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Bayesian Inference for Gene Expression and Proteomics

Bayesian Inference for Gene Expression and Proteomics

9781107636989
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Description
The interdisciplinary nature of bioinformatics presents a research challenge in integrating concepts, methods, software and multiplatform data. Although there have been rapid developments in new technology and an inundation of statistical methods for addressing other types of high-throughput data, such as proteomic profiles that arise from mass spectrometry experiments. This book discusses the development and application of Bayesian methods in the analysis of high-throughput bioinformatics data that arise from medical, in particular, cancer research, as well as molecular and structural biology. The Bayesian approach has the advantage that evidence can be easily and flexibly incorporated into statistical methods. A basic overview of the biological and technical principles behind multi-platform high-throughput experimentation is followed by expert reviews of Bayesian methodology, tools and software for single group inference, group comparisons, classification and clustering, motif discovery and regulatory networks, and Bayesian networks and gene interactions.
Product Details
65685
9781107636989
9781107636989

Data sheet

Publication date
2012
Issue number
1
Cover
paperback
Pages count
456
Dimensions (mm)
141.00 x 221.00
Weight (g)
570
  • 1. An introduction to high-throughput bioinformatics data Keith Baggerly, Kevin Coombes and Jeffrey S. Morris; 2. Hierarchical mixture models for expression profiles Michael Newton, Ping Wang and Christina Kendziorski; 3. Bayesian hierarchical models for inference in microarray data Anne-Mette K. Hein, Alex Lewin and Sylvia Richardson; 4. Bayesian process-based modeling of two-channel microarray experiments estimating absolute mRNA concentrations Mark A. van de Wiel, Marit Holden, Ingrid K. Glad, Heidi Lyng and Arnoldo Frigessi; 5. Identification of biomarkers in classification and clustering of high-throughput data Mahlet Tadesse, Marina Vannucci, Naijun Sha and Sinae Kim; 6. Modeling nonlinear gene interactions using Bayesian MARS Veerabhadran Baladandayuthapani, Chris C. Holmes, Bani K. Mallick and Raymond J. Carroll; 7. Models for probability of under- and over-expression:: the POE scale Elizabeth Garrett-Mayer and Robert Scharpf; 8. Sparse statistical modelling in gene expression genomics Joseph Lucas, Carlos Carvalho, Quanli Wang, Andrea Bild, Joseph Nevins and Mike West; 9. Bayesian analysis of cell-cycle gene expression Chuan Zhou, Jon Wakefield and Linda L. Breeden; 10. Model-based clustering for expression data via a Dirichlet process mixture model David Dahl; 11. Interval mapping for Expression Quantitative Trait Loci mapping Meng Chen and Christina Kendziorski; 12. Bayesian mixture model for gene expression and protein profiles Michele Guindani, Kim-Anh Do, Peter Müller and Jeffrey S. Morris; 13. Shrinkage estimation for SAGE data using a mixture Dirichlet prior Jeffrey S. Morris, Kevin Coombes and Keith Baggerly; 14. Analysis of mass spectrometry data using Bayesian wavelet-based functional mixed models Jeffrey S. Morris, Philip J. Brown, Keith Baggerly and Kevin Coombes; 15. Nonparametric models for proteomic peak identification and quantification Merlise Clyde, Leanna House and Robert Wolpert; 16. Bayesian modeling and inference for sequence motif discovery Mayetri Gupta and Jun S. Liu; 17. Identifying of DNA regulatory motifs and regulators by integrating gene expression and sequence data Deuk Woo Kwon, Sinae Kim, David Dahl, Michael Swartz, Mahlet Tadesse and Marina Vannucci; 18. A misclassification model for inferring transcriptional regulatory networks Ning Sun and Hongyu Zhao; 19. Estimating cellular signaling from transcription data Andrew V. Kossenkov, Ghislain Bidaut and Michael Ochs; 20. Computational methods for learning Bayesian networks from high-throughput biological data Bradley Broom and Devika Subramanian; 21. Modeling transcriptional regulation:: Bayesian networks and informative priors Alexander J. Hartemink; 22. Sample size choice for microarray experiments Peter Müller, Christian Robert and Judith Rousseau.
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