How to integrate evidence from patient preference studies into health technology assessment: a critical review and recommendations

Author(s):  
Kevin Marsh ◽  
Esther de Bekker-Grob ◽  
Nigel Cook ◽  
Hannah Collacott ◽  
Andriy Danyliv

Abstract Health technology assessment (HTA) agencies vary in their use of quantitative patient preference data (PP) and the extent to which they have formalized this use in their guidelines. Based on the authors' knowledge of the literature, we identified six different PP “use cases” that integrate PP into HTA in five different ways: through endpoint selection, clinical benefit rating, predicting uptake, input into economic evaluation, and a means to weight all HTA criteria. Five types of insight are distinguished across the use cases: understanding what matters to patients, predicting patient choices, estimating the utility generated by treatment benefits, estimating the willingness to pay for treatment benefits, and informing distributional considerations. Summarizing the literature on these use cases, we recommend circumstances in which PP can add value to HTA and the further research and guidance that is required to support the integration of PP in HTA. Where HTA places more emphasis on clinical outcomes, novel endpoints are available; or where there are already many treatment options, PP can add value by helping decision makers to understand what matters to patients. Where uptake is uncertain, PP can be used to estimate uptake probability. Where indication-specific utility functions are required or where existing utility measures fail to capture the value of treatments, PP can be used to generate or supplement existing utility estimates. Where patients are paying out of pocket, PP can be used to estimate willingness to pay.

2020 ◽  
Vol 25 (03) ◽  
pp. 129-130

Phelps CE. A New Method to Determine the Optimal Willingness to Pay in Cost-Effectiveness Analysis. Value Health. 2019; 22 (7): 785–791 Die Studie liefert einen neuen Ansatz zur Bestimmung der optimalen „Willingness to Pay“(WTP) für HTA‘s (health technology assessment). Die Analyse definiert den Nutzen als eine Funktion des Einkommens. Die Kalibrierung wurde mithilfe der abgeschätzten relativen Risikoaversion (r*) durchgeführt, von der die optimale WTP anhand der Ergebnisse von Garber und Phelps‘ aus dem Jahre 1997 bestimmt werden kann.


2017 ◽  
Vol 33 (S1) ◽  
pp. 109-110 ◽  
Author(s):  
Lucrezia Ferrario ◽  
Emanuela Foglia ◽  
Francesco Bandello ◽  
Camilla Ferri ◽  
Innocente Figini ◽  
...  

INTRODUCTION:Health Technology Assessment (HTA) aims at providing decision makers with relevant data, matching different perspectives, with an evidence-based approach. The most common framework used is the European Network for Health Technology Assessment (EUnetHTA) Core Model (1): HTA may be further supported by a Multi-Criteria Decision Analysis (MCDA) (2,3), leading to a final quantitative synthesis, facilitating the appraisal phase.This project presents a multi-dimensional comparison of the technologies available for the treatment of diabetic macular edema (Ranibizumab, Aflibercept, Dexamethasone implant and off-label Bevacizumab), comparing three Italian Regions: Lombardy, Liguria and Veneto.METHODS:The nine EUnetHTA dimensions were first prioritized by seventeen multidisciplinary evaluators. Thereafter a further nine professionals attributed a 3-level rating score (from “1” not performant, to “3” most performant) to each dimension and sub-dimension, after carefully assessing the three HTA reports. In conclusion, the investigation of statistically significant differences between the attributed scores of the evaluators was conducted, using a multi-variate analysis.RESULTS:No statistically significant differences were reported in the prioritization of each dimension, except for the equity (more important in Liguria and in Lombardy) and the economic financial dimensions (more relevant in Veneto and in Lombardy).Notwithstanding the evaluators’ different professional titles, job roles, center size, and various Regional contexts, they attributed similar scores to the HTA dimensions during the appraisal phase (even though conducted in different years, in 2015 and 2016). This finding demonstrates the robustness of both the evaluations and the final MCDA results: i) no statistically inter-regional significant differences emerged regarding Ranibizumab and Aflibercept (p-value >.05); ii) no statistically significant inter-regional differences emerged regarding Dexamethasone, except for the assessments in the clinical dimensions (p-value = .026), since in Lombardy Region the evaluation was carried out earlier in the technology's life-cycle.CONCLUSIONS:Dexamethasone was consistently attributed a higher total score, considering the final normalised weight derived from the MCDA approach (p-value =.001).


2008 ◽  
Vol 19 (4) ◽  
pp. 253-269 ◽  
Author(s):  
Sabine Heel ◽  
Sonja Fischer ◽  
Stefan Fischer ◽  
Tobias Grässer ◽  
Ellen Hämmerling ◽  
...  

Zunächst führt dieser Artikel in die wesentlichen Begrifflichkeiten und Zielstellungen der Versorgungsforschung ein. Er befasst sich dann mit der Frage, wie die einzelnen Teildisziplinen der Versorgungsforschung, (1) die Bedarfsforschung, (2) die Inanspruchnahmeforschung, (3) die Organisationsforschung, (4) das Health Technology Assessment, (5) die Versorgungsökonomie, (6) die Qualitätsforschung und zuletzt (7) die Versorgungsepidemiologie konzeptionell zu fassen sind, und wie sie für neuropsychologische Anliegen ausformuliert werden müssen. In diesem Zusammenhang werden die in den einzelnen Bereichen jeweils vorliegenden versorgungsrelevanten Studienergebnisse referiert. Soweit es zulässig ist, werden Bedarfe für die Versorgungsforschung und Versorgungspraxis in der Neurorehabilitation daraus abgeleitet und Anregungen für die weitere empirische Forschung formuliert. Der Artikel bezieht sich – entsprechend seines Anliegens – ausschließlich auf Studien, die sich mit der Situation der deutschen Neurorehabilitation befassen.


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