2.proteomics coursework 5-dec2012_aky
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Transcript of 2.proteomics coursework 5-dec2012_aky
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ANALYZING PROTEOMICS
RESULTS
SEPARATING THE WHEAT
FROM THE CHAFF
Amit Kumar Yadav5th Dec 2012
Course B
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INTERPRETING THE RESULTS
1. Significance assessment of
a Peptide-Spectrum
match (PSM)
2.Controlling error rates in a high through-
put experiment
3. Inferring the proteins
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SIGNIFICANCE ASSESSMENT OF
PEPTIDE ASSIGNMENTS
I found some matches. Are they correct?
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MS/MS DATABASE SEARCH
Understanding and Exploiting Peptide Fragment Ion Intensities Using Experimental and Informatic Approaches
Ashley C. Gucinski, Eric D. Dodds, Wenzhou Li, and Vicki H. Wysocki. Methods in Molecular Biology , Vol.604
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WHAT’S THE PROBABILITY?
Computational Methods for Mass Spectrometry Proteomics I. Eidhammer, K. Flikka, L. Martens and S.-O. Mikalsen
Threshold score
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FALSE DISCOVERY RATE
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DECOY DATABASE
• e.g. ABCDEFGHIJ
Database Sequence (target)
• e.g. JIHGFEDCBA
Reversed Sequence (decoy)
• e.g. JDIBGEAFCH
Randomized Sequence (decoy)
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DECOY DATABASE TYPES
Comparison of Novel Decoy Database Designs for Optimizing Protein Identification Searches Using ABRF sPRG2006 Standard MS/MS
Data Sets. Luca Bianco, Jennifer A. Mead, and Conrad Bessant, J. Proteome Res., 2009, 8 (4), 1782-1791
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IS DECOY A GOOD NULL MODEL?50
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Nu
mb
er
of
hit
s
Score
Target
Decoyp- value?
e- value?
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FALSE DISCOVERY RATE
Targ
et
Deco
y
So
rted
Sco
res
Threshold score
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FALSE DISCOVERY RATE
0
500
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3500
0 500 1000 1500 2000 2500 3000 3500 4000 4500
Sc
ore
Peptide mass (Mr)
1 % FDR
Target
Decoy
5 % FDR
q- value?
Threshold
score
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FDR FORMULA
Concatenated target-decoy
search
• FDR= 2 x #decoy / # ( target + decoy )
Separate target and decoy search
• FDR= #decoy / #target
target
decoy
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FLEXIFDR
Yadav AK, Kumar D, Dash D (2012) Learning from Decoys to Improve the Sensitivity and Specificity of Proteomics Database Search
Results. PLoS ONE 7(11): e50651
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PROTEIN INFERENCE
…but I wanted to know the proteins in my sample?
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…I have the peptides, but which proteins did
they come from?
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Interpretation of Shotgun Proteomic Data:The Protein Inference Problem
Alexey I. Nesvizhskii and Ruedi Aebersold, MCP , July 11, 2005
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PROTEIN INFERENCE PROBLEM
Interpretation of Shotgun Proteomic Data:The Protein Inference Problem
Alexey I. Nesvizhskii and Ruedi Aebersold, MCP , July 11, 2005
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PROTEIN GROUPING
Interpretation of Shotgun
Proteomic Data:The Protein
Inference Problem
Alexey I. Nesvizhskii and
Ruedi Aebersold, MCP , July
11, 2005
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QUANTITATION
How much of a protein is present?
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QUANTITATION: SILAC
1. Achieving In-Depth Proteomics Profiling by Mass -ACS CHEMICAL BIOLOGY VOL.2 NO.1 • 39–52 • 2007
2. Proteomics: a pragmatic perspective, Nature biotechnology volume 28 number 7 july 2010
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APPLICATIONS OF PROTEOMICS
Proteomics: a pragmatic perspective, Nature biotechnology volume 28 number 7 july 2010
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Different -omics sciences describe many levels of biomolecular organization –but if used in isolation may give misleading inferences about the system !