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Annotating genomes using proteomics data Andy Jones Department of Preclinical Veterinary Science.

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Presentation on theme: "Annotating genomes using proteomics data Andy Jones Department of Preclinical Veterinary Science."— Presentation transcript:

1 Annotating genomes using proteomics data Andy Jones Department of Preclinical Veterinary Science

2 Overview Genome annotation – Current informatics methods – Experimental data – How good are we at annotating genomes? Proteome data for genome annotation – Study on Toxoplasma – Challenges – Proposed solutions

3 Summary: 780 “completed” genomes; 734 “draft” assembly; 842 “in progress” Total: 2356 (1996 prokaryote, 360 eukaryote) Genome sequencing is just a starting point to understanding genes / proteins

4 Annotating eukaryotic genomes Genome annotation: – Find start codons / transcriptional initiation – Recognise splice acceptor and donor sequences – Stop codon – Predict alternative splicing... Start codon Exon 1Exon 2Exon 3Exon 4 Stop codon Genomic DNA mRNA

5 Computational gene prediction De novo prediction – single genome – Trained with “typical” gene structures - learn exon-intron signals, translation initiation and termination signals e.g. Markov models – Many different predictions scored based on training set of known genes Multiple genome – Compare confirmed gene sequences from other species – Coding regions more highly conserved  conservation indicates gene position – Pattern searching: Higher mutation rate of bases separated in multiples of three (mutations in 3 rd position of codons are often silent) Experimental data also contribute to many genome projects New methods weigh evidence from a variety of sources – Attempting to reproduce how a human annotator would work Brent, Nat Rev Genet. 2008 Jan;9(1):62-73

6 Experimental corroboration of models Expressed Sequence Tags – Simple to obtain large volumes of data – sequence randomly from cDNA libraries – Problems: Data sets can contain unprocessed transcripts (do not always confirm splicing) Rarely cover 5’ end of gene Generally “low-quality” sequences High-throughput sequencing – “Next-generation” sequencers capable of directly sequencing mRNA – Likely to become more widely used in the future Proteome data (peptide sequence data)

7 How good are gene models? Plasmodium falciparum (causative agent malaria) – genome sequenced in 2002, undergone considerable curation of gene models Recent article: cDNA study of P. falciparum Suggests ~25% of genes in Plasmodium falciparum are incorrect (85 genes out of 356 sampled) Majority of errors are in splice junctions (intron- exon boundaries) What does this mean for other genomes...? – Likely that high percentage of gene sequences are incorrect! BMC Genomics. 2007 Jul 27;8:255.

8 Proteome data for genome annotation Motivation for genome annotation: – Can rule out that transcripts are non protein-coding – Large volumes of proteome data often collected for other purposes – Certain types of proteome data able to confirm the start codon of genes (difficult by other methods) – Even where considerable ESTs / cDNA sequencing has been performed, proteins can be detected with no corresponding EST evidence

9 Proteogenomic study of Toxoplasma gondii Proteome study of Toxoplasma gondii using three complementary techniques – parasite of clinical significance related to Plasmodium Study aims: Identify as many components of the proteome as possible Relate peptide sequence data back to genome to confirm genes Relate protein expression data to transcriptional data (EST / microarray)

10 2D gel electrophoresis 1D gel electrophoresis Cut bands Trypsin digestion Cut gel spot Trypsin digestion Fractions Mass spectrometry Sequence database search (compare with theoretical spectra predicted for each peptide in DB) Liquid chromatography Peptides

11 Database search strategy ToxoDB 60MB genome sequence “Official” gene models Alternative gene models predicted by gene finders = DNA sequence database = amino acid sequence database ORFs predicted in a 6 frame translation Concatenate databases Search all spectra Identify peptides and proteins Align peptide sequences back to corresponding genomic region

12 Five exon gene; incomplete agreement between different gene models Peptide evidence for all 5 exons and 2 introns out of 4 Note: Can only provide positive evidence, no peptides matched to 5’ and 3’ termini of gene model

13 -Appears to be additional exon at 5’ -None of GLEAN, TwinScan or TigrScan algorithms appears to have made correct prediction

14 ORF/ part of TgGlimmerHMM sequence: VVGGFSSNFLSFFSVIITSVKMSDAEDVTFETA DAGASHTYPMQAGAIKKNGFVMLKGNPCKV VDYSTSKTGKHGHAKAHIVGLDIFTGKKYED VCPTSHNMEVPNVKRSEFQLIDLSDDGFCTLL LENGETKDDLMLPKDSEGNLDEVATQVKNLF TDGKSVLVTVLQACGKEKIIASKEL 50.m5694 sequence: MVEGVYSSFEAMIFSLPHACRTVTRT DLPSVKRFLTCVATSSKFPSESLGSIK SSFVSPFSRSSVQKPSSDKSINWNSDL FTFGTSML - All peptides matched to gene models on opposite strand

15 Study outcomes Protein evidence for approximately 1/3 of predicted genes (2250 proteins) Around 2500 splicing events confirmed – Peptides aligned across intron-exon boundaries Around 400 protein IDs appear to match alternative gene models Genome database (ToxoDB) hosts peptide sequences aligned against gene models Can we use informatics to improve this strategy...? Xia et al. (2008) Genome Biology,9(7),pp.R11

16 Challenges of proteogenomics Main informatics challenge: – A protein can usually only be identified if the gene sequence has been correctly predicted from the genome – In effect, would like to use MS data directly for gene discovery – But... searching a six frame genome translation is problematic All peptide and protein identifications are probabilistic – False positive rate is proportional to search database size On average only ~10-20% of spectra identify a peptide – Need methods that can exploit the rest of the meaningful spectra When gene models change, protein identifications are out of date – No dynamic interaction between proteome and genome data

17 Automated re-annotation pipeline Planned improvements to the informatics workflow: 1.Re-querying pipeline – each time gene models change, all mass spectra are automatically re- queried 2.Integrate peptide evidence directly into gene finding software 3.Maximising the number of informative mass spectra 4.Attempt to optimise algorithms for de novo sequencing of peptides 5.N-terminal proteomics - Could be used to confirm gene initiation point

18 Spectra Multiple database search engines Official gene set Confirmed official model Multiple database search engines Modified de novo algorithms Novel ORF, splice junction Promote alternative model Stage 1 Stage 2 Gene Finder Proteomic evidence Alternative gene models Genome sequence Spectra searched in series Peptide evidence confirming official gene, alternative model, new ORF: Direct flow back to modified gene finder Produce new set of predictions Iteratively improve number of spectra identified In each iteration, fewer spectra flow on to stage 2 and 3 Stage 3

19 Combining evidence in gene finders Dynamically checking proposed gene models against peptide evidence Combining evidence from different gene finding algorithms In this case, probably no single algorithm appears to have correct model

20 Query spectra using different search engines Jones et al. Improving sensitivity in proteome studies by analysis of false discovery rates for multiple search engines. PROTEOMICS, in press (2008) Each search engine produces a different non-standard score of the quality of a match Developed a search engine independent score, based on analysis of false discovery rate Identifications made more search engines are scored more highly Can generate 35% more peptide identification than best single search engine Omssa X!Tandem Mascot Peptides Combined list Peptides OmssaX!Tandem Mascot Peptide identifications Rescoring Algorithm (FDR)

21 Conclusions Proteome data is able to confirm gene models are correct – Currently data under-exploited Challenges searching mass spec data directly against the genome for gene discovery Build re-querying pipeline – Iteratively improve gene models – Improve capabilities for using multiple search engines – Integrate peptide evidence directly into gene finders

22 Acknowledgments Data from Wastling lab: – Dong Xia, Sanya Sanderson, Jonathan Wastling ToxoDB at Upenn – David Roos, Brian Brunk Email: Andrew.jones@liv.ac.ukAndrew.jones@liv.ac.uk


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