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Genomics of Adverse Drug Reactions: The Need for a Multi-Functional Approach Munir Pirmohamed David Weatherall Chair of Medicine and NHS Chair of Pharmacogenetics Department of Molecular and Clinical Pharmacology University of Liverpool Adverse Drug Reactions: Classification ON TARGET REACTIONS Predictable from the known primary or secondary pharmacology of the drug Clear dose-dependence relationship within the individual OFF TARGET REACTIONS Not predictable from a knowledge of the basic pharmacology of the drug and can exhibit marked interindividual susceptibility Complex dose-dependence Outline Phenotyping Sample sizes Genomic approaches The path to clinical translation Genetic exceptionalism Genetic Contribution Many factors predispose to adverse drug reactions, many of which are environmental and clinical We do not know the overall genetic contribution to the occurrence of adverse reactions The genetic effect will vary according to drug and reaction ADRs account for: • 6.5% of all hospital admissions • 15% rate in in-patients • 8000 NHS Beds in the UK Deep Phenotyping ADRs can affect any organ system, can be of any severity – MIMIC OF DISEASE Important to be aware of the phenotypic heterogeneity – link between clinicians and genomics experts Although overall burden of ADRs is high, the incidence of individual ADRs may be low or rare in many instances – so patient identification can be difficult (cf. Type 2 Diabetes) Power of Studies Many pharmacogenetics studies in the past had small sample sizes, compunded by poor phenotype Led to low effect sizes with lack of replication in independent cohorts But since ADRs may be uncommon, it will never be possible to attain samples sizes seen in complex diseases International consortia Electronic medical records Toxic epidermal necrolysis 1 in million per year InTernational Consortium on Drug Hypersensitivity (ITCH) 12 international centres 50 UK centres 1500 patients EUDRAGENE EU Australia Canada Norway Sponsored by the International Serious Adverse Event Consortium (iSAEC) US Croatia Brazil Electronic Medical Records: Clinical Practice Research Datalink Previously GPRD 12 million patient records (March 2011) Increased to 52 million with the transition to CPRD Feasibility study using statin myopathy as paradigm 641,703 patients prescribed a statin 127,209 with concurrent CPK measurement The R&D Governance Burden Statin myopathy Identified via CPRD Link to DNA samples 132 R&D approvals 1. Implicated SNP is in the SLCO1B1 gene (transporter) 2. Shown with simvastatin 40mg and 80mg Genotype Frequency All Statins (n=448) Simvastatin Only (n=281) Tolerant n 372 T/T T/C 0.70 0.27 C/C 0.03 p - Per C-allele OR (95%CI) - All Myopathy 76 0.53 0.39 0.08 0.005 2.08 (1.35-3.23) Severe Myopathy 23 0.35 0.44 0.21 0.0003 4.47 (1.84-10.84) Tolerant 222 0.66 0.32 0.02 - - All Myopathy 59 0.49 0.42 0.09 0.014 2.13 (1.29-3.54) <40mg/day 24 0.63 0.37 0.00 0.997 1.03 (0.45-2.36) ≥40mg/day 35 0.40 0.46 0.14 0.0002 3.23 (1.74-5.99) Severe Myopathy 18 0.28 0.50 0.22 0.0004 4.97 (2.16-11.43) <40mg/day 5 0.40 0.60 0.00 0.778 1.84 (0.34-9.86) ≥40mg/day 13 0.23 0.46 0.31 0.0004 6.28 (2.38-16.60) Statin Myopathy GWAS All myopathy (n=128) vs. WTCCC2 (unimputed) SLCO1B1 Severe myopathy (n=32) vs. WTCCC2 (unimputed) SLCO1B1 Carbamazepine Hypersensitivity N More complicated than abacavir hypersensitivity Different phenotypes Skin (mild → blistering) Liver Systemic (DRESS) Predisposition varies with ethnicity and phenotype HLA-B*1502 (Chinese) HLA-A*3101 (Caucasian) C O NH2 CPT, 2012 HLA-B*1502 Liverpool 22 patients with HSS • Replicated in Japanese, Chinese, South Korean, Canadian and EU populations • NNT = 47 • SmPC/drug label changed (for information) • Patient and clinician preferences • Cost effectiveness • 55% likelihood • Cluster RCT being planned Whole Genome Sequencing in CBZ Hypersensitivity N= 48 (28 CBZ-induced severe hypersensitivity and 20 tolerant controls) HLA-A* Loci Using NGS data • • • 30 HLA-A* loci typed 18 HLA-A* alleles identified 40% CBZ hypersensitive patients are A*31:01 positive Rare Variant Pathway Analysis Name p-value #Genes #Variants #Cases #Controls Gene Name HLA-A, HLA-DRB1, HLA-DRB5, KIR2DL1/KIR2DL3 Graft-versus-Host Disease Signaling 3.96E-04 4 75 27 0 Antigen Presentation Pathway 7.75E-04 3 61 26 0 Crosstalk between Dendritic Cells and Natural Killer Cells 1.08E-03 4 75 27 0 HLA-A, HLA-DRB1, HLA-DRB5 HLA-A, HLA-DRB1, HLA-DRB5, KIR2DL1/KIR2DL3 Mitotic Roles of Polo-Like Kinase 3.55E-03 3 82 28 0 ANAPC5, CDC27, SLK Type I Diabetes Mellitus Signaling 4.57E-03 4 82 26 0 HLA-A, HLA-DRB1, HLA-DRB5, MAP2K3 Autoimmune Thyroid Disease Signaling 7.50E-03 3 61 26 0 HLA-A, HLA-DRB1, HLA-DRB5 B Cell Development 9.20E-03 2 45 23 0 HLA-DRB1, HLA-DRB5 Cytotoxic T Lymphocyte-mediated Apoptosis of Target Cells 1.25E-02 3 61 26 0 HLA-A, HLA-DRB1, HLA-DRB5 Inhibition of Matrix Metalloproteases 1.28E-02 2 23 20 0 MMP24, TIMP2 OX40 Signaling Pathway 1.47E-02 3 61 26 0 HLA-A, HLA-DRB1, HLA-DRB5 Allograft Rejection Signaling 1.69E-02 3 61 26 0 HLA-A, HLA-DRB1, HLA-DRB5 Estrogen Receptor Signaling 2.11E-02 3 88 28 0 CTBP2, MED13L, NCOR1 Communication between Innate and Adaptive Immune Cells IL-17 Signaling 2.37E-02 4.56E-02 3 2 61 62 26 27 0 0 HLA-A, HLA-DRB1, HLA-DRB5 MAP2K3, MUC5B IL-4 Signaling 4.84E-02 2 45 23 0 HLA-DRB1, HLA-DRB5 T Cells in Carbamazepine Hypersensitivity: HLA-A*31:01+ patient Clinical data Gender Age Time to reaction (days) Details of reaction Time since reaction (years) Rechallenge HLA-A genotype Comments female 74 6 Generalized rash, raised liver enzymes, fever, eosinophilia, lymphocytosis →Hypersensitivity syndrome 22 No A*11:01/ A*31:01 Previously experienced allergic reaction to Cotrimoxazol Lymphocyte transformation test Carbamazepine-Responsive T-cell clones Specificity and Phenotype Clones tested (n) Specific clones (n) 947 67 Proliferation (cpm) CD phenotype (%) control CBZ (25μg/ml) CD4+ CD8+ CD4+ CD8+ 5,525.8 (±18,928.0) 34,418.8 (±43,632.5) 35 37 28 Secretion of cytokines and cytolytic molecules a) CD4+ TCCIFNγ IL-13 Perforin Granz.B FasL IL-13 Perforin Granz.B FasL 0 CBZ b) CD8+ TCC IFNγ 0 CBZ HLA Restriction of CBZ-Specific TCC MHC restriction of CD4+ (a) and CD8+ (b) TCC a) CD4+ (n=3) b) CD8+ (n=3) * p = 0.03 * p = 0.03 ns ns HLA class II restriction of CD4+ TCC HLA A31 restriction of CD8+ TCC n=3 n=3 p = 0.008 ** p = 0.004 * p = 0.03 Hierarchy of Evidence What type of evidence is required for demonstration of clinical utility? Technology-Based Reduction in the Burden of ADRs: The Case of Abacavir Hypersensitivity NH N H2N Clinical genotype N N Association with HLA-B*5701 N CH2OH Clinical phenotype Incidence before and after testing for HLA-B*5701 Country Pre testing Post testing Reference Australia 7% <1% Rauch et al, 2006 France 12% 0% Zucman et al, 2007 UK (London) 7.8% 2% Waters et al, 2007 Uptake of HLA-B*5701 in Different Continents Drug label changed before prospective study Two prospective studies did not contradict previous data from retrospective studies Evidence standards differ between non-genetic and genetic tests 3 examples given: Drug exposure Prevention of adverse drug reactions Health technology assessment Drug Exposure: Differential Evidential Standards Example: Aztreonam SmPC “after an initial usual dose, the dosage of aztreonam should be halved in patients with estimated creatinine clearances between 10 and 30 mL/min/1.73 m2” Many different examples in hepatic and renal impairment with dose instructions based on PK studies and occasionally PK-PD modelling No need for RCTs – in fact, would be impractical However, a genetic polymorphism leading to same degree of change in drug exposure is often ignored and/or RCT data are required for implementation Differential Evidence Standards Unfamiliarity with genetic tests Lack of experience in interpretation Perceived cost of genetic testing Lack of availability of tests Poor turnaround time recommendations on dosing evaluation in patients with polymorphisms in known metabolic pathways Summary Prediction of adverse drug reactions (safety biomarker) Insights into mechanisms of the adverse drug reaction Poste, Nature, 2011 “Hierarchies of evidence should be replaced by accepting—indeed embracing—a diversity of approaches..... ...It is a plea to investigators to continue to develop and improve their methods; to decision makers to avoid adopting entrenched positions about the nature of evidence; and for both to accept that the interpretation of evidence requires judgment.” Acknowledgements The University of Liverpool • B Kevin Park • Ana Alfirevic • Maike Lichtenfels • Dean Naisbitt • Ben Francis • Dan Carr Ann Daly (Newcastle University) Panagiotis Deloukas (Sanger Institute) SERIOUS ADVERSE EVENT CONSORTIUM EPIGEN EU-PACT FDA Funders: Dept of Health (NHS Chair of Pharmacogenetics) MRC, WT, DH, NIHR, EU-FP7