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Transactions on Computational Systems Biology III [electronic resource] / edited by Corrado Priami, Emanuela Merelli, Pablo Gonzalez, Andrea Omicini.

By: Contributor(s): Material type: TextTextSeries: Lecture Notes in Computer Science ; 3737Publisher: Berlin, Heidelberg : Springer Berlin Heidelberg, 2005Description: VII, 169 p. Also available online. online resourceContent type:
  • text
Media type:
  • computer
Carrier type:
  • online resource
ISBN:
  • 9783540314462
Subject(s): Additional physical formats: Printed edition:: No titleDDC classification:
  • 004.0151 23
LOC classification:
  • QA75.5-76.95
Online resources:
Contents:
Computer-Aided DNA Base Calling from Forward and Reverse Electropherograms -- A Multi-agent System for Protein Secondary Structure Prediction -- Modeling Kohn Interaction Maps with Beta-Binders: An Example -- Multidisciplinary Investigation into Adult Stem Cell Behavior -- Statistical Model Selection Methods Applied to Biological Networks -- Using Secondary Structure Information to Perform Multiple Alignment -- Frequency Concepts and Pattern Detection for the Analysis of Motifs in Networks -- An Agent-Oriented Conceptual Framework for Systems Biology -- Genetic Linkage Analysis Algorithms and Their Implementation -- Abstract Machines of Systems Biology.
In: Springer eBooksSummary: In the last few decades, advances in molecular biology and in the research - frastructure in this ?eld has given rise to the “omics” revolution in molecular biology,alongwiththeexplosionofdatabases:fromgenomicstotranscriptomics, proteomics, interactomics,and metabolomics. However,the huge amount of b- logicalinformationavailablehasleftabottleneckindataprocessing:information over?ow has called for innovative techniques for their visualization, modelling, interpretationandanalysis.The manyresultsfromthe ?eldsofcomputerscience andengineeringhavethenmetwithbiology,leadingto new,emergingdisciplines such as bioinformatics and systems biology. So, for instance, as the result of - plicationoftechniquessuchasmachinelearning,self-organizingmaps,statistical algorithms,clusteringalgorithmsandmulti-agentsystemstomodernbiology,we can actually model and simulate some functions of the cell (e.g., protein inter- tion, gene expression and gene regulation), make inferences from the molecular biology database, make connections among biological data, and derive useful predictions. Today, and more generally, two di?erent scenarios characterize the po- genomic era. On the one hand, the huge amount of datasets made available by biological research all over the world mandates for suitable techniques, tools and methods meant at modelling biological processes and analyzing biological sequences. On the other hand, biological systems work as the sources of a wide range of new computational models and paradigms, which are now ready to be applied in the context of computer-based systems.
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Computer-Aided DNA Base Calling from Forward and Reverse Electropherograms -- A Multi-agent System for Protein Secondary Structure Prediction -- Modeling Kohn Interaction Maps with Beta-Binders: An Example -- Multidisciplinary Investigation into Adult Stem Cell Behavior -- Statistical Model Selection Methods Applied to Biological Networks -- Using Secondary Structure Information to Perform Multiple Alignment -- Frequency Concepts and Pattern Detection for the Analysis of Motifs in Networks -- An Agent-Oriented Conceptual Framework for Systems Biology -- Genetic Linkage Analysis Algorithms and Their Implementation -- Abstract Machines of Systems Biology.

In the last few decades, advances in molecular biology and in the research - frastructure in this ?eld has given rise to the “omics” revolution in molecular biology,alongwiththeexplosionofdatabases:fromgenomicstotranscriptomics, proteomics, interactomics,and metabolomics. However,the huge amount of b- logicalinformationavailablehasleftabottleneckindataprocessing:information over?ow has called for innovative techniques for their visualization, modelling, interpretationandanalysis.The manyresultsfromthe ?eldsofcomputerscience andengineeringhavethenmetwithbiology,leadingto new,emergingdisciplines such as bioinformatics and systems biology. So, for instance, as the result of - plicationoftechniquessuchasmachinelearning,self-organizingmaps,statistical algorithms,clusteringalgorithmsandmulti-agentsystemstomodernbiology,we can actually model and simulate some functions of the cell (e.g., protein inter- tion, gene expression and gene regulation), make inferences from the molecular biology database, make connections among biological data, and derive useful predictions. Today, and more generally, two di?erent scenarios characterize the po- genomic era. On the one hand, the huge amount of datasets made available by biological research all over the world mandates for suitable techniques, tools and methods meant at modelling biological processes and analyzing biological sequences. On the other hand, biological systems work as the sources of a wide range of new computational models and paradigms, which are now ready to be applied in the context of computer-based systems.

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