TY - BOOK AU - McDermott,Jason TI - Computational systems biology T2 - Methods in molecular biology, SN - 9781597452434 AV - QH324.2 U1 - 570.1/13 22 PY - 2009/// CY - New York PB - Humana KW - Computational biology KW - Systems biology KW - Bioinformatics KW - Biology KW - Life sciences KW - Physical sciences KW - Computational Biology KW - Systems Biology KW - Biological Science Disciplines KW - Natural Science Disciplines KW - Disciplines and Occupations KW - Bio-informatique KW - Biologie systémique KW - Biologie KW - Sciences de la vie KW - Sciences physiques KW - biology KW - aat KW - biological sciences KW - physical sciences KW - fast KW - Molekulare Bioinformatik KW - gnd KW - bioinformatics KW - geninteractie KW - gene interaction KW - interacties KW - interactions KW - biologische technieken KW - biological techniques KW - systeembiologie KW - systems biology KW - theoretische biologie KW - theoretical biology KW - computational science KW - modelleren KW - modeling KW - protocollen KW - protocols KW - Bioinformatics (General) KW - Bioinformatica (algemeen) KW - Laboratory Manual KW - Laboratory manuals KW - lcgft KW - Manuels de laboratoire KW - rvmgf KW - Aufsatzsammlung KW - swd N1 - Includes bibliographical references and index; Identification of cis-regulatory elements in gene co-expression networks using A-GLAM / Leonardo Mariño-Ramírez [and others] -- Structure-based Ab Initio prediction of transcription factor-binding sites / L. Angela Liu and Joel S. Bader -- Inferring protein-protein interactions from multiple protein domain combinations / Simon P. Kanaan [and others] -- Prediction of protein-protein interactions : a study of the co-evolution model / Itai Sharon, Jason V. Davis and Golan Yona -- Computational reconstruction of protein-protein interaction networks : algorithms and issues / Eric Franzosa, Bolan Linghu and Yu Xia -- Prediction and integration of regulatory and protein-protein interactions / Duangdao Wichadakul, Jason McDermott and Ram Samudrala -- Detecting hierarchical modularity in biological networks / Erzsébet Ravasz -- Methods to reconstruct and compare transcriptional regulatory networks / M. Madan Babu, Benjamin Lang and L. Aravind -- Learning global models of transcriptional regulatory networks from data / Aviv Madar and Richard Bonneau -- Inferring molecular interactions pathways from eQTL data / Imran Rashid, Jason McDermott and Ram Samudrala -- Methods for the inference of biological pathways and networks / Roger E. Bumgarner and Ka Yee Yeung -- Exploring pathways from gene co-expression to network dynamics / Huai Li, Yu Sun and Ming Zhan -- Network dynamics / Herbert M. Sauro -- Kinetic modeling of biological systems / Haluk Resat, Linda Petzold and Michel F. Pettigrew -- Guidance for data collection and computational modelling of regulatory networks / Adam Christopher Palmer and Keith Edward Shearwin -- A maximum likelihood method for reconstruction of the evolution of eukaryotic gene structure / Liran Carmel [and others] -- Enzyme function prediction with Interpretable models / Umar Syed and Golan Yona -- Using evolutionary information to find specificity-determining and co-evolving residues / Grigory Kolesov and Leonid A. Mirny -- Connecting protein interaction data, mutations, and disease using bioinformatics / Jake Y. Chen, Eunseog Youn and Sean D. Mooney -- Effects of functional bias on supervised learning of a gene network model / Insuk Lee and Edward M. Marcotte -- Comparing algorithms for clustering of expression data : how to assess gene clusters / Golan Yona, William Dirks and Shafquat Rahman -- The bioverse API and web application / Michal Guerquin [and others] -- Computational representation of biological systems / Zach Frazier [and others] -- Biological network inference and analysis using SEBINI and CABIN / Ronald Taylor and Mudita Singhal; Electronic reproduction; [Place of publication not identified]; HathiTrust Digital Library; 2010 N2 - The recent confluence of high throughput methodology for biological data gathering, genome-scale sequencing, and computational processing power has driven a reinvention and expansion of the way we identify, infer, model, and store relationships between molecules, pathways, and cells in living organisms. In Computational Systems Biology, expert investigators contribute chapters which bring together biological data and computational and/or mathematical models of the data to aid researchers striving to create a system that provides both predictive and mechanistic information for a model organism. The volume is organized into five major sections involving network components, network inference, network dynamics, function and evolutionary system biology, and computational infrastructure for systems biology. As a volume of the highly successful Methods in Molecular Biology series, this work provides the kind of detailed description and implementation advice that is crucial for getting optimal results. Comprehensive and up-to-date, Computational Systems Biology serves to motivate and inspire all those who wish to develop a complete description of a biological system UR - https://link-springer-com.libraryproxy.ist.ac.at/10.1007/978-1-59745-243-4 ER -