Evolutionary Computation in Gene Regulatory Network Research / Libristo.pl
Evolutionary Computation in Gene Regulatory Network Research

Kod: 09293255

Evolutionary Computation in Gene Regulatory Network Research

Autor Hitoshi Iba, Nasimul Noman

This book serves as a handbook for gene regulatory network research using evolutionary algorithms, with applications for computer scientists, biologists, and bioinformatics researchers This book compiles progress on gene regulato ... więcej

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Opis

This book serves as a handbook for gene regulatory network research using evolutionary algorithms, with applications for computer scientists, biologists, and bioinformatics researchers This book compiles progress on gene regulatory network (GRN) research, focusing particularly on different domains that apply evolutionary algorithms (EAs) as the computational methodology. These areas are the analysis of gene expression data to discover knowledge; the reconstruction of GRN from expression profiles; and the evolution of GRN for target behavior. The book also presents uses of GRN with EAs in applications such as architectural design, agent control and robotics. The first part of the book introduces GRN to readers with a computer science background, and EAs to readers with a life science background. The authors present the EA approaches for analysis of gene expression data. Next, readers are guided step-by-step through the reverse engineering and evolution of GRN using EAs. Topics covered include deterministic and stochastic modelling of GRN, time series data analysis, single and multi-objective genetic algorithms, and swarm intelligence. The last part of the book focuses on future applications of GRN with use of EAs, in the fields of agent control, robotics, and design. The fifteen chapters are authored by well-known researchers and experienced practitioners in their respective fields. Provides a reference for current and future research in gene regulatory networks (GRN) using evolutionary algorithms (EAs) Covers all sub-domains of GRN research using EAs, such as expression profile analysis, reverse engineering, GRN evolution, applications Contains useful contents for courses in gene regulatory networks, systems biology, computational biology, and synthetic biology Delivers state-of-the-art research in genetic algorithms, genetic programming, and swarm intelligence Evolutionary Computation in Gene Network Research is a great resource for students, researchers, and professionals in computer science, systems biology, and bioinformatics. Hitoshi Iba is a Professor in the Department of Information and Communication Engineering, Graduate School of Information Science and Technology, at the University of Tokyo. He is an Associate Editor of the IEEE Transactions on Evolutionary Computation and the Journal of Genetic Programming and Evolvable Machines. Nasimul Noman is a lecturer in the School of Electrical Engineering and Computer Science at the University of Newcastle, NSW, Australia. From 2002 to 2012 he was a faculty member at the University of Dhaka, Bangladesh. He is an Editor of the BioMed Research International Journal. His research interests include computational biology, synthetic biology, and bioinformatics.

Szczegóły książki

Kategoria Książki po angielsku Medicine Medicine: general issues Medical bioinformatics

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