Bayesian Modeling in Bioinformatics discusses the development
and application of Bayesian statistical methods for the analysis of
high-throughput bioinformatics data arising from problems in
molecular and structural biology and disease-related medical
research, such as cancer. It presents a broad overview of
statistical inference, clustering, and classification problems in
two main high-throughput platforms: microarray gene expression and
phylogenic analysis.
The book explores Bayesian techniques and models for detecting
differentially expressed genes, classifying differential gene
expression, and identifying biomarkers. It develops novel Bayesian
nonparametric approaches for bioinformatics problems, measurement
error and survival models for cDNA microarrays, a Bayesian hidden
Markov modeling approach for CGH array data, Bayesian approaches
for phylogenic analysis, sparsity priors for protein-protein
interaction predictions, and Bayesian networks for gene expression
data. The text also describes applications of mode-oriented
stochastic search algorithms, in vitro to in vivo factor profiling,
proportional hazards regression using Bayesian kernel machines, and
QTL mapping.
Focusing on design, statistical inference, and data analysis
from a Bayesian perspective, this volume explores statistical
challenges in bioinformatics data analysis and modeling and offers
solutions to these problems. It encourages readers to draw on the
evolving technologies and promote statistical development in this
area of bioinformatics.
General
Is the information for this product incomplete, wrong or inappropriate?
Let us know about it.
Does this product have an incorrect or missing image?
Send us a new image.
Is this product missing categories?
Add more categories.
Review This Product
No reviews yet - be the first to create one!