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Defining the transcriptional landscape of the yeast genome at nucleotide resolution

Defining the transcriptional landscape of the yeast genome at nucleotide resolution. Wolfgang Huber European Bioinformatics Institute (EBI) European Molecular Biology Laboratory (EMBL). A high-resolution map of transcription in the yeast genome. Wolfgang Huber EMBL - EBI.

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Defining the transcriptional landscape of the yeast genome at nucleotide resolution

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  1. Defining the transcriptional landscape of the yeast genome at nucleotide resolution Wolfgang Huber European Bioinformatics Institute (EBI) European Molecular Biology Laboratory (EMBL)

  2. A high-resolution map of transcription in the yeast genome Wolfgang Huber EMBL - EBI

  3. Genechip S. cerevisiae Tiling Array 4 bp tiling path over complete genome (12 M basepairs, 16 chromosomes) Sense and Antisense strands 6.5 Mio oligonucleotides 5 mm feature size manufactured by Affymetrix designed by Lars Steinmetz (EMBL & Stanford Genome Center)

  4. 3,039,046 perfect match probes 7,359 splice junction probes 127,813 YJM789 polymorphism probes 16,271 Tag3 barcode probes

  5. Samples • Genomic DNA • Poly-A RNA (double enriched) from exponential growth in rich media (RH6) • Total RNA from exponential growth in rich media (RH6) • 3 replicates each

  6. RNA Hybridization

  7. Before normalization

  8. Probe specific response normali-zation S/N 3.22 3.47 4.04 remove ‘dead’ probes 4.58 4.36

  9. Probe-specific response normalization siprobe specific response factor. Estimate taken from DNA hybridization data bi =b(si )probe specific background term. Estimation: for strata of probes with similar si, estimate b through location estimator of distribution of intergenic probes, then interpolate to obtain continuous b(s)

  10. Estimation of b: joint distribution of (DNA, RNA) values of intergenic PM probes unannotated transcripts log2 RNA intensity b(s) background log2 DNA intensity

  11. After normalization

  12. Segmentation One option: Moving window: simple, but estimates of transcript boundaries will be biased and depend on expression level Our solution: Fit a piecewise constant function, only parameter is average segment length change point

  13. Structural change model (SCM): piecewise constant functions t1,…, tS: change points Y: normalized intensities x: genomic coordinates mk: level of k-th segment

  14. Model fitting Minimize ... t1,…, tS: change points J: number of replicate arrays

  15. Maximization Naïve optimization has complexity ns, where n≈105 and s≈103. Fortunately, there is a dynamic programming algorithm with complexity O(n2), and good heuristic O(n): F. Picard, S.Robin, M. Lavielle, C. Vaisse, G. Celeux, JJ Daudin, BMC Bioinformatics (2005) Bai+Perron, Journal of Applied Econometrics (2003) Software: W. Huber, packagetilingArray, www.bioconductor.org A. Zeileis, package strucchange, CRAN

  16. Confidence Intervals Di level difference Qi no. data points per unit t Wi error variance (allowing serial correlations) true and estimated change points Vi(s) appropriately scaled and shifted Wiener process (Brownian motion) Bai and Perron, J. Appl. Econometrics 18 (2003)

  17. Segmentation Results 1. Compare to known 2. Discover new

  18. A closer look Splicing Transcribed introns Gray=redundant probes Unprecedented, strand specific resolution

  19. Mapping of UTRs

  20. UTR lengths for 2044 ORFs 68 nucleotides median On average 3’ UTRs are longer than 5’ UTRs No correlation between 3’ and 5’ lengths 91 nucleotides median

  21. Long 5' UTR including cotranscribed uORFs Mapped to precision of 9 bases to known

  22. Transcriptional architectures 921 ORFs were divided into at least two segments MET7- folylpolyglutamate synthetase, catalyzes extension of the glutamate chains of the folate coenzymes

  23. YCK2 GIM3 PCR product Operon-like structures 123 segments contained ORFs of more than one protein-coding gene YCK2 casein kinase I, involved in cytokinesis GIM3 tubulin binding, involved in microtubule biogenesis

  24. Transcription over active promoters Martens, J. A., Laprade, L. & Winston, F. Intergenic transcription is required to repress the Saccharomyces cerevisiae SER3 gene. Nature429, 571-574 (2004).

  25. Expressed Features 5654 ORFs with ≥ 7 unique probes 5104 (90%) detected above background (FDR=0.001) untranscribed: meiosis, sporulation, mating, sugar transport, vitamin metabolism 11,412,997 bp of unique sequence 75.2% density of prior annotation (either strand) 84.5% detected above background (") 16.2% of transcribed bp (exp growth in rich media) not yet annotated Fraction of transcribed basepairs

  26. Categorization of segments All segments Segments overlapping annotation Novel transcription Isolated Antisense Confidence filter >48 bp long reduced signal on both sides lower signal on opposite strand

  27. Novel Transcripts

  28. Antisense transcripts CBF1-bs CBF1: regulatory module involved in cell cycle and stress response; DNA replication and chromosome cycle; defects in growth in rich media

  29. Length and expression levels of segments

  30. Conservation of novel isolated Across four yeast species (S. cerevisiae, S. paradoxus, S. mikatae and S. bayanus ) Although some conserved, little overall sequence conservation Lack of protein coding signature

  31. Antisense and UTR length 3’ UTRs have more antisense than 5’ UTRs UTRs with antisense are longer than UTRs without

  32. Antisense transcripts • Cell wall • M phase of meiotic cell cycle • Transcriptional regulator • Monosaccharide transporter activity • (p<2x10-6)

  33. Antisense transcripts: GAC1

  34. Antisense transcripts: HOS4

  35. RNA mediated regulation • UTR lengths associated with function, localization, regulation • Antisense found predominantly to 3’ UTRs and longer UTRs • Antisense correlated with GO categories • Similar to patterns for miRNAs in other species Suggests a functional role for antisense in S. cerevisiae

  36. Cell Cycle Temperature sensitive cdc28 – arrest at G1 Monitored at 10 min intervals for 230 min in total (~3 cell cycles)

  37. G1 cyclin involved in regulation of the cell cycle; activates Cdc28p kinase to promote the G1 to S phase transition

  38. G1 cyclin involved in regulation of the cell cycle; activates Cdc28p kinase to promote the G1 to S phase transition; late G1 specific expression depends on transcription factor complexes, MBF (Swi6p-Mbp1p) and SBF (Swi6p-Swi4p)

  39. Cycling of novel transcript

  40. Cycling of antisense transcript

  41. cdc28 DPH1, Protein required, along with Dph2p, Kti11p, Jjj3p, and Dph5p, for synthesis of diphthamide, which is a modified histidine residue of translation elongation factor 2 Alpha factor arrest

  42. R package tilingArray contains segmentation algorithm DNA reference normalization along-genome plots vignettes to reproduce the plots shown here

  43. Data is available o from EBI's microarray database ArrayExpress: www.ebi.ac.uk/arrayexpress acc.no.: E-TABM-14 o from Bioconductor, data package davidTiling

  44. Conclusions o Conventional microarrays: measure transcript levels o High resolution tiling arrays: also transcript structure introns, exons transcription start & stop sites overlapping populations of transcripts non-coding RNA: UTRs, ncRNAs, antisense o Probe-response normalization: make signal comparable across probes o Model-based segmentation method with exact algorithm, including confidence intervals o Genome-wide evidence for association of non-coding RNA (antisense, UTRs) with function of the corresponding genes

  45. Further computational challenges o Modelling of (linear) ramps in addition to piecewise constant segments o Sequence-based background correction and gain factor modeling (no need for DNA reference hybe?) o Biological interpretation of confidence intervals; non-asymptotic (resampling-based?) methods? o Multiple conditions and time-courses - discovery and testing for differential segment start and end

  46. Acknowledgements Lars Steinmetz EMBL Heidelberg & Lior David, Curt Palm Stanford Genome Tech. Center Marina Granovskaia EMBL Heidelberg Matt Ritchie, Jörn Tödling, Lee Bofkin, Nick Goldman EMBL-EBI Cambridge Bionductor project Robert Gentleman Ben Bolstad Vince Carey Paul Murrell Rafael Irizarry Achim Zeileis

  47. Reverse transcription artifacts mRNA The array measures the sum of cDNA molecules present at each probe Filtered segments: 234 Isolated and 193 Antisense

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