Description

Book Synopsis
Written by esteemed experts in the field, Models and Algorithms for Biomolecules and Molecular Networks provides readers with a global perspectives on the relevant biological phenomena, modeling frameworks, technical challenges, and algorithms.

Table of Contents

List of Figures xiii

List of Tables xix

Foreword xxi

Acknowledgments xxiii

1 Geometric Models of Protein Structure and Function Prediction 1

1.1 Introduction 1

1.2 Theory and Model 2

1.2.1 Idealized Ball Model 2

1.2.2 Surface Models of Proteins 3

1.2.3 Geometric Constructs 4

1.2.4 Topological Structures 6

1.2.5 Metric Measurements 9

1.3 Algorithm and Computation 13

1.4 Applications 15

1.4.1 Protein Packing 15

1.4.2 Predicting Protein Functions from Structures 17

1.5 Discussion and Summary 20

References 22

Exercises 25

2 Scoring Functions for Predicting Structure and Binding of Proteins 29

2.1 Introduction 29

2.2 General Framework of Scoring Function and Potential Function 31

2.2.1 Protein Representation and Descriptors 31

2.2.2 Functional Form 32

2.2.3 Deriving Parameters of Potential Functions 32

2.3 Statistical Method 32

2.3.1 Background 32

2.3.2 Theoretical Model 33

2.3.3 Miyazawa--Jernigan Contact Potential 34

2.3.4 Distance-Dependent Potential Function 41

2.3.5 Geometric Potential Functions 45

2.4 Optimization Method 49

2.4.1 Geometric Nature of Discrimination 50

2.4.2 Optimal Linear Potential Function 52

2.4.3 Optimal Nonlinear Potential Function 53

2.4.4 Deriving Optimal Nonlinear Scoring Function 55

2.4.5 Optimization Techniques 55

2.5 Applications 55

2.5.1 Protein Structure Prediction 56

2.5.2 Protein--Protein Docking Prediction 56

2.5.3 Protein Design 58

2.5.4 Protein Stability and Binding Affinity 59

2.6 Discussion and Summary 60

2.6.1 Knowledge-Based Statistical Potential Functions 60

2.6.2 Relationship of Knowledge-Based Energy Functions and Further Development 64

2.6.3 Optimized Potential Function 65

2.6.4 Data Dependency of Knowledge-Based Potentials 66

References 67

Exercises 75

3 Sampling Techniques: Estimating Evolutionary Rates and Generating Molecular Structures 79

3.1 Introduction 79

3.2 Principles of Monte Carlo Sampling 81

3.2.1 Estimation Through Sampling from Target Distribution 81

3.2.2 Rejection Sampling 82

3.3 Markov Chains and Metropolis Monte Carlo Sampling 83

3.3.1 Properties of Markov Chains 83

3.3.2 Markov Chain Monte Carlo Sampling 85

3.4 Sequential Monte Carlo Sampling 87

3.4.1 Importance Sampling 87

3.4.2 Sequential Importance Sampling 87

3.4.3 Resampling 91

3.5 Applications 92

3.5.1 Markov Chain Monte Carlo for Evolutionary Rate Estimation 92

3.5.2 Sequentail Chain Growth Monte Carlo for Estimating Conformational Entropy of RNA Loops 95

3.6 Discussion and Summary 96

References 97

Exercises 99

4 Stochastic Molecular Networks 103

4.1 Introduction 103

4.2 Reaction System and Discrete Chemical Master Equation 104

4.3 Direct Solution of Chemical Master Equation 106

4.3.1 State Enumeration with Finite Buffer 106

4.3.2 Generalization and Multi-Buffer dCME Method 108

4.3.3 Calculation of Steady-State Probability Landscape 108

4.3.4 Calculation of Dynamically Evolving Probability Landscape 108

4.3.5 Methods for State Space Truncation for Simplification 109

4.4 Quantifying and Controlling Errors from State Space Truncation 111

4.5 Approximating Discrete Chemical Master Equation 114

4.5.1 Continuous Chemical Master Equation 114

4.5.2 Stochastic Differential Equation: Fokker—Planck Approach 114

4.5.3 Stochastic Differential Equation: Langevin Approach 116

4.5.4 Other Approximations 117

4.6 Stochastic Simulation 118

4.6.1 Reaction Probability 118

4.6.2 Reaction Trajectory 118

4.6.3 Probability of Reaction Trajectory 119

4.6.4 Stochastic Simulation Algorithm 119

4.7 Applications 121

4.7.1 Probability Landscape of a Stochastic Toggle Switch 121

4.7.2 Epigenetic Decision Network of Cellular Fate in Phage Lambda 123

4.8 Discussions and Summary 127

References 128

Exercises 131

5 Cellular Interaction Networks 135

5.1 Basic Definitions and Graph-Theoretic Notions 136

5.1.1 Topological Representation 136

5.1.2 Dynamical Representation 138

5.1.3 Topological Representation of Dynamical Models 139

5.2 Boolean Interaction Networks 139

5.3 Signal Transduction Networks 141

5.3.1 Synthesizing Signal Transduction Networks 142

5.3.2 Collecting Data for Network Synthesis 146

5.3.3 Transitive Reduction and Pseudo-node Collapse 147

5.3.4 Redundancy and Degeneracy of Networks 153

5.3.5 Random Interaction Networks and Statistical Evaluations 157

5.4 Reverse Engineering of Biological Networks 159

5.4.1 Modular Response Analysis Approach 160

5.4.2 Parsimonious Combinatorial Approaches 166

5.4.3 Evaluation of Quality of the Reconstructed Network 171

References 173

Exercises 178

6 Dynamical Systems and Interaction Networks 183

6.1 Some Basic Control-Theoretic Concepts 185

6.2 Discrete-Time Boolean Network Models 186

6.3 Artificial Neural Network Models 188

6.3.1 Computational Powers of ANNs 189

6.3.2 Reverse Engineering of ANNs 190

6.3.3 Applications of ANN Models in Studying Biological Networks 192

6.4 Piecewise Linear Models 192

6.4.1 Dynamics of PL Models 194

6.4.2 Biological Application of PL Models 195

6.5 Monotone Systems 200

6.5.1 Definition of Monotonicity 201

6.5.2 Combinatorial Characterizations and Measure of Monotonicity 203

6.5.3 Algorithmic Issues in Computing the Degree of Monotonicity 𝖬 207

References 209

Exercises 214

7 Case Study of Biological Models 217

7.1 Segment Polarity Network Models 217

7.1.1 Boolean Network Model 218

7.1.2 Signal Transduction Network Model 218

7.2 ABA-Induced Stomatal Closure Network 219

7.3 Epidermal Growth Factor Receptor Signaling Network 220

7.4 C. elegans Metabolic Network 223

7.5 Network for T-Cell Survival and Death in Large Granular Lymphocyte Leukemia 223

References 224

Exercises 225

Glossary 227

Index 229

Models and Algorithms for Biomolecules and

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    A Hardback by Bhaskar DasGupta, Jie Liang

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      Publisher: John Wiley & Sons Inc
      Publication Date: 26/02/2016
      ISBN13: 9780470601938, 978-0470601938
      ISBN10: 0470601930

      Description

      Book Synopsis
      Written by esteemed experts in the field, Models and Algorithms for Biomolecules and Molecular Networks provides readers with a global perspectives on the relevant biological phenomena, modeling frameworks, technical challenges, and algorithms.

      Table of Contents

      List of Figures xiii

      List of Tables xix

      Foreword xxi

      Acknowledgments xxiii

      1 Geometric Models of Protein Structure and Function Prediction 1

      1.1 Introduction 1

      1.2 Theory and Model 2

      1.2.1 Idealized Ball Model 2

      1.2.2 Surface Models of Proteins 3

      1.2.3 Geometric Constructs 4

      1.2.4 Topological Structures 6

      1.2.5 Metric Measurements 9

      1.3 Algorithm and Computation 13

      1.4 Applications 15

      1.4.1 Protein Packing 15

      1.4.2 Predicting Protein Functions from Structures 17

      1.5 Discussion and Summary 20

      References 22

      Exercises 25

      2 Scoring Functions for Predicting Structure and Binding of Proteins 29

      2.1 Introduction 29

      2.2 General Framework of Scoring Function and Potential Function 31

      2.2.1 Protein Representation and Descriptors 31

      2.2.2 Functional Form 32

      2.2.3 Deriving Parameters of Potential Functions 32

      2.3 Statistical Method 32

      2.3.1 Background 32

      2.3.2 Theoretical Model 33

      2.3.3 Miyazawa--Jernigan Contact Potential 34

      2.3.4 Distance-Dependent Potential Function 41

      2.3.5 Geometric Potential Functions 45

      2.4 Optimization Method 49

      2.4.1 Geometric Nature of Discrimination 50

      2.4.2 Optimal Linear Potential Function 52

      2.4.3 Optimal Nonlinear Potential Function 53

      2.4.4 Deriving Optimal Nonlinear Scoring Function 55

      2.4.5 Optimization Techniques 55

      2.5 Applications 55

      2.5.1 Protein Structure Prediction 56

      2.5.2 Protein--Protein Docking Prediction 56

      2.5.3 Protein Design 58

      2.5.4 Protein Stability and Binding Affinity 59

      2.6 Discussion and Summary 60

      2.6.1 Knowledge-Based Statistical Potential Functions 60

      2.6.2 Relationship of Knowledge-Based Energy Functions and Further Development 64

      2.6.3 Optimized Potential Function 65

      2.6.4 Data Dependency of Knowledge-Based Potentials 66

      References 67

      Exercises 75

      3 Sampling Techniques: Estimating Evolutionary Rates and Generating Molecular Structures 79

      3.1 Introduction 79

      3.2 Principles of Monte Carlo Sampling 81

      3.2.1 Estimation Through Sampling from Target Distribution 81

      3.2.2 Rejection Sampling 82

      3.3 Markov Chains and Metropolis Monte Carlo Sampling 83

      3.3.1 Properties of Markov Chains 83

      3.3.2 Markov Chain Monte Carlo Sampling 85

      3.4 Sequential Monte Carlo Sampling 87

      3.4.1 Importance Sampling 87

      3.4.2 Sequential Importance Sampling 87

      3.4.3 Resampling 91

      3.5 Applications 92

      3.5.1 Markov Chain Monte Carlo for Evolutionary Rate Estimation 92

      3.5.2 Sequentail Chain Growth Monte Carlo for Estimating Conformational Entropy of RNA Loops 95

      3.6 Discussion and Summary 96

      References 97

      Exercises 99

      4 Stochastic Molecular Networks 103

      4.1 Introduction 103

      4.2 Reaction System and Discrete Chemical Master Equation 104

      4.3 Direct Solution of Chemical Master Equation 106

      4.3.1 State Enumeration with Finite Buffer 106

      4.3.2 Generalization and Multi-Buffer dCME Method 108

      4.3.3 Calculation of Steady-State Probability Landscape 108

      4.3.4 Calculation of Dynamically Evolving Probability Landscape 108

      4.3.5 Methods for State Space Truncation for Simplification 109

      4.4 Quantifying and Controlling Errors from State Space Truncation 111

      4.5 Approximating Discrete Chemical Master Equation 114

      4.5.1 Continuous Chemical Master Equation 114

      4.5.2 Stochastic Differential Equation: Fokker—Planck Approach 114

      4.5.3 Stochastic Differential Equation: Langevin Approach 116

      4.5.4 Other Approximations 117

      4.6 Stochastic Simulation 118

      4.6.1 Reaction Probability 118

      4.6.2 Reaction Trajectory 118

      4.6.3 Probability of Reaction Trajectory 119

      4.6.4 Stochastic Simulation Algorithm 119

      4.7 Applications 121

      4.7.1 Probability Landscape of a Stochastic Toggle Switch 121

      4.7.2 Epigenetic Decision Network of Cellular Fate in Phage Lambda 123

      4.8 Discussions and Summary 127

      References 128

      Exercises 131

      5 Cellular Interaction Networks 135

      5.1 Basic Definitions and Graph-Theoretic Notions 136

      5.1.1 Topological Representation 136

      5.1.2 Dynamical Representation 138

      5.1.3 Topological Representation of Dynamical Models 139

      5.2 Boolean Interaction Networks 139

      5.3 Signal Transduction Networks 141

      5.3.1 Synthesizing Signal Transduction Networks 142

      5.3.2 Collecting Data for Network Synthesis 146

      5.3.3 Transitive Reduction and Pseudo-node Collapse 147

      5.3.4 Redundancy and Degeneracy of Networks 153

      5.3.5 Random Interaction Networks and Statistical Evaluations 157

      5.4 Reverse Engineering of Biological Networks 159

      5.4.1 Modular Response Analysis Approach 160

      5.4.2 Parsimonious Combinatorial Approaches 166

      5.4.3 Evaluation of Quality of the Reconstructed Network 171

      References 173

      Exercises 178

      6 Dynamical Systems and Interaction Networks 183

      6.1 Some Basic Control-Theoretic Concepts 185

      6.2 Discrete-Time Boolean Network Models 186

      6.3 Artificial Neural Network Models 188

      6.3.1 Computational Powers of ANNs 189

      6.3.2 Reverse Engineering of ANNs 190

      6.3.3 Applications of ANN Models in Studying Biological Networks 192

      6.4 Piecewise Linear Models 192

      6.4.1 Dynamics of PL Models 194

      6.4.2 Biological Application of PL Models 195

      6.5 Monotone Systems 200

      6.5.1 Definition of Monotonicity 201

      6.5.2 Combinatorial Characterizations and Measure of Monotonicity 203

      6.5.3 Algorithmic Issues in Computing the Degree of Monotonicity 𝖬 207

      References 209

      Exercises 214

      7 Case Study of Biological Models 217

      7.1 Segment Polarity Network Models 217

      7.1.1 Boolean Network Model 218

      7.1.2 Signal Transduction Network Model 218

      7.2 ABA-Induced Stomatal Closure Network 219

      7.3 Epidermal Growth Factor Receptor Signaling Network 220

      7.4 C. elegans Metabolic Network 223

      7.5 Network for T-Cell Survival and Death in Large Granular Lymphocyte Leukemia 223

      References 224

      Exercises 225

      Glossary 227

      Index 229

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