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Peptide Identification Statistics Pin the tail on the donkey?

Peptide Identification Statistics Pin the tail on the donkey?. US HUPO: Bioinformatics for Proteomics Nathan Edwards – March 12, 2005. Peptide Identification. Peptide fragmentation by CID is poorly understood MS/MS spectra represent incomplete information about amino-acid sequence

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Peptide Identification Statistics Pin the tail on the donkey?

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  1. Peptide Identification StatisticsPin the tail on the donkey? US HUPO: Bioinformatics for Proteomics Nathan Edwards – March 12, 2005

  2. Peptide Identification • Peptide fragmentation by CID is poorly understood • MS/MS spectra represent incomplete information about amino-acid sequence • I/L, K/Q, GG/N, … • Correct identifications don’t come with a certificate! US HUPO: Bioinformatics for Proteomics

  3. Peptide Identification • High-throughput workflows demand we analyze all spectra, all the time. • Spectra may not contain enough information to be interpreted correctly • …bad static on a cell phone • Peptides may not match our assumptions • …its all Greek to me • “Don’t know” is an acceptable answer! US HUPO: Bioinformatics for Proteomics

  4. Peptide Identification We can’t prove we are right… …so can we prove we aren’t wrong? US HUPO: Bioinformatics for Proteomics

  5. Peptide Identification We can’t prove we are right… …so can we prove we aren’t wrong? NO! US HUPO: Bioinformatics for Proteomics

  6. Peptide Identification We can’t prove we are right… …so can we prove we aren’t wrong? The best we can do is to show our answer is better than guessing! NO! US HUPO: Bioinformatics for Proteomics

  7. Better than guessing… • Better implies comparison • Score or measure of degree of success • Guessing implies randomness • Probability and statistics US HUPO: Bioinformatics for Proteomics

  8. Pin the tail on the donkey… US HUPO: Bioinformatics for Proteomics

  9. Throwing darts One at a time Blindfolded Identically distributed? Uniform distribution? Mutually exclusive? Independent? Pr [ Dart hits x ] = 0.05 Probability Concepts US HUPO: Bioinformatics for Proteomics

  10. Probability Concepts Throwing darts • One at a time • Blindfolded • Three darts Pr [Hitting 20 3 times] = 0.05 * 0.05 * 0.05 Pr [Hit 20 at least twice] = 0.007125 + 0.000125 US HUPO: Bioinformatics for Proteomics

  11. Probability Concepts US HUPO: Bioinformatics for Proteomics

  12. Probability Concepts Throwing darts • One at a time • Blindfolded • Three darts Pr [Hitting evens 3 times] = Pr [Hitting 1-10 3 times] = 0.5 * 0.5 * 0.5 Pr [Evens at least twice] = 0.5 US HUPO: Bioinformatics for Proteomics

  13. Probability Concepts US HUPO: Bioinformatics for Proteomics

  14. Probability Concepts Throwing darts • One at a time • Blindfolded • 100 darts Pr [Hitting 20 3 times] = 0.139575 Pr [Hit 20 at least twice] = 0.9629188 US HUPO: Bioinformatics for Proteomics

  15. Probability Concepts US HUPO: Bioinformatics for Proteomics

  16. Match Score • Dartboard is peaks in a spectrum • Each dart is a peptide fragment • Pr [ Match ≥ s peaks ] = Binomial( p , n ) ≈ Poisson( p n ), for small p and large n p is prob. of fragment / peak match, n is number of fragments US HUPO: Bioinformatics for Proteomics

  17. Match Score Theoretical distribution • Used by OMSSA • Proposed, in various forms, by many. • Probability of fragment / peak match • IID (independent, identically distributed) • Based on match tolerance • Can use fragments or peaks as darts! US HUPO: Bioinformatics for Proteomics

  18. Match Score Theoretical distribution assumptions • Each dart is independent • Peaks are not “related” • Each dart is identically distributed • Chance of fragment / peak match is the same for all peaks and fragments US HUPO: Bioinformatics for Proteomics

  19. Tournament Size 100 people 1000 people 100 Darts, # 20’s 100000 people 10000 people US HUPO: Bioinformatics for Proteomics

  20. Tournament Size 100 people 1000 people 100 Darts, # 20’s 100000 people 10000 people US HUPO: Bioinformatics for Proteomics

  21. Number of Trials • Tournament size == number of trials • Number of peptides tried • Related to sequence database size • Probability that a random match score is ≥ s • 1 – Pr [ all match scores < s ] • 1 – Pr [ match score < s ] Trials (*) • Assumes IID! • Expect value • E = Trials * Pr [ match ≥ s ] • Corresponds to Bonferroni bound on (*) US HUPO: Bioinformatics for Proteomics

  22. Better Dart Throwers US HUPO: Bioinformatics for Proteomics

  23. Better Random Models • Comparison with completely random model isn’t really fair • Match scores for real spectra with real peptides obey rules • Even incorrect peptides match with non-random structure! US HUPO: Bioinformatics for Proteomics

  24. Better Random Models • Want to generate random fragment masses (darts) that behave more like the real thing: • Some fragments are more likely than others • Some fragments depend on others • Theoretical models can only incorporate this structure to a limited extent. • Cannot model the properties of a particular peptide! • Must capture behavior of fragments in general US HUPO: Bioinformatics for Proteomics

  25. Better Random Models • Generate random peptides • Real looking fragment masses • No theoretical model! • Must use empirical distribution • Usually require they have the correct precursor mass • Score function can model anything we like! US HUPO: Bioinformatics for Proteomics

  26. Better Random Models Fenyo & Beavis, Anal. Chem., 2003 US HUPO: Bioinformatics for Proteomics

  27. Better Random Models Fenyo & Beavis, Anal. Chem., 2003 US HUPO: Bioinformatics for Proteomics

  28. Better Random Models • Truly random peptides don’t look much like real peptides • Just use peptides from the sequence database! • Caveats: • Correct peptide (non-random) may be included • Peptides are not independent • Reverse sequence avoids only the first problem US HUPO: Bioinformatics for Proteomics

  29. Extrapolating from the Empirical Distribution Fenyo & Beavis, Anal. Chem., 2003 US HUPO: Bioinformatics for Proteomics

  30. Extrapolating from the Empirical Distribution • Often, the empirical shape is consistent with a theoretical model Fenyo & Beavis, Anal. Chem., 2003 Geer et al., J. Proteome Research, 2004 US HUPO: Bioinformatics for Proteomics

  31. Peptide Prophet • From the Institute for Systems Biology • Keller et al., Anal. Chem. 2002 • Re-analysis of SEQUEST results • Spectra are trials (NOT peptides!) • Assumes that many of the spectra are not correctly identified US HUPO: Bioinformatics for Proteomics

  32. Peptide Prophet Keller et al., Anal. Chem. 2002 Distribution of spectral scores in the results US HUPO: Bioinformatics for Proteomics

  33. Peptide Prophet • Assumes a bimodal distribution of scores, with a particular shape • Ignores database size • …but it is included implicitly • Like empirical distribution for peptide sampling, can be applied to any score function • Can be applied to any search engines’ results US HUPO: Bioinformatics for Proteomics

  34. Peptide Prophet • Caveats • Are spectra scores sampled from the same distribution? • Is there enough correct identifications for second peak? • Are spectra independent observations? • Are distributions appropriately shaped? • Huge improvement over raw SEQUEST results US HUPO: Bioinformatics for Proteomics

  35. Peptides to Proteins Nesvizhskii et al., Anal. Chem. 2003 US HUPO: Bioinformatics for Proteomics

  36. Peptides to Proteins US HUPO: Bioinformatics for Proteomics

  37. Peptides to Proteins • A peptide sequence may occur in many different protein sequences • Variants, paralogues, protein families • Separation, digestion and ionization is not well understood • Proteins in sequence database are extremely non-random, and very dependent US HUPO: Bioinformatics for Proteomics

  38. Peptides to Proteins US HUPO: Bioinformatics for Proteomics

  39. Peptides to Proteins • Mascot • Protein score is sum of peptide scores • Assumes peptide identifications are independent! • SEQUEST • Keeps only one of the proteins for each peptide? US HUPO: Bioinformatics for Proteomics

  40. Peptides to Proteins • Peptide Prophet • Nesvizhskii, et al. Anal. Chem 2003 • Models probability that a protein is correct based on • Probability that its peptides are correct • Models probability that a peptide is correct based on • Probability that its proteins are correct • Proteins with one high-probability peptide are not eliminated • …but are down-weighted • Assumes identification probabilities from the same protein are independent (like Mascot) US HUPO: Bioinformatics for Proteomics

  41. Peptides to Proteins • Best available method, to date, is Protein Prophet. • The problem will only get worse, as we search variants and isoform sequences • Proteins do not have a single sequence! • Peptide identification is not protein identification! US HUPO: Bioinformatics for Proteomics

  42. Publication Guidelines US HUPO: Bioinformatics for Proteomics

  43. Publication Guidelines • Computational parameters • Spectral processing • Sequence database • Search program • Statistical analysis • Number of peptides per protein • Each peptide sequence counts once! • Multiple forms of the same peptide count once! US HUPO: Bioinformatics for Proteomics

  44. Publication Guidelines • Single-peptide proteins must be explicitly justified by • Peptide sequence • N and C terminal amino-acids • Precursor mass and charge • Peptide Scores • Multiple forms of the peptide counted once! • Biological conclusions based on single-peptide proteins must show the spectrum US HUPO: Bioinformatics for Proteomics

  45. Publication Guidelines • More stringent requirements for PMF data analysis • Similar to that for tandem mass spectra • Management of protein redundancy • Peptides identified from a different species? • Spectra submission encouraged US HUPO: Bioinformatics for Proteomics

  46. Summary • Could guessing be as effective as a search? • More guesses improves the best guess • Better guessers help us be more discriminating • Independent observations only count if they are independent! • Peptide to proteins is not as simple as it seems • Publication guidelines reflect sound statistical principles. US HUPO: Bioinformatics for Proteomics

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