Description

Book Synopsis
Batch Effects and Noise in Microarray Experiments: Sources and Solutions looks at the issue of technical noise and batch effects in microarray studies and illustrates how to alleviate such factors whilst interpreting the relevant biological information.

Each chapter focuses on sources of noise and batch effects before starting an experiment, with examples of statistical methods for detecting, measuring, and managing batch effects within and across datasets provided online. Throughout the book the importance of standardization and the value of standard operating procedures in the development of genomics biomarkers is emphasized.

Key Features:

  • A thorough introduction to Batch Effects and Noise in Microrarray Experiments.
  • A unique compilation of review and research articles on handling of batch effects and technical and biological noise in microarray data.
  • An extensive overview of current standardization initiatives.
  • All datasets a

    Table of Contents

    List of Contributors xiii

    Foreword xvii

    Preface xix

    1 Variation, Variability, Batches and Bias in Microarray Experiments: An Introduction 1
    Andreas Scherer

    2 Microarray Platforms and Aspects of Experimental Variation 5
    John A Coller Jr

    2.1 Introduction 5

    2.2 Microarray Platforms 6

    2.2.1 Affymetrix 6

    2.2.2 Agilent 7

    2.2.3 Illumina 7

    2.2.4 Nimblegen 8

    2.2.5 Spotted Microarrays 8

    2.3 Experimental Considerations 9

    2.3.1 Experimental Design 9

    2.3.2 Sample and RNA Extraction 9

    2.3.3 Amplification 12

    2.3.4 Labeling 13

    2.3.5 Hybridization 13

    2.3.6 Washing 14

    2.3.7 Scanning 15

    2.3.8 Image Analysis and Data Extraction 16

    2.3.9 Clinical Diagnosis 17

    2.3.10 Interpretation of the Data 17

    2.4 Conclusions 17

    3 Experimental Design 19
    Peter Grass

    3.1 Introduction 19

    3.2 Principles of Experimental Design 20

    3.2.1 Definitions 20

    3.2.2 Technical Variation 21

    3.2.3 Biological Variation 21

    3.2.4 Systematic Variation 22

    3.2.5 Population, Random Sample, Experimental and Observational Units 22

    3.2.6 Experimental Factors 22

    3.2.7 Statistical Errors 23

    3.3 Measures to Increase Precision and Accuracy 24

    3.3.1 Randomization 25

    3.3.2 Blocking 25

    3.3.3 Replication 25

    3.3.4 Further Measures to Optimize Study Design 26

    3.4 Systematic Errors in Microarray Studies 28

    3.4.1 Selection Bias 28

    3.4.2 Observational Bias 28

    3.4.3 Bias at Specimen/Tissue Collection 29

    3.4.4 Bias at mRNA Extraction and Hybridization 30

    3.5 Conclusion 30

    4 Batches and Blocks, Sample Pools and Subsamples in the Design and Analysis of Gene Expression Studies 33
    Naomi Altman

    4.1 Introduction 33

    4.1.1 Batch Effects 35

    4.2 A Statistical Linear Mixed Effects Model for Microarray Experiments 35

    4.2.1 Using the Linear Model for Design 37

    4.2.2 Examples of Design Guided by the Linear Model 37

    4.3 Blocks and Batches 39

    4.3.1 Complete Block Designs 39

    4.3.2 Incomplete Block Designs 39

    4.3.3 Multiple Batch Effects 40

    4.4 Reducing Batch Effects by Normalization and Statistical Adjustment 41

    4.4.1 Between and Within Batch Normalization with Multi-array Methods 43

    4.4.2 Statistical Adjustment 46

    4.5 Sample Pooling and Sample Splitting 47

    4.5.1 Sample Pooling 47

    4.5.2 Sample Splitting: Technical Replicates 48

    4.6 Pilot Experiments 49

    4.7 Conclusions 49

    Acknowledgements 50

    5 Aspects of Technical Bias 51
    Martin Schumacher, Frank Staedtler, Wendell D Jones, and Andreas Scherer

    5.1 Introduction 51

    5.2 Observational Studies 52

    5.2.1 Same Protocol, Different Times of Processing 52

    5.2.2 Same Protocol, Different Sites (Study 1) 53

    5.2.3 Same Protocol, Different Sites (Study 2) 55

    5.2.4 Batch Effect Characteristics at the Probe Level 57

    5.3 Conclusion 60

    6 Bioinformatic Strategies for cDNA-Microarray Data Processing 61
    Jessica Fahlén, Mattias Landfors, Eva Freyhult, Max Bylesjö, Johan Trygg, Torgeir R Hvidsten, and Patrik Rydén

    6.1 Introduction 61

    6.1.1 Spike-in Experiments 62

    6.1.2 Key Measures – Sensitivity and Bias 63

    6.1.3 The IC Curve and MA Plot 63

    6.2 Pre-processing 64

    6.2.1 Scanning Procedures 65

    6.2.2 Background Correction 65

    6.2.3 Saturation 67

    6.2.4 Normalization 68

    6.2.5 Filtering 70

    6.3 Downstream Analysis 71

    6.3.1 Gene Selection 71

    6.3.2 Cluster Analysis 71

    6.4 Conclusion 73

    7 Batch Effect Estimation of Microarray Platforms with Analysis of Variance 75
    Nysia I George and James J Chen

    7.1 Introduction 75

    7.1.1 Microarray Gene Expression Data 76

    7.1.2 Analysis of Variance in Gene Expression Data 77

    7.2 Variance Component Analysis across Microarray Platforms 78

    7.3 Methodology 78

    7.3.1 Data Description 78

    7.3.2 Normalization 79

    7.3.3 Gene-Specific ANOVA Model 81

    7.4 Application: The MAQC Project 81

    7.5 Discussion and Conclusion 85

    Acknowledgements 85

    8 Variance due to Smooth Bias in Rat Liver and Kidney Baseline Gene Expression in a Large Multi-laboratory Data Set 87
    Michael J Boedigheimer, Jeff W Chou, J Christopher Corton, Jennifer Fostel, Raegan O’Lone, P Scott Pine, John Quackenbush, Karol L Thompson, and Russell D Wolfinger

    8.1 Introduction 87

    8.2 Methodology 89

    8.3 Results 89

    8.3.1 Assessment of Smooth Bias in Baseline Expression Data Sets 89

    8.3.2 Relationship between Smooth Bias and Signal Detection 91

    8.3.3 Effect of Smooth Bias Correction on Principal Components Analysis 92

    8.3.4 Effect of Smooth Bias Correction on Estimates of Attributable Variability 94

    8.3.5 Effect of Smooth Bias Correction on Detection of Genes Differentially Expressed by Fasting 95

    8.3.6 Effect of Smooth Bias Correction on the Detection of Strain-Selective Gene Expression 96

    8.4 Discussion 97

    Acknowledgements 99

    9 Microarray Gene Expression: The Effects of Varying Certain Measurement Conditions 101
    Walter Liggett, Jean Lozach, Anne Bergstrom Lucas, Ron L Peterson, Marc L Salit, Danielle Thierry-Mieg, Jean Thierry-Mieg, and Russell D Wolfinger

    9.1 Introduction 101

    9.2 Input Mass Effect on the Amount of Normalization Applied 103

    9.3 Probe-by-Probe Modeling of the Input Mass Effect 103

    9.4 Further Evidence of Batch Effects 108

    9.5 Conclusions 110

    10 Adjusting Batch Effects in Microarray Experiments with Small Sample Size Using Empirical Bayes Methods 113
    W Evan Johnson and Cheng li

    10.1 Introduction 113

    10.1.1 Bayesian and Empirical Bayes Applications in Microarrays 114

    10.2 Existing Methods for Adjusting Batch Effect 115

    10.2.1 Microarray Data Normalization 115

    10.2.2 Batch Effect Adjustment Methods for Large Sample Size 115

    10.2.3 Model-Based Location and Scale Adjustments 116

    10.3 Empirical Bayes Method for Adjusting Batch Effect 117

    10.3.1 Parametric Shrinkage Adjustment 117

    10.3.2 Empirical Bayes Batch Effect Parameter Estimates using Nonparametric Empirical Priors 120

    10.4 Data Examples, Results and Robustness of the Empirical Bayes Method 121

    10.4.1 Microarray Data with Batch Effects 121

    10.4.2 Results for Data Set 1 124

    10.4.3 Results for Data Set 2 124

    10.4.4 Robustness of the Empirical Bayes Method 126

    10.4.5 Software Implementation 127

    10.5 Discussion 128

    11 Identical Reference Samples and Empirical Bayes Method for Cross-Batch Gene Expression Analysis 131
    Wynn L Walker and Frank R Sharp

    11.1 Introduction 131

    11.2 Methodology 133

    11.2.1 Data Description 133

    11.2.2 Empirical Bayes Method for Batch Adjustment 134

    11.2.3 Naïve t-test Batch Adjustment 135

    11.3 Application: Expression Profiling of Blood from Muscular Dystrophy Patients 135

    11.3.1 Removal of Cross-Experimental Batch Effects 135

    11.3.2 Removal of Within-Experimental Batch Effects 136

    11.3.3 Removal of Batch Effects: Empirical Bayes Method versus t-Test Filter 137

    11.4 Discussion and Conclusion 138

    11.4.1 Methods for Batch Adjustment Within and Across Experiments 138

    11.4.2 Bayesian Approach is Well Suited for Modeling Cross-Experimental Batch Effects 139

    11.4.3 Implications of Cross-Experimental Batch Corrections for Clinical Studies 139

    12 Principal Variance Components Analysis: Estimating Batch Effects in Microarray Gene Expression Data 141
    Jianying Li, Pierre R Bushel, Tzu-Ming Chu, and Russell D Wolfinger

    12.1 Introduction 141

    12.2 Methods 143

    12.2.1 Principal Components Analysis 143

    12.2.2 Variance Components Analysis and Mixed Models 145

    12.2.3 Principal Variance Components Analysis 145

    12.3 Experimental Data 146

    12.3.1 A Transcription Inhibition Study 146

    12.3.2 A Lung Cancer Toxicity Study 147

    12.3.3 A Hepato-toxicant Toxicity Study 147

    12.4 Application of the PVCA Procedure to the Three Example Data Sets 148

    12.4.1 PVCA Provides Detailed Estimates of Batch Effects 148

    12.4.2 Visualizing the Sources of Batch Effects 149

    12.4.3 Selecting the Principal Components in the Modeling 150

    12.5 Discussion 153

    13 Batch Profile Estimation, Correction, and Scoring 155
    Tzu-Ming Chu, Wenjun Bao, Russell S Thomas, and Russell D Wolfinger

    13.1 Introduction 155

    13.2 Mouse Lung Tumorigenicity Data Set with Batch Effects 157

    13.2.1 Batch Profile Estimation 159

    13.2.2 Batch Profile Correction 160

    13.2.3 Batch Profile Scoring 161

    13.2.4 Cross-Validation Results 162

    13.3 Discussion 164

    Acknowledgements 165

    14 Visualization of Cross-Platform Microarray Normalization 167
    Xuxin Liu, Joel Parker, Cheng Fan, Charles M Perou, and J S Marron

    14.1 Introduction 167

    14.2 Analysis of the NCI 60 Data 169

    14.3 Improved Statistical Power 174

    14.4 Gene-by-Gene versus Multivariate Views 178

    14.5 Conclusion 181

    15 Toward Integration of Biological Noise: Aggregation Effect in Microarray Data Analysis 183
    Lev Klebanov and Andreas Scherer

    15.1 Introduction 183

    15.2 Aggregated Expression Intensities 185

    15.3 Covariance between Log-Expressions 186

    15.4 Conclusion 189

    Acknowledgements 190

    16 Potential Sources of Spurious Associations and Batch Effects in Genome-Wide Association Studies 191
    Huixiao Hong, Leming Shi, James C Fuscoe, Federico Goodsaid, Donna Mendrick, and Weida Tong

    16.1 Introduction 191

    16.2 Potential Sources of Spurious Associations 192

    16.2.1 Spurious Associations Related to Study Design 194

    16.2.2 Spurious Associations Caused in Genotyping Experiments 195

    16.2.3 Spurious Associations Caused by Genotype Calling Errors 195

    16.3 Batch Effects 196

    16.3.1 Batch Effect in Genotyping Experiment 196

    16.3.2 Batch Effect in Genotype Calling 197

    16.4 Conclusion 201

    Disclaimer 201

    17 Standard Operating Procedures in Clinical Gene Expression Biomarker Panel Development 203
    Khurram Shahzad, Anshu Sinha, Farhana Latif, and Mario C Deng

    17.1 Introduction 203

    17.2 Theoretical Framework 204

    17.3 Systems-Biological Concepts in Medicine 204

    17.4 General Conceptual Challenges 205

    17.5 Strategies for Gene Expression Biomarker Development 205

    17.5.1 Phase 1: Clinical Phenotype Consensus Definition 206

    17.5.2 Phase 2: Gene Discovery 207

    17.5.3 Phase 3: Internal Differential Gene List Confirmation 209

    17.5.4 Phase 4: Diagnostic Classifier Development 209

    17.5.5 Phase 5: External Clinical Validation 210

    17.5.6 Phase 6: Clinical Implementation 211

    17.5.7 Phase 7: Post-Clinical Implementation Studies 212

    17.6 Conclusions 213

    18 Data, Analysis, and Standardization 215
    Gabriella Rustici, Andreas Scherer, and John Quackenbush

    18.1 Introduction 215

    18.2 Reporting Standards 216

    18.3 Computational Standards: From Microarray to Omic Sciences 219

    18.3.1 The Microarray Gene Expression Data Society 219

    18.3.2 The Proteomics Standards Initiative 220

    18.3.3 The Metabolomics Standards Initiative 220

    18.3.4 The Genomic Standards Consortium 220

    18.3.5 Systems Biology Initiatives 221

    18.3.6 Data Standards in Biopharmaceutical and Clinical Research 221

    18.3.7 Standards Integration Initiatives 222

    18.3.8 The MIBBI project 223

    18.3.9 OBO Foundry 223

    18.3.10 FuGE and ISA-TAB 223

    18.4 Experimental Standards: Developing Quality Metrics and a Consensus on Data Analysis Methods 226

    18.5 Conclusions and Future Perspective 228

    References 231

    Index 245

Batch Effects and Noise in Microarray Experiments

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    A Hardback by Andreas Scherer

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      View other formats and editions of Batch Effects and Noise in Microarray Experiments by Andreas Scherer

      Publisher: John Wiley & Sons Inc
      Publication Date: 28/10/2009
      ISBN13: 9780470741382, 978-0470741382
      ISBN10: 0470741384

      Description

      Book Synopsis
      Batch Effects and Noise in Microarray Experiments: Sources and Solutions looks at the issue of technical noise and batch effects in microarray studies and illustrates how to alleviate such factors whilst interpreting the relevant biological information.

      Each chapter focuses on sources of noise and batch effects before starting an experiment, with examples of statistical methods for detecting, measuring, and managing batch effects within and across datasets provided online. Throughout the book the importance of standardization and the value of standard operating procedures in the development of genomics biomarkers is emphasized.

      Key Features:

      • A thorough introduction to Batch Effects and Noise in Microrarray Experiments.
      • A unique compilation of review and research articles on handling of batch effects and technical and biological noise in microarray data.
      • An extensive overview of current standardization initiatives.
      • All datasets a

        Table of Contents

        List of Contributors xiii

        Foreword xvii

        Preface xix

        1 Variation, Variability, Batches and Bias in Microarray Experiments: An Introduction 1
        Andreas Scherer

        2 Microarray Platforms and Aspects of Experimental Variation 5
        John A Coller Jr

        2.1 Introduction 5

        2.2 Microarray Platforms 6

        2.2.1 Affymetrix 6

        2.2.2 Agilent 7

        2.2.3 Illumina 7

        2.2.4 Nimblegen 8

        2.2.5 Spotted Microarrays 8

        2.3 Experimental Considerations 9

        2.3.1 Experimental Design 9

        2.3.2 Sample and RNA Extraction 9

        2.3.3 Amplification 12

        2.3.4 Labeling 13

        2.3.5 Hybridization 13

        2.3.6 Washing 14

        2.3.7 Scanning 15

        2.3.8 Image Analysis and Data Extraction 16

        2.3.9 Clinical Diagnosis 17

        2.3.10 Interpretation of the Data 17

        2.4 Conclusions 17

        3 Experimental Design 19
        Peter Grass

        3.1 Introduction 19

        3.2 Principles of Experimental Design 20

        3.2.1 Definitions 20

        3.2.2 Technical Variation 21

        3.2.3 Biological Variation 21

        3.2.4 Systematic Variation 22

        3.2.5 Population, Random Sample, Experimental and Observational Units 22

        3.2.6 Experimental Factors 22

        3.2.7 Statistical Errors 23

        3.3 Measures to Increase Precision and Accuracy 24

        3.3.1 Randomization 25

        3.3.2 Blocking 25

        3.3.3 Replication 25

        3.3.4 Further Measures to Optimize Study Design 26

        3.4 Systematic Errors in Microarray Studies 28

        3.4.1 Selection Bias 28

        3.4.2 Observational Bias 28

        3.4.3 Bias at Specimen/Tissue Collection 29

        3.4.4 Bias at mRNA Extraction and Hybridization 30

        3.5 Conclusion 30

        4 Batches and Blocks, Sample Pools and Subsamples in the Design and Analysis of Gene Expression Studies 33
        Naomi Altman

        4.1 Introduction 33

        4.1.1 Batch Effects 35

        4.2 A Statistical Linear Mixed Effects Model for Microarray Experiments 35

        4.2.1 Using the Linear Model for Design 37

        4.2.2 Examples of Design Guided by the Linear Model 37

        4.3 Blocks and Batches 39

        4.3.1 Complete Block Designs 39

        4.3.2 Incomplete Block Designs 39

        4.3.3 Multiple Batch Effects 40

        4.4 Reducing Batch Effects by Normalization and Statistical Adjustment 41

        4.4.1 Between and Within Batch Normalization with Multi-array Methods 43

        4.4.2 Statistical Adjustment 46

        4.5 Sample Pooling and Sample Splitting 47

        4.5.1 Sample Pooling 47

        4.5.2 Sample Splitting: Technical Replicates 48

        4.6 Pilot Experiments 49

        4.7 Conclusions 49

        Acknowledgements 50

        5 Aspects of Technical Bias 51
        Martin Schumacher, Frank Staedtler, Wendell D Jones, and Andreas Scherer

        5.1 Introduction 51

        5.2 Observational Studies 52

        5.2.1 Same Protocol, Different Times of Processing 52

        5.2.2 Same Protocol, Different Sites (Study 1) 53

        5.2.3 Same Protocol, Different Sites (Study 2) 55

        5.2.4 Batch Effect Characteristics at the Probe Level 57

        5.3 Conclusion 60

        6 Bioinformatic Strategies for cDNA-Microarray Data Processing 61
        Jessica Fahlén, Mattias Landfors, Eva Freyhult, Max Bylesjö, Johan Trygg, Torgeir R Hvidsten, and Patrik Rydén

        6.1 Introduction 61

        6.1.1 Spike-in Experiments 62

        6.1.2 Key Measures – Sensitivity and Bias 63

        6.1.3 The IC Curve and MA Plot 63

        6.2 Pre-processing 64

        6.2.1 Scanning Procedures 65

        6.2.2 Background Correction 65

        6.2.3 Saturation 67

        6.2.4 Normalization 68

        6.2.5 Filtering 70

        6.3 Downstream Analysis 71

        6.3.1 Gene Selection 71

        6.3.2 Cluster Analysis 71

        6.4 Conclusion 73

        7 Batch Effect Estimation of Microarray Platforms with Analysis of Variance 75
        Nysia I George and James J Chen

        7.1 Introduction 75

        7.1.1 Microarray Gene Expression Data 76

        7.1.2 Analysis of Variance in Gene Expression Data 77

        7.2 Variance Component Analysis across Microarray Platforms 78

        7.3 Methodology 78

        7.3.1 Data Description 78

        7.3.2 Normalization 79

        7.3.3 Gene-Specific ANOVA Model 81

        7.4 Application: The MAQC Project 81

        7.5 Discussion and Conclusion 85

        Acknowledgements 85

        8 Variance due to Smooth Bias in Rat Liver and Kidney Baseline Gene Expression in a Large Multi-laboratory Data Set 87
        Michael J Boedigheimer, Jeff W Chou, J Christopher Corton, Jennifer Fostel, Raegan O’Lone, P Scott Pine, John Quackenbush, Karol L Thompson, and Russell D Wolfinger

        8.1 Introduction 87

        8.2 Methodology 89

        8.3 Results 89

        8.3.1 Assessment of Smooth Bias in Baseline Expression Data Sets 89

        8.3.2 Relationship between Smooth Bias and Signal Detection 91

        8.3.3 Effect of Smooth Bias Correction on Principal Components Analysis 92

        8.3.4 Effect of Smooth Bias Correction on Estimates of Attributable Variability 94

        8.3.5 Effect of Smooth Bias Correction on Detection of Genes Differentially Expressed by Fasting 95

        8.3.6 Effect of Smooth Bias Correction on the Detection of Strain-Selective Gene Expression 96

        8.4 Discussion 97

        Acknowledgements 99

        9 Microarray Gene Expression: The Effects of Varying Certain Measurement Conditions 101
        Walter Liggett, Jean Lozach, Anne Bergstrom Lucas, Ron L Peterson, Marc L Salit, Danielle Thierry-Mieg, Jean Thierry-Mieg, and Russell D Wolfinger

        9.1 Introduction 101

        9.2 Input Mass Effect on the Amount of Normalization Applied 103

        9.3 Probe-by-Probe Modeling of the Input Mass Effect 103

        9.4 Further Evidence of Batch Effects 108

        9.5 Conclusions 110

        10 Adjusting Batch Effects in Microarray Experiments with Small Sample Size Using Empirical Bayes Methods 113
        W Evan Johnson and Cheng li

        10.1 Introduction 113

        10.1.1 Bayesian and Empirical Bayes Applications in Microarrays 114

        10.2 Existing Methods for Adjusting Batch Effect 115

        10.2.1 Microarray Data Normalization 115

        10.2.2 Batch Effect Adjustment Methods for Large Sample Size 115

        10.2.3 Model-Based Location and Scale Adjustments 116

        10.3 Empirical Bayes Method for Adjusting Batch Effect 117

        10.3.1 Parametric Shrinkage Adjustment 117

        10.3.2 Empirical Bayes Batch Effect Parameter Estimates using Nonparametric Empirical Priors 120

        10.4 Data Examples, Results and Robustness of the Empirical Bayes Method 121

        10.4.1 Microarray Data with Batch Effects 121

        10.4.2 Results for Data Set 1 124

        10.4.3 Results for Data Set 2 124

        10.4.4 Robustness of the Empirical Bayes Method 126

        10.4.5 Software Implementation 127

        10.5 Discussion 128

        11 Identical Reference Samples and Empirical Bayes Method for Cross-Batch Gene Expression Analysis 131
        Wynn L Walker and Frank R Sharp

        11.1 Introduction 131

        11.2 Methodology 133

        11.2.1 Data Description 133

        11.2.2 Empirical Bayes Method for Batch Adjustment 134

        11.2.3 Naïve t-test Batch Adjustment 135

        11.3 Application: Expression Profiling of Blood from Muscular Dystrophy Patients 135

        11.3.1 Removal of Cross-Experimental Batch Effects 135

        11.3.2 Removal of Within-Experimental Batch Effects 136

        11.3.3 Removal of Batch Effects: Empirical Bayes Method versus t-Test Filter 137

        11.4 Discussion and Conclusion 138

        11.4.1 Methods for Batch Adjustment Within and Across Experiments 138

        11.4.2 Bayesian Approach is Well Suited for Modeling Cross-Experimental Batch Effects 139

        11.4.3 Implications of Cross-Experimental Batch Corrections for Clinical Studies 139

        12 Principal Variance Components Analysis: Estimating Batch Effects in Microarray Gene Expression Data 141
        Jianying Li, Pierre R Bushel, Tzu-Ming Chu, and Russell D Wolfinger

        12.1 Introduction 141

        12.2 Methods 143

        12.2.1 Principal Components Analysis 143

        12.2.2 Variance Components Analysis and Mixed Models 145

        12.2.3 Principal Variance Components Analysis 145

        12.3 Experimental Data 146

        12.3.1 A Transcription Inhibition Study 146

        12.3.2 A Lung Cancer Toxicity Study 147

        12.3.3 A Hepato-toxicant Toxicity Study 147

        12.4 Application of the PVCA Procedure to the Three Example Data Sets 148

        12.4.1 PVCA Provides Detailed Estimates of Batch Effects 148

        12.4.2 Visualizing the Sources of Batch Effects 149

        12.4.3 Selecting the Principal Components in the Modeling 150

        12.5 Discussion 153

        13 Batch Profile Estimation, Correction, and Scoring 155
        Tzu-Ming Chu, Wenjun Bao, Russell S Thomas, and Russell D Wolfinger

        13.1 Introduction 155

        13.2 Mouse Lung Tumorigenicity Data Set with Batch Effects 157

        13.2.1 Batch Profile Estimation 159

        13.2.2 Batch Profile Correction 160

        13.2.3 Batch Profile Scoring 161

        13.2.4 Cross-Validation Results 162

        13.3 Discussion 164

        Acknowledgements 165

        14 Visualization of Cross-Platform Microarray Normalization 167
        Xuxin Liu, Joel Parker, Cheng Fan, Charles M Perou, and J S Marron

        14.1 Introduction 167

        14.2 Analysis of the NCI 60 Data 169

        14.3 Improved Statistical Power 174

        14.4 Gene-by-Gene versus Multivariate Views 178

        14.5 Conclusion 181

        15 Toward Integration of Biological Noise: Aggregation Effect in Microarray Data Analysis 183
        Lev Klebanov and Andreas Scherer

        15.1 Introduction 183

        15.2 Aggregated Expression Intensities 185

        15.3 Covariance between Log-Expressions 186

        15.4 Conclusion 189

        Acknowledgements 190

        16 Potential Sources of Spurious Associations and Batch Effects in Genome-Wide Association Studies 191
        Huixiao Hong, Leming Shi, James C Fuscoe, Federico Goodsaid, Donna Mendrick, and Weida Tong

        16.1 Introduction 191

        16.2 Potential Sources of Spurious Associations 192

        16.2.1 Spurious Associations Related to Study Design 194

        16.2.2 Spurious Associations Caused in Genotyping Experiments 195

        16.2.3 Spurious Associations Caused by Genotype Calling Errors 195

        16.3 Batch Effects 196

        16.3.1 Batch Effect in Genotyping Experiment 196

        16.3.2 Batch Effect in Genotype Calling 197

        16.4 Conclusion 201

        Disclaimer 201

        17 Standard Operating Procedures in Clinical Gene Expression Biomarker Panel Development 203
        Khurram Shahzad, Anshu Sinha, Farhana Latif, and Mario C Deng

        17.1 Introduction 203

        17.2 Theoretical Framework 204

        17.3 Systems-Biological Concepts in Medicine 204

        17.4 General Conceptual Challenges 205

        17.5 Strategies for Gene Expression Biomarker Development 205

        17.5.1 Phase 1: Clinical Phenotype Consensus Definition 206

        17.5.2 Phase 2: Gene Discovery 207

        17.5.3 Phase 3: Internal Differential Gene List Confirmation 209

        17.5.4 Phase 4: Diagnostic Classifier Development 209

        17.5.5 Phase 5: External Clinical Validation 210

        17.5.6 Phase 6: Clinical Implementation 211

        17.5.7 Phase 7: Post-Clinical Implementation Studies 212

        17.6 Conclusions 213

        18 Data, Analysis, and Standardization 215
        Gabriella Rustici, Andreas Scherer, and John Quackenbush

        18.1 Introduction 215

        18.2 Reporting Standards 216

        18.3 Computational Standards: From Microarray to Omic Sciences 219

        18.3.1 The Microarray Gene Expression Data Society 219

        18.3.2 The Proteomics Standards Initiative 220

        18.3.3 The Metabolomics Standards Initiative 220

        18.3.4 The Genomic Standards Consortium 220

        18.3.5 Systems Biology Initiatives 221

        18.3.6 Data Standards in Biopharmaceutical and Clinical Research 221

        18.3.7 Standards Integration Initiatives 222

        18.3.8 The MIBBI project 223

        18.3.9 OBO Foundry 223

        18.3.10 FuGE and ISA-TAB 223

        18.4 Experimental Standards: Developing Quality Metrics and a Consensus on Data Analysis Methods 226

        18.5 Conclusions and Future Perspective 228

        References 231

        Index 245

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