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Association Analysis University of Louisville Center for Genetics and Molecular Medicine January 11, 2008 Dana Crawford, PhD Vanderbilt University Center for Human Genetics Research Association Analysis Outline • • • • • • Study Design SNPs versus Haplotypes Analysis Methods Candidate Gene Whole Genome Analysis Replication and Function Study Design Does your trait or phenotype have a genetic component? • Segregation analysis • Recurrence risks • Heritability • Other sources of evidence for a genetic component Classic Segregation Analysis • Determines if a major gene is involved • Compares data to Mendelian models, such as Autosomal dominant Autosomal recessive X-linked • Results can be used as parameters for linkage analysis (e.g. parametric LOD) • Subject to ascertainment bias Note: More complex methods needed for complex traits Recurrence Risks The chance that a disease present in the family will recur in that family “Lightning striking twice” If recurrence risk is greater in the family compared with unrelated individuals, the disease has a “genetic” component Suggests familial aggregation Recurrence Risks Measured using the risk ratio (λ) Sibling risk ratio = λs λs = sibling recurrence risk population prevalence Cystic fibrosis λs = (0.25/0.0004) = 500 Huntington disease λs = (0.50/0.0001) = 5000 Recurrence Risks: Complex traits λ here is for first degree relative Merikangas and Risch (2003) Science 302:599-601. Heritability The proportion of phenotypic variation in a population attributable to genetic variation Heritability measured as h2 Think “twin studies” (Can also be family studies) Quantitative traits Heritability and Quantitative Traits Example: Height Boys Girls Mexican Americans Mexican Americans Blacks Blacks Whites Whites NHANES 1971-1974 versus NHANES 1999-2002 Determined by genes and environment Freedman et al (2006) Obesity 14:301-308 Heritability and Quantitative Traits σT2 = σG2 + σE2 Trait variation = genetic + environment σG2 = σa2 + σd2 Genetic variation = additive + dominant σE2 = σf2 + σe2 Environmental variation = familial/household + random/individual hB2= σG2 / σT2 Broad Sense heritability hN2= σa2 / σT2 Narrow Sense heritability Heritability and Twins Studies h2 = 2(rMZ – rDZ), where r is the correlation coefficient Monozygotic = same genetic material = r ~ 100% Dizygotic = half genetic material = r ~ 50% Heritability and Twins Studies Trait r(MZ) r(DZ) Reference Cholesterol 0.76 0.39 Fenger et al SBP 0.60 0.32 Evans et al BMI 0.67 0.32 Schousboe et al Perceived pitch 0.67 0.44 Drayna et al Heritability: Is everything genetic? Trait r(MZ) r(DZ) Reference Vote choice 0.81 0.69 Hatemi et al Religiousness 0.62 0.42 Koenig et al Other Evidence For A Genetic Component Monogenic disorders Example: Phenotype of interest is sensitivity to warfarin dosing, but there are no heritability estimates Solution: Rare, familial disorder of warfarin resistance Other Evidence For A Genetic Component Case Reports Example: Phenotype of interest is susceptibility to Neisseria meningitidis (prevalence: 1/100,000) Solution: Case report of recurrent N. meningitidis in patient Other Evidence For A Genetic Component Other good arguments… • Animal models • Biochemistry or biological pathways • Expression data • Previous genetic association studies Study Design How well can you diagnose the disease or measure the trait? • Narrow definitions better than all-inclusive definitions There are many paths that lead to the same phenotype • Avoid misclassification and measurement error Direct measurement versus recall/survey data or indirect proxies • Be aware of age of onset Can your control become a case over time? Arguably most important step in study design Target Phenotypes Disease or Quantitative trait? LDLR LDL-C Diet MI IL6 Acute Illness CRP Note: SNPs associated with quantitative traits may not be associated with clinical endpoint Carlson et al. (2004) Nature 429:446-452 Study Design How many cases and controls will you need to detect an association? Statistical Power • Null hypothesis: all alleles are equal risk • Given that a risk allele exists, how likely is a study to reject the null? • Study sample size ideally determined before you begin to recruit and genotype Study Design What are the thresholds/variables in a general power calculation? • Statistical significance – Significance = p(false positive) – Traditional threshold 5% • Statistical power – Power = 1- p(false negative) – Traditional threshold 80% • Traditional thresholds balance confidence in results against reasonable sample size Note: Significance threshold for 1 SNP tested Study Design Power Calculation Resources • Quanto (hydra.usc.edu/gxe/) Supports quantitative, discrete traits (unrelated and family based) • Genetic Power Calculator (pngu.mgh.arvard.edu/~purcell/gpc/) Supports discrete traits, variance components, quantitative traits for linkage and association studies (List of other software: linkage.rockefeller.edu/soft/) Study Design How can you maximize power for your study? • Large sample size Better estimate of variability or risk Chance of misclassification / measurement error • Large genetic effect size SNP risk allele with large odds ratio or explains a lot of trait variance This is unknown at beginning of study • Risk SNP is common This is unknown at beginning of study Calculate power for a range of common MAFs (5-45%) • Genotype the risk SNP directly Risk SNP is unknown at beginning of study Remember tagSNPs are imperfect proxies Adjust sample size by 1/r2 Study Design Power calculation example: Cases: Adverse reaction (wheezing) to flu vaccination Controls: Vaccinated children with no adverse reactions 160 140 Sample size (cases) 120 MAF 0.05 100 0.1 0.15 80 0.2 60 0.25 40 20 Genotype relative risk (Additive model) Calculated using Quanto 1.1.1 6 5.8 5.6 5.4 5.2 5 4.8 4.6 4.4 4.2 4 3.8 3.6 3.4 3.2 3 2.8 2.6 2.4 2.2 2 0 Study Design Power calculation example: Immunogenicity to influenza A (H5N1) vaccine 900 800 Sample size 700 600 500 400 300 200 100 R2 (Additive model) Calculated using Quanto 1.1.1 0. 43 0. 46 0. 49 0. 4 0. 13 0. 16 0. 19 0. 22 0. 25 0. 28 0. 31 0. 34 0. 37 0. 1 0. 01 0. 04 0. 07 0 Study Design Why are you considering an association study instead of linkage? • Linkage analysis is powerful for disorders with – Discernable pattern of inheritance – Rare alleles w/ large genetic effect sizes – High penetrance • Not powerful for disorders that – have complex pattern of inheritance – are common – many risk alleles with small effect sizes – have low penetrance Study Design Common variant/common disease hypothesis • Common genetic variants confer susceptibility • Risk-conferring alleles ancient; common across most populations • Risk-conferring allele has small effect • Multiple risk alleles expected for common disease; also environment Study Design Should you design a candidate gene or whole genome study? • Candidate gene association study – Interrogate specific genes or regions – Based on previous knowledge or biological plausibility – Hypothesis testing • Whole genome association study – Interrogate the “entire” genome – No previous knowledge required – Hypothesis generation Candidate gene association studies • Choose gene based on previous knowledge – Gene function – Biological pathway – Previous linkage or association study • Choose DNA variations for genotyping – Direct association approach – Indirect association approach Direct Candidate Gene Association Study Genotype “functional” SNPs Example: Nonsynonymous SNPs Collins et al (1997) Science 278:1580-1581 Direct Candidate Gene Association Study Problem: We don’t know what is functional and what is not functional Botstein and Risch (2003) Nat Genet 33 Suppl:228-37. Direct Candidate Gene Association Study What would we miss? Functional synonymous SNPs in MDR1 alter P-glycoprotein activity Komar (2007) Science 315:466-467 Direct Candidate Gene Association Study What would we miss? • Non-coding SNPs or DNA variations in – Introns – Intergenic regulatory regions • 99% human genome is non-coding Indirect Candidate Gene Association Study Kruglyak (2005) Nat Genet 37:1299-1300 • Genotype a fraction of all SNPs regardless of “function” • Rely on SNP-SNP correlations (linkage disequilibrium) to capture information for SNPs not genotyped Indirect Candidate Gene Association Study Linkage disequilibrium (LD) Measured by r2 r2 = [f(A1B1) – f(A1)f(B1)]2 f(A1)f(A2)f(B1)f(B2) r2 = 0 r2 = 1 SNPs are independent SNPs are perfectly correlated AND have the same minor allele frequency Indirect Candidate Gene Association Study Using LD to pick “tagSNPs” r2>0.80 CRP European-descent 10 SNPs >5% MAF CRP European-descent 4 tagSNPs Indirect Candidate Gene Association Study “tagSNPs” are population specific CRP European-descent 4 tagSNPs CRP African-descent 10 tagSNPs Indirect Candidate Gene Association Study • “tagSNPs” are population specific • Merge sets for “cosmopolitan” set http://gvs.gs.washington.edu/GVS/ Indirect Candidate Gene Association Study Multiple testing • Testing many SNPs for association with disease status • No consensus on correcting p-value – Bonferroni – False Discovery Rate • Need to replicate findings in independent study Indirect Candidate Gene Association Study: Pros and Cons • Can interrogate all common SNPs in gene • SNPs must be known and genotypes available to calculate LD and pick tagSNPs • Multiple testing within a gene • Limited to previous knowledge Whole Genome Association Study • Can now genotype 100K – 1 million SNPs • Coverage depends on platform and chip – tagSNPs capturing HapMap common SNPs – Genic SNPs overrepresented – Conserved non-coding SNPs represented – Evenly spaced across genome Illumina Infinium assay Affymetrix GeneChips Whole Genome Association Study • Same study design and challenges as candidate gene – Mostly case-control (retrospective) – Multiple testing • Data storage and higher-order interaction testing issues • Hypothesis generation tool (replication) Case/Control Study Designs For either candidate gene or whole genome Manolio et al. Nature Reviews Genetics 7, 812–820 (October 2006) Case/Control Study Designs: Pros and Cons Study Pros Cons Case/Control Easier to collect Less expensive Subject to bias No risk estimates Prospective Risk estimates Harder to collect More expensive Subject to bias For rare outcomes, case/control design may be only option Case/Control Study Designs: Pros and Cons Types of bias • Bias in selection of cases Those that are currently living Miss fatal or short episodes of disease Might miss mild diseases Referral/admission bias • Non-response bias • Exposure suspicion bias • Family information bias • Recall bias Often ignored in genetic association studies Manolio et al. Nature Reviews Genetics 7, 812–820 (October 2006) Analysis Methods Genotype QC • Test for departures of Hardy-Weinberg Equilibrium • Test for gender inconsistencies • Eliminate very rare SNPs (no power) • Eliminate SNPs with low genotyping efficiency • Eliminate samples with low genotyping efficiency Analysis Methods What statistical methods do you use to analyze your data? • SNP by SNP (borrowed from epidemiology) Chi-square and Fisher’s exact 2x2 table 2x3 table Logistic and linear regression Covariates • Haplotypes Haplo.stats and regression • Interactions Traditional regression MDR (Ritchie et al) Analysis Methods The Case/Control Study Case Control Minor allele A B Major allele C D Odds ratio (OR) = ratio of odds of minor allele in Cases (A/C) and Controls (B/D) OR (A*D)/(B*C) Analysis Methods For genotypes, set homozygous for major allele (A) as “referent” genotype, and calculate 2 odds ratios: Case Control Aa A B AA C D Case Control aa A B AA C D Analysis Methods Case/control: Interpretation of Odds Ratio 1.0 – Referent >1.0 – Greater odds of disease compared with controls <1.0 – Lesser odds of disease compared with controls Confidence Intervals: probably contain true OR OR does not measure risk* Analysis Methods Prospective cohort • Disease free at beginning of study • Followed over time for disease (“incident”) • Follow “exposed” and “unexposed” groups • Gold-standard study design Analysis Methods Prospective cohort Case Exposed Control Total A B (A+B) Unexposed C D (C+D) Risk Ratio (RR) = Incidence of disease in Exposed A/(A+B) or Unexposed C/(C+D) Analysis Methods Prospective Study: Interpretation of Risk Ratio 1.0 – Referent >1.0 – Risk for disease increases <1.0 – Risk for disease decreases Confidence Intervals: probably contain true RR *For rare diseases, OR ~ RR Analysis Methods Case/control: Matching Age Gender Race Bad Example: Cases: Adults with heart disease Controls: Newborns without heart disease Warning: Can “over match” and miss describing an interesting factor Analysis Methods Case/control: Stratifying Age Gender Race Ex. Cases with heart disease Aged-matched controls without heart disease (Exposure: smoking status) Stratify for Gender Specific Risks Warning: Need sufficient sample size to stratify or split the data into males and females Analysis Methods Problems in Case/Control genetic association studies – • “Confounding” by race or ancestry • AKA population stratification • Solutions: Match Stratify Adjust (using genetic markers) “Trios” Cardon and Palmer (2003) Lancet 361:598-604 Analysis Methods Regression • Given – Height as “target” or “dependent” variable – Sex as “explanatory” or “independent” variable • Fit regression model height = *sex + Analysis Methods Regression • Given – Quantitative “target” or “dependent” variable y – Quantitative or binary “explanatory” or “independent” variables xi • Fit regression model y = 1x 1 + 2x 2 + … + i x i + Analysis Methods Regression • Works best for normal y and x • Can include covariates • Fit regression model y = 1x 1 + 2x 2 + … + i x i + • Estimate errors on ’s • Use t-statistic to evaluate significance of ’s • Use F-statistic to evaluate model overall • Use R2 to evaluate variance explained by model Analysis Methods Coding Genotypes Genotype AA AG GG Dominant 1 1 0 Additive 2 1 0 Recessive 1 0 0 Genotype can be re-coded in any number of ways for regression analysis Example of gene-environment Interaction and traditional regression Analysis Methods Statistical Packages for Genetic Association Studies • Candidate gene association study SAS/Genetics STATA SPSS R PLINK • Whole genome association study R PLINK Analysis Methods Whole genome in PLINK (pngu.mgh.harvard.edu/~purcell/plink/) MHC removed P<2x10-11 P<1x10-100 P<5x10-8 Can adjust for population stratification Can add covariates Plenge et al 2007 NEJM Genome-wide significance P=5x10-8 SNPs versus Haplotypes • There is no right answer: explore both • The only thing that matters is the correlation between the assayed variable and the causal variable • Sometimes the best assayed variable is a SNP, sometimes a haplotype SNPs versus Haplotypes Statistical Packages for Genetic Association Studies with haplotypes • Haplo.stats (haplotype regression) Lake et al, Hum Hered. 2003;55(1):56-65. • PHASE (case/control haplotype) Stephens et al, Am J Hum Genet. 2005 Mar;76(3):449-62 • Haplo.view (case/control SNP analysis) Barrett et al, Bioinformatics. 2005 Jan 15;21(2):263-5. • SNPHAP (haplotype regression?) Sham et al Behav Genet. 2004 Mar;34(2):207-14. Analysis Methods Multiple testing • Bonferroni correction Too conservative b/c each SNP tested may not be independent (LD) How many independent tests did you do? See Conneely and Boehnke AJHG (in press) • False Discovery Rate Also has arbitrary threshold • Best bet is replication Change in ln(CRP) per copy relative to H2 Statistical Replication 0.6 0.5 Crawford et al Circulation 2006; 114:2458-2465 0.4 Black Mexican-American 0.3 White 0.2 CRP SNPs and CRP levels in NHANES III 0.1 0 H2 H5 H6 H7 H8 Results Consistent with CARDIA Carlson et al. AJHG 2005;77:64-77 Functional Replication • Statistical replication is not always possible • Association may imply mechanism • Test for mechanism at the bench – Is predicted effect in the right direction? – Dissect haplotype effects to define functional SNPs Functional Replication CRP Evolutionary Conservation • TATA box: 1697 • Transcript start: 1741 • CRP Promoter region (bp 1444-1650) >75% conserved in mouse Functional Replication Low CRP Levels Associated with H1-4 • USF1 (Upstream Stimulating Factor) – Polymorphism at 1440 alters USF1 binding site 1420 1430 1440 H1-4 gcagctacCACGTGcacccagatggcCACTCGtt H7-8 gcagctacCACGTGcacccagatggcCACTAGtt H5-6 gcagctacCACGTGcacccagatggcCACTTGtt Functional Replication High CRP Levels Associated with H6 • USF1 (Upstream Stimulating Factor) – Polymorphism at 1421 alters another USF1 binding site 1420 1430 1440 H1-4 gcagctacCACGTGcacccagatggcCACTCGtt H7-8 gcagctacCACGTGcacccagatggcCACTAGtt H5 gcagctacCACGTGcacccagatggcCACTTGtt H6 gcagctacCACATGcacccagatggcCACTTGtt Functional Replication CRP Promoter Luciferase Assay 4.0 Fold change over H1-3 3.5 3.0 2.5 2.0 1.5 1.0 0.5 0.0 H1-3 Carlson et al, AJHG v77 p64 H4 H5 H6 H7-8 empty SV40p Association Analysis Outline • • • • • • Study Design SNPs versus Haplotypes Analysis Methods Candidate Gene Whole Genome Analysis Replication and Function