Building Community Engagement Capacity in a Transdisciplinary Population Health Research Consortium

Journal of Community Engagement and Scholarship(2024)

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摘要
Community engagement has been named a research priority by the National Institutes of Health, and scholars are calling for community engagement as an approach to address racism and equity in science. Robust community-engaged research can improve research quality, increase inclusion of traditionally marginalized populations, broaden the impact of findings on real-life situations, and is particularly valuable for underexplored research topics. The goal of this paper is to describe lessons learned and best practices that emerged from community engagement in a multi-institution population health research consortium. We describe how a foundation was laid to enable community-engaged research activities in the consortium, using a staged and stepped process to build and embed multi-level community-engaged research approaches. We staged our development to facilitate (a) awareness of community engagement among consortium members, (b) the building of solidarity and alliances, and (c) the initiation of long-term engagement to allow for meaningful research translation. Our stepped process involved strategic planning; building momentum; institutionalizing engagement into the consortium infrastructure; and developing, implementing, and evaluating a plan. We moved from informal, one-time community interactions to systematic, formalized, capacity-building reciprocal engagement. We share our speed bumps and troubleshooting that inform our recommendations for other large research consortia—including investing the time it takes to build up community engagement capacity, acknowledging and drawing on strengths of the communities of interest, assuring a strong infrastructure of accountability for community engagement, and grounding the work in anti-racist principles.
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关键词
transdisciplinary,research consortia,anti-racism,community engagement,planning and design,health promotion
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