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Finding “the gene” for cystic fibrosis Finding “the gene” for cystic fibrosis Why is this in quotes? A. CF is not caused by a gene, it’s caused by multiple genes. B. CF is not caused by genetic factors. C. CF is not caused by a gene, it’s caused by a mutation. How to find genetic determinants of naturally varying traits? Genetic markers (microsatellite) Fig. 10.3 Genetic markers (microsatellite) Fig. 10.3 Table 11.1 Lots of benign variation between us. How do you find polymorphisms? Fig. 11.6 How do you find polymorphisms? Introduced in lecture 9/15. Fig. 11.6 How do you find polymorphisms? Fig. 11.6 How do you find polymorphisms? Fig. 11.6 How do you find polymorphisms? Fig. 11.6 How do you find polymorphisms? Fig. 11.6 How do you find polymorphisms? Fig. 11.6 Hybrid mapping: location of probe mouse QuickTime™ and a TIFF (Uncompressed) decompressor are needed to see this picture. www3.mdanderson.org/depts/cellab/fish1.htm human/mouse hybrid QuickTime™ and a TIFF (Uncompressed) decompressor are needed to see this picture. Hybrid mapping: location of probe QuickTime™ and a TIFF (Uncompressed) decompressor are needed to see this picture. Back then, no technique to see 6kb at cytological resolution. Who cares about benign polymorphisms? Remember Sturtevant? Fig. 5.10 Who cares about benign polymorphisms? We are going to do a twopoint cross. One of our genetic loci is represented by phenotype; the other is a DNA marker. Mapping a disease locus (Autosomal dom) A1 A2 Fig. 11.A Mapping a disease locus (Autosomal dom) phenotype (variation in locus 1) A1 A2 Fig. 11.A Mapping a disease locus (Autosomal dom) phenotype (variation in locus 1) A1 A2 marker genotype (variation in locus 2) Fig. 11.A Mapping a disease locus (Autosomal dom) phenotype (variation in locus 1) A1 A2 marker genotype (variation in locus 2) Fig. 11.A How close are they in genetic distance? Mapping a disease locus (Autosomal dom) A1 A2 D d A1 A2 Fig. 11.A Mapping a disease locus (Autosomal dom) A1 A2 D d (assume phase) A1 A2 Fig. 11.A Mapping a disease locus A1 A2 D d A1 A1 A1 A2 Fig. 11.A d d Mapping a disease locus A1 A2 D d A1 A1 A1 A2 A2 Fig. 11.A d d d Mapping a disease locus A1 A2 D d A1 A1 A1 A2 A1 Fig. 11.A D d d Mapping a disease locus A1 A2 D d A1 A1 A1 A2 A2 Fig. 11.A d d d Mapping a disease locus A1 A2 D d A1 A1 A1 A2 ? Fig. 11.A d d Mapping a disease locus A1 A2 D d A1 A1 (sperm) A1 A2 ? Fig. 11.A d d Mapping a disease locus A1 A2 D d A1 A1 (sperm) A1 A2 A2 Fig. 11.A D d d Mapping a disease locus A1 A2 D d A1 A1 A1 A2 Fig. 11.A d d In total, 7 of the kids are non-recombinants and 1 is a recombinant. Mapping a disease locus A1 A2 Fig. 11.A What is the apparent RF between the DNA marker and the disease mutation? In total, 7 of the kids are non-recombinants and 1 is a recombinant. A. 1/10 B. 1/8 C. 1/20 Mapping a disease locus 1/8 = 12.5 m.u. A1 A2 Fig. 11.A What is the apparent RF between the DNA marker and the disease mutation? In total, 7 of the kids are non-recombinants and 1 is a recombinant. A. 1/10 B. 1/8 C. 1/20 Why do I say “apparent RF?” What if… True distance 30 cM Diseasecausing mutation observed recombination fraction = 1/8 = 12.5 cM Restriction fragment length polymorphism What if… True distance 30 cM Diseasecausing mutation observed recombination fraction = 1/8 = 12.5 cM Restriction fragment length polymorphism You could say this will never happen. But… What if… True distance 30 cM Diseasecausing mutation Restriction fragment length polymorphism observed recombination fraction = 1/8 = 12.5 cM this is our observation What if… True distance 30 cM Diseasecausing mutation Restriction fragment length polymorphism observed recombination fraction = 1/8 = 12.5 cM this is our observation The observed number of recombinants is just a point estimate, with some error associated. 12 cM, 18 cM…who cares? Further experiments need to find the causal variant, not just a marker. If distances are wrong, could be hunting for years. Mapping a disease locus 1/8 = 12.5 m.u. A1 A2 We now know the mutation is near (linked to) the marker. Fig. 11.A Mapping a disease locus marker (known) 1/8 = 12.5 m.u. A1 A2 We now know the mutation is near (linked to) the marker. Mapping a disease locus marker (known) 1/8 = 12.5 m.u. A1 window containing causative mutation A2 We now know the mutation is near (linked to) the marker. Mapping a disease locus 1/8 = 12.5 m.u. A1 A2 How significant? Mapping a disease locus 1/8 = 12.5 m.u. A1 A2 How significant? If RF = 0.5 (unlinked), would be like flipping a coin 8 times. How likely would you be to get 7 heads and 1 tail? If RF = 0.5 (unlinked), would be like flipping a coin 8 times. How likely would you be to get 7 heads and 1 tail? How much MORE likely is a model of RF < 0.5? If RF = 0.5 (unlinked), would be like flipping a coin 8 times. How likely would you be to get 7 heads and 1 tail? How much MORE likely is a model of RF < 0.5? For large cross between known parents, would use 2 to evaluate significance. Here we can’t. LOD scores r = genetic distance between marker and disease locus 1 recomb, 7 non-recomb. A1 A2 LOD scores r = genetic distance between marker and disease locus Odds = P(pedigree | r) P(pedigree | r = 0.5) 1 recomb, 7 non-recomb. A1 A2 LOD scores r = genetic distance between marker and disease locus Odds = P(pedigree | r) P(pedigree | r = 0.5) “How likely are the data given our model?” 1 recomb, 7 non-recomb. A1 A2 LOD scores r = genetic distance between marker and disease locus Odds = P(pedigree | r) P(pedigree | r = 0.5) Odds = (1-r)n • rk 0.5n • 0.5k k = 1 recomb, n = 7 non-recomb. A1 A2 LOD scores r = genetic distance between marker and disease locus Odds = P(pedigree | r) P(pedigree | r = 0.5) Odds = (1-r)n • rk 0.5(total # meioses) k = 1 recomb, n = 7 non-recomb. A1 A2 LOD scores r = genetic distance between marker and disease locus Odds = P(pedigree | r) P(pedigree | r = 0.5) Odds = (1-r)n • rk 0.5(total # meioses) We have an idea of true r, but it is imprecise. k = 1 recomb, n = 7 non-recomb. A1 A2 Remember? True distance 30 cM Diseasecausing mutation Restriction fragment length polymorphism observed recombination fraction = 1/8 = 12.5 cM this is our observation The observed number of recombinants is just a point estimate, with some error associated. LOD scores r = genetic distance between marker and disease locus Odds = P(pedigree | r) P(pedigree | r = 0.5) Odds = (1-r)n • rk 0.5(total # meioses) This formalism allows any r value. Let’s guess r = 0.3. k = 1 recomb, n = 7 non-recomb. A1 A2 LOD scores r = genetic distance between marker and disease locus Odds = P(pedigree | r) P(pedigree | r = 0.5) Odds = (1-r)n • rk 0.5(total # meioses) Odds = 0.77 • 0.31 This formalism allows any r value. Let’s guess r = 0.3. 0.58 k = 1 recomb, n = 7 non-recomb. A1 A2 LOD scores r = genetic distance between marker and disease locus Odds = P(pedigree | r) P(pedigree | r = 0.5) Odds = (1-r)n • rk This formalism allows any r value. Let’s guess r = 0.3. 0.5(total # meioses) Odds = 0.77 • 0.31 = 6.325 0.58 k = 1 recomb, n = 7 non-recomb. A1 A2 LOD scores r = genetic distance between marker and disease locus Odds = P(pedigree | r) P(pedigree | r = 0.5) Odds = (1-r)n • rk 0.5(total # meioses) Odds = 0.77 • 0.31 = 6.325 0.58 Data >6 times more likely under LINKED hypothesis than under UNLINKED hypothesis. k = 1 recomb, n = 7 non-recomb. A1 A2 LOD scores r 0.1 0.2 0.3 0.4 0.5 odds 12.244 10.737 6.325 2.867 ?? Odds = P(pedigree | r) P(pedigree | r = 0.5) Odds = (1-r)n • rk 0.5(total # meioses) k = 1 recomb, n = 7 non-recomb. LOD scores r 0.1 0.2 0.3 0.4 0.5 odds 12.244 10.737 6.325 2.867 ?? Odds = P(pedigree | r) P(pedigree | r = 0.5) Odds = (1-r)n • rk 0.5(total # meioses) Odds at r=0.5? A. 2.5 B. 0 C. 1 D. 10 LOD scores r 0.1 0.2 0.3 0.4 0.5 odds 12.244 10.737 6.325 2.867 1 What’s the best (most likely) value of r? A. 0.1 B. 0.2 C. 0.3 D. 0.4 E. 0.5 What problems will look like A1 A2 1,2 1,2 1,1 1,2 1,1 1,2 1,1 1,2 1,2 1,1 What problems will look like 1,2 1,2 1,1 1,2 1,1 1,2 1,1 1,2 1,2 1,1 What problems will look like 1,2 1,2 1,1 1,2 1,1 1,2 1,1 1,2 1,2 1,1 Count number of recombinants, calculate odds. Reading and chapter problems on web site.