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By: Manchikalapati Myerow Shivananda

Application of Hidden Markov Model for Sequence Analysis and Use for Predicting Protein Localization. By: Manchikalapati Myerow Shivananda Monday, April 14, 2003. Mathematical Modeling. Mathematical Modeling in biology and chemistry

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By: Manchikalapati Myerow Shivananda

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  1. Application of Hidden Markov Model for Sequence Analysis and Use for Predicting Protein Localization By: Manchikalapati Myerow Shivananda Monday, April 14, 2003

  2. Mathematical Modeling • Mathematical Modeling in biology and chemistry • Using probabilistic models • Bayes Theorem and Maximum Likelihood Theorem • Ex: HMM

  3. What is Markov Chain ? • A directed graph with a collection of states with transition probabilities. • Models a random process with finite states. • Markov Assumption – The chain is memory less and current state probability depends on previous state. This allows us to predict behavior.

  4. Hidden Markov Model • Hidden Markhov Model • A probabilistic model that is composed of states which are not observable events. • A statistical model that describes a probability distribution over a number of possible sequences. • HMM has the following components: • States • Symbol emission probabilities • State transition probabilities • Why Hidden? Only the symbol sequence that a hidden state emits is observable. • Protein Modeling using HMM.

  5. What is Hidden? in the Markov Model • Observed sequence is a probabilistic function of underlying Markov chain • In HMMs the state sequence is not uniquely determined by the observed symbol sequence, but must be inferred probabilistically from it.

  6. Definition of Profile • A profile is a description of the consensus of a multiple sequence alignment. Alignment Methods Position Specific Scoring System Position Independent (Pairwise alignment) Scoring System Ex: BLAST, FASTA

  7. Profile HMM • Is a linear state machine consisting of a series of nodes, each of which corresponds roughly to a position (column) in the alignment from which it was built. • The HMM will have a set of positions which would correspond to the columns in a multiple alignment and each column can have one of the three states: Insert, Delete and Match. Profile HMMs can be used to do sensitive database searching using statistical descriptions of a sequence family's consensus.

  8. Standard profile methods use heuristic methods. Standard profiles use the observed frequency itself to assign the score for that residue. Profile HMM vs Std Profiles • Profile HMMs have a formal probabilistic basis and have a consistent theory behind gap and insertion scores. • Profile HMMs apply a statistical method to estimate the true frequency of a residue at a given position in the alignment from its observed frequency. • In general, producing good profile HMMs requires less skill and manual intervention than producing good standard profiles.

  9. Three Algorithms of HMM • The Viterbi algorithm: get the most probable state sequence. • The Forward/Backward algorithm: score an observation sequence against a model. • Expectation/Maximization: get the parameters of the model from the data. For all HMM applications, the algorithms are fairly standard. Only the design of the model are different.

  10. Application of HMM • Gene finding • Chromosome identification • Protein applications include • Database searching • Homology detection • Ex:One could take a single sequence of interest, and query it against the model to determine if it contained certain domains of interest.

  11. HMM and its basic elements 1)Match States(M1,M2..) 2)Delete State(D1,D2…) 3)Insert States(I0,I1…) 4) Begin State 5)End State 6)Emmision Probabilities 7) Transition Probabilites 8) Parameters

  12. Problem at hand (given below)defines architecture(to the left) Finding Ungapped Motifs - BLOCKS Finding Multiple MotifsMETA-MEME Finding Protein Familes  ProfileHMMs(Krogh) HMMER2 architecture is used in SAM,HMMER. Problems “DEFINE” HMM Architecture

  13. HMM Profile alignment flow chart in Pfam

  14. Three Important Questions that HMM should answer • Scoring 1Q) How likely is a given sequence coming from the model? • Alignment 2Q)What is the optimal path for generating a given sequence • Training 3Q) Given a set of sequences how can you learn about the HMM parameters

  15. Q1)How likely is the given Seq (ACCY) coming from the model Answer Forward Algorithm • Prob(A in state I0) = 0.4*0.3=0.12 • Prob(C in state I1) = 0.05*0.06*0.5 = 0.015 • Prob(C in state M1) = 0.46*0.01= 0.005 • Prob(C in state M2) = (0.005*0.97) +(0.015*0.46)= .012 • Prob(Y in state I3) = .012*0.015*0.73*0.01 = 1.31x10-7 • Prob(Y in state M3) = .012*0.97*0.2 = 0.002

  16. Q2)What is the optimal path for generating a given seq(ACCY) Answer: Viterbi Algorithim 1. The probability that the amino acid A was generated by state I0 is computed and entered as the first element of the matrix. 2. The probabilities that C is emitted in state M1 (multiplied by the probability of the most likely transition to state M1 from state I0) and in state I1 (multiplied by the most likely transition to state I1 from state I0) are entered into the matrix element indexed by C and I1/M1. 3. The maximum probability, max(I1, M1), is calculated. 4. A pointer is set from the winner back to state I0. 5. Steps 2-4 are repeated until the matrix is filled. • Prob(A in state I0) = 0.4*0.3=0.12 • Prob(C in state I1) = 0.05*0.06*0.5 = .015 • Prob(C in state M1) = 0.46*0.01 = 0.005 • Prob(C in state M2) = 0.46*0.5 = 0.23 • Prob(Y in state I3) = 0.015*0.73*0.01 = .0001 • Prob(Y in state M3) = 0.97*0.23 = 0.22 • The most likely path through the model can now be found by following the back-pointers.

  17. The Learning Task given: – a model – a set of sequences (the training set) do: – find the most likely parameters to explain the training sequences the goal is find a model that generalizes well to sequences we haven’t seen before Answer: Baum-Welch(Forward Backward) Algorithm initialize parameters of model iterate until convergence – calculate the expected number of times each transition or emission is used – adjust the parameters to maximize the likelihood of these expected values 3Q)Given a set of sequences how do you learn about HMM params

  18. HMMER in the Workflow

  19. Tripartite structure of signal peptide

  20. Translocation of Signal Peptide and Signal Anchor signal peptide After translocation the signal peptide is cleaved off and the mature protein released, signal anchor The signal anchor is not cleaved off and the protein is anchored to the membrane

  21. Two HMM Models for Signal Peptides First Model: (Nielsen, H and Krogh A. Prediction of signal peptides and signal anchors by a hidden Markov model. Proc. Sixth Int. Conf on Intelligent Systems for Molecular Biology, 122-130. AAAI Press, 1998.) Model not based on Multiple sequence alignment (profile) Compare model to neural network in eukaryotes and prokaryotes

  22. The model used for signal peptides. The states in a shaded box are tied to each other.

  23. Combined Model • The model of signal anchors has only two types of states (grouped by the shaded boxes) apart from the Met state. • The final states shown in the shaded box are tied to each other, and model all residues not in a signal peptide or an anchor.

  24. Hidden Markov model (HMM) vs. neural network (NN) • Cleavage site location: percentage of signal peptide sequences where the cleavage site was placed correctly • Discrimination values: correlation coefficients (Mathews 1975). • Protein types: signal peptides (sig) cytoplasmic or nuclear—proteins (non-sec), and signal anchors (anc). • NN simple= S-score NN combined= Y-score

  25. Second model for Signal Peptide Barash S, Wang W, and Shi Y. Human secretory signal peptide description by hidden Markov model and generation of a strong artificial signal peptide for secreted protein expression. Biochem and Biophys Res Com 294, 835-842, 2002. • Profile HMM method using HMMER software

  26. Steps for Model Building with HMMER • N-terminal region of 416 non-redundant human secreted proteins • Training in hmmalign: all start Met aligned in first column, 406/416 cleavage sites aligned • Build model with MLL estimation (random model= Swiss Prot 34) • Evaluate alignment model: 416/416 start Met, 406/416 cleavage site, 416/416 h-region • Re-estimate HMM with maximum discrimination method

  27. Model Validation • Used hmmemit program to generate artificial sequences of variable bit scores • In vitro validation using secretion test plasmid constructs: using secretory alkP with native signalP replaced by HMM signal peptides, the signal strengths correlate with the bit scores (transcription or translation effect?) • Ranked signal strengths of known natural human secretory proteins: above average serum proteins such as albumin were found to have high bit scores

  28. Conclusion • HMM and its applicability to sequence analysis has been discussed • Two different HMM architectures for modeling the signal peptide have been shown • Both are able to perform the task of separating secreted proteins from cytoplasmic and nuclear proteins with excellent discrimination • Discrimination of signal peptides from signal anchors is a little less clean • Multiple modeling strategies may be beneficial depending on the nature of the query and available data for training

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