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Title Data analysis for omic sciences : methods and applications / edited by Joaquim Jaumot, Carmen Bedia, Romà Tauler.

Publication Info. Amsterdam, Netherlands : Elsevier, [2018]

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Location Call No. OPAC Message Status
 Axe Elsevier ScienceDirect Ebook  Electronic Book    ---  Available
Description 1 online resource : illustrations (some colour)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Series Wilson & Wilson's comprehensive analytical chemistry ; volume 82
Wilson and Wilson's comprehensive analytical chemistry ; v. 82.
Note Online resource; title from PDF title page (ScienceDirect, viewed October 2, 2018).
Bibliography Includes bibliographical references and index.
Contents Front Cover; Data Analysis for Omic Sciences: Methods and Applications; Copyright; Contents; Contributors to Volume 82; Series Editor Preface; Preface; Chapter One: Introduction to the Data Analysis Relevance in the Omic Era; 1. Introduction to Omics; 2. Data Analysis in the Omic Workflow; 2.1. Molecular Hypothesis Formulation; 2.2. Experimental Design; 2.3. Sample Preparation and Instrumental Analysis; 2.4. Preprocessing and Data Analysis; 2.5. Results Evaluation and Biological Interpretation; 3. Data Analysis Aspects Considered in This Volume
3.1. Hypothesis Formulation, Experimental Design, Sample Preparation and Analysis3.2. Preprocessing and Data Analysis; 3.3. Results Evaluation and Biological interpretation; 4. Future Trends; Acknowledgements; References; Chapter Two: Experimental Approaches in Omic Sciences; 1. Introduction; 2. The Importance of the Biological Samples; 3. Targeted and Untargeted Analytical Approaches in Omic Studies; 4. Sample Preparation in Omics Studies; 5. Analytical Technologies in Omic Sciences; 5.1. Genomics, Epigenomics, and Transcriptomics; 5.2. Proteomics; 5.3. Metabolomics; 6. Concluding Remarks
4.2. Array Normalization4.2.1. Main Steps; 4.2.1.1. Background Correction; 4.2.1.2. Normalization; 4.2.1.3. Summarization; 4.2.2. Methods; 4.2.2.1. Robust Multichip Analysis; 4.2.2.2. Probe Logarithmic Intensity Error; 4.2.2.3. GC-RMA; 4.3. Data Filtering; 4.4. Batch Effect in Microarrays; 5. Experimental Design for Microarray Experiments; 5.1. Replication; 5.1.1. Power and Sample Size; 5.2. Pooling; 5.3. Blocking Microarray Experiments; 6. Statistical Analysis of Microarray Data; 6.1. Class Comparison, Selecting Differentially Expressed Genes; 6.1.1. Statistical Tests for Microarray Data
6.1.2. The Multiple Testing Problem and Proposed Solutions6.1.3. Volcano Plots; 6.2. Class Prediction; 6.3. Class Discovery; 6.4. Biological Significance Analysis: Finding Meaning in Data; 6.4.1. Pathway Analysis Methods; 7. Microarray Bioinformatics; 7.1. Software for Microarray Data Analysis; 7.1.1. Open Source Software; 7.1.2. The Bioconductor Project; 7.1.3. Proprietary Software; 7.2. Microarray Databases; 8. Discussion and Conclusions; Supplementary Materials; Acknowledgements; References; Further Reading; Chapter Four: RNA-Seq Data Analysis, Applications and Challenges; 1. Introduction
Subject Quantitative research.
Biology -- Mathematical models.
Recherche quantitative.
Biologie -- Modèles mathématiques.
REFERENCE -- Questions & Answers.
Biology -- Mathematical models
Quantitative research
Added Author Jaumot, Joaquim, editor.
Bedia, Carmen, editor.
Tauler i Ferré, Romà, editor.
Other Form: Print version: Data analysis for omic sciences. Amsterdam, Netherlands : Elsevier, [2018] 0444640444 9780444640444 (OCoLC)1028528737
ISBN 9780444640451 (electronic bk.)
0444640452 (electronic bk.)
9780444640444 (print)
0444640444
Standard No. UKMGB 019055659

 
    
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