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Gene Recognition

Gene Recognition. Gene structure. intron1. intron2. exon2. exon3. exon1. transcription. splicing. translation. Codon: A triplet of nucleotides that is converted to one amino acid. exon = protein-coding intron = non-coding. Needles in a Haystack. Gene Finding. EXON. EXON. EXON.

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Gene Recognition

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  1. Gene Recognition

  2. Gene structure intron1 intron2 exon2 exon3 exon1 transcription splicing translation Codon: A triplet of nucleotides that is converted to one amino acid exon = protein-coding intron = non-coding

  3. Needles in a Haystack

  4. Gene Finding EXON EXON EXON EXON EXON • Classes of Gene predictors • Ab initio • Only look at the genomic DNA of target genome • De novo • Target genome + aligned informant genome(s) • EST/cDNA-based & combined approaches • Use aligned ESTs or cDNAs + any other kind of evidence Human tttcttagACTTTAAAGCTGTCAAGCCGTGTTCTAGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtaccta Macaque tttcttagACTTTAAAGCTGTCAAGCCGTGTTCTAGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtaccta Mouse ttgcttagACTTTAAAGTTGTCAAGCCGCGTTCTTGATAAAATAAGTATTGGACAACTTGTTAGTCTTCTTTCCAACAACCTGAACAAATTTGATGAAgtatgta-cca Rat ttgcttagACTTTAAAGTTGTCAAGCCGTGTTCTTGATAAAATAAGTATTGGACAACTTATTAGTCTTCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtaccca Rabbit t--attagACTTTAAAGCTGTCAAGCCGTGTTCTAGATAAAATAAGTATTGGGCAACTTATTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtaccta Dog t-cattagACTTTAAAGCTGTCAAGCCGTGTTCTGGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTCGATGAAgtatgtaccta Cow t-cattagACTTTGAAGCTATCAAGCCGTGTTCTGGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgta-cta Armadillo gca--tagACCTTAAAACTGTCAAGCCGTGTTTTAGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtgccta Elephant gct-ttagACTTTAAAACTGTCCAGCCGTGTTCTTGATAAAATAAGTATTGGACAACTTGTCAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtatcta Tenrectc-cttagACTTTAAAACTTTCGAGCCGGGTTCTAGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtatcta Opossum ---tttagACCTTAAAACTGTCAAGCCGTGTTCTAGATAAAATAAGCACTGGACAGCTTATCAGTCTCCTTTCCAACAATCTGAACAAGTTTGATGAAgtatgtagctg Chicken ----ttagACCTTAAAACTGTCAAGCAAAGTTCTAGATAAAATAAGTACTGGACAATTGGTCAGCCTTCTTTCCAACAATCTGAACAAATTCGATGAGgtatgtt--tg

  5. Signals for Gene Finding • Regular gene structure • Exon/intron lengths • Codon composition • Motifs at the boundaries of exons, introns, etc. Start codon, stop codon, splice sites • Patterns of conservation • Sequenced mRNAs • (PCR for verification)

  6. Next Exon: Frame 0 Next Exon: Frame 1

  7. Exon and Intron Lengths

  8. Nucleotide Composition • Base composition in exons is characteristic due to the genetic code Amino Acid SLCDNA Codons Isoleucine I ATT, ATC, ATA Leucine L CTT, CTC, CTA, CTG, TTA, TTG Valine V GTT, GTC, GTA, GTG Phenylalanine F TTT, TTC Methionine M ATG Cysteine C TGT, TGC Alanine A GCT, GCC, GCA, GCG Glycine G GGT, GGC, GGA, GGG Proline P CCT, CCC, CCA, CCG Threonine T ACT, ACC, ACA, ACG Serine S TCT, TCC, TCA, TCG, AGT, AGC Tyrosine Y TAT, TAC Tryptophan W TGG Glutamine Q CAA, CAG Asparagine N AAT, AAC Histidine H CAT, CAC Glutamic acid E GAA, GAG Aspartic acid D GAT, GAC Lysine K AAA, AAG Arginine R CGT, CGC, CGA, CGG, AGA, AGG

  9. atg caggtg ggtgag cagatg ggtgag cagttg ggtgag caggcc ggtgag tga

  10. Splice Sites (http://www-lmmb.ncifcrf.gov/~toms/sequencelogo.html)

  11. intron exon exon intron intergene exon intergene HMMs for Gene Recognition First Exon State Intron State Intergene State GTCAGATGAGCAAAGTAGACACTCCAGTAACGCGGTGAGTACATTAA

  12. intron exon exon intron intergene exon intergene HMMs for Gene Recognition First Exon State Intron State Intergene State GTCAGATGAGCAAAGTAGACACTCCAGTAACGCGGTGAGTACATTAA

  13. Exon1 Exon2 Exon3 Duration HMMs for Gene Recognition PSTOP(xi-4…xi+3) Duration d j+2 T A A T A T G T C C A C G G G T A T T G A G C A T T G T A C A C G G G G T A T T G A G C A T G T A A T G A A iPINTRON(xi | xi-1…xi-w) P5’SS(xi-3…xi+4) PEXON_DUR(d)iPEXON((i – j + 2)%3)) (xi | xi-1…xi-w)

  14. Genscan • Burge, 1997 • First competitive HMM-based gene finder, huge accuracy jump • Only gene finder at the time, to predict partial genes and genes in both strands Features • Duration HMM • Four different parameter sets • Very low, low, med, high GC-content

  15. Using Comparative Information

  16. Using Comparative Information • Hox cluster is an example where everything is conserved

  17. Genes Intergenic Separation Mutations Gaps Frameshifts 30% 1.3% 0.14% 58% 14% 10.2%    2-fold 10-fold 75-fold Patterns of Conservation

  18. Comparison-based Gene Finders • Rosetta, 2000 • CEM, 2000 • First methods to apply comparative genomics (human-mouse) to improve gene prediction • Twinscan, 2001 • First HMM for comparative gene prediction in two genomes • SLAM, 2002 • Generalized pair-HMM for simultaneous alignment and gene prediction in two genomes • NSCAN, 2006 • Best method to-date based on a phylo-HMM for multiple genome gene prediction

  19. Twinscan • Align the two sequences (eg. from human and mouse) • Mark each human base as gap ( - ), mismatch ( : ), match ( | ) New “alphabet”: 4 x 3 = 12 letters • = { A-, A:, A|, C-, C:, C|, G-, G:, G|, U-, U:, U| } • Run Viterbi using emissions ek(b) where b  { A-, A:, A|, …, T| } Emission distributions ek(b) estimated from real genes from human/mouse eI(x|) < eE(x|): matches favored in exons eI(x-) > eE(x-): gaps (and mismatches) favored in introns Example Human: ACGGCGACGUGCACGU Mouse: ACUGUGACGUGCACUU Alignment: ||:|:|||||||||:|

  20. SLAM – Generalized Pair HMM Exon GPHMM 1.Choose exon lengths (d,e). 2.Generate alignment of length d+e. e d

  21. NSCAN—Multiple Species Gene Prediction • GENSCAN • TWINSCAN • N-SCAN Target GGTGAGGTGACCAAGAACGTGTTGACAGTA Target GGTGAGGTGACCAAGAACGTGTTGACAGTA Conservation |||:||:||:|||||:||||||||...... sequence Target GGTGAGGTGACCAAGAACGTGTTGACAGTA Informant1 GGTCAGC___CCAAGAACGTGTAG...... Informant2 GATCAGC___CCAAGAACGTGTAG...... Informant3 GGTGAGCTGACCAAGATCGTGTTGACACAA ... Target sequence: Informant sequences (vector): Joint prediction (use phylo-HMM):

  22. NSCAN—Multiple Species Gene Prediction H X C Y Y H Z X Z M R C M R

  23. Performance Comparison NSCAN human/mouse > Human/multiple informants GENSCAN Generalized HMM Models human sequence TWINSCAN Generalized HMM Models human/mouse alignments N-SCAN Phylo-HMM Models multiple sequence evolution

  24. CONTRAST • 2-level architecture • No Phylo-HMM that models alignments Human tttcttagACTTTAAAGCTGTCAAGCCGTGTTCTAGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtaccta Macaque tttcttagACTTTAAAGCTGTCAAGCCGTGTTCTAGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtaccta Mouse ttgcttagACTTTAAAGTTGTCAAGCCGCGTTCTTGATAAAATAAGTATTGGACAACTTGTTAGTCTTCTTTCCAACAACCTGAACAAATTTGATGAAgtatgta-cca Rat ttgcttagACTTTAAAGTTGTCAAGCCGTGTTCTTGATAAAATAAGTATTGGACAACTTATTAGTCTTCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtaccca Rabbit t--attagACTTTAAAGCTGTCAAGCCGTGTTCTAGATAAAATAAGTATTGGGCAACTTATTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtaccta Dog t-cattagACTTTAAAGCTGTCAAGCCGTGTTCTGGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTCGATGAAgtatgtaccta Cow t-cattagACTTTGAAGCTATCAAGCCGTGTTCTGGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgta-cta Armadillo gca--tagACCTTAAAACTGTCAAGCCGTGTTTTAGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtgccta Elephant gct-ttagACTTTAAAACTGTCCAGCCGTGTTCTTGATAAAATAAGTATTGGACAACTTGTCAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtatcta Tenrectc-cttagACTTTAAAACTTTCGAGCCGGGTTCTAGATAAAATAAGTATTGGACAACTTGTTAGTCTCCTTTCCAACAACCTGAACAAATTTGATGAAgtatgtatcta Opossum ---tttagACCTTAAAACTGTCAAGCCGTGTTCTAGATAAAATAAGCACTGGACAGCTTATCAGTCTCCTTTCCAACAATCTGAACAAGTTTGATGAAgtatgtagctg Chicken ----ttagACCTTAAAACTGTCAAGCAAAGTTCTAGATAAAATAAGTACTGGACAATTGGTCAGCCTTCTTTCCAACAATCTGAACAAATTCGATGAGgtatgtt--tg X SVM SVM CRF a b a b Y

  25. CONTRAST

  26. CONTRAST - Features • log P(y | x) ~ wTF(x, y) • F(x, y) = if(yi-1, yi, i, x) • f(yi-1, yi, i, x): • 1{yi-1 = INTRON, yi = EXON_FRAME_1} • 1{yi-1 = EXON_FRAME_1, xhuman,i-2,…, xhuman,i+3 = ACCGGT) • 1{yi-1 = EXON_FRAME_1, xhuman,i-1,…, xdog,i+1 = ACC, AGC) • (1-c)1{a<SVM_DONOR(i)<b} • (optional) 1{EXON_FRAME_1, EST_EVIDENCE}

  27. CONTRAST – SVM accuracies SN SP • Accuracy increases as we add informants • Diminishing returns after ~5 informants

  28. CONTRAST - Decoding Viterbi Decoding: maximize P(y | x) Maximum Expected Boundary Accuracy Decoding: maximize i,B 1{yi-1, yi is exon boundary B} Accuracy(yi-1, yi, B | x) Accuracy(yi-1, yi, B | x) = P(yi-1, yi is B | x) – (1 – P(yi-1, yi is B | x))

  29. CONTRAST - Training Maximum Conditional Likelihood Training: maximize L(w) = Pw(y | x) Maximum Expected Boundary Accuracy Training: ExpectedBoundaryAccuracy(w) = i Accuracyi Accuracyi = B1{(yi-1, yi is exon boundary B} Pw(yi-1, yi is B | x) - B’ ≠ B P(yi-1, yi is exon boundary B’ | x)

  30. Performance Comparison Human Macaque Mouse Rat Rabbit Dog Cow Armadillo Elephant Tenrec Opossum Chicken De Novo EST-assisted

  31. Performance Comparison

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