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Computational and statistical approaches to genomics / edited by Wei Zhang and Ilya Shmulevich.

Συντελεστής(ές): Τύπος υλικού: ΚείμενοΚείμενοΛεπτομέρειες δημοσίευσης: New York : Kluwer Academic Publishers, c2003.Περιγραφή: 1 ηλεκτρονική πηγή (xiv, 329 σ.) : εικ. (μερικές εγχ.)ISBN:
  • 0306478250
  • 9780306478253
Θέμα(τα): Είδος/Μορφή: Επιπρόσθετες φυσικές μορφές: Έντυπη έκδοση: Computational and statistical approaches to genomics.Ταξινόμηση DDC:
  • 576.5/01/5118 22
Πηγές στο διαδίκτυο:Περίληψη: Annotation Seventeen contributions cover a wide range of topics and span a number of disciplines such as image analysis, statistics, machine learning, pattern recognition, time-frequency and nonlinear signal processing, parallel computing, molecular biology, and others. Each chapter follows the various stages from data and analysis through synthesis and application. Topics include an overview of the role of supercomputers and other tools; approaches to the global modeling and analysis of gene regulatory networks and transcriptional control; state-of-the-art tools in Boolean function theory, time-frequency analysis, pattern recognition, and unsupervised learning; crucial issues associated with statistical analysis of microarray data, statistics and stochastic analysis of gene expression levels; and biological and medical implications of genomics research. Appropriate for use as an advanced level textbook, as well as for researchers. Edited by Zhang and Shmulevich (U. of Texas M.D. Anderson Cancer Center). Annotation c. Book News, Inc., Portland, OR (booknews.com).Περίληψη: Annotation At the beginning of the post-sequencing era, biology must now work with the enormous amounts of quantitative data being amassed and must render complex problems in mathematical terms, with all of the computational effort that entails. This phenomenon is perhaps best exemplified by the interdisciplinary scientific activity caused by the advent of high-throughput cDNA microarray technology, which facilitates large-scale surveys of gene expression. Biologists must now work together with engineers, statisticians, computer scientists, and other specialists, in order to attain a holistic understanding of the complex relationship between genes within the genome and uncover genetic function and regulation. Computational and Statistical Genomics aims to help researchers deal with current genomic challenges. Topics covered include: overviews of the role of supercomputers in genomics research, the existing challenges and directions in image processing for microarray technology, and web-based tools for microarray data analysis; approaches to the global modeling and analysis of gene regulatory networks and transcriptional control, using methods, theories, and tools from signal processing, machine learning, information theory, and control theory; state-of-the-art tools in Boolean function theory, time-frequency analysis, pattern recognition, and unsupervised learning, applied to cancer classification, identification of biologically active sites, and visualization of gene expression data; crucial issues associated with statistical analysis of microarray data, statistics and stochastic analysis of gene expression levels in a single cell, statistically sound design of microarray studies and experiments; and biological and medical implications of genomics research. /LIST This book is for any researcher, in academia and industry, in biology, computer science, statistics, or engineering, involved in genomic problems. It could also be used as an advanced level textbook in a course focusing on genomic signals, information processing, or genome biology.
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Annotation Seventeen contributions cover a wide range of topics and span a number of disciplines such as image analysis, statistics, machine learning, pattern recognition, time-frequency and nonlinear signal processing, parallel computing, molecular biology, and others. Each chapter follows the various stages from data and analysis through synthesis and application. Topics include an overview of the role of supercomputers and other tools; approaches to the global modeling and analysis of gene regulatory networks and transcriptional control; state-of-the-art tools in Boolean function theory, time-frequency analysis, pattern recognition, and unsupervised learning; crucial issues associated with statistical analysis of microarray data, statistics and stochastic analysis of gene expression levels; and biological and medical implications of genomics research. Appropriate for use as an advanced level textbook, as well as for researchers. Edited by Zhang and Shmulevich (U. of Texas M.D. Anderson Cancer Center). Annotation c. Book News, Inc., Portland, OR (booknews.com).

Annotation At the beginning of the post-sequencing era, biology must now work with the enormous amounts of quantitative data being amassed and must render complex problems in mathematical terms, with all of the computational effort that entails. This phenomenon is perhaps best exemplified by the interdisciplinary scientific activity caused by the advent of high-throughput cDNA microarray technology, which facilitates large-scale surveys of gene expression. Biologists must now work together with engineers, statisticians, computer scientists, and other specialists, in order to attain a holistic understanding of the complex relationship between genes within the genome and uncover genetic function and regulation. Computational and Statistical Genomics aims to help researchers deal with current genomic challenges. Topics covered include: overviews of the role of supercomputers in genomics research, the existing challenges and directions in image processing for microarray technology, and web-based tools for microarray data analysis; approaches to the global modeling and analysis of gene regulatory networks and transcriptional control, using methods, theories, and tools from signal processing, machine learning, information theory, and control theory; state-of-the-art tools in Boolean function theory, time-frequency analysis, pattern recognition, and unsupervised learning, applied to cancer classification, identification of biologically active sites, and visualization of gene expression data; crucial issues associated with statistical analysis of microarray data, statistics and stochastic analysis of gene expression levels in a single cell, statistically sound design of microarray studies and experiments; and biological and medical implications of genomics research. /LIST This book is for any researcher, in academia and industry, in biology, computer science, statistics, or engineering, involved in genomic problems. It could also be used as an advanced level textbook in a course focusing on genomic signals, information processing, or genome biology.

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