| Literature DB >> 22070532 |
G Feljandro P Ramos1, Sandra Kuiper, Edward Dompeling, Antoinette D I van Asselt, Wim J C de Grauw, J André Knottnerus, Onno C P van Schayck, Tjard R J Schermer, Johan L Severens.
Abstract
BACKGROUND: Given the rising number of asthma cases and the increasing costs of health care, prevention may be the best cure. Decisions regarding the implementation of prevention programmes in general and choosing between unifaceted and multifaceted strategies in particular are urgently needed. Existing trials on the primary prevention of asthma are, however, insufficient on their own to inform the decision of stakeholders regarding the cost-effectiveness of such prevention strategies. Decision analytic modelling synthesises available data for the cost-effectiveness evaluation of strategies in an explicit manner. Published reports on model development should provide the detail and transparency required to increase the acceptability of cost-effectiveness modelling. But, detail on the explicit steps and the involvement of experts in structuring a model is often unevenly reported. In this paper, we describe a procedure to structure and validate a model for the primary prevention of asthma in children.Entities:
Mesh:
Year: 2011 PMID: 22070532 PMCID: PMC3226537 DOI: 10.1186/1471-2288-11-150
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Figure 1Selection of economic evaluations for the modified convergent validation. This flow chart shows the process of selecting the studies which would be included in the analysis for parallel validation.
Figure 2The PREVASC Research Line. Schematic flow of the participants in the different studies of the PREVASC research line beginning with the risk-screening of the sample population indicates that data synthesis through modelling is necessary to determine the value of multifaceted primary asthma prevention amongst children. Measurement around the age of six for subjects with negative history is part of the current (Phase 4) study.
Algorithm for objective asthma diagnosis of children
| Inhaled corticosteroid treatment 3 months prior to lung function assessment | Symptom/ | Reversibility | Hyperreactivity | Asthma |
|---|---|---|---|---|
| - | + | + | Not Needed | + |
| + | - | + | + | |
| + | - | - | - | |
| - | + | + | + | |
| - | + | - | - | |
| - | - | Not Needed | - | |
| + | Not Needed | + | + | + |
| Not Needed | + | - | + | |
| Not Needed | - | + | + | |
| Not Needed | - | - | Sensitivity Analysis | |
Figure 3Expert input in the model development. Flowchart showing the influence of experts regarding the design and validation of the structure of the model to determine the economic value of primary prevention in asthma.
Decision problem framework for the primary prevention of asthma in children
| Framework Aspect | Detail |
|---|---|
| Objective(s) | To reduce the incidence of asthma diagnosis in children |
| Audience/Stakeholder(s) | Primary care givers (primary care or welfare centre physicians, midwives, and general practice/medical assistants) and Medical specialists (pulmonology and paediatrics) |
| Perspective | Healthcare system |
| Analytic time horizon | Up to six years after birth |
| Intervention(s) | Multifaceted primary prevention |
| Comparator | Usual care |
| Target population | Unborn child |
| Effect outcome(s) | Objective diagnosis of asthma |
| Cost(s) | Direct health care costs; |
| Economic evaluation | Cost-effectiveness |
Results for the systematic review for decision analytic models on asthma prevention
| Step | Search String | Hits |
|---|---|---|
| #1 | ("Costs and Cost Analysis/classification"[MeSH] OR "Costs and Cost Analysis/economics"[MeSH] OR "Costs and Cost Analysis/education"[MeSH] OR "Costs and Cost Analysis/ethics"[MeSH] OR "Costs and Cost Analysis/history"[MeSH] OR "Costs and Cost Analysis/legislation and jurisprudence"[MeSH] OR "Costs and Cost Analysis/methods"[MeSH] OR "Costs and Cost Analysis/organization and administration"[MeSH] OR "Costs and Cost Analysis/standards"[MeSH] OR "Costs and Cost Analysis/statistics and numerical data"[MeSH] OR "Costs and Cost Analysis/trends"[MeSH] OR "Costs and Cost Analysis/utilization"[MeSH]) | 26349 |
| #2 | Cost-effective*[Title/Abstract] | 54952 |
| #3 | #1 OR #2 | 78623 |
| #4 | Journal Article[ptyp] AND English[lang] | 14875628 |
| #5 | "Animals"[MeSH:NoExp] | 4570915 |
| #6 | "Humans"[MeSH:NoExp] | 1125512 |
| #7 | #5 NOT (#5 AND #6) | 3397345 |
| #8 | (#3 AND #4) NOT #7 | 67344 |
| #9 | Asthma*[Title/Abstract] or "Asthma/prevention and control"[MeSH] | 99545 |
| #10 | #8 AND #9 | 586 |
| #11 | #10 NOT Review[Ptyp] | 406 |
| #12 | "primary prevention"[Title/Abstract] or "secondary prevention"[Title/Abstract] | 16821 |
| #13 | #11 AND #12 | 2 |
| #14 | #10 AND model[Title/Abstract] | 62 |
Figure 4The PREVASC Decision Tree. Structure of the decision analytic model to assess the cost-effectiveness of primary prevention of asthma. The tree compares current situation without primary prevention with the alternative of primary prevention of asthma amongst children (first decision node) as well as whether multifaceted or unifaceted primary prevention approaches is more cost-effective (second decision node).
Important characteristics of studies for parallel validation
| Study | Model | Time Horizon | Perspective | Population | Intervention | Comparator | Effects |
|---|---|---|---|---|---|---|---|
| Nuijten [ | Decision tree | Lifetime | UK National Health Service and society | Pre-term infants and children with BPD | Palivizumab | No prophylaxis | Number of RSV hospitalizations avoided |
| Omnes [ | Decision tree | 7 years (6 years-adults) | French Social Security | Children and adults | Specific immunotherapy (injectable and sublingual) | Current symptomatic treatment | Proportions of individuals with rhinitis or allergic asthma |
| Resch [ | Decision tree | Lifetime | Austrian third party payer and society | Infants born premature or with BPD, and children with congenital heart disease | Palivizumab | No prophylaxis | Life years gained and QALY gained |
| ElHassan [ | Markov (with and without increased asthma risk due to RSV infection) | 1 year (no-risk); 8-10 years (with risk) | US society | Premature infants | Palivizumab | No prophylaxis | QALY gained |
| Brüggenjürgen [ | Markov model | 15 years | German third party payer and society | Children (6 to 12 years), adolescents (13 to 18 years), and adults (19 to 65 years) | Specific immunotherapy (subcutaneous) and symptom treatment | Symptom treatment | QALY gained |
QALY-quality-adjusted life year.
BPD = bronchopulmonary dysplasia; RSV = respiratory syncytial virus; QALY = quality-adjusted life years