| Literature DB >> 27747536 |
Jason Madan1,2, Tony Ades3, Pelham Barton4, Laura Bojke5, Ernest Choy6, Philip Helliwell7, Paresh Jobanputra8, Ken Stein9, Andrew Stevens4, Jonathan Tosh10, Suzanne Verstappen11, Allan Wailoo10.
Abstract
INTRODUCTION: Biologic therapies are efficacious but costly. A number of health economic models have been developed to determine the most cost-effective way of using them in the treatment pathway. These models have produced conflicting results, driven by differences in assumptions, model structure, and data, which undermine the credibility of funding decisions based on modeling studies. A Consensus Working Party met to discuss recommendations and approaches for future models of biologic therapies.Entities:
Keywords: Arthritis; Biologics; Economic models
Year: 2015 PMID: 27747536 PMCID: PMC4883267 DOI: 10.1007/s40744-015-0020-0
Source DB: PubMed Journal: Rheumatol Ther ISSN: 2198-6576
Members of the Consensus Working Party
| Participant | Organization | Relevant expertise and experience |
|---|---|---|
| Professor A. E. Ades (chair) | School of Social and Community Medicine, University of Bristol | Evidence synthesis methodology, member of NICE appraisals committee since 2003 |
| Dr. Paresh Jobanputra | Queen Elizabeth Hospital, Queen Elizabeth Medical Centre, Birmingham | Clinical specialist, co-author of multiple NICE technology appraisals of biologic therapies |
| Professor Ernest Choy | Cardiff University School of Medicine | Clinical specialist, expert advisor to NICE, member of EULAR |
| Dr. Philip Helliwell | Chapel Allerton Hospital, Leeds and St Luke’s hospital, Bradford | Clinical specialist, expert advisor to evaluation group for NICE PsA guidance, member of GRAPPA |
| Professor Andrew Stevens | Department of Primary Care, Public and Occupational Health, University of Birmingham | Health technology assessment, chair of a NICE appraisal committee since 2005 |
| Professor Ken Stein | PENTAG, University of Exeter Medical School | Health technology assessment, vice chair of NICE appraisal committee, director of PENTAG, representative of the UK HTA program |
| Dr. Suzanne Verstappen | ARUK Epidemiology Unit, University of Manchester | Arthritis epidemiology, member of NOAR staff |
| Dr. Pelham Barton | School of Health and Population Sciences, University of Birmingham | Health economic modeling, developer of the BRAM |
| Dr. Allan Wailoo | School of Health and Related Research, University of Sheffield | Health economics/modeling, director of the NICE DSU, co-developer of the Sheffield RA model |
| Mr. Jon Tosh | School of Health and Related Research, University of Sheffield | Health economics/modeling, member of the NICE DSU and ScHARR-TAG, co-developer of the Sheffield RA model |
| Dr. Laura Bojke | Centre for Health Economics, University of York | Health economics/modeling, co-developer of the York PsA model |
| Dr. Jason Madan | School of Social and Community Medicine, University of Bristol and Warwick Medical School | Health economics/modeling, evidence synthesis |
BRAM Birmingham Rheumatoid Arthritis Model, DSU Decision Support Unit, EULAR European League Against Rheumatism, GRAPPA Group for Research and Assessment of Psoriasis and Psoriatic Arthritis, NICE National Institute for Health and Care Excellence, NOAR Norfolk Arthritis Register, PENTAG Peninsular Technology Assessment Group, PsA Psoriatic arthritis, RA Rheumatoid arthritis, ScHARR-TAG School of Health and Related Research Technology Assessment Group
Overview of topics and issues for consensus
| Topic 1: modeling the initial response to treatment, including: |
| Choice of scale to measure initial response |
| Link between response level and decision to continue treatment |
| Choice and use of evidence to estimate effect of treatment on initial response |
| Estimating the baseline response in the comparator treatment |
| Modeling adverse events in the initial treatment phase |
| Influence of effect modifiers on treatment effects |
| Topic 2: longer-term disease progression in those who continue treatment, including: |
| Choice of scale to measure long-term disease progression |
| Rate of disease progression during long-term treatment |
| Treatment duration (i.e., time to withdrawal of treatment due to lack of efficacy and/or adverse events) |
| Modeling adverse events in the long-term treatment phase |
| The influence of effect modifiers on treatment duration and disease progression |
| Topic 3: estimating lifetime costs and benefits of treatments, including: |
| Resource use implications to include in calculations |
| Modeling the relationship between disease severity and mortality risk |
| Topic 4: structural modeling approaches: |
| Representing sequences of treatments |
| Cohort vs. individual patient models |