Molecular Analysis and Genome Discovery
- Publisher
- John Wiley & Sons, Ltd
- Year
- 2004
- Tongue
- English
- Leaves
- 376
- Category
- Library
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β¦ Synopsis
This advanced level textbook provides a comprehensive overview of recent developments in the area of molecular based diagnostics (including nucleic acids, biosensors and immunoessays) of disease markers. It also covers the impact of techniques such as in vitro nucleic acid amplifications (e.g. PCR) and other amplification methods, as well as gene and biochip production and automated techniques such as fluorescent sequencing.
The book discusses key concepts where new and merging areas, including pharmacogenomics, proteomics and functional genomics, are being researched and developed. In addition, examples are given where this new area of bioscience has or may be successfully applied.
Chapter 1 Pharmacogenetics and Pharmacogenomics: An Overview (pages 1β15): W. Kalow
Chapter 2 Quantitative TaqMan Real?Time PCR: Diagnostic and Scientific Applications (pages 17β28): Jorg Dotsch, Ellen Schoof and Wolfgang Rascher
Chapter 3 Hybridization Probes for Real?Time PCR (pages 29β42): Elaine Lyon
Chapter 4 An Overview of Genotyping and Single Nucleotide Polymorphisms (SNP) (pages 43β69): Ivo Glynne Gut
Chapter 5 High?Throughput Mutation Screening (pages 71β100): Paal Skytt Andersen and Lars Allan Larsen
Chapter 6 Determination of Nucleic Acid Sequences by Pyrosequencing (pages 101β111): Elahe Elahi and Mostafa Ronaghi
Chapter 7 An Introduction to DNA Chips (pages 113β126): Magdalena Gabig?Ciminska and Andrzej Ciminski
Chapter 8 Overview of Microarrays in Genomic Analysis (pages 127β165): Janette K. Burgess
Chapter 9 Overview of Differential Gene Expression by High?Throughput Analysis (pages 167β190): Kin?Ying To
Chapter 10 Aptamers: Powerful Molecular Tools for Therapeutics and Diagnostics (pages 191β215): Eva Baldrich Rubio, Monica Campas i Homs and Ciara K. O'Sullivan
Chapter 11 Chip Based Proteomics Technology (pages 217β249): Mikhail Soloviev, Richard Barry and Jon Terrett
Chapter 12 Infectomics Overview: Holistic and Integrative Studies of Infectious Diseases (pages 251β270): Sheng?He Huang and Ambrose Jong
Chapter 13 The Drug Discovery Process (pages 271β294): Roberto Solari
Chapter 14 Structure?Based Drug Discovery (pages 295β321): Chen?Chen Kan, Kevin Hambly and Derek A. Debe
Chapter 15 Protein InteractionβTargeted Drug Discovery (pages 323β345): Gary Hudes, Sanjay Menon and Erica A. Golemis
Chapter 16 Overview of Quantitative StructureβActivity Relationships (QSAR) (pages 347β367): David A. Winkler
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