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Transcript
Design and Analysis of Genome-Wide
Association Studies
Workshop on Statistical Genetics and Genomics
February 12, 2009
Tasha E. Fingerlin
Departments of Epidemiology and Biostatistics & Informatics
Colorado School of Public Health
University of Colorado Denver
1
Today
• Goal of a genetic association study
• Rationale for genome-wide association studies
• Design and analysis considerations for GWAs
• Application to two clinically similar granulomatous lung
diseases
2
Complex Traits - Multifactorial Inheritance
Genetic
Variants
Trait
Trait
Non-genetic
factors
• Examples
–
–
–
–
–
Some cancers
Type 1 diabetes
Type 2 diabetes
Alzheimer disease
Inflammatory bowel disease
- Schizophrenia
- Cleft lip/palate
- Hypertension
- Rheumatoid arthritis
- Asthma
3
Genetic Association Studies
• Short-term Goal: Identify genetic variants that explain differences in
phenotype among individuals in a study population
– Qualitative: disease status, presence/absence of congenital defect
– Quantitative: blood glucose levels, % body fat
• If association found, then further study can follow to
– Understand mechanism of action and disease etiology in individuals
– Characterize relevance and/or impact in more general population
• Long-term goal: to inform process of identifying and delivering better
prevention and treatment strategies
4
DNA Variation
• >99.9 % of the sequence is identical between any two chromosomes.
- Compare maternal and paternal chromosome 1 in single person
- Compare Y chromosomes between two unrelated males
• Even though most of the sequence is identical between two chromosomes,
since the genome sequence is so long (~3 billion base pairs), there are still
many variations.
• Some DNA variations are responsible for biological changes, others have no
known function.
• Alleles are the alternative forms of a DNA segment at a given genetic location.
• Genetic polymorphism: DNA segment with  2 common alleles.
5
Single Nucleotide Polymorphisms: SNPs
• SNPs – DNA sequence variations that occur when a single
nucleotide is altered
A
T
G
A
C
A
G
G
C
A
T
G
A
C
A
T
G
C
• Alleles at this SNP are “G” and “T”
• SNPs are the most common form of variation in the human genome
• SNPs catalogued in several databases
6
Genotypes and Haplotypes
• Genotype: pair of alleles (one paternal, one maternal) at a locus
Maternal
A
T
G
A
C
A
G
G
C
Paternal
A
T
G
A
C
A
T
G
C
Genotype for this individual is GT
• Haplotype: sequence of alleles along a single chromosome
Maternal
A
T
G
C
C
A
T
G
C
Paternal
A
T
G
A
C
A
T
G
C
Genotypes for this individual (vertical) : CA and TT
Haplotypes (horizontal): CT and AT
7
Scope of a Genetic Association Study
• Candidate gene
– Known functional variants
– Variants with unknown function in exons, introns, regulatory regions
• Linkage candidate region
* Sabeti PC et al. (2002). Nature 419: 832-837
– Functional variants, or those with unknown function in candidate genes
– More general coverage of region using many markers
• Genome-wide
– Test for association with hundreds of thousands (millions) of SNPs spread
across the entire genome.
– Many design strategies possible for distributing markers
8
Genome-Wide Association Studies
Rationale:
• Linkage analysis using families takes unbiased look at whole
genome, but is underpowered for the size of genetic effects we
expect to see for many complex genetic traits.
• Candidate gene association studies have greater power to identify
smaller genetic effects, but rely on a priori knowledge about disease
etiology.
• Genome-wide association studies combine the genomic coverage of
linkage analysis with the power of association to have much better
chance of finding complex trait susceptibility variants.
9
Why are They Possible Now?
Genotyping Technology:
• Now have ability to type hundreds of thousands (or millions) of
SNPs in one reaction on a “SNP chip.” The cost can be as low as
$200-$300 per person.
• Two primary platforms: Affymetrix and Illumina.
Design and analysis:
• Availability of SNP databases, HapMap, and other resources to
identify the SNPs and design SNP chips.
• Faster computers to carry out the millions of calculations make
implementation possible.
10
Design and Analysis Strategies: Moving Target
• A genetic factor is like any other potential risk factor and the same
study design and analysis principles hold – in addition to those
specific to GWAs.
• Standard case-control (matched or unmatched), cohort-based
quantitative trait and longitudinal designs are common.
• In what follows, I will talk about current ideas and methods, with a
focus on assumptions and quality control.
• Focus today is on case-control design, but many of the principles
apply to other designs.
11
SNP Chips: Number and Placement of SNPs
• A “typical” SNP chip has at least 317,000 SNPs distributed across the
genome. Newest: ~1 million.
• The newest chips can also measure (directly or indirectly) some types
of copy number variation.
• We do not directly measure genotypes at all genetic polymorphisms, but
rely on association between the polymorphisms we do assay and those
which we do not assay.
• SNP-SNP association, or linkage disequilibrium, is fundamental to our
ability to sample the whole genome with relatively few SNPs.
12
Linkage Disequilibrium (LD)
• Linkage disequilibrium: the non-random association of alleles at
linked loci.
• A measure of the tendency of some alleles to be inherited together on
haplotypes descended from ancestral chromosomes.
A
T
G
A
C
A
A
G
C
A
T
C
A
C
A
T
G
C
• If these where the only two haplotypes in the population, then alleles
G and A ( C and T) are in perfect linkage disequilibrium.
• If we genotype the first SNP, we know what the alleles are at the
second SNP.
13
•
In general, LD between two SNPs decreases with physical distance
•
Extent of LD varies greatly depending on region of genome
•
If LD strong, need fewer SNPs to capture variation in a region
14
www.hapmap.org
15
HapMap
• Multi-country effort to identify, catalog common human genetic
variants.
• Developed to better understand and catalogue LD patterns across the
genome in several populations.
• Genotyped ~4 million SNPs on samples of African, east Asian,
European ancestry.
• All genotype data in a publicly available data base.
• Can download the genotype data
– Able to examine LD patterns across genome
– Can estimate approximate coverage of a given SNP chip
• Can represent 80-90% of common SNPs with
~300,000 tag SNPs for European or Asian samples
~500,000 tag SNPs for African samples
16
Case and Control Selection
• Case and control samples may be population-based
• Cases and controls may be chosen to increase magnitude of contrast
Case sample may be selected to be enriched for predisposing variant(s)
- Family history
- Early age of onset
- Increased severity of disease
Control sample may be selected to be “very healthy” or “super controls”
- E.g. for type 2 diabetes, may select individuals who
have normal response to glucose at age 70
- Control selection just as important (and tricky) as for
any case-control study.
17
Testing for Genetic Association with Disease
• Question of interest: Are the alleles or genotypes at a genetic marker
associated with disease status?
• Use usual statistical machinery get estimates of measures of association
and to test for association for each of the SNPs.
• One typical approach: Test for association between having 0, 1 or 2
copies of rare allele at a SNP using Cochran-Armitage test for trend.
18
Pearson, T. A. et al. JAMA 2008;299:1335-1344.
Interpreting the Statistical Results
• Testing for association at each of hundreds of thousands of markers dictates
that traditional statistical significance thresholds (e.g. =.05) not appropriate.
• That aside (more in a few minutes), if you identify a SNP that is significantly
associated with disease, there are three possibilities:
– There is a causal relationship between SNP and disease
– The marker is in linkage disequilibrium with a causal locus
– False positive
• Many potential sources of systematic errors that might lead to false positive
results.
• Genotyping quality control issues particularly important.
19
Confounding by Ancestry
(a.k.a. Population Stratification)
• Control selection critical as always
• Confounding by ancestry: Distortion of the relationship between the genetic
risk factor and the outcome of interest due to ancestry that is related to both
the frequency of the putative genetic risk factor and whether or not subject is
a case or a control.
Ancestry
Genetic Risk Factor
Case/Control Status
20
Population Stratification
Cases
Controls
Genotype
TT
AT
AA
• Distribution of genotypes differs between cases and controls
• Might conclude that allele A (or genotype AA) related to
disease
21
Population Stratification
Cases
Controls
Pop 1
Genotype
Pop 1
TT
AT
AA
Pop 2
Pop 2
• If cases and controls not well-matched ancestrally
– Unequal distribution of non-disease-related alleles between cases and
controls
– Any allele more common in population with increased risk of disease
may appear to be associated with disease
22
Population Stratification
• Unequal distribution of alleles
may result from
– Sample made up of more
than one distinct population
– Sample made up of
individuals with differing
levels of admixture
Parra et al. AJHG 63:1839, 1998
23
Using the GWA Data to Avoid Population Stratification
• Several options exist to allow controlling for ancestry using markers
across the genome
• All based on idea that stratification should exist across the genome,
and that we can use the information on the genome-wide markers to
- estimate ancestry groups, remove extreme outliers,
control for other variation
- estimate inflation of test statistic and adjust all test statistics
• In each case, assumes constant effect of ancestry, which may or may
not be appropriate
• Bottom line is that with genome of data, can do a very good job of
understanding potential for and minimizing impact of population
substructure.
24
Potential Solutions to Multiple Testing Issue
• Bonferroni correction
– Assume all tests performed are independent
– Estimate number of independent polymorphisms in genome
– Threshold often considered appropriate: 5x10-8.
• Other less conservative allocation of experiment-wide  over the genome
– Perhaps spend more on linkage regions or for SNPs in coding regions
of gene
• Permutation
• Implementation for case-control study: permute case and control
status, perform all tests record the most significant p-value among
those tests and then re-permute case-control status and test again.
Repeat many times.
• P-value for most significant test is the proportion of permutations
that had a “best” p-value as small or smaller than the one you
observe with the observed data (the data with the right case and
control labels).
25
Q-Q Plot
•
If points deviate (significantly?)
from line of equality indicate that
the two distributions are different.
•
Some will take point at which the
observed p-values differ from the
expected as the point to declare
statistical significance.
Important points:
•
Can have deviation from line that
is indicative of violated
assumptions (e.g. existence of
population stratification)
Figure from: G. Abecasis
•
In tails of distribution, have less
information, and so might require
large divergence from expected
26
Using Multiple Samples
Rationale: Given the very large number of tests performed, use multiple
samples as a way to reduce the expected number of false positive results at
that end of the study.
• Split-sample
Approach: Rather than testing entire sample on entire genome, test for
association with some proportion of your samples and then test some
proportion of those markers in the rest of your samples*.
• Independent samples
Approach: Rather than split your own sample, use another independent
sample.
• In either case, can dramatically reduce number of false positive results
while maintaining power.
27
Granulomatous Lung Diseases
• Chronic Beryllium Disease (CBD)
Exposure to beryllium results in formation of granulomas in
lung among some individuals
• Sarcoidosis
Unknown exposure(s) result in granuloma formation and
inflammation in lung, but other organs often involved
28
Hypothesis
Sarcoidosis and CBD share genetic factors important in their
similar granulomatous inflammatory pathways
Disease Severity
CBD
Disease Risk
Sarcoidosis
29
GWA : Preliminary data
30
Top Region for CBD
p=10-11
31
Region Shared by both CBD and Sarcoidosis on
8p23.2 p=10 – 10
-2
-4
32
Other Important Topics of Present and Future
• Imputation
• Careful consideration of non-genetic factors
• Investigation of interactions: gene-environment and gene-gene
• Sequencing data
33
Acknowledgements
Wake Forest University
Carl D. Langefeld, PhD
University of Michigan
Michael Boehnke, PhD
Goncalo R. Abecasis, PhD
National Jewish Health
Lisa Maier, MPH, MD
Lori Silveira, MS
34