McDermott / Samudrala / Bumgarner | Computational Systems Biology | Buch | 978-1-58829-905-5 | sack.de

Buch, Englisch, Band 541, 592 Seiten, Format (B × H): 202 mm x 268 mm, Gewicht: 1378 g

Reihe: Methods in Molecular Biology

McDermott / Samudrala / Bumgarner

Computational Systems Biology


2009. Auflage 2009
ISBN: 978-1-58829-905-5
Verlag: Humana Press

Buch, Englisch, Band 541, 592 Seiten, Format (B × H): 202 mm x 268 mm, Gewicht: 1378 g

Reihe: Methods in Molecular Biology

ISBN: 978-1-58829-905-5
Verlag: Humana Press


Computational systems biology is the term that we use to describe computational methods to identify, infer, model, and store relationships between the molecules, pathways, and cells (‘‘systems’’) involved in a living organism. Based on this definition, the field of computational systems biology has been in existence for some time. However, the recent confluence of high-throughput methodology for biological data gathering,genome-scalesequencing,andcomputationalprocessingpowerhasdrivena reinvention and expansion of this field. The expansions include not only modeling of small metabolic (1–3) and signaling systems (2, 4) but also modeling of the relati- ships between biological components in very large systems, including whole cells and organisms (5–15). Generally, these models provide a general overview of one or more aspects of these systems and leave the determination of details to experimentalists focused on smaller subsystems. The promise of such approaches is that they will elucidate patterns, relationships, and general features, which are not evident from examining specific components or subsystems. These predictions are either interesting in and of themselves (e. g., the identification of an evolutionary pattern) or interesting andvaluabletoresearchersworkingonaparticularproblem(e. g. ,highlightapreviously unknown functional pathway). Two events have occurred to bring the field of computational systems biology to theforefront. Oneistheadventofhigh-throughputmethodsthathavegeneratedlarge amounts of information about particular systems in the form of genetic studies, gene and protein expression analyses and metabolomics. With such tools, research to c- sidersystemsasawholearebeingconceived,planned,andimplementedexperimentally on an ever more frequent andwider scale.
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Network Components.- Identification of cis-Regulatory Elements in Gene Co-expression Networks Using A-GLAM.- Structure-Based Ab Initio Prediction of Transcription Factor–Binding Sites.- Inferring Protein–Protein Interactions from Multiple Protein Domain Combinations.- Prediction of Protein–Protein Interactions: A Study of the Co-evolution Model.- Computational Reconstruction of Protein–Protein Interaction Networks: Algorithms and Issues.- Prediction and Integration of Regulatory and Protein–Protein Interactions.- Detecting Hierarchical Modularity in Biological Networks.- Network Inference.- Methods to Reconstruct and Compare Transcriptional Regulatory Networks.- Learning Global Models of Transcriptional Regulatory Networks from Data.- Inferring Molecular Interactions Pathways from eQTL Data.- Methods for the Inference of Biological Pathways and Networks.- Network Dynamics.- Exploring Pathways from Gene Co-expression to Network Dynamics.- Network Dynamics.- Kinetic Modeling of Biological Systems.- Guidance for Data Collection and Computational Modelling of Regulatory Networks.- Function and Evolutionary Systems Biology.- A Maximum Likelihood Method for Reconstruction of the Evolution of Eukaryotic Gene Structure.- Enzyme Function Prediction with Interpretable Models.- Using Evolutionary Information to Find Specificity-Determining and Co-evolving Residues.- Connecting Protein Interaction Data, Mutations, and Disease Using Bioinformatics.- Effects of Functional Bias on Supervised Learning of a Gene Network Model.- Computational Infrastructure for Systems Biology.- Comparing Algorithms for Clustering of Expression Data: How to Assess Gene Clusters.- The Bioverse API and Web Application.- Computational Representation of Biological Systems.- Biological NetworkInference and Analysis Using SEBINI and CABIN.



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