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Data Mining for Genomics and Proteomics : Analysis of Gene and Protein Expression Data - Ramdas G. Pai
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Data Mining for Genomics and Proteomics : Analysis of Gene and Protein Expression Data - new book

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Data Mining for Genomics and Proteomics uses pragmatic examples and a complete case study to demonstrate step-by-step how biomedical studies can be used to maximize the chance of extracti… More...

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Data Mining for Genomics and Proteomics als eBook Download von Darius M. Dziuda - new book

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Data Mining for Genomics and Proteomics:Analysis of Gene and Protein Expression Data Darius M. Dziuda Data Mining for Genomics and Proteomics:Analysis of Gene and Protein Expression Data … More...

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Data Mining for Genomics and Proteomics - Darius M. Dziuda
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Data Mining for Genomics and Proteomics - new book

ISBN: 9780470593400

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Data Mining for Genomics and Proteomics als eBook Download von Darius M. Dziuda - new book

ISBN: 9780470593400

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Data Mining for Genomics and Proteomics - Darius M. Dziuda
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Darius M. Dziuda:
Data Mining for Genomics and Proteomics - First edition

2010, ISBN: 9780470593400

Analysis of Gene and Protein Expression Data, eBooks, eBook Download (PDF), 1. Auflage, [PU: John Wiley & Sons], John Wiley & Sons, 2010

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Details of the book - Data Mining for Genomics and Proteomics


EAN (ISBN-13): 9780470593400
ISBN (ISBN-10): 0470593407
Publishing year: 2010
Publisher: John Wiley & Sons
328 Pages
Language: eng/Englisch

Book in our database since 2012-08-06T10:19:02-04:00 (New York)
Detail page last modified on 2022-05-15T20:50:07-04:00 (New York)
ISBN/EAN: 9780470593400

ISBN - alternate spelling:
0-470-59340-7, 978-0-470-59340-0
Alternate spelling and related search-keywords:
Book title: expression, data mining analysis


Information from Publisher

Author: Darius M. Dziuda
Title: Wiley Series on Methods and Applications; Data Mining for Genomics and Proteomics - Analysis of Gene and Protein Expression Data
Publisher: Wiley-Interscience; John Wiley & Sons
300 Pages
Publishing year: 2010-08-03
Language: English
95,99 € (DE)
Not available (reason unspecified)

EA; E107; E-Book; Nonbooks, PBS / Informatik, EDV/Informatik; Datenbanken; Biowissenschaften; Computer Science; Data Mining; Data Mining Statistics; Database & Data Warehousing Technologies; Datenbanken u. Data Warehousing; Genomforschung u. Proteomik; Genomics; Genomics & Proteomics; Informatik; Life Sciences; Proteomics; Statistics; Statistik; Datenbanken u. Data Warehousing; Genomforschung u. Proteomik; Data Mining; BB

1. Introduction. 1.1 Basic terminology. 1.2 Overlapping areas of research. 1.2.1 Genomics. 1.2.2 Proteomics. 1.2.3 Bioinformatics. 1.2.4 Transcriptomics and other - omics .... 1.2.5 Data mining. 1. Basic analysis of gene expression microarray data. 2.1 Introduction. 2.2 Microarray technology. 2.3 Low-level preprocessing of Affymetrix microarrays. 2.4 Public repositories of microarray data. 2.5 Gene expression matrix. 2.6 Additional preprocessing, quality assessment and filtering. 2.7 Basic exploratory data analysis. 2.8 Unsupervised learning (taxonomy-related analysis). 2.8.1 Cluster analysis. 2.8.2 Principal component analysis. 2.8.3 Self-organizing maps. 2.9 Exercises. 1. Biomarker Discovery and Classification. 3.1 Overview. 3.2 Feature Selection. 3.2.1 Introduction. 3.2.2 Univariate versus multivariate approaches. 3.2.3 Supervised versus unsupervised methods. 3.2.4 Taxonomy of feature selection methods. 3.2.5 Feature selection for multiclass discrimination. 3.2.6 Regularization and feature selection. 3.2.7 Stability of biomarkers. 3.3 Discriminant Analysis. 3.3.1 Introduction. 3.3.2 Learning Algorithm. 3.3.3 A stepwise hybrid feature selection with T2. 3.4 Support Vector Machines. 3.4.1 Hard-Margin Support Vector Machines. 3.4.2 Soft- Margin Support Vector Machines. 3.4.3 Kernels. 3.4.4 SVMs and multiclass discrimination. 3.4.5 SVMs and Feature Selection: Recursive Feature Elimination. 3.4.6 Summary. 3.5 Random Forests. 3.5.1 Introduction. 3.5.2 Random Forests Learning Algorithm. 3.5.3 Random Forests and Feature Selection. 3.5.5 Summary. 3.6 Ensemble classifiers, bootstrap methods, and the modified bagging schema. 3.6.1 Ensemble classifiers. 3.6.2 Bootstrap methods. 3.6.3 Bootstrap and linear discriminant analysis. 3.6.4 The modified bagging schema. 3.7 Other learning algorithms. 3.7.1 k-Nearest Neighbor classifiers. 3.7.2 Artificial Neural Networks. 3.8 Eight commandments of gene expression analysis (for biomarker discovery). 3.9 Exercises. 1. The Informative Set of Genes. 4.1 Introduction. 4.2 Definitions. 4.3 The method. 4.3.1 Identification of the Informative Set of Genes. 4.3.2 Primary expression patterns of the Informative Set of Genes. 4.3.3 The most frequently used genes of the primary expression patterns. 4.4 Using the Informative Set of Genes to identify robust multivariate biomarkers. 4.5 Summary. 4.6 Exercises. 1. Analysis of protein expression data. 5.1 Introduction. 5.2 Protein chip technology. 5.2.1 Antibody microarrays. 5.2.2 Peptide microarrays. 5.2.3 Protein microarrays. 5.2.4 Reverse phase microarrays. 5.3 Two-dimensional gel electrophoresis. 5.4 MALDI-TOF and SELDI-TOF mass spectrometry. 5.5 Preprocessing of mass spectrometry data. 5.6 Analysis of protein expression data. 5.6.1 Additional preprocessing. 5.6.2 Basic exploratory data analysis. 5.6.3 Unsupervised learning. 5.6.4 Supervised learning - feature selection and biomarker discovery. 5.6.5 Supervised learning - classification systems. 5.7 Associating biomarker peaks with proteins. 5.7.1 Introduction. 5.7.2 The Universal Protein Resource (UniProt). 5.7.3 Search programs. 5.7.4 Tandem mass spectrometry. 5.8 Summary. 1. Sketches for selected exercises. 6.1 Introduction. 6.2 Multiclass discrimination (Exercise 3.2). 6.3 Identifying the Informative Set of Genes (Exercises 4.2 to 4.6). 6.4 Using the Informative set of Genes to identify robust multivariate markers (Exercise 4.8). 6.5 Validating biomarkers on an independent test data set (Exercise 4.8). 6.6 Using a training set that combines more than one data set (Exercises 3.5 and 4.1 to 4.8).

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