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Genomics and Proteomics book from C.H.I.P.S.

Data Analysis and Visualization in Genomics and Proteomics
edited by
Francisco Azuaje
and Joaquin Dopazo

Data Analysis and Visualization in Genomics and Proteomics is the first book addressing integrative data analysis and visualization in this field.

Data Analysis and Visualization in Genomics and Proteomics addresses important techniques for the interpretation of data originating from multiple sources, encoded in different formats or protocols, and processed by multiple systems.

Data Analysis and Visualization in Genomics and Proteomics is one of the first systematic overviews of the problem of biological data integration using computational approaches

Data Analysis and Visualization in Genomics and Proteomics provides readers with the basis for the development and application of integrative computational methods to analyse biological data on a systemic scale

Data Analysis and Visualization in Genomics and Proteomics places emphasis on the processing of multiple data and knowledge resources, and the combination of different models and systems

Contents:

  1. Introduction - Data Diversity and Integration
    1. Integrative Data Analysis and Visualization: Introduction to Critical Problems, Goals and Challenges
      • Data Analysis and Visualization: An Integrative Approach
      • Critical Design and Implementation Factors
      • Overview of Contributions

    2. Biological Databases: Infrastructure, Content and Integration
      • Data Integration
      • Review of Molecular Biology Databases
      • Conclusion

    3. Data and Predictive Model Integration: an Overview of Key Concepts, Problems and Solutions
      • Integrative Data Analysis and Visualization: Motivation and Approaches
      • Integrating Informational Views and Complexity for Understanding Function
      • Integrating Data Analysis Techniques for Supporting Functional Analysis
      • Final Remarks

  2. Integrative Data Mining and Visualization -Emphasis on Combination of Multiple Data Types
    1. Applications of Text Mining in Molecular Biology, from Name Recognition to Protein Interaction Maps
      • Introduction to Text Mining and NLP
      • Databases and Resources for Biomedical Text Mining
      • Text Mining and Protein-Protein Interactions
      • Other Text-Mining Applications in Genomics
      • The Future of NLP in Biomedicine

    2. Protein Interaction Prediction by Integrating Genomic Features and Protein Interaction Network Analysis
      • Genomic Features in Protein Interaction Predictions
      • Machine Learning on Protein-Protein Interactions
      • The Missing Value Problem
      • Network Analysis of Protein Interactions

    3. Integration of Genomic and Phenotypic Data
      • Phenotype
      • Forward Genetics and QTL Analysis
      • Reverse Genetics
      • Prediction of Phenotype from Other Sources of Data
      • Integrating Phenotype Data with Systems Biology
      • Integration of Phenotype Data in Databases

    4. Ontologies and Functional Genomics
      • Information Mining in Genome-Wide Functional Analysis
      • Sources of Information: Free Text Versus Curated Repositories
      • Bio-Ontologies and the Gene Ontology in Functional Genomics
      • Using GO to Translate the Results of Functional Genomic Experiments into Biological Knowledge
      • Statistical Approaches to Test Significant Biological Differences
      • Using FatiGO to Find Significant Functional Associations in Clusters of Genes
      • Other Tools
      • Examples of Functional Analysis of Clusters of Genes
      • Future Prospects

    5. The C. elegans Interactome: its Generation and Visualization
      • The ORFeome: the first step toward the interactome of C. elegans
      • Large-Scale High-Throughput Yeast Two-Hybrid Screens to Map the C. elegans Protein-Protein Interaction (Interactome) Network: Technical Aspects
      • Visualization and Topology of Protein-Protein Interaction Networks
      • Cross-Talk Between the C. elegans Interactome and other Large-Scale Genomics and Post-Genomics Data Sets
      • Conclusion: From Interactions to Therapies

  3. Integrative Data Mining and Visualization - Emphasis on Combination of Multiple Prediction Models and Methods
    1. Integrated Approaches for Bioinformatic Data Analysis and Visualization - Challenges, Opportunities and New Solutions
      • Sequence Analysis Methods and Databases
      • A View Through a Portal
      • Problems with Monolithic Approaches: One Size Does Not Fit All
      • A Toolkit View
      • Challenges and Opportunities
      • Extending the Desktop Metaphor

    2. Advances in Cluster Analysis of Microarray Data
      • Some Preliminaries
      • Hierarchical Clustering
      • k-Means Clustering
      • Self-Organizing Maps
      • A Wish List for Clustering Algorithms
      • The Self-Organizing Tree Algorithm
      • Quality-Based Clustering Algorithms
      • Mixture Models
      • Biclustering Algorithms
      • Assessing Cluster Quality
      • Open Horizons

    3. Unsupervised Machine Learning to Support Functional Characterization of Genes: Emphasis on Cluster Description and Class Discovery
      • Functional Genomics: Goals and Data Sources
      • Functional Annotation by Unsupervised Analysis of Gene Expression Microarray Data
      • Integration of Diverse Functional Data For Accurate Gene Function Prediction
      • MAGIC - General Probabilistic Integration of Diverse Genomic Data

    4. Supervised Methods with Genomic Data: a Review and Cautionary View
      • Chapter Objectives
      • Class Prediction and Class Comparison
      • Class Comparison: Finding/Ranking Differentially Expressed Genes
      • Class Prediction and Prognostic Prediction
      • ROC Curves for Evaluating Predictors and Differential Expression
      • Caveats and Admonitions
      • Final Note: Source Code Should be Available

    5. A Guide to the Literature on Inferring Genetic Networks by Probabilistic Graphical Models
      • Genetic Networks
      • Probabilistic Graphical Models
      • Inferring Genetic Networks by Means of Probabilistic Graphical Models

    6. Integrative Models for the Prediction and Understanding of Protein Structure Patterns
      • Structure Prediction
      • Classifications of Structures
      • Comparing Protein Structures
      • Methods for the Discovery of Structure Motifs

Index

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Data Analysis and Visualization in
Genomics and Proteomics

edited by Francisco Azuaje and Joaquin Dopazo

2005 • 267 pages • $149.00 + shipping
Texas residents please add 7 % sales tax

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