| Literature DB >> 27242524 |
Hans-Joerg Fugel1, Mark Nuijten2, Maarten Postma1, Ken Redekop3.
Abstract
BACKGROUND: Stratified Medicine (SM) is becoming a practical reality with the targeting of medicines by using a biomarker or genetic-based diagnostic to identify the eligible patient sub-population. Like any healthcare intervention, SM interventions have costs and consequences that must be considered by reimbursement authorities with limited resources. Methodological standards and guidelines exist for economic evaluations in clinical pharmacology and are an important component for health technology assessments (HTAs) in many countries. However, these guidelines have initially been developed for traditional pharmaceuticals and not for complex interventions with multiple components. This raises the issue as to whether these guidelines are adequate to SM interventions or whether new specific guidance and methodology is needed to avoid inconsistencies and contradictory findings when assessing economic value in SM.Entities:
Keywords: biomarkers; guidelines; health technology assessments; reimbursement; reimbursement mechanisms; stratified medicine
Year: 2016 PMID: 27242524 PMCID: PMC4861004 DOI: 10.3389/fphar.2016.00113
Source DB: PubMed Journal: Front Pharmacol ISSN: 1663-9812 Impact factor: 5.810
Summary of methodological issues in economic evaluations of SM interventions.
| Perspectives and Target Audience | Societal or third party | Societal perspective is preferred (ideally), although third-party is most used. Funding silos may lead to different payer perspectives, i.e., those paying for drugs vs. those paying for diagnostics. | Clear understanding of target audience and further specification of what defines a third-party-payer will increase relevance for decision-making. |
| Target Population | Clear description of target population and subgroups analyzed. | Testing reveals heterogeneity and creates multiple subgroups & treatment pathways which may challenge specification of target population groups. Identifying the exact place of a test within care pathway is critical. | Specification of target populations groups according testing rules will guide the selection of relevant comparator and may reduce variability of evaluation findings. |
| Comparators | Standard care being most widely used. | Multiple potential test designs may exist and makes defining testing interventions a challenge. The sequence of testing and the inclusion of a “no test” comparator is often variable and can lead to different coverage recommendations. | An additional comparison should be considered by splitting the SM treatment. A comparison of the “test first with the new compound/drug” vs. “treat all with new compound/drug” vs. “standard care” is crucial for payers. |
| Measuring Effectiveness | Systematic review; incorporate real-world factors that modify effectiveness which also may include indirect comparisons. | Estimates of effectiveness relies on various data sources and is more sensitive to adherence and compliance effects. | Strict recommendations that compliance and adherence must be accounted for in sensitivity analysis. |
| Valuing outcomes | Use appropriate preference-based measures to value differences between the intervention and alternatives (e.g., OALY). | Standard measures (e.g., QALY) have limited applicability and are focused on average population rather than individual/sub-population outcomes. Yet alternative metrics (e.g., personal utility) are underdeveloped and alternative approaches (e.g., cost-benefit analysis) are underused. | Recommendation to incorporate local utilization patterns to improve behavioral assumptions. Further research is needed for quantifying non-health outcomes in evaluations. |
| Costs and resource use | Measure and value resources that are relevant to study perspective. | Establishing and projecting the additional costs due to testing is challenging. | National price lists of diagnostic test (unit) costs would help avoid reporting variations in costs. |
| Modeling | Inclusion of sensitivity/specificity and especially false- negative and false- positive considerations will increase structural complexity to establish the relationship between test results and treatment changes and outcomes. | An iterative approach to evaluation is recommended (via early modeling) to identify the need for further evidence generation in alignment with HTA requirements. | |
| Uncertainty | Sensitivity analyses | Extra sensitivity analyses are required for sensitivity/specificity and cost of the test. | Scenario analyses may be more important in SM; especially when considering test characteristics and potential evidence gaps. |