Advances in statistical bioinformatics : models and integrative inference for high-throughput data
by
 
Do, Kim-Anh, 1960- editor.

Title
Advances in statistical bioinformatics : models and integrative inference for high-throughput data

Author
Do, Kim-Anh, 1960- editor.

ISBN
9781139226448

Physical Description
1 online resource (xv, 481 pages) : digital, PDF file(s).

General Note
Title from publisher's bibliographic system (viewed on 05 Oct 2015).

Abstract
Providing genome-informed personalized treatment is a goal of modern medicine. Identifying new translational targets in nucleic acid characterizations is an important step toward that goal. The information tsunami produced by such genome-scale investigations is stimulating parallel developments in statistical methodology and inference, analytical frameworks, and computational tools. Within the context of genomic medicine and with a strong focus on cancer research, this book describes the integration of high-throughput bioinformatics data from multiple platforms to inform our understanding of the functional consequences of genomic alterations. This includes rigorous and scalable methods for simultaneously handling diverse data types such as gene expression array, miRNA, copy number, methylation, and next-generation sequencing data. This material is written for statisticians who are interested in modeling and analyzing high-throughput data. Chapters by experts in the field offer a thorough introduction to the biological and technical principles behind multiplatform high-throughput experimentation.

Subject Term
Bioinformatics -- Statistical methods.
 
Biometry.
 
Genetics -- Technique.

Added Author
Do, Kim-Anh, 1960-
 
Qin, Steven, 1972-
 
Vannucci, Marina, 1966-

Electronic Access
https://doi.org/10.1017/CBO9781139226448


LibraryMaterial TypeItem BarcodeShelf Number[[missing key: search.ChildField.HOLDING]]Status
Online LibraryE-Book506344-1001QH324.2 .A395 2013Elektronik Kütüphane