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An Introduction to Computational Systems Biology - Karthik Raman

An Introduction to Computational Systems Biology

Systems-Level Modelling of Cellular Networks

(Autor)

Buch | Softcover
358 Seiten
2023
Chapman & Hall/CRC (Verlag)
978-0-367-75250-7 (ISBN)
CHF 78,50 inkl. MwSt
The main objective of this book is to deliver a comprehensive and insightful account of applying mathematical modelling approaches to very large biological systems and networks, a fundamental aspect of computational systems biology. Several key modelling paradigms will be discussed in detail.
This book delivers a comprehensive and insightful account of applying mathematical modelling approaches to very large biological systems and networks—a fundamental aspect of computational systems biology. The book covers key modelling paradigms in detail, while at the same time retaining a simplicity that will appeal to those from less quantitative fields.

Key Features:






A hands-on approach to modelling



Covers a broad spectrum of modelling, from static networks to dynamic models and constraint-based models



Thoughtful exercises to test and enable understanding of concepts



State-of-the-art chapters on exciting new developments, like community modelling and biological circuit design



Emphasis on coding and software tools for systems biology
Companion website featuring lecture videos, figure slides, codes, supplementary exercises, further reading, and appendices: https://ramanlab.github.io/SysBioBook/

An Introduction to Computational Systems Biology: Systems-Level Modelling of Cellular Networks is highly multi-disciplinary and will appeal to biologists, engineers, computer scientists, mathematicians and others.

Dr. Karthik Raman is an Associate Professor at the Department of Biotechnology, Bhupat & Jyoti Mehta School of Biosciences, Indian Institute of Technology Madras. He co-founded and co-ordinates the Initiative for Biological Systems Engineering and is a core member of the Robert Bosch Centre for Data Science and Artificial Intelligence (RBCDSAI). He has been a researcher in the area of systems biology for the last 15+ years and has been teaching a course on systems biology for the last eight years, to (mostly) engineers from different backgrounds. His lab works on computational approaches to understand and manipulate biological networks, with applications in metabolic engineering and synthetic biology.

Preface

Introduction to modelling
1.1 WHAT IS MODELLING?
1.1.1 What are models?
1.2 WHYBUILD MODELS?
1.2.1 Why model biological systems?
1.2.2 Why systems biology?
1.3 CHALLENGES IN MODELLING BIOLOGICAL SYSTEMS
1.4 THE PRACTICE OF MODELLING
1.4.1 Scope of the model
1.4.2 Making assumptions
1.4.3 Modelling paradigms
1.4.4 Building the model
1.4.5 Model analysis, debugging and (in)validation
1.4.6 Simulating the model
1.5 EXAMPLES OF MODELS
1.5.1 Lotka–Volterra predator–prey model
1.5.2 SIR model: a classic example
1.6 TROUBLESHOOTING
1.6.1 Clarity of scope and objectives
1.6.2 The breakdown of assumptions
1.6.3 Ismy model fit for purpose?
1.6.4 Handling uncertainties
EXERCISES
REFERENCES
FURTHER READING

Introduction to graph theory
2.1 BASICS
2.1.1 History of graph theory
2.1.2 Examples of graphs
2.2 WHYGRAPHS?
2.3 TYPES OF GRAPHS
2.3.1 Simple vs. non-simple graphs
2.3.2 Directed vs. undirected graphs
2.3.3 Weighted vs. unweighted graphs
2.3.4 Other graph types
2.3.5 Hypergraphs
2.4 COMPUTATIONAL REPRESENTATIONS OF GRAPHS
2.4.1 Data structures
2.4.2 Adjacency matrix
2.4.3 The laplacian matrix
2.5 GRAPH REPRESENTATIONS OF BIOLOGICAL NETWORKS
2.5.1 Networks of protein interactions and functional associations
2.5.2 Signalling networks
2.5.3 Protein structure networks
2.5.4 Gene regulatory networks
2.5.5 Metabolic networks
2.6 COMMONCHALLENGES&TROUBLESHOOTING
2.6.1 Choosing a representation
2.6.2 Loading and creating graphs
2.7 SOFTWARE TOOLS
EXERCISES
REFERENCES
FURTHER READING

Structure of networks
3.1 NETWORK PARAMETERS
3.1.1 Fundamental parameters
3.1.2 Measures of centrality
3.1.3 Mixing patterns: assortativity
3.2 CANONICAL NETWORK MODELS
3.2.1 Erdos–Rényi (ER) network model
3.2.2 Small-world networks
3.2.3 Scale-free networks
3.2.4 Other models of network generation
3.3 COMMUNITY DETECTION
3.3.1 Modularity maximisation
3.3.2 Similarity-based clustering
3.3.3 Girvan–Newman algorithm
3.3.4 Other methods
3.3.5 Community detection in biological networks
3.4 NETWORKMOTIFS
3.4.1 Randomising networks
3.5 PERTURBATIONS TO NETWORKS
3.5.1 Quantifying e□fects of perturbation
3.5.2 Network structure and attack strategies
3.6 TROUBLESHOOTING
3.6.1 Is your network really scale-free?
3.7 SOFTWARE TOOLS
EXERCISES
REFERENCES
FURTHER READING

Applications of network biology
4.1 THE CENTRALITY–LETHALITY HYPOTHESIS
4.1.1 Predicting essential genes fromnetworks
4.2 NETWORKS AND MODULES IN DISEASE
4.2.1 Disease networks
4.2.2 Identification of disease modules
4.2.3 Edgetic perturbation models
4.3 DIFFERENTIAL NETWORK ANALYSIS
4.4 DISEASE SPREADING ON NETWORKS
4.4.1 Percolation-based models
4.4.2 Agent-based simulations
4.5 MOLECULAR GRAPHS AND THEIR APPLICATIONS
4.5.1 Retrosynthesis
4.6 PROTEIN STRUCTURE, ENERGY & CONFORMATIONAL NETWORKS
4.6.1 Protein folding pathways
4.7 LINK PREDICTION
EXERCISES
REFERENCES
FURTHER READING

Introduction to dynamic modelling
5.1 CONSTRUCTING DYNAMIC MODELS
5.1.1 Modelling a generic biochemical system
5.2 MASS-ACTION KINETIC MODELS
5.3 MODELLING ENZYME KINETICS
5.3.1 The Michaelis–Menten model
5.3.2 Extending the Michaelis–Menten model
5.3.3 Limitations of Michaelis–Menten models
5.3.4 Co-operativity: Hill kinetics
5.3.5 An illustrative example: a three-node oscillator
5.4 GENERALISED RATE EQUATIONS
5.4.1 Biochemical systems theory
5.5 SOLVING ODES
5.6 TROUBLESHOOTING
5.6.1 Handing sti□f equations
5.6.2 Handling uncertainty
5.7 SOFTWARE TOOLS
EXERCISES
REFERENCES
FURTHER READING

Parameter estimation
6.1 DATA-DRIVEN MECHANISTIC MODELLING: AN OVERVIEW
6.1.1 Pre-processing the data
6.1.2 Model identification
6.2 SETTING UP AN OPTIMISATION PROBLEM
6.2.1 Linear regression
6.2.2 Least squares
6.2.3 Maximumlikelihood estimation
6.3 ALGORITHMS FOR OPTIMISATION
6.3.1 Desiderata
6.3.2 Gradient-based methods
6.3.3 Direct search methods
6.3.4 Evolutionary algorithms
6.4 POST-REGRESSION DIAGNOSTICS
6.4.1 Model selection
6.4.2 Sensitivity and robustness of biological models
6.5 TROUBLESHOOTING
6.5.1 Regularisation
6.5.2 Sloppiness
6.5.3 Choosing a search algorithm
6.5.4 Model reduction
6.5.5 The curse of dimensionality
6.6 SOFTWARE TOOLS
EXERCISES
REFERENCES
FURTHER READING

Discrete dynamic models: Boolean networks
7.1 INTRODUCTION
7.2 BOOLEAN NETWORKS: TRANSFER FUNCTIONS
7.2.1 Characterising Boolean network dynamics
7.2.2 Synchronous vs. asynchronous updates
7.3 OTHER PARADIGMS
7.3.1 Probabilistic Boolean networks
7.3.2 Logical interaction hypergraphs
7.3.3 Generalised logical networks
7.3.4 Petri nets
7.4 APPLICATIONS
7.5 TROUBLESHOOTING
7.6 SOFTWARE TOOLS
EXERCISES
REFERENCES
FURTHER READING

Introduction to constraint-based modelling
8.1 WHAT ARE CONSTRAINTS?
8.1.1 Types of constraints
8.1.2 Mathematical representation of constraints
8.1.3 Why are constraints useful?
8.2 THE STOICHIOMETRICMATRIX
8.3 STEADY-STATEMASSBALANCE:FLUXBALANCEANALYSIS (FBA)
8.4 THE OBJECTIVE FUNCTION
8.4.1 The biomass objective function
8.5 OPTIMISATION TO COMPUTE FLUX DISTRIBUTION
8.6 AN ILLUSTRATION
8.7 FLUX VARIABILITY ANALYSIS (FVA)
8.8 UNDERSTANDING FBA
8.8.1 Blocked reactions and dead-end metabolites
8.8.2 Gaps in metabolic networks
8.8.3 Multiple solutions
8.8.4 Loops
8.8.5 Parsimonious FBA (pFBA)
8.8.6 ATP maintenance fluxes
8.9 TROUBLESHOOTING
8.9.1 Zero growth rate
8.9.2 Objective values vs. flux values
8.10 SOFTWARE TOOLS
EXERCISES
REFERENCES
FURTHER READING

Extending constraint-based approaches
9.1 MINIMISATION OF METABOLIC ADJUSTMENT (MOMA)
9.1.1 Fitting experimentally measured fluxes
9.2 REGULATORY ON-OFF MINIMISATION (ROOM)
9.2.1 ROOMvs.MoMA
9.3 BI-LEVEL OPTIMISATIONS
9.3.1 OptKnock
9.4 INTEGRATING REGULATORY INFORMATION
9.4.1 Embedding regulatory logic: regulatory FBA (rFBA)
9.4.2 Informing metabolic models with omic data
9.4.3 Tissue-specific models
9.5 COMPARTMENTALISED MODELS
9.6 DYNAMIC FLUX BALANCE ANALYSIS (dFBA)
9.7 13C-MFA
9.8 ELEMENTARY FLUX MODES AND EXTREME PATHWAYS
9.8.1 Computing EFMs and EPs
9.8.2 Applications
EXERCISES
REFERENCES
FURTHER READING

Perturbations to metabolic networks
10.1 KNOCK-OUTS
10.1.1 Gene deletions vs. reaction deletions
10.2 SYNTHETIC LETHALS
10.2.1 Exhaustive enumeration
10.2.2 Bi-level optimisation
10.2.3 Fast-SL: massively pruning the search space
10.3 OVER-EXPRESSION
10.3.1 Flux Scanning based on Enforced Objective Flux (FSEOF)
10.4 OTHER PERTURBATIONS
10.5 EVALUATING AND RANKING PERTURBATIONS
10.6 APPLICATIONS OF CONSTRAINT-BASED MODELS
10.6.1 Metabolic engineering
10.6.2 Drug target identification
10.7 LIMITATIONS OF CONSTRAINT-BASED APPROACHES
10.7.1 Scope of genome-scale metabolic models
10.7.2 Incorrect predictions
10.8 TROUBLESHOOTING
10.8.1 Interpreting gene deletion simulations
10.9 SOFTWARE TOOLS

EXERCISES
REFERENCES
FURTHER READING

Modelling cellular interactions
11.1 MICROBIAL COMMUNITIES
11.1.1 Network-based approaches
11.1.2 Population-based and agent-based approaches
11.1.3 Constraint-based approaches
11.2 HOST–PATHOGEN INTERACTIONS (HPIs)
11.2.1 Network models
11.2.2 Dynamic models
11.2.3 Constraint-based models
11.3 SUMMARY
11.4 SOFTWARE TOOLS
EXERCISES
REFERENCES
FURTHER READING

Designing biological circuits
12.1 WHAT IS SYNTHETIC BIOLOGY?
12.2 FROMLEGO BRICKS TO BIOBRICKS
12.3 CLASSIC CIRCUIT DESIGN EXPERIMENTS
12.3.1 Designing an oscillator: the repressilator
12.3.2 Toggle switch
12.4 DESIGNING MODULES
12.4.1 Exploring the design space
12.4.2 Systems-theoretic approaches
12.4.3 Automating circuit design
12.5 DESIGN PRINCIPLES OF BIOLOGICAL NETWORKS
12.5.1 Redundancy
12.5.2 Modularity
12.5.3 Exaptation
12.5.4 Robustness
12.6 COMPUTING WITH CELLS
12.6.1 Adleman’s classic experiment
12.6.2 Examples of circuits that can compute
12.6.3 DNA data storage
12.7 CHALLENGES
12.8 SOFTWARE TOOLS
EXERCISES
REFERENCES
FURTHER READING

Robustness and evolvability of biological systems
13.1 ROBUSTNESS IN BIOLOGICAL SYSTEMS
13.1.1 Key mechanisms
13.1.2 Hierarchies and protocols
13.1.3 Organising principles
13.2 GENOTYPE SPACES AND GENOTYPE NETWORKS
13.2.1 Genotype spaces
13.2.2 Genotype–phenotype mapping
13.3 QUANTIFYING ROBUSTNESS AND EVOLVABILITY
13.4 SOFTWARE TOOLS
EXERCISES
REFERENCES
FURTHER READING

Epilogue: The Road Ahead
Index 325

Erscheinungsdatum
Reihe/Serie Chapman & Hall/CRC Computational Biology Series
Zusatzinfo 49 Line drawings, black and white; 49 Illustrations, black and white
Sprache englisch
Maße 156 x 234 mm
Gewicht 540 g
Themenwelt Mathematik / Informatik Informatik Theorie / Studium
Mathematik / Informatik Mathematik Angewandte Mathematik
Naturwissenschaften Biologie
Naturwissenschaften Physik / Astronomie Angewandte Physik
Technik Elektrotechnik / Energietechnik
Technik Umwelttechnik / Biotechnologie
ISBN-10 0-367-75250-6 / 0367752506
ISBN-13 978-0-367-75250-7 / 9780367752507
Zustand Neuware
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