+ All Categories
Home > Documents > Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide...

Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide...

Date post: 21-Jan-2016
Category:
Upload: denis-preston
View: 212 times
Download: 0 times
Share this document with a friend
Popular Tags:
15
ple flavors of mass analyzers MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted m/z of trypsinized proteins m MS/MS (peptide sequencing): Pulls each peptide from the first MS Breaks up peptide bond Identifies each fragment based on m/z Collision cell 1 multiple types of collision cells: collision induced dissociation electron transfer dissociation high-energy collision dissociation
Transcript
Page 1: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Multiple flavors of mass analyzers

Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted m/z of trypsinized proteins

Tandem MS/MS (peptide sequencing): Pulls each peptide from the first MS Breaks up peptide bond Identifies each fragment based on m/z

Collision cell

1

Now multiple types of collision cells:CID: collision induced dissociationETD: electron transfer dissociationHCD: high-energy collision dissociation

Page 2: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Mass Spec MS Spectrum

Ion source Mass analyzer Detector

Intro to Mass Spec (MS)Separate and identify peptide fragments by their Mass and Charge (m/z ratio)

Basic principles:1. Ionize (i.e. charge) peptide fragments2. Separate ions by mass/charge (m/z) ratio3. Detect ions of different m/z ratio4. Compare to database of predicted m/z fragments for each genome

2

Page 3: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Mann Nat Reviews MBC. 5:699:7113

How does each spectrum translate to amino acid sequence?

Page 4: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

1. De novo sequencing: very difficult and not widely used (but being developed)for large-scale datasets

2. Matching observed spectra to a database of theoretical spectra

3. Matching observed spectra to a spectral database of previously seen spectra

How does each spectrum translate to amino acid sequence?

4

Page 5: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Nesvizhskii (2010) J. Proteomics, 73:2092-2123.

- spectral matching is supposedly more accurate but …- limited to the number of peptides whose spectra have been observed before

With either approach, observed spectra are processed to:group redundant spectra, remove bad spectra, recognized co-fragmentation, improve z estimates

Many good spectra will not match a known sequence due to:absence of a target in DB, PTM modifies spectrum, constrained DB search,incorrect m or z estimate.

5

Page 6: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Result: peptide-to-spectral match (PSM)

A major problem in proteomics is bad PSM calls … therefore statistical measures are critical

Methods of estimating significance of PSMs:

p- (or E-) value: compare score S of best PSM against distribution ofall S for all spectra to all theoretical peptides

FDR correction methods:1.B&H FDR2.Estimate the null distribution of RANDOM PSMs:

- match all spectra to real (‘target’) DB and to fake (‘decoy) DB- often decoy DB is the same peptides in the library but reverse

sequence

one measure of FDR: 2*(# decoy hits) / (# decoy hits + # target hits)3. Use #2 above to calculate posterior probabilities for EACH PSM

6

Page 7: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

3. Use #2 above to calculate posterior probabilities for EACH PSM

- mixture model approach: take the distribution of ALL scores S- this is a mixture of ‘correct’ PSMs and ‘incorrect’ PSMs

- but we don’t know which are correct or incorrect

- scores from decoy comparison are included, which can providesome idea of the distribution of ‘incorrect’ scores

-EM or Bayesian approaches can then estimate the proportion of correct vs.incorrect PSM … based on each PSM score, a posterior probability is calculated

FDR can be done at the level of PSM identification … but often doneat the level of Protein identification

7

Page 8: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Error in PSM identification can amplify FDR in Protein identification

Often focus on proteins identified by at least 2 different PSMs (or proteins with single PSMs of very high posterior probability)

Nesvizhskii (2010) J. Proteomics, 73:2092-2123.

Some methodscombine PSM FDRto get a protein FDR

8

Page 9: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Some practical guidelines for analyzing proteomics results

1. Know that abundant proteins are much easier to identify

2. # of peptides per protein is an important consideration- proteins ID’d with >1 peptide are more reliable- proteins ID’d with 1 peptide observed repeatedly are more reliable- note than longer proteins are more likely to have false PSMs

3. Think carefully about the p-value/FDR and know how it was calculated

4. Know that proteomics is no where near saturating … many proteins will be missed

9

Page 10: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Quantitative proteomics

1. Spectral counting

2. Isotope labeling (SILAC)

3. Isobaric tagging (iTRAQ & TMT)

4. SRM

Either absolute measurements or relatively comparisons

10

Page 11: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Spectral countingcounting the number of peptides and counts for each protein

Challenges:- different peptides are more (or less) likely to be assayed- analysis of complex mixtures often not saturating – may miss some

peptides in some runs

newer high-mass accuracy machines alleviate these challenges

- quantitation comes in comparing separate mass-spec runs … thereforenormalization is critical and can be confounded by error

- requires careful statistics to account for differences in:quality of run, likelihood of observing each peptide, likelihoodof observing each protein (eg. based on length, solubility, etc)

Advantages / Challenges+ label-free quantitation; cells can be grown in any medium- requires careful statistics to quantify- subject to run-to-run variation / error 11

Page 12: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

SILAC(Stable Isotope Labeling with Amino acids in Cell culture)

Cells are grown separately in heavy (13C) or light (12C) amino acids (often K or R),

lysates are mixed, then analyzed in the same mass-spec run

Mass shift of one neutron allows deconvolution, and quantification, of peaks in the same run.

Advantages / Challenges:+ not affected by run-to-run variation- need special media to incorporate heavy aa’s,- can only compare (and quantify) 2 samples directly- incomplete label incorporation can confound MS/MS identification 12

Page 13: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Isobaric TaggingiTRAQ or

Tandem Mass Tags, TMTs

LT

Q V

elos

O

rbit

rap

Each peptide mix covalently taggedwith one of 4, 6, or 8 chemicaltags of identical mass

Samples are then pooled and analyzedin the same MS run

Collision before MS2 breaks tags –

Tags can be distinguished in the small-mass range and quantified togive relative abundance acrossup to 8 samples.

Advantages / Challenges:+ can analyze up to 8 samples,

same run- still need to deal with normalization13

Page 14: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Selective Reaction Monitoring (SRM)

Targeted proteomics to quantify specific peptides with great accuracy

- Specialized instrument capable of very sensitively measuringthe transition of precursor peptide and one peptide fragment

- Typically dope in heavy-labeled synthetic peptides of precisely knownabundance to quantify

Advantages:- best precision measurements

Disadvantages:- need to identify ‘proteotypic’ peptides for doping controls- expensive to make many heavy peptides of precise abundance- limited number of proteins that can be analyzed

14

Page 15: Multiple flavors of mass analyzers Single MS (peptide fingerprinting): Identifies m/z of peptide only Peptide id’d by comparison to database, of predicted.

Phospho-proteomics and Post-translational modifications (PTMs)

15

phosphorylated (P’d) peptides are enriched, typically through chromatography- P’d peptides do not ionize as well as unP’d peptides- enrichment of P’d peptides ensures ionization and aids in mapping

IMAC: immobilized metal ion affinity chromatography- phospho groups bind charged metals- contamination by negatively-charged peptides

Titanium dioxide (TiO2) column: - binds phospho groups (mono-P’d better than multi-P’d)

SIMAC: Sequential Elution from IMAC:- IMAC followed by TiO2 column

Goal: identify which residues are phosphorylated (Ser, Thr, Tyr),mapped based on known m/z of phospho group


Recommended