Modern proteomics - sample preparation, analysis and practical applications
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書誌事項
Modern proteomics - sample preparation, analysis and practical applications
(Advances in experimental medicine and biology, 919)
Springer, c2016
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内容説明・目次
内容説明
This volume serves as a proteomics reference manual, describing experimental design and execution. The book also shows a large number of examples as to what can be achieved using proteomics techniques. As a relatively young area of scientific research, the breadth and depth of the current state of the art in proteomics might not be obvious to all potential users. There are various books and review articles that cover certain aspects of proteomics but they often lack technical details. Subject specific literature also lacks the broad overviews that are needed to design an experiment in which all steps are compatible and coherent. The objective of this book was to create a proteomics manual to provide scientists who are not experts in the field with an overview of:
1. The types of samples can be analyzed by mass spectrometry for proteomics analysis.
2. Ways to convert biological or ecological samples to analytes ready for mass spectral analysis.
3. Ways to reduce the complexity of the proteome to achieve better coverage of the constituent proteins.
4. How various mass spectrometers work and different ways they can be used for proteomics analysis
5. The various platforms that are available for proteomics data analysis
6. The various applications of proteomics technologies in biological and medical sciences
This book should appeal to anyone with an interest in proteomics technologies, proteomics related bioinformatics and proteomics data generation and interpretation. With the broad setup and chapters written by experts in the field, there is information that is valuable for students as well as for researchers who are looking for a hands on introduction into the strengths, weaknesses and opportunities of proteomics.
目次
- Table of Contents Preface 1. Sample Origin
- Stephen R. Pennington, Ph.D. 2. Sample Preparation for Proteomic Analyses by Mass Spectrometry
- John C. Rogers, Ph.D. 2.2 Plant structure and specificity - challenges and sample preparation considerations for proteomics
- Sophie Alavarez, Ph.D 3. Protein Fractionation and Enrichment for Proteomics
- Andrew J. Alpert, Ph.D. 4. High Performance Liquid Chromatography
- Mark L. Stolowitz, Ph.D 5. Mass Analyzers
- Anthony M. Haag, Ph.D. 6. Top-Down Mass Spectrometry: Proteomics to Proteoforms
- Steven M. Patrie 7. Platforms and pipelines for Proteomics Data Management and Analysis
- Sven Nahnsen, Ph.D. 8.1 Visualization, inspection and interpretation of shotgun proteomics identification results
- Marc Vaudel, Ph.D. and Harald Barsnes, Ph.D. 8.2 Tandem mass spectrum sequencing: an alternative to database search engines in shotgun proteomics
- Marc Vaudel, Ph.D. and Harald Barsnes, Ph.D. 8.3 Protein Inference
- Zengyou He, Ph.D. 8.4 Modification Site Localization in Peptides
- Robert J. Chalkley, Ph.D 9. Quantification
- Yun Chen, Ph.D. 10. Bioinformatics Tools for the Analysis of Proteomics Data
- Karla Grisel Calderon-Gonzalez, Ph.D. 11. Useful Web Resources
- Maria D. Persons, Ph.D. 12. Top-Down Mass Spectrometry: Proteomics to Proteoforms
- Stephen Patrie, Ph.D. 13. Protocol for Standardizing High-to-Moderate Abundance Protein Biomarker Assessments through an MRM-with-Standard-Peptides Quantitative Approach
- Andrew J. Percy, Ph.D. and Christoph H. Borchers, Ph.D. 14. Posttranslational Modifications (PTMs) analysis
- Ruijun Tian, Ph.D. 15. Protein-Protein Interaction
- Stephen R. Pennington, Ph.D. 16. Structural Analysis
- Antonio Artigues, Ph.D. 17. Introduction to Proteomic-Derived Biomarkers
- John E. Wiktorowicz, Ph.D. 18. Discovery of Candidate Biomarkers
- John E. Wiktorowicz, Ph.D. 19. Statistical Approaches to Candidate Biomarker Panel Selection
- John E. Wiktorowicz, Ph.D. 20. Qualification and Verification of biomarker candidates
- John E. Wiktorowicz, Ph.D.
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