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A First Course in Systems Biology

By: Material type: TextTextPublication details: New York Garland Science 2018Edition: 2nd edDescription: xi, 468 pages : color illustrations ; 28 cmISBN:
  • 9780815345688
Subject(s): DDC classification:
  • 570.15195 VOI-F
Contents:
1. Biological Systems 2. Introduction to Mathematical Modeling 3. Static Network Models 4. The Mathematics of Biological Systems 5. Parameter Estimation 6. Gene Systems 7. Protein Systems 8. Metabolic Systems 9. Signaling Systems 10. Population Systems 11. Integrative Analysis of Genome, Protein, and Metabolite Data: A Case Study in Yeast 12. Physiological Modeling: The Heart as an Example 13. Systems Biology in Medicine and Drug Development 14. Design of Biological Systems 15. Emerging Topics in Systems Biology
Summary: A First Course in Systems Biology is an introduction for advanced undergraduate and graduate students to the growing field of systems biology. Its main focus is the development of computational models and their applications to diverse biological systems. The book begins with the fundamentals of modeling, then reviews features of the molecular inventories that bring biological systems to life and discusses case studies that represent some of the frontiers in systems biology and synthetic biology. In this way, it provides the reader with a comprehensive background and access to methods for executing standard systems biology tasks, understanding the modern literature, and launching into specialized courses or projects that address biological questions using theoretical and computational means. New topics in this edition include: default modules for model design, limit cycles and chaos, parameter estimation in Excel, model representations of gene regulation through transcription factors, derivation of the Michaelis-Menten rate law from the original conceptual model, different types of inhibition, hysteresis, a model of differentiation, system adaptation to persistent signals, nonlinear nullclines, PBPK models, and elementary modes. The format is a combination of instructional text and references to primary literature, complemented by sets of small-scale exercises that enable hands-on experience, and large-scale, often open-ended questions for further reflection.
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Item type Current library Home library Call number Status Date due Barcode
Book Book Dept. of Computational Biology and Bioinformatics Processing Center Dept. of Computational Biology and Bioinformatics 570.15195 VOI-F (Browse shelf(Opens below)) Available DCB3180

1. Biological Systems 2. Introduction to Mathematical Modeling 3. Static Network Models 4. The Mathematics of Biological Systems 5. Parameter Estimation 6. Gene Systems 7. Protein Systems 8. Metabolic Systems 9. Signaling Systems 10. Population Systems 11. Integrative Analysis of Genome, Protein, and Metabolite Data: A Case Study in Yeast 12. Physiological Modeling: The Heart as an Example 13. Systems Biology in Medicine and Drug Development 14. Design of Biological Systems 15. Emerging Topics in Systems Biology

A First Course in Systems Biology is an introduction for advanced undergraduate and graduate students to the growing field of systems biology. Its main focus is the development of computational models and their applications to diverse biological systems. The book begins with the fundamentals of modeling, then reviews features of the molecular inventories that bring biological systems to life and discusses case studies that represent some of the frontiers in systems biology and synthetic biology. In this way, it provides the reader with a comprehensive background and access to methods for executing standard systems biology tasks, understanding the modern literature, and launching into specialized courses or projects that address biological questions using theoretical and computational means. New topics in this edition include: default modules for model design, limit cycles and chaos, parameter estimation in Excel, model representations of gene regulation through transcription factors, derivation of the Michaelis-Menten rate law from the original conceptual model, different types of inhibition, hysteresis, a model of differentiation, system adaptation to persistent signals, nonlinear nullclines, PBPK models, and elementary modes. The format is a combination of instructional text and references to primary literature, complemented by sets of small-scale exercises that enable hands-on experience, and large-scale, often open-ended questions for further reflection.

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