges of genomics, transcriptomics, epigenomics, single-cell, and metagenomic analysis.
Whether you’re a bench scientist learning bioinformatics or a computational researcher refining pipelines, you’ll find stepwise explanations of core concepts—quality control, read alignment, variant calling, RNA-seq quantification, ChIP-seq interpretation, and single-cell workflows—along with best practices for reproducibility and data visualization. The book balances theory and hands-on strategy, explaining algorithms and statistical principles while guiding readers through real-world decision points for pipeline design, tool selection, and result validation.
Designed for a global audience of researchers, clinicians, and students, this 2nd edition incorporates current NGS trends, common pitfalls, and practical troubleshooting strategies relevant to labs and institutions worldwide. Emphasizing portability across platforms and workflows in R, Python, and command-line environments, it helps you scale from small projects to large cohort studies.
If you want a comprehensive, approachable resource that accelerates your NGS projects and strengthens your bioinformatics skill set, Next-Generation Sequencing Data Analysis, 2nd Edition by Xinkun Wang is an essential addition to your library. Order your copy today and transform complex sequencing data into confident scientific conclusions.
Note: eBooks do not include supplementary materials such as CDs, access codes, etc.


