Modeling and Analysis of Bio-molecular Networks
Autor: | Lü, Jinhu Wang, Pei |
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EAN: | 9789811591433 |
Auflage: | 001 |
Sprache: | Englisch |
Seitenzahl: | 488 |
Produktart: | Gebunden |
Veröffentlichungsdatum: | 07.12.2020 |
Schlagworte: | Computermodellierung und -simulation systemsbiology; ComplexNetworks; Bioinformatics; Biostatistics; biomolecularnetwork; Biologicalnetwork; MathematicalBiology; computationalbiology |
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This book addresses a number of questions from the perspective of complex systems: How can we quantitatively understand the life phenomena? How can we model life systems as complex bio-molecular networks? Are there any methods to clarify the relationships among the structures, dynamics and functions of bio-molecular networks? How can we statistically analyse large-scale bio-molecular networks? Focusing on the modeling and analysis of bio-molecular networks, the book presents various sophisticated mathematical and statistical approaches. The life system can be described using various levels of bio-molecular networks, including gene regulatory networks, and protein-protein interaction networks. It first provides an overview of approaches to reconstruct various bio-molecular networks, and then discusses the modeling and dynamical analysis of simple genetic circuits, coupled genetic circuits, middle-sized and large-scale biological networks, clarifying the relationships betweenthe structures, dynamics and functions of the networks covered. In the context of large-scale bio-molecular networks, it introduces a number of statistical methods for exploring important bioinformatics applications, including the identification of significant bio-molecules for network medicine and genetic engineering. Lastly, the book describes various state-of-art statistical methods for analysing omics data generated by high-throughput sequencing. This book is a valuable resource for readers interested in applying systems biology, dynamical systems or complex networks to explore the truth of nature.