1 / 57

Zoology 2005 Part 2

Zoology 2005 Part 2 Richard Mott Inbred Mouse Strain Haplotype Structure When the genomes of a pair of inbred strains are compared, we find a mosaic of segments of identity and difference (Wade et al, Nature 2002).

jaden
Download Presentation

Zoology 2005 Part 2

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Zoology 2005 Part 2 Richard Mott

  2. Inbred Mouse Strain Haplotype Structure • When the genomes of a pair of inbred strains are compared, • we find a mosaic of segments of identity and difference (Wade et al, Nature 2002). • A QTL segregating between the strains must lie in a region of sequence difference. • What happens when we compare more than two strains simultaneously?

  3. No Simple Haplotype Block Mosaic Yalcin et al 2004 PNAS

  4. …But a Tree Mosaic

  5. In-silico Mapping • Simple idea- • Collect phenotypes across a set of inbred strains • Genotype the strains (ONCE) • Look for phenotype-genotype correlation • Works well for simple Mendelian traits (eg coat colour) • Suggested as a panacea for QTL mapping

  6. In-silico Mapping Problems • Less well-suited for complex traits • Number of strains required grows quickly with the complexity of the trait. Suggested at least 100 strains required, possibly more if epistasis is present • Require high-density genotype/sequence data to ensure identity-by-state = identity by-descent • May be very useful for the dissection of a QTL previously identified in a F2 cross (look for patterns of sequence difference)

  7. Recombinant Inbred Lines • Panels of inbred lines descended form pairs of inbred strains • Genomes are inbred mosaics of the founders • Lines only need be genotyped once • Similar to in-silico mapping except • identity-by-descent=identity-by-state • Coarser recombination structure • ?lower resolution mapping?

  8. BXD chromosome 4

  9. Testing if a variant is functional without genotyping it(Yalcin et al, Genetics 2005) • Requirements: • A Heterogeneous Stock, genotyped at a skeleton of markers • The genome sequences of the progenitor strains • A statistical test

  10. Merge Analysis • Each polymorphism groups together the founders according to their alleles • If the polymorphism is functional, then a model in which the phenotypic strain effects are estimated after merging the strains together should be as good as a model where each strain can have an independent effect. • Compare the fit of “merged” and “unmerged” genetic models to test if the variant is functional. • If the fit of the merged model is poor then that variant can be eliminated.

  11. Merge Analysis

  12. Merge Analysis

  13. How can we show a gene under a QTL peak affects the trait? • Genetic Mapping identifies Functional Variants, not Genes • Could be a control element affecting some other gene

  14. Quantitative Complementation KO 0

  15. Quantitative Complementation KO wt Low High 30 0 50 100

  16. Quantitative Complementation KO wt Low High d 30 0 50 100

  17. Quantitative Complementation KO wt Low High d d 30 0 50 100 D= d -d

  18. Quantitative Complementation KO wt Low High d d 30 0 50 100 D= d -d

  19. Using Functional Information to Confirm Genes • Further experiments • further bioinformatics, eg networks, functional annotation (GO, KEGG) • candidate gene sequencing • gene expression analyses (eQTL) of • founder strains • HS

  20. Mouse/human sequence comparison

  21. Enhancer reporter assays enhancer promoter luciferase reporter enhancer promoter luciferase reporter

  22. Enhancer elements affect promoter expression

  23. Large-Scale Genetic Mapping • Using a Heterogeneous Stock • Multiple Phenotypes collected in parallel

  24. Predictions (from simulation of an HS population) • In a population of 1,000 HS animals: • Genome-wide power to detect 5% QTL ~ 0.92 • Resolution < 2 Mb

  25. Study design • 2,000 mice • 15,000 diallelic markers • More than 100 phenotypes • each mouse subject to a battery of tests spread over weeks 5-9 of the animal’s life • more (post-mortem) phenotypes being added

  26. Phenotypes

  27. Covariates • For each phenotype, we recorded covariates, eg, • experimenter • time of day • apparatus (eg, Shock Chamber 3)

  28. Data collection • All animals microchipped • Automated data checking, processing and uploading • All data uploaded into the Integrated Genotyping System (IGS) database

  29. Genotypes from Illumina • Genotyped and phenotyped 2,000 offspring • Genotyped 300 parents • Pedigree analysis shows genotyping was 99.99% accurate • 11, 558 markers polymorphic in HS

  30. QTL mapping • Models • HAPPY and single marker association • Fitting framework • Linear regression of (transformed) phenotypes • Survival analysis for latency data • Logit-based models for categorical data • Significant covariates incorporated into the null model, eg Null = Startle ~ TestChamber + BodyWeight + Year + Age + Hour + Gender Additive Null + additive genetic info for locus Full Null + full genetic info for locus

  31. QTL mapping • Significance tests • partial F-test (linear models), Chi-square / LRT (others) • Significance thresholds • different for each phenotype • have to take into account LD • fit distribution to scores of permuted data

  32. E-values • We set score thresholds using ideas from sequence databank search programs such as BLAST

  33. E-values • We set score thresholds using ideas from sequence databank search programs such as BLAST • The E-value of a threshold is the number of times you would expect to see a false positive exceed the threshold in a genome scan

  34. E-values • We set score thresholds using ideas from sequence databank search programs such as BLAST • The E-value of a threshold is the number of times you would expect to see a false positive exceed the threshold in a genome scan • Applying the Bonferroni correction to the number of marker intervals is too severe because LD makes neighbouring scores correlated.

  35. E-values • We set score thresholds using ideas from sequence databank search programs such as BLAST • The E-value of a threshold is the number of times you would expect to see a false positive exceed the threshold in a genome scan • Applying the Bonferroni correction to the number of marker intervals is too severe because LD makes neighbouring scores correlated. • Permutation analyses indicate the score of the most significant expected random score amongst all ~12000 marker intervals behaves as if it was drawn from M~4000 independent tests.

  36. E-values • We set score thresholds using ideas from sequence databank search programs such as BLAST • The E-value of a threshold is the number of times you would expect to see a false positive exceed the threshold in a genome scan • Applying the Bonferroni correction to the number of marker intervals is too severe because LD makes neighbouring scores correlated. • Permutation analyses indicate the score of the most significant expected random score amongst all ~12000 marker intervals behaves as if it was drawn from M~4000 independent tests. • Hence a nominal P-value of p corresponds to an E-value of pM

  37. Problems Our population includes both siblings and unrelateds • We have ignored this distinction And therefore: • Confounding environmental family effects with genetic family effects • Allowing ghost peaks due to linkage disequilibrium between markers within a sibship Our solution so far: (1) Investigating the effect of environmental factors and building covariates into the model (2) Identify peaks by a multiple conditional fit

  38. Multiple Peak FittingForward Selection • For each phenotype’s genome scan: • Make list of all peaks > genome-wide threshold T • Fit most significant peak, P1 • Go through list of peaks, refitting each on conditional upon the most significant peak. • Add the most significant remaining peak, P2 • Continue refitting remaining peaks P3 , P4 … and adding them into model until the most significant remaining peak < T

  39. Peaks found by multiple conditional fit Multiple conditional fit (using additive model only) number of phenotypes

  40. Database for scans

  41. Database for scans Additive model Full model • E-value thresholds • additive only • E<0.01 is about the same as genome-wide corrected p<0.01.

  42. Database for scans zoom in

  43. Covariates

  44. QTL Mapping: Validation • Coat colour • Detection of known QTLs

  45. Coat colour genes

  46. A known QTL: HDL HS mapping Wang et al, 2003

  47. High Resolution QTLs

  48. New QTLs: two examples • Freeze.During.Tone (from Cue Conditioning behavioural experiment) …………1 peak • % of CD4 in CD3 cells (immunology assay) …………10 peaks

  49. Freezing TONE TONE Cue Conditioning • Freezing in response to a conditioned stimulus

  50. Cue Conditioning • Freeze.During.Tone: huge effect, small number of genes chr15 cntn1: Contactin precursor (Neural cell surface protein)

More Related