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Albaum, Stefan: QuPE - An integrated bioinformatics platform for quantitative proteomics. 2012
Inhalt
Introduction
Motivation
Aims and objectives
Structure of this work
Related publications
From genomics to proteomics
Protein synthesis – from genes to proteins
Protein turnover: degradation and synthesis
Mass spectrometry-based proteomics
A historical view on mass spectrometry
Mass spectrometry for the identification of proteins
Fundamentals of mass spectrometry data processing
Peak detection – profile vs. centroid data
Resolution and accuracy
Purpose and function of mass spectrometry in proteomics
Two-dimensional electrophoresis in combination with matrix-assisted laser desorption/ionization and time-of-flight mass spectrometry
Protein separation – two-dimensional electrophoresis
Ionization – matrix-assisted laser desorption/ionization
Analyzer – time-of-flight
Protein identification – peptide mass fingerprinting
Liquid chromatography in combination with electrospray ionization
Protein separation – liquid chromatography
Advanced separation – multidimensional protein identification technology
Ionization – electrospray
Analyzer – quadrupole
Analyzer – ion trap
Fragmentation – collision-induced dissociation
Protein identification – MS/MS ion search
Protein quantification
Stable isotope labeling
Metabolic labeling using stable isotopes
Metabolic labeling using amino acids: SILAC
Chemical tags: ICAT, ICPL, iTRAQ
Absolute quantification: AQUA
Special application: analysis of protein turnover
Two-dimensional electrophoresis
Label-free approaches
Shedding light on the importance of mass spectrometry for proteome research
State of the art in proteomics data analysis
Data standards in proteomics
Human Proteome Organization: PSI, MIAPE and MIBBI
Institute for systems biology
Data standards for mass spectra
mzXML
mzData and mzML
Ontologies and controlled vocabularies
Software for protein identification
Mascot™
Sequest™
Evaluation of search results
Quantitative analysis of isotopically labeled data
ASAPRatio
RelEx
ProRata
Census
QN
QuantiSpec
MaxQuant
Data storage and management solutions
Laboratory information management systems
ProDB
CPAS
MASPECTRAS
ProSE/Proteios
Trans-Proteomics pipeline
Data repositories
PRIDE – proteomics identifications database
PeptideAtlas
Identification, quantification, ... and next?
Spreadsheet-alike analysis of proteomics data: DAnTE, StatQuant, GProX
Integration of functional annotation data: PIPE
An inventory of the current state of proteomics software tools and applications
Requirements: computational support for quantitative proteome experiments
Use case analysis
Data organization and structuring
Protein identification
Protein quantification
Statistical analysis, data mining, and visualization
Methods for the statistical analysis of quantitative proteomics data
Detection of differentially regulated proteins
Up- or down- regulation of an individual protein
Comparison of multiple-condition proteome data
Error in hypothesis testing
Identification of co-regulated proteins
Measures of similarity between two proteins
Formal definition of cluster analysis
Hierarchical cluster analysis
Single- and Complete-linkage
Average-linkage
Centroid-linkage
Ward-linkage
Partitioning cluster analysis
K-means
Neural-Gas
Cluster validation
Calinski-Harabasz
Index-I
Davies-Bouldin
Krzanowski-Lai
Figure of Merit
A measure to determine the congruence between clustering results
Data analysis: more questions than answers
Implementation of the QuPE system
System design
System architecture
Data access layer
Object model for mass spectra
Object model for protein and peptide identifications
Object model for analysis results
Object model to structure experiments and related data
Logic layer
Job and tools framework
Presentation layer
Graphical user interface
Design and control of the graphical user interface using a model-view-controller pattern
Algorithms for the analysis of quantitative proteomics data
Sum quantification approach – simple but powerful
Utilizing the time
Pulse chase quantification
Summary of features of the QuPE system
Data management: projects and experiments
Protein identification: peptide mass fingerprinting and MS/MS ion search
Protein quantification
Statistical analysis, data mining, and visualization
Performance and accuracy of protein quantification
Protein mixtures – fully labeled vs. unlabeled
Reference measurements
Accuracy of the sum quantification
Accuracy of the elution peak quantification
Protein mixtures – unlabeled vs. partially labeled
Accuracy of the pulse chase quantification
Protein quantification: final considerations
A workflow for the analysis of quantitative proteomics data
Case studies
Experimental setups
Protein identification
Protein quantification
Detection of differentially regulated proteins
Identification of co-regulated proteins
Similarities and differences between cluster algorithms
Computational and biological significance of clustering results
Proposal of a workflow for the analysis of quantitative proteomics experiments
Discussion and Conclusion
The rich internet application QuPE
Algorithms for protein quantification
A workflow for the analysis of quantitative proteomics experiments
Further developments of the QuPE system
Final remarks
Appendix
Implementation of the QuPE system – additional information
Isotopic Distribution Calculation
Performance and accuracy of protein quantification – additional information
Reference measurements – additional information
Configuration of the tool ProRata
Configuration of the tool Census
Evaluation of implemented quantification algorithms – additional information
Accuracy of the elution peak quantification – parameter evaluation
Analysis of quantitative proteomics data – additional information
Glossary
Bibliography