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Displaying associations, improving alignments and gene sets at UCSC

Displaying associations, improving alignments and gene sets at UCSC. Jim Kent and the UCSC Genome Bioinformatics Group. Wellcome Trust Case Control Consortium rheumatoid arthritis data. Wellcome Trust Case Control Consortium rheumatoid arthritis data. Sort Genes to see candidates.

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Displaying associations, improving alignments and gene sets at UCSC

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  1. Displaying associations, improving alignments and gene sets at UCSC Jim Kent and the UCSC Genome Bioinformatics Group

  2. Wellcome Trust Case Control Consortium rheumatoid arthritis data

  3. Wellcome Trust Case Control Consortium rheumatoid arthritis data

  4. Sort Genes to see candidates

  5. Case control consortium rheumatoid arthritis data, type1 diabetes and bipolar disorder. National Institute of Mental Health bipolar disorder in US and Germanpopulations (different scale).

  6. In the long term we hope to import data from GAIN and dbGAP and other sources as well.

  7. 28-way multiple alignment Still based on Penn State/UCSC blastz/chain/net/multiz pipeline. Have added “syntenic” filtering for high coverage genomes and reciprocal-best filtering for 2x genomes to reduce artifacts from paralogs.

  8. PhyloP vs. PhastCons Existing conservation track uses PhastCons algorithm, which computes probability that a region is conserved. As more species are added this converges to 0 or 1. PhyloP track instead shows degree of conservation of a base

  9. UCSC Genes Goals • Include noncoding as well as coding genes • Increase sensitivity of gene set in general. • Increase coverage of alternative splice forms (but not too much). • Apply comparative genomics to protein (CDS) prediction. • Create permanent accessions for transcripts.

  10. Make graph Snap soft ends to hard end within 6 bp

  11. Extend soft ends to hard ends

  12. Consensus of soft ends weighted 3/4 of way towards long

  13. Weigh edges by number of transcripts that make them 1 3 3 3 2 2 4 1 3 1

  14. 1 3 3 3 2 2 4 1 3 1 Make graphs from various other sources: exoniphy ests Mousesplicing Merge in weights from other graphs: 2 4 4 5 3 5 6 3 5 3

  15. Initial transcripts (ordered by exon count) A B D C E 2 4 4 5 3 5 3 6 5 3 Walk graph to get nonredundant transcripts, starting withfirst transcript and continuing until all edges in graph of weight above a threshold are emitted. A

  16. A B D C E 2 4 4 5 3 5 3 6 5 3 Walk graph to get nonredundant transcripts, starting withfirst transcript and continuing until all edges in graph of weight above a threshold are emitted. A

  17. A B D C E 2 4 4 5 3 5 3 6 5 3 Walk graph to get nonredundant transcripts, starting withfirst transcript and continuing until all edges in graph of weighted above a threshold are emitted. >= 3 A >= 2 B

  18. A B D C E 2 4 4 5 3 5 3 6 5 3 Walk graph to get nonredundant transcripts, starting withfirst transcript and continuing until all edges in graph of weighted above a threshold are emitted. >= 3 A >= 2 B DONE

  19. Evidence type and weights Minimum total weight of 3 for spliced transcripts, 4 for unspliced.

  20. Assigning Coding Regions • Take top scoring ORF using a program, txCdsPredict, that considers: • Length of ORF • Kozak consensus sequence • Nonsense mediated decay • Upstream open reading frames • Length of orthologous ORF in other species. • txCdsPredict agrees with RefSeq reviewed ~96% of the time.

  21. Gene Statistics Transcript Statistics

  22. Coding Non-coding Near-coding • 38% of UCSC noncoding genes are < 200 bp transcripts primarily of known types such as snoRNAs, piRNAs, miRNAs etc. • 62% are long, with a size distribution much like coding. • (For Ensemble only 21% of noncoding are long)

  23. Long noncoding genes have lower expression levels Coding Non coding Absolute expression values from Affymetrix human exon arrays

  24. Other characteristics of long noncoding • Long noncoding have lower tissue specificity. • Poor conservation. Average phastCons score is 0.09 for long noncoding vs 0.73 for coding. • BLAST analysis suggests 20% of long noncoding may be transcribed pseudogenes. • Conclusion - long noncoding but transcribed genes are slippery. Most are likely nonfunctional. • Xist is poorly conserved overall but has some peaks and is reasonably well expressed.

  25. Acknowledgements • Programming and analysis: • Galt Barber - Genome Graphs extensions • Webb Miller Lab - Alignments • Adam Seipel - Evolutionary analysis • Dorota Retelska - UCSC noncoding genes • Data: • Sanger, Wash U, Broad, JGI, NCBI, EBI, Affy • Contributors to scientific databases worldwide • Funding: • NHGRI, NCI, HHMI, State of California

  26. The End

  27. UCSC Genes Overall Pipeline • Start with genomic/RNA alignments • Remove antibody fragments • Clean alignments and project to genome • Cluster into splicing graph • Add EST, Exoniphy, OrthoSplice info. • Walk unique well supported transcripts out of graph. • Assign coding regions (CDS) to transcripts. • Classify into coding, antisense, noncoding. • Assign accessions.

  28. UCSC Genes Overall Pipeline • Start with genomic/RNA alignments • Remove antibody fragments • Clean alignments and project to genome • Cluster into splicing graph • Add EST, Exoniphy, OrthoSplice info. • Walk unique well supported transcripts out of graph. • Assign coding regions (CDS) to transcripts. • Classify into coding, antisense, noncoding. • Assign accessions.

  29. Classifying transcripts • Coding: CDS survives trimming stage • Near-coding: overlap coding by at least 20 bases on same strand • Near-coding junk: near-coding transcripts that show signs of incomplete splicing. These are removed. • Antisense: overlap coding by at least 20 bases on opposite strand • Noncoding: other transcripts

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