Bayesian inference for gene expression and proteomics / edited by Kim-Anh Do, Peter Müller, Marina Vannucci.

Call Number
572.8/6501519542
Title
Bayesian inference for gene expression and proteomics / edited by Kim-Anh Do, Peter Müller, Marina Vannucci.
Bayesian Inference for Gene Expression & Proteomics
Physical Description
1 online resource (xviii, 437 pages) : digital, PDF file(s).
Notes
Title from publisher's bibliographic system (viewed on 05 Oct 2015).
Summary
The interdisciplinary nature of bioinformatics presents a research challenge in integrating concepts, methods, software and multiplatform data. Although there have been rapid developments in new technology and an inundation of statistical methods for addressing other types of high-throughput data, such as proteomic profiles that arise from mass spectrometry experiments. This book discusses the development and application of Bayesian methods in the analysis of high-throughput bioinformatics data that arise from medical, in particular, cancer research, as well as molecular and structural biology. The Bayesian approach has the advantage that evidence can be easily and flexibly incorporated into statistical methods. A basic overview of the biological and technical principles behind multi-platform high-throughput experimentation is followed by expert reviews of Bayesian methodology, tools and software for single group inference, group comparisons, classification and clustering, motif discovery and regulatory networks, and Bayesian networks and gene interactions.
Added Author
Do, Kim-Anh, 1960- editor.
Müller, Peter, 1963 August 9- editor.
Vannucci, Marina, 1966- editor.
Subject
Gene expression Statistical methods.
Proteomics Statistical methods.
Multimedia
Total Ratings: 0
No records found to display.
 
 
 
02551nam a22003978i 4500
001
 
 
vtls001584959
003
 
 
VRT
005
 
 
20200921122300.0
006
 
 
m|||||o||d||||||||
007
 
 
cr||||||||||||
008
 
 
200921s2006||||enk     o     ||1 0|eng|d
020
$a 9780511584589 (ebook)
020
$z 9780521860925 (hardback)
020
$z 9781107636989 (paperback)
035
$a (UkCbUP)CR9780511584589
039
9
$y 202009211223 $z santha
040
$a UkCbUP $b eng $e rda $c UkCbUP
050
0
0
$a QH450 $b .B39 2006
082
0
0
$a 572.8/6501519542 $2 22
245
0
0
$a Bayesian inference for gene expression and proteomics / $c edited by Kim-Anh Do, Peter Müller, Marina Vannucci.
246
3
$a Bayesian Inference for Gene Expression & Proteomics
264
1
$a Cambridge : $b Cambridge University Press, $c 2006.
300
$a 1 online resource (xviii, 437 pages) : $b digital, PDF file(s).
336
$a text $b txt $2 rdacontent
337
$a computer $b c $2 rdamedia
338
$a online resource $b cr $2 rdacarrier
500
$a Title from publisher's bibliographic system (viewed on 05 Oct 2015).
520
$a The interdisciplinary nature of bioinformatics presents a research challenge in integrating concepts, methods, software and multiplatform data. Although there have been rapid developments in new technology and an inundation of statistical methods for addressing other types of high-throughput data, such as proteomic profiles that arise from mass spectrometry experiments. This book discusses the development and application of Bayesian methods in the analysis of high-throughput bioinformatics data that arise from medical, in particular, cancer research, as well as molecular and structural biology. The Bayesian approach has the advantage that evidence can be easily and flexibly incorporated into statistical methods. A basic overview of the biological and technical principles behind multi-platform high-throughput experimentation is followed by expert reviews of Bayesian methodology, tools and software for single group inference, group comparisons, classification and clustering, motif discovery and regulatory networks, and Bayesian networks and gene interactions.
650
0
$a Gene expression $x Statistical methods.
650
0
$a Proteomics $x Statistical methods.
700
1
$a Do, Kim-Anh, $d 1960- $e editor.
700
1
$a Müller, Peter, $d 1963 August 9- $e editor.
700
1
$a Vannucci, Marina, $d 1966- $e editor.
776
0
8
$i Print version: $z 9780521860925
856
4
0
$u https://doi.org/10.1017/CBO9780511584589
999
$a VIRTUA               
No Reviews to Display
Summary
The interdisciplinary nature of bioinformatics presents a research challenge in integrating concepts, methods, software and multiplatform data. Although there have been rapid developments in new technology and an inundation of statistical methods for addressing other types of high-throughput data, such as proteomic profiles that arise from mass spectrometry experiments. This book discusses the development and application of Bayesian methods in the analysis of high-throughput bioinformatics data that arise from medical, in particular, cancer research, as well as molecular and structural biology. The Bayesian approach has the advantage that evidence can be easily and flexibly incorporated into statistical methods. A basic overview of the biological and technical principles behind multi-platform high-throughput experimentation is followed by expert reviews of Bayesian methodology, tools and software for single group inference, group comparisons, classification and clustering, motif discovery and regulatory networks, and Bayesian networks and gene interactions.
Notes
Title from publisher's bibliographic system (viewed on 05 Oct 2015).
Subject
Gene expression Statistical methods.
Proteomics Statistical methods.
Multimedia