Using stated preference methods to facilitate knowledge translation in implementation science

被引:0
|
作者
Whitney C. Irie
Andrew Kerkhoff
Hae-Young Kim
Elvin Geng
Ingrid Eshun-Wilson
机构
[1] Boston College,School of Social Work
[2] University of California,Division of HIV, Infectious Diseases and Global Medicine Zuckerberg San Francisco General Hospital and Trauma Center
[3] Department of Population Health at NYU Grossman School of Medicine,Division of Infectious Diseases, School of Medicine
[4] Washington University in Saint Louis,Department of Global Health
[5] Stellenbosch University,undefined
关键词
Knowledge translation; Stated preference research; Discrete choice experiments; Best-worst scaling;
D O I
10.1186/s43058-024-00554-3
中图分类号
学科分类号
摘要
Enhancing the arsenal of methods available to shape implementation strategies and bolster knowledge translation is imperative. Stated preference methods, including discrete choice experiments (DCE) and best-worst scaling (BWS), rooted in economics, emerge as robust, theory-driven tools for understanding and influencing the behaviors of both recipients and providers of innovation. This commentary outlines the wide-ranging application of stated preference methods across the implementation continuum, ushering in effective knowledge translation. The prospects for utilizing these methods within implementation science encompass (1) refining and tailoring intervention and implementation strategies, (2) exploring the relative importance of implementation determinants, (3) identifying critical outcomes for key decision-makers, and 4) informing policy prioritization. Operationalizing findings from stated preference research holds the potential to precisely align health products and services with the requisites of patients, providers, communities, and policymakers, thereby realizing equitable impact.
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