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Two bioinformatics applications of dynamic Bayesian networks
William Stafford Noble Department of Genome Sciences Department of Computer Science and Engineering University of Washington
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Outline Segmenting genomic data Matching peptides to mass spectra
Background: DNA, chromatin and DNase I Simple solution Wavelets Hierarchical model Matching peptides to mass spectra Background: tandem mass spectrometry Modeling peptide fragmentation
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The human genome in vivo
Chromatin Fiber Gene ‘domains’ Nucleus Trans-factor complex DnaseI Hypersensitive Site Genes Genomic DNA Packaged into Chromatin
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Measuring chromatin accessibility
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A simple hidden Markov model
very ^ Open chromatin Closed chromatin Each state contains a single Gaussian. The model has six parameters (two transitions, two means, two standard deviations). The parameters are initialized randomly and trained in an unsupervised fashion via expectation-maximization. EM is re-started 100 times, and we select the parameters that yield the highest likelihood. The original data set is then segmented using either Viterbi or posterior decoding.
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1.5 megabases
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A problem, and two solutions
Problem: We are interested in phenomena occurring at multiple scales. Solution #1: Perform a wavelet smooth prior to HMM analysis. Solution #2: Build a more complex probability model.
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Change point model Four-state model:
major DNase hypersensitive site (DHS), minor DHS, intermediate sensitivity region, and insensitive region. Continuous mixture of Gaussians at each state. Gamma distribution of lengths within each region.
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Spanning the gaps Beginning in State 1 (Insensitive)
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Spanning the gaps Beginning in State 4 (Major DHS)
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Selecting the number of states
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Improved fit to the data
Insensitive Intermediate sensitivity Minor DHS Major DHS Each panel is a QQ plot of the difference between the observed residuals and the theoretical Gaussian.
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Capturing different scales
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Enrichment of biologically relevant features
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Future directions Many types of genomic data
Phylogenetic conservation scores Various histone modifications Replication timing, etc. Perform segmentions in multiple dimensions simultaneously. Assign statistical significance to observed segments.
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Shotgun proteomics Training PSMs Test PSMs Trained Model Evaluation
Probability Model PSM = peptide-spectrum match
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Peptide sequence influences peak height
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Bayesian network We model peptide fragmentation using a Bayesian network. Nodes represent random variables, and edges represent conditional dependencies. Each node stores a conditional probability table (CPT) giving Pr(node|parents). Is b-ion observed? b-ion intensity 1.00 0.00 no b-ion observed 0.75 0.25 b-ion observed intensity > 50% intensity < 50%
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Ion series modeled in a Markov chain
Is b-ion observed? Is b-ion observed? Is b-ion observed? Is b-ion observed? Is b-ion observed? b-ion intensity b-ion intensity b-ion intensity b-ion intensity b-ion intensity ~ PepHMM (Han et al., 2005).
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A more realistic model Is b-ion observed? b-ion intensity N-term AA
C-term AA Is ion detectable? Fractional m/z Is proton mobile?
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Ion series modeled in a Markov chain
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Vectors of log-odds ratios
Correct peptide-spectrum matches Incorrect peptide-spectrum matches
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Binary classifier
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Model Evaluation: Accuracy
Training PSMs Test PSMs Trained Model Evaluation Probability Model Model Redundant TP/FP Unique TP/FP Bayes Net 285/300, 95% 137/144, 95.1% SEQUEST 288/300, 96% 136/144, 94.4% InsPecT 274/300, 91.3% 131/144, 90.9%
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An incorrect identification
Bayes net: HQDETQDALNALDLLTNEK SEQUEST: LRPGAELLEGAHVGNFVEMK This peptide does not appear in E. coli, the organism from which this protein sample was derived. Blue = b and y, green = a, red = ammonia loss, magenta = water loss, sienna = +2
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Co-eluting peptides SEQUEST: AFPEAVLFIHPLDAK
Bayes net: DVFVHFSALQGNQFK SEQUEST: AFPEAVLFIHPLDAK Blue = b and y, green = a, red = ammonia loss, magenta = water loss, sienna = +2
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Future directions Build a single Bayesian network that includes all ion types. Produce more descriptive outputs from the Bayesian network for input to the classifier. Add more biophysical details to the model: chromatography retention time, a better mass-to-charge estimate, etc. Generate a better (larger, more accurate) gold standard data set.
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Acknowledgments DNase I hypersensitivity Wavelet analysis: Bob Thurman
John Stamatoyannopoulos Pete Sabo Scott Kuehn many others in the Stam lab Wavelet analysis: Bob Thurman Change point model Charles Lawrence Heng Lian William Thompson Mass spectrometry Aaron Klammer Jeff Bilmes Sheila Reynolds Michael MacCoss
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