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SECTION I. INTRODUCTION - DATA DIVERSITY AND INTEGRATION. |
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1. Integrative Data Analysis and Visualization: Introduction to Critical Problems, Goals and Challenges (Francisco Azuaje and Joaquín Dopazo). |
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1.1 Data Analysis and Visualization: An Integrative Approach. |
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1.2 Critical Design and Implementation Factors. |
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1.3 Overview of Contributions. |
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2. Biological Databases: Infrastructure, Content and Integration (Allyson L. Williams, Paul J. Kersey, Manuela Pruess and Rolf Apweiler). |
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2.3 Review of Molecular Biology Databases. |
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3. Data and Predictive Model Integration: an Overview of Key Concepts, Problems and Solutions (Francisco Azuaje, Joaquín Dopazo and Haiying Wang). |
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3.1 Integrative Data Analysis and Visualization: Motivation and Approaches. |
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3.2 Integrating Informational Views and Complexity for Understanding Function. |
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3.3 Integrating Data Analysis Techniques for Supporting Functional Analysis. |
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SECTION II. INTEGRATIVE DATA MINING AND VISUALIZATION -EMPHASIS ON COMBINATION OF MULTIPLE DATA TYPES. |
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4. Applications of Text Mining in Molecular Biology, from Name Recognition to Protein Interaction Maps (Martin Krallinger and Alfonso Valencia). |
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4.2 Introduction to Text Mining and NLP. |
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4.3 Databases and Resources for Biomedical Text Mining. |
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4.4 Text Mining and Protein-Protein Interactions. |
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4.5 Other Text-Mining Applications in Genomics. |
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4.6 The Future of NLP in Biomedicine. |
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5. Protein Interaction Prediction by Integrating Genomic Features and Protein Interaction Network Analysis (Long J. Lu, Yu Xia, Haiyuan Yu, Alexander Rives, Haoxin Lu, Falk Schubert and Mark Gerstein). |
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5.2 Genomic Features in Protein Interaction Predictions. |
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5.3 Machine Learning on Protein-Protein Interactions. |
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5.4 The Missing Value Problem. |
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5.5 Network Analysis of Protein Interactions. |
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6. Integration of Genomic and Phenotypic Data (Amanda Clare). |
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6.2 Forward Genetics and QTL Analysis. |
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6.4 Prediction of Phenotype from Other Sources of Data. |
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6.5 Integrating Phenotype Data with Systems Biology. |
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6.6 Integration of Phenotype Data in Databases. |
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7. Ontologies and Functional Genomics (Fátima Al-Shahrour and Joaquín Dopazo). |
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7.1 Information Mining in Genome-Wide Functional Analysis. |
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7.2 Sources of Information: Free Text Versus Curated Repositories. |
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7.3 Bio-Ontologies and the Gene Ontology in Functional Genomics. |
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7.4 Using GO to Translate the Results of Functional Genomic Experiments into Biological Knowledge. |
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7.5 Statistical Approaches to Test Significant Biological Differences. |
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7.6 Using FatiGO to Find Significant Functional Associations in Clusters of Genes. |
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7.8 Examples of Functional Analysis of Clusters of Genes. |
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8. The C. elegans Interactome: its Generation and Visualization (Alban Chesnau and Claude Sardet). |
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8.2 The ORFeome: the first step toward the interactome of C. elegans. |
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8.3 Large-Scale High-Throughput Yeast Two-Hybrid Screens to Map the C. elegans Protein-Protein Interaction (Interactome) Network: Technical Aspects. |
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8.4 Visualization and Topology of Protein-Protein Interaction Networks. |
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8.5 Cross-Talk Between the C. elegans Interactome and other Large-Scale Genomics and Post-Genomics Data Sets. |
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8.6 Conclusion: From Interactions to Therapies. |
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SECTION III. INTEGRATIVE DATA MINING AND VISUALIZATION - EMPHASIS ON COMBINATION OF MULTIPLE PREDICTION MODELS AND METHODS. |
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9. Integrated Approaches for Bioinformatic Data Analysis and Visualization - Challenges, Opportunities and New Solutions (Steve R. Pettifer, James R. Sinnott and Teresa K. Attwood). |
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9.2 Sequence Analysis Methods and Databases. |
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9.3 A View Through a Portal. |
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9.4 Problems with Monolithic Approaches: One Size Does Not Fit All. |
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9.6 Challenges and Opportunities. |
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9.7 Extending the Desktop Metaphor. |
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10. Advances in Cluster Analysis of Microarray Data (Qizheng Sheng, Yves Moreau, Frank De Smet, Kathleen Marchal and Bart De Moor). |
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10.3 Hierarchical Clustering. |
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10.5 Self-Organizing Maps. |
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10.6 A Wish List for Clustering Algorithms. |
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10.7 The Self-Organizing Tree Algorithm. |
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10.8 Quality-Based Clustering Algorithms. |
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10.10 Biclustering Algorithms. |
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10.11 Assessing Cluster Quality. |
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11. Unsupervised Machine Learning to Support Functional Characterization of Genes: Emphasis on Cluster Description and Class Discovery (Olga G. Troyanskaya). |
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11.1 Functional Genomics: Goals and Data Sources. |
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11.2 Functional Annotation by Unsupervised Analysis of Gene Expression Microarray Data. |
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11.3 Integration of Diverse Functional Data For Accurate Gene Function Prediction. |
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11.4 MAGIC - General Probabilistic Integration of Diverse Genomic Data. |
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12. Supervised Methods with Genomic Data: a Review and Cautionary View (Ramón Díaz-Uriarte). |
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12.2 Class Prediction and Class Comparison. |
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12.3 Class Comparison: Finding/Ranking Differentially Expressed Genes. |
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12.4 Class Prediction and Prognostic Prediction. |
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12.5 ROC Curves for Evaluating Predictors and Differential Expression. |
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12.6 Caveats and Admonitions. |
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12.7 Final Note: Source Code Should be Available. |
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13. A Guide to the Literature on Inferring Genetic Networks by Probabilistic Graphical Models (Pedro Larrañaga, Iñaki Inza and Jose L. Flores). |
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13.3 Probabilistic Graphical Models. |
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13.4 Inferring Genetic Networks by Means of Probabilistic Graphical Models. |
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14. Integrative Models for the Prediction and Understanding of Protein Structure Patterns (Inge Jonassen). |
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14.2 Structure Prediction. |
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14.3 Classifications of Structures. |
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14.4 Comparing Protein Structures |
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14.5 Methods for the Discovery of Structure Motifs. |
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14.6 Discussion and Conclusions. |
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