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Methods to Analyse The Economic Benefits of a Pharmacogenetic (PGt) Test to Predict Response to Biologic Therapy in Rheumatoid Arthritis, and to Prioritise Further Research Alan Brennan 1, Nick Bansback 1, 1 ScHARR, University of Sheffield, England. Kip Martha 2, Marissa Peacock 2, Kenneth Huttner 2 2 Interleukin Genetics, Inc.
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“Biologics” Anakinra ($12,697), Etanercept ($18,850), Infliximab ($24,112)* * Costs include monitoring Anakinra 100mg Etanercept 25mg eow Infliximab 3mg/kg 8 weekly
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“Biologics” Anakinra ($12,697), Etanercept ($18,850), Infliximab ($24,112)* Cytokines Interleukin 1TNF alpha TNF Alpha * Costs include monitoring Anakinra 100mg Etanercept 25mg eow Infliximab 3mg/kg 8 weekly
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“Biologics” Anakinra ($12,697), Etanercept ($18,850), Infliximab ($24,112)* Is Response Genetic? 91 patients, 150mg Anakinra, 24 week RCT 1,2, gene = IL-1A +4845 Positive response = reduction of at least 50% in swollen joints 1 Camp et al. American Human Genetics Conf abstract 1088, 1999 2 Bresnihan Arthritis & Rheumatism, 1998 * Costs include monitoring Anakinra 100mg Etanercept 25mg eow Infliximab 3mg/kg 8 weekly
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“Biologics” Anakinra ($12,697), Etanercept ($18,850), Infliximab ($24,112)* Is Response Genetic? 24 week RCT 1,2, 91 patients, 150mg Anakinra,, gene = IL-1A +4845 Defined response = reduction of at least 50% in swollen joints 1 Camp et al. American Human Genetics Conf abstract 1088, 1999 2 Bresnihan Arthritis & Rheumatism, 1998 * Costs include monitoring Anakinra 100mg Etanercept 25mg eow Infliximab 3mg/kg 8 weekly
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“Biologics” Anakinra ($12,697), Etanercept ($18,850), Infliximab ($24,112)* Is Response Genetic? 91 patients, 150mg Anakinra, 24 week RCT 1,2, gene = IL-1A +4845 Positive response = reduction of at least 50% in swollen joints 1 Camp et al. American Human Genetics Conf abstract 1088, 1999 2 Bresnihan Arthritis & Rheumatism, 1998 * Costs include monitoring Anakinra 100mg Etanercept 25mg eow Infliximab 3mg/kg 8 weekly 50% 100%
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Health Outcomes ACR20 response -20% in swollen, and tender joints, and in 3 other measures
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Health Outcomes ACR20 response -20% in swollen, and tender joints, and in 3 other measures ACR20 = 0.88 * Swollen50 score (trial data)
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Health Outcomes ACR20 response -20% in swollen, and tender joints, and in 3 other measures ACR20 = 0.88 * Swollen50 score (trial data) Response ==> symptom relief and delayed progression long term
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Health Outcomes ACR20 response -20% in swollen, and tender joints, and in 3 other measures ACR20 = 0.88 * Swollen50 score (trial data) Response ==> symptom relief and delayed progression long term “Years in ACR20 Response” = primary outcome 3 Kobelt et al. Economic Conseque of Progression of RA in Swe. A&R 1999
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Health Outcomes ACR20 response -20% in swollen, and tender joints, and in 3 other measures ACR20 = 0.88 * Swollen50 score (trial data) Response ==> symptom relief and delayed progression long term “Years in ACR20 Response” = primary outcome ACR 20 Response 0.8 reduction in HAQ (0 to 3 scale) Utility 0.86 - 0.2 * HAQ 3 3 Kobelt et al. Economic Conseque of Progression of RA in Swe. A&R 1999
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Existing Uncertainty 50%
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2 Year Treatment Sequence Pathway Initial Response Longer term discontinuation
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A Pharmaco-Genetic Strategy Strategy 1 Strategy 2
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Strategy Sequences to Compare A Anakinra PGtGenetic EEtanercept IInfliximab - Maintenance 12301230
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Existing Uncertainty (2)
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Cost Assumptions Drugs and Monitoring Other Healthcare HAQ $Cost pa = $1,084 + $1,636 * HAQ 4 ==> Responder = $ 2,400 pa Non Responder = $ 3,700 pa PGt = $200 Excluding :Nursing Home Care, Employer Costs No uncertainty analysis 4 Yelin and Wanke. A&R 1999………...
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection:
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection: sample parameter(s) of interest once ~ prior (1st level)
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection: sample parameter(s) of interest once ~ prior decide on sample size (n i ) (1st level)
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection: sample parameter(s) of interest once ~ prior decide on sample size (n i ) (1st level) sample a mean value for the simulated data | parameter of interest
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection: sample parameter(s) of interest once ~ prior decide on sample size (n i ) (1st level) sample a mean value for the simulated data | parameter of interest
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection: sample parameter(s) of interest once ~ prior decide on sample size (n i ) (1st level) sample a mean value for the simulated data | parameter of interest 2) combine prior + simulated data --> simulated posterior
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection: sample parameter(s) of interest once ~ prior decide on sample size (n i ) (1st level) sample a mean value for the simulated data | parameter of interest 2) combine prior + simulated data --> simulated posterior 3) now simulate 1000 times parameters of interest ~ simulated posterior unknown parameters ~ prior uncertainty (2 nd level)
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection: sample parameter(s) of interest once ~ prior decide on sample size (n i ) (1st level) sample a mean value for the simulated data | parameter of interest 2) combine prior + simulated data --> simulated posterior 3) now simulate 1000 times parameters of interest ~ simulated posterior unknown parameters ~ prior uncertainty (2 nd level) 4) calculate best strategy = highest mean net benefit
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection: sample parameter(s) of interest once ~ prior decide on sample size (n i ) (1st level) sample a mean value for the simulated data | parameter of interest 2) combine prior + simulated data --> simulated posterior 3) now simulate 1000 times parameters of interest ~ simulated posterior unknown parameters ~ prior uncertainty (2 nd level) 4) calculate best strategy = highest mean net benefit 5) Loop 1 to 4 say 1,000 times Calculate average net benefits
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection: sample parameter(s) of interest once ~ prior decide on sample size (n i ) (1st level) sample a mean value for the simulated data | parameter of interest 2) combine prior + simulated data --> simulated posterior 3) now simulate 1000 times parameters of interest ~ simulated posterior unknown parameters ~ prior uncertainty (2 nd level) 4) calculate best strategy = highest mean net benefit 5) Loop 1 to 4 say 1,000 times Calculate average net benefits 6) EVSI parameter set = (5) - (mean net benefit | current information)
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2 Level EVSI - Research Design 4, 5 4 Brennan et al Poster SMDM 2002 5 Brennan et al Poster SMDM 2002 0)Decision model, threshold, priors for uncertain parameters 1) Simulate data collection: sample parameter(s) of interest once ~ prior decide on sample size (n i ) (1st level) sample a mean value for the simulated data | parameter of interest 2) combine prior + simulated data --> simulated posterior 3) now simulate 1000 times parameters of interest ~ simulated posterior unknown parameters ~ prior uncertainty (2 nd level) 4) calculate best strategy = highest mean net benefit 5) Loop 1 to 4 say 1,000 times Calculate average net benefits 6) EVSI parameter set = (5) - (mean net benefit | current information)
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4 strategies: A, E, I and PGt Results - 6 months
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4 strategies: A, E, I and PGt Results - 6 months
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4 strategies: A, E, I and PGt Results - 6 months
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20 strategies: A, E, I and PGt sequences Base-case Results - 2 years
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20 strategies: A, E, I and PGt sequences Optimal Strategy Depends on Threshold: $10k ==> maintenance therapy(20) $20k ==> sequence of 2 biologics(11) $25k ==> PGt + 2 biologics (9) $30k ==> PGt + 3 biologics(19) Base-case Results - 2 years
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20 strategies: A, E, I and PGt sequences Optimal StrategyProb Depends on Threshold: Optimal $10k ==> maintenance therapy(20)100% $20k ==> sequence of 2 biologics(11) 42% $25k ==> PGt + 2 biologics (9) 18% $30k ==> PGt + 3 biologics(19) 43% Base-case Results - 2 years
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Incorporating Uncertainty Assuming 25,000 per annum new patients starting biologics over next 5 years
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Partial EVPI: Key Uncertainties
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Partial EVSI: PGt Research only Caveat: Small No.of Simulations on 1st Level
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Interleukin Genetics Inc. TARGET RA program Conceptual modelling identified key missing data and helped prioritise further primary data collection 1. PGt test performance (increased sample size). 2. Etanercept / Infliximab performance in gene subgroups 3. Anakinra response rate in anti-TNF α failures
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Partial EVPI: TARGET RA Program
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Conclusions Early economic evaluation suggests potential for a cost-effective pharmacogenetic test.
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Conclusions Early economic evaluation suggests potential for a cost-effective pharmacogenetic test. Expected value of information analysis has quantified the key research priorities.
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Conclusions Early economic evaluation suggests potential for a cost-effective pharmacogenetic test. Expected value of information analysis has quantified the key research priorities. EVSI can quantify the value of the specific research design
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