Medical Resequencing: Future Innovations and Sequence-Based Association Analysis Genotype-Based Warfarin Dose Prediction Mark Rieder Department of Genome.

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Medical Resequencing: Future Innovations and Sequence-Based Association Analysis Genotype-Based Warfarin Dose Prediction Mark Rieder Department of Genome Sciences

Medical Resequencing Discovery of rare functional variants - - Sequencing at the tails of the distribution Testing the Common Disease Common Variant (CDCV) hypothesis - Candidate genes very feasible Whole Genome Association Studies (WGAS) Whole Genome Sequencing - Developing Rapidly

Pharmacogenomics as a Model for Medical ReSequencing Clear genotype-phenotype link intervention variable response Pharmacokinetics - 5x variation Quantitative intervention and response drug dose, response time, metabolism rate, etc. Target/metabolism of drug generally known gene target that can be tested directly with response Prospective testing reduce variability and identify outliers

Warfarin Pharmacogenetics 1.Background Vitamin K cycle Pharmacokinetics/Pharmacodynamics Discovery of VKORC1 2.VKORC1 - SNP Discovery 3.VKORC1 - SNP Selection (tagSNPs) 4.Clinical Association Study VKORC1 and Warfarin Dose 5.VKORC1 - SNP Replication/Function

Warfarin Dosing - Background Commonly prescribed oral anti-coagulant and acts as an inhibitor of the vitamin K cycle Prescribed following MI, atrial fibrillation, stroke, venous thrombosis, prosthetic heart valve replacement, and following major surgery Warfarin (Coumadin) >20 million US prescriptions (2007) (-) Difficult to determine effective dosage - - Narrow therapeutic range - - Large inter-individual variation (-) Major bleeding episodes in 1-2% of all patients 11% of all adverse events (Gurwitz et al. JAMA 2003) (++) Prevents 20 strokes for each bleeding event Goal: Use genetics to understand dose requirements --> fewer complications

  Narrow therapeutic range   Monitoring of INR ( ) = Maintenance Doseoverdosebleeding underdose stroke risk

Monitoring Warfarin Dosing Measure prothrombin time (PT) - time to clot Normal times are sec Also measured as INR (International Normalized Ratio). Range (normalized thromboplastin) On warfarin therapy, a patient is kept at about 2-3x normal (PT = seconds)

Add warfarin dose distribution Patient/Clinical/Environmental Factors Ave: 5.2 mg/d n = 186 European-American 30x dose variability Pharmacokinetic/Pharmacodynamic - Genetic

Vitamin K Cycle Vitamin K synthesized by plants and bacteria e.g., leafy green vegetables and intestinal flora Vitamin K - discovered from defects in blood “koagulation” Vitamin K - required coenzyme for the conversion of glutamic acid (Glu) to carboxyglutamic acid (Gla) Glu --> Gla modification needed for Ca 2+ binding, clot formation Vitamin K administration is the antidote for warfarin toxicity

Vitamin K-dependent clotting factors (FII, FVII, FIX, FX, Protein C/S/Z) Epoxide Reductase  -Carboxylase (GGCX) Warfarin inhibits the vitamin K cycle Warfarin Inactivation CYP2C9 Pharmacokinetic

Warfarin drug metabolism Major pathway for termination of pharmacologic effect is through metabolism of S-warfarin in the liver by CYP2C9 CYP2C9 SNPs alter warfarin metabolism: CYP2C9*1 (WT) - normal CYP2C9*2 (Arg144Cys) - intermediate metabolizer CYP2C9*3 (Ile359Leu) - poor metabolizer CYP2C9 alleles occur at: European: * % * % Asian: *2 - 0% * % African-American: * % * %

Effect of CYP2C9 Genotype on Anticoagulation-Related Outcomes (Higashi et al., JAMA 2002) WARFARIN MAINTENANCE DOSE N mg warfarin/day - Variant alleles have significant clinical impact - Still large variability in warfarin dose (15-fold) in *1/*1 “controls”? TIME TO STABLE ANTICOAGULATION CYP2C9-WT ~90 days *2 or *3 carriers take longer to reach stable anticoagulation CYP2C9-Variant ~180 days

Vitamin K-dependent clotting factors (FII, FVII, FIX, FX, Protein C/S/Z) Epoxide Reductase  -Carboxylase (GGCX) Warfarin acts as a vitamin K antagonist Warfarin Inactivation CYP2C9 Pharmacodynamic

New Target Protein for Warfarin Epoxide Reductase  -Carboxylase (GGCX) Clotting Factors (FII, FVII, FIX, FX, Protein C/S/Z) Rost et al. & Li, et al., Nature (2004) (VKORC1) 5 kb - Chromosome 16

Warfarin Resistance VKORC1 Polymorphisms Rare non-synonymous mutations in VKORC1 causative for warfarin resistance (15-35 mg/d) NO NO non-synonymous mutations found in ‘control’ chromosomes (n = ~400) Rost, et. al. Nature (2004)

Warfarin maintenance dose (mg/day) Inter-Individual Variability in Warfarin Dose: Genetic Liabilities SENSITIVITY CYP2C9 coding SNPs - *3/*3 RESISTANCE VKORC1 nonsynonymous coding SNPs Frequency Common VKORC1 non-coding SNPs?

SNP Discovery: Resequencing VKORC1 PCR amplicons --> Resequencing of the complete genomic region 5 Kb upstream and each of the 3 exons and intronic segments; ~11 Kb Warfarin treated clinical patients (UWMC): 186 European Other populations: 96 European, 96 African-Am., 120 Asian Rieder et al, NEJM 352, , 2005

VKORC1 - PGA samples (European, n = 23) Total:13 SNPs identified 10 common/3 rare (<5% MAF) VKORC1 - Clinical Samples (European patients n = 186) Total:28 SNPs identified 10 common/18 rare (<5% MAF) 15 - intronic/regulatory 7 - promoter SNPs 2 - 3’ UTR SNPs 3 - synonymous SNPs 1 - nonsynonymous - single heterozygous indiv. - highest warfarin dose = 15.5 mg/d Do common SNPs associate with warfarin dose? SNP Discovery: Resequencing Results None of the previously identified VKORC1 warfarin-resistance SNPs were present (Rost, et al.)

SNP Selection: VKORC1 tagSNPs

Five Bins to Test , 3673, 6484, 6853, , C/CC/TT/T e.g., Bin 1 - SNP 381 SNP Testing: VKORC1 tagSNPs

Five Bins to Test , 3673, 6484, 6853, , Bin 1 - p < Bin 2 - p < 0.02 Bin 3 - p < 0.01 Bin 4 - p < Bin 5 - p < C/CC/TT/T e.g. Bin 1 - SNP 381 SNP Testing: VKORC1 tagSNPs r 2 = 21% r 2 = 3% r 2 = 4.5% r 2 = 12% r 2 = 11% Adjusted for other confounders e.g., age, sex, medication, CYP2C9

Five tagSNPs (10 total SNPs) 186 warfarin patients (European) PHASE v2.1 9 haplotypes/5 common (>5%) Multi-SNP testing: Haplotypes

VKORC1 Haplotypes Associate with Dose Adjusted for all significant covariates: age, sex, amiodarone, CYP2C9 genotype 25% variance in dose explained

CCGATCTCTG-H1 CCGAGCTCTG-H2 TAGGTCCGCA-H8 TACGTTCGCG-H9 (381, 3673, 6484, 6853, 7566) B A VKORC1 haplotypes cluster into divergent clades Patients can be assigned a clade diplotype: e.g. Patient 1 - H1/H2 = A/A Patient 2 - H1/H7 = A/B Patient 3 - H7/H9 = B/B Explore the evolutionary relationship across haplotypes TCGGTCCGCA-H7 Multi-SNP testing: Haplotypes

VKORC1 clade diplotypes show a strong association with warfarin dose Low High A/A A/B B/B * † † * * All patients2C9 WT patients2C9 VAR patients AAABBB AA AB BB AAABBB (n = 181)(n = 124)(n = 57)

* † † * * All patients2C9 WT patients2C9 VAR patients AAABBB AAABBB AAABBB Univ. of Washington n = 185 All patients2C9 WT patients2C9 VAR patients AAABBB AAABBB AAABBB † † * † * 21% variance in dose explained Washington University n = 386 Brian Gage Howard McCleod Charles Eby

SNP Function: VKORC1 Expression Expression in human liver tissue (n = 53) shows a graded change in expression.

Five Bins to Test 1.381, 3673, 6484, 6853, , Bin 1 - p < Bin 2 - p < 0.02 Bin 3 - p < 0.01 Bin 4 - p < Bin 5 - p < SNP Testing: VKORC1 tagSNPs r 2 = 21% r 2 = 3% r 2 = 4.5% r 2 = 12% r 2 = 11%

General approach for candidate gene association study 1. 1.Establish baseline genetic diversity in a small discovery population (n=23) (e.g. find all common SNPs via resequencing) 2. 2.Calculate correlation between SNPs to find informative SNPs (tagSNPs) 3. 3.Genotype tagSNPs in clinical population (n = 186) 4. 4.Perform statistical test for association Association Results: YES - Multivariate Regression Determine effect size - variability in dose explained Adjusted for all confounding factors (Age, Sex, VKORC1, CYP2C9) Association Results: NO - Because all common SNPs have been tested, it is very likely no association exists

GWAS approach for association studies 1. 1.Establish baseline genetic diversity in a discovery population (HapMap) (e.g. find all common SNPs) 2. 2.Calculate correlation between SNPs to find informative SNPs (tagSNPs) 3. 3.Genotype tagSNPs in population Use commercially available whole genome chips (e.g. Illumina, Affy) QC genotype data 4. 4.Perform statistical test for association Association Results: Multivariate Regression Establish p-value cutoff (1E-7) Replicate in similar populations If replication then association can be considered NO - Association Results: All common SNPs have been tested, it is very likely no association exists assuming sufficient power

Clinical Adoption of Dosing Algorithms NHLBI Clinical Warfarin Trial: Randomized trial of prospective genotype-guided dosing Multi-center, double-blind randomized trial (n=2,000) "standard of care" vs. clinical alg. vs. clinical + genetic alg. multiple outcomes (e.g. time within therapeutic range) Total warfarin variance:

Design - WGAS Warfarin Dose 550 K Illumina 181 samples tested (Higashi, et al., Rieder, et al.) Call rates 99% 100% concordance - VKORC (rs ) with rs (LD) 100% concordance - CYP2C9*3 (rs ) Models Examined: Independent SNP effects (univariate): ln(dose) = SNP Full Model: Genetic + Clinical (multivariate): ln(dose) = Age + Sex + Amiodarone + Losartan + CYP2C9 (*2 or *3) + VKORC1-3673

Warfarin Dose - Detection Power Ave = 5.2 ± 2.5 mg/d Additive effect, quantitative trait P = 1x10 -7 CYP2C9 VKORC1

Univariate Results - SNP Associations Genome Location

CYP2C9 *2/*3 = rs composite CYP2C9 allele (Wadelius, et al) Warfarin Dose GWA Replication Results UF Replication (J. Johnson) Vanderbilt Replication (D. Roden)

log (p-value) chr1 chrX large real effects (VKORC1) non-replicated SNPs Range for large effect genes for warfarin dosing

log (p-value) chr1 chrX smaller, validated effect CYP2C9 New Candidates small, moderate effects replication, function Range for new candidate genes with smaller effect

VKORC1 Pharmacogenetics Summary 1. VKORC1 haplotypes (tagSNPs) are the major contributor to warfarin dose variability (21-25%). Overall variance described by clinical and genetic factors is 50-60%. 2. VKORC1 haplotypes are correlated with mRNA expression in the liver. 3. Whole genome studies have power to detect large effect size (20-25% variance) with limited sample size. Power is limited to detect small/moderate effects. 4. No other SNPs have a large effect similar to VKORC1. 5. Prospective clinical trials in progress should be definitive. 6. Prospective genotyping may lead to more accurate warfarin dosing and have impacts on the overall clinical treatment time.

Acknowledgments Greg Cooper Allan Rettie Alex Reiner Dave Veenstra Dave Blough Ken Thummel Debbie Nickerson Josh Smith Chris Baier Peggy Dyer-Robertson Washington University Brian Gage Howard McLeod Charles Eby Replication Studies Julie Johnson, UF Dan Roden, VU