Download presentation
Presentation is loading. Please wait.
1
Office hours Wednesday 3-4pm 304A Stanley Hall
2
Fig. 11.26 Association mapping (qualitative)
3
Association scan, qualitative osteoarthritiscontrols C’s141797 G’s47433 2 test
4
Association scan, quantitative
5
Association vs. linkage
6
Unrelated individuals (usually) Related individuals
7
Association vs. linkage Unrelated individuals (usually) Related individuals Extreme of linkage study is one large family; less likely that phenotype has multiple genetic causes (locus heterogeneity).
8
Association vs. linkage Strong, easy to detect Unrelated individuals Related individuals
9
Association vs. linkage Strong, easy to detect, but rare in population Unrelated individuals Related individuals
10
Association vs. linkage Strong, easy to detect, but rare in population Unrelated individuals Related individuals (e.g. BRCA1)
11
Association vs. linkage Strong, easy to detect, but rare in population; may not be reflective of common disease. Unrelated individuals Related individuals
12
Association vs. linkage Strong, easy to detect, but rare in population; may not be reflective of common disease. Also, hard to collect family data. Unrelated individuals Related individuals
13
Association vs. linkage Strong, easy to detect, but rare in population; may not be reflective of common disease. Also, hard to collect family data. Common but weak effects Unrelated individuals Related individuals
14
Association vs. linkage Strong, easy to detect, but rare in population; may not be reflective of common disease. Also, hard to collect family data. Common but weak effects; need 1000’s of samples to detect Unrelated individuals Related individuals
15
Association vs. linkage Strong, easy to detect, but rare in population; may not be reflective of common disease. Also, hard to collect family data. Common but weak effects; need 1000’s of samples to detect. If no common cause, can fail. Unrelated individuals Related individuals
16
Another key feature of association mapping: resolution
17
Association vs. linkage many recombinations have happened since common ancestor; shared region is small; no co- inheritance between distant markers
18
Association vs. linkage small number of generations; individuals share big chunks of genome; can get co- inheritance between distant markers many recombinations have happened since common ancestor; shared region is small; no co- inheritance between distant markers
19
Association vs. linkage small number of generations; individuals share big chunks of genome; can get co- inheritance between distant markers many recombinations have happened since common ancestor; shared region is small; no co- inheritance between distant markers So you need very high density of markers to get signal in an association study, but you get very high spatial resolution.
20
Association vs. linkage small number of generations; individuals share big chunks of genome; can get co- inheritance between distant markers many recombinations have happened since common ancestor; shared region is small; no co- inheritance between distant markers In the “old days” of sparse markers, linkage analysis was the best strategy.
21
Causative variant very close -log( 2 p-value) rs377472
22
But there is a pitfall of association tests: “population structure”
23
Diabetes in Native Americans
24
(1971) Diabetes in Native Americans
25
(1971) Family studies indicate it is at least partly genetic, not environmental. Diabetes in Native Americans
26
Association mapping causal loci Typed IgG heavy chains with protein assay. Phenotypes can serve as markers too…
27
Association mapping causal loci Typed IgG heavy chains with protein assay. Phenotypes can serve as markers too… (Multiple proteins from chr 14 region: haplotype)
28
Association mapping causal loci
29
diabetescontrol Gm23270 no Gm13433284 Association mapping causal loci
30
diabetescontrol Gm23270 no Gm13433284 Association mapping causal loci
31
diabetescontrol Gm23270 no Gm13433284 Association mapping causal loci “Gm is protective against diabetes?”
32
Association mapping causal loci
33
Self-identified heritage
34
Most “full heritage” members don’t have the haplotype
35
Self-identified heritage Most “full heritage” members don’t have the haplotype The few without N.A. heritage are much more likely to have the haplotype
36
Gm haplotype is very rare in self-identified 100% Pima members.
37
Gm is a marker for Caucasian ancestry.
38
Association and admixture
40
huge almost negligible
41
Association and admixture these are all the Caucasians…
42
Association and admixture Gm doesn’t look like it has much additional protective effect if you stratify by familial origin first!
43
Association and admixture Caucasian ancestry is associated with Gm haplotype.
44
Association and admixture Caucasian ancestry is associated with Gm haplotype. Caucasian ancestry is associated with lower diabetes risk.
45
Association and admixture Caucasian ancestry is associated with Gm haplotype. Caucasian ancestry is associated with lower diabetes risk. But Gm is not associated with lower diabetes risk!
46
Association and admixture Cases Controls Controls are enriched for Caucasians
47
Association and admixture Cases Controls = = N.A. and Caucasians are different at many loci http://www.ucl.ac.uk/~ucbhjow/medicine/images/human_karyotype.gif
48
Association and admixture Cases Controls = = At any one of these loci, Caucasian-like allele will be enriched in control samples.
49
Association and admixture Cases Controls = = Don’t believe any one locus is causative!
50
Microarrays and genotyping
51
DNA microarrays Fig. 10.21
52
DNA microarrays Fig. 10.21 Post-genome era: the sequence and location of the oligos are known
53
DNA microarrays Fig. 1.13
54
Genotyping by array Fig. 11.8
55
Genotyping by array Fig. 11.10
56
Genotyping by array Fig. 11.10 oligo (human genome fragment) index
57
Genotyping by array Fig. 11.10 oligo (human genome fragment) index
58
Genotyping by array Fig. 11.10 oligo (human genome fragment) index
59
Genotyping by array Fig. 11.10 oligo (human genome fragment) index
60
Genotyping by array Fig. 11.10 middle nucleotide on chip oligo oligo (human genome fragment) index
61
Genotyping by array Fig. 11.10 middle nucleotide on chip oligo Sample DNA is labeled, allowed to hybridize
62
Genotyping by array Fig. 11.10 readout of sample middle nucleotide on chip oligo
63
Genotyping by array Fig. 11.10 readout of sample middle nucleotide on chip oligo
64
Genotyping by array Fabrication technology allows millions of oligos (each present in millions of copies) on a single slide
65
Genotyping by single-base extension Fig. 11.11
66
Genotyping by single-base extension http://www.illumina.com/downloads/InfiniumIIWorkflow.pdf
67
High density of markers necessary for association
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.