Presentation is loading. Please wait.

Presentation is loading. Please wait.

Xiang Zhang Bindley Bioscience Center Purdue University

Similar presentations


Presentation on theme: "Xiang Zhang Bindley Bioscience Center Purdue University"— Presentation transcript:

1 Global Internal Standard Technology (GIST) – A Tool for Protein Expression Analysis
Xiang Zhang Bindley Bioscience Center Purdue University 17 January 2019

2 Identification of changes in protein expression and its modification is essential for understanding biological processes Cellular response to stimuli is reflected by changes, i.e. protein expression, post-translation modification or processing Stimuli origin Chemical (drug, toxin etc.) Physical (cell interaction, changes in temperature, pressure etc.) Combination of both (disease) The search for differences in protein expression and modification is called Comparative Proteomics. 17 January 2019

3 There are several approaches for quantitation
The Key Element of Comparative Proteomics is Quantitation of Changes in Protein (Peptide) Levels It is not easy to determine a change in a single protein level (such as Western Blot) In comparative proteomics, the challenge is to identify changes for as many proteins (peptides) as possible There are several approaches for quantitation Pattern recognition approach Isotopic labeling approach 17 January 2019

4 Pattern Recognition Works well but has some potential issues
Alignment, normalization and peak intensity comparison Individual analysis of sample A and B by LC-MS Works well but has some potential issues Strongly depends on LC-MS system reproducibility Intensity of any peak is not only function of peptide concentration. It also depends on analyte composition It is difficult to obtain direct fold changes between samples Some of these potential issues could be overcome by using isotopic labeling strategies. 17 January 2019

5 Isotopic Labeling Biosynthetic labeling Post-biosynthetic labeling.
In vivo incorporation of isotopic labeled species (growing cells in media enriched in 14N vs. 15N) Impossible to use it with human subjects Post-biosynthetic labeling. Labeling amino groups (GIST) Labeling cysteine residues (ICAT) 18O incorporation during proteolysis 17 January 2019

6 Isotopic Labeling – Basic principles (ICAT)
17 January 2019

7 GIST – Isotopic Labeling Technique
Concept was first introduced by Fred Regnier lab at Purdue University in 2000 Labeling reagents Succinimidyl propionate (12C vs 13C) Succinimidyl acetate (1H vs 2H) Target group Primary amine (N-terminus, Lysine residue) Sample is labeled following digestion 17 January 2019

8 GIST – Chemical structure of Labeling Reagents
Heavy forms CH 3 O N C 2 Acetate-based reagent Propionate-based reagent Light forms H = 2H C = 13C H = 1H C = 12C 17 January 2019

9 Generating primary amines
Trypsin cleaves polypeptides C-terminal to lysine and arginine -NH-CH(R1)-CO-NH-CH(R2)-CO- trypsin -NH-CH(R1)-COOH H2N-CH(R2)-CO- It will be shown in subsequent slides that amino groups generated in proteolysis can be labeled. 18O labeling of carboxyl groups can also be used. There are however, some “tricks” associated with 18O labeling that we are still in the process of working out. It is not totally clear that the 18O process will be as quantitative as the acetate labeling described here. Primary amine groups are present globally - every peptide generated will be labeled by GIST reagents 17 January 2019

10 Amino groups are easily alkylated
Note that Arg is not acetylated. All primary amino groups are labeled. This slide shows the use of N-acetoxysuccinimide labeling of peptides. N-hydroxysuccinimides have the great advantage that they can be used for acylation in aqueous solution and still provide quantitative derivatization. In the case of glycopeptides and ser/thre peptides, there is occasionally some acetylation of hydroxyl groups. Esters are easily cleaved by treating with hydroxylamine at pH Addition of hydroxyl amine is standard in the procedure to preclude ester formation. 17 January 2019

11 Data dependent MS/MS and/or
GIST – Experimental Design Normal (State 1) sample digestion Disease (State 2) Combine Light & Heavy RP LC/MS Q-Tof Light-1H or 12C labeling Heavy-2H or 13C Ratio analysis using GISTool V1.1™ Data dependent MS/MS and/or targeted ion MS/MS 17 January 2019

12 Labeling samples from two different sources
After derivatization these samples are mixed. An internal standard is created for each peptide MW 500 MW 542 MW 545 Sample 1 – peptide A Sample 2 – peptide A This is a global labeling strategy in that all tryptic peptides are derivatized except those that are amino terminally blocked. Control samples are acetylated with 1H3-acetate and experimental samples with 2H3-acetate. After differential labeling the samples are mixed, separated by multidimensional chromatography and analyzed by mass spectrometry. It is important that no resolution of the isotopic species occurs prior to mass spectrometry. 17 January 2019

13 Example of GIST labeled peptide analyzed by Mass Spectrometry
542 545 peptide from experimental sample labeled with heavy form peptide from control sample labeled with light form 17 January 2019 m/z

14 How to Analyze GIST Data?
603.81 600.79 Peak picking Identify peptide peak cluster Doublet identification Ratio calculation 627.25 630.28 17 January 2019

15 Process Flow Chart of GISTool
17 January 2019

16 Data Acquired on qTOF Profile data Centroid data 17 January 2019

17 Chemical Noise Filter I. Peak Density Filter spectrum is segmented
noise level of each segment is calculated based on local peak density noise level is smoothed across spectrum II. Spike Filter One third of user defined peak width is used as minimum width of isotopic peak 17 January 2019

18 Charge Deconvolution – simple case
Peptide can carry different charges in ESI experiment Peptide charge can be used for doublet recognition Some overlapped peptides can be resolved 17 January 2019

19 Charge Deconvolution – complicated case
white and red peptides both have +1 charge, but they are shifted by 0.5 Da Identify peak group Find base peak Try different charges Assigned +2 to the group Check isotopic peak profile Flag white peaks Check M/Z space of the white peaks Assign white peaks as +1 Search other white peaks in the group Try +1 on red peaks Search other reds in peak group 17 January 2019

20 Deisotope Quantitatively resolve overlapped peptide peaks
Simplify peak list Simple case Overlapped peptides M2+M0 M0 M0 M1 M3+M1 M1 M2 M3 M4+M2 17 January 2019

21 (12C+13C)m(1H+2H)n(16O+17O+18O)o(14N+15N)p(32S+33S+34S+36S)q
How Do We Deisotope ? Peptide isotopic peak profile can be calculated if AA composition is known. Peptide CmHnOoNpSq (12C+13C)m(1H+2H)n(16O+17O+18O)o(14N+15N)p(32S+33S+34S+36S)q peptide sequence is unknown during data processing in-silico prediction of isotopic peak profile comparing in-silico profile with experimental data 17 January 2019

22 Peptide Isotopic Distribution Can Be Predicted
Large peptide Small peptide Relative intensity Peptide A Peptide B Molecular weight (amu) Molecular weight (amu) Peptide A and B have the same molecular weight but different AA composition Peptide isotopic peak profile varies significantly with MW To certain MW, the variation of isotopic peak profile is not significant 17 January 2019

23 Correlating in-silico Results with Experimental Results
Detect the significantly intense isotopic peaks by comparing experimentally measured isotopic peak profile with with in-silico predicted peak profile - No, there is no other peptide - Yes, a peak from other peptide contributes to the current peak Relative Intensity M/Z MW 17 January 2019

24 Charge Deconvolution and Deisotoping Process
17 January 2019

25 Doublet Recognition Mass difference Retention time
GIST Acetate +3, +6, … ICAT +8, +16, … Shifting according to labeling reagent. 17 January 2019

26 Calculation of Peak Ratio
I. Ratio is calculated in each scan – good for 12C/13C pairs II. Ratio is calculated after smoothing peptide peaks at chromatographic level – good for H/D or 16O/18O pairs SG smooth each peak Peak detection Doublet recognition Peptide Regulation 17 January 2019

27 Ranking Doublets RANK 1, 2, 3, , Good doublet Doublet complex Singlet 17 January 2019

28 Decharging to Rescue Mixed Doublets
PeptideA +2 light & heavy PeptideB +2 light & heavy 500 505 6 possible combinations 17 January 2019

29 Overview of MS Proteomics Platform
Proteins GIST label Separation Mass Spectrometer e.g. Ion Trap, Q-Tof Ionization Digest RPLC/CapLC +ESI Purified & Separated MS/MS (fragmentation pattern) MS-only Ion Chromatogram (stop here for quantitative profiling) Survey Scan MS select ion Time m/z m/z Protein Database Theoretical MS/MS Spectrum SEQUEST (Correlation Analysis) Protein Identification 17 January 2019

30 Typical GIST Doublet – Light:Heavy
shows 3 m/z unit separation (6 Da difference) since 2+ ion State 2 (disease) 2H or 13C 3 Intensity State 1 (normal) 1H or 12C m/z 17 January 2019

31 Are Singlets Ever Observed?
GIST-BSA Doublets Singlets # peptides 46 2 PQVSTPTLVEVSR doublet singlet Pro has no primary amine, also no Lys present doublet There is usually a scientific explanation for singlets 17 January 2019

32 Effectiveness of GIST Technology
Peak ratio distribution is rather tight Labeling efficiency is > 95%; no mixed populations of labeled and unlabeled peptides are observed 13C labeled peptides show greater deviation from the mean than 2H Mean ratio values below 1.0 and 3.0 are most likely due to experimental error 17 January 2019

33 GIST Results for 8 Protein Mixture
Experimental design – Create an unknown mixture of 8 standard proteins in different concentrations and different ratios to test the entire GIST process (labeling, MS, GISTool, etc.) Jiri creating secret mix Protein Actual Ratio Exp. Ratio # peptides ID’d BSA : : Transferrin : : Glucose oxidase : : Lysozyme : : Carbonic Anhydrase : : Lactoglobulin : only Light detected Myoglobin : : Ovalbumin : N/A unidentified Ratios determined by GISTool from MS only data Proteins identified by MS/MS sequences Ratios were successfully determined for most proteins in mix 17 January 2019

34 A Real Sample: Human Serum
Experimental design Samples: 1 normal vs. 1 colon cancer Protein Level Fractionation SAX RP 175, 225, 300, 1000 mM NaCl 40%, 100% organic Sample 10 total fractions No peptide level fractionation other than RP-LC/MS A single protein fraction (175mM, 40% ACN) from 1 normal and 1 diseased sample was digested separately with trypsin, GIST labeled, and mixed 17 January 2019

35 Serum Fold Changes Using Deuterium and 13C GIST Reagents
0.1 1 10 350 600 850 1100 1350 1600 0.1 1 10 350 600 850 1100 1350 1600 GIST Acetate Normal(1H) vs. Disease(2H) GIST Propionate Normal(12C) vs. Disease(13C) 10 10 log (Ratio) log (Ratio) 1 1 350 350 600 600 850 850 1100 1100 1350 1350 1600 1600 0.1 0.1 m/z m/z Only well-resolved doublets ranked 1-3 by GISTool are shown Only fold changes ≥ 2:1 were considered significant 17 January 2019

36 Largest Fold Change Identified in Human Serum
Heavy colon cancer LC/MS 10:1 Ratio normal Light Up-regulation of deoxyhemoglobin indicates inadequate oxygen levels in blood Diseases such as cancer usually result in deficient oxygen supplies to tissues LC/MS/MS deoxyhemoglobin MS/MS data 17 January 2019

37 GIST Fold-Change Results from Normal vs. Diseased Serum
Identifications from a single data-dependent LC/MS/MS experiment 17 January 2019

38 Conclusions GIST is an efficient global peptide isotopic labeling technique that can be used for protein expression analysis and can be used with many selections of chromatography GISTool is a very successful software algorithm for analyzing any isotope-labeled data generated by high-resolution MS (ICAT, etc.-not just GIST) Since GIST is capable of easily obtaining direct fold changes, PTM and/or post-translational processing experiments can be designed Peptide fractionation will be necessary for complex samples since isotopic-labeling strategies double the complexity of samples 17 January 2019


Download ppt "Xiang Zhang Bindley Bioscience Center Purdue University"

Similar presentations


Ads by Google