El-Bassel Nabila, David James, Mukherjee Trena I, Aggarwal Maneesha, Wu Elwin, Gilbert Louisa, Walters Scott, Chandler Redonna, Hunt Tim, Frye Victoria, Goddard-Eckrich Dawn A, Keyes Katherine, Benjamin Shoshana N, Balise Raymond, Muresan Smaranda, Aragundi Eric, Chen Marc, Davé Parixit, Lounsbury David, Sabounchi Nasim, Feaster Dan, Huang Terry, Zheng Tian
School of Social Work, Columbia University, New York City, United States.
Information Technology, Columbia University, New York City, United States.
Implement Sci. 2025 Aug 7;20(1):37. doi: 10.1186/s13012-025-01447-2.
Community-engaged research (CER) leverages knowledge, insights, and expertise of researchers and communities to address complex public health challenges and improve community well-being. CER fosters collaboration throughout all research phases, from problem identification and implementation to evaluation. Artificial Intelligence (AI) could enhance the collaborative process by improving data collection, analysis, insight, and engagement, while preserving research ethics. By integrating AI into CER, researchers could enhance their capacity to work collaboratively with communities, making research more efficient, inclusive, and impactful. However, careful consideration must be given to the ethical and social implications of AI to ensure that it supports the goals of CER. This paper introduces the PRISM-Capabilities model for AI to promote a human-centered approach that emphasizes collaboration, transparency, and inclusivity when using AI within CER.
The PRISM-Capabilities model for AI includes six components to ensure that ethical concerns are addressed, trust and transparency are maintained, and communities are equipped to use and understand AI technology. This conceptual model is specifically tailored for community-engaged implementation science research, facilitating close collaboration between researchers and community partners to guide the use of AI throughout. This paper also proposes next steps to validate the model using the HEALing Communities Study (HCS), the largest community-engaged research study to date, which aimed to reduce fatal overdose deaths in 67 highly impacted communities in the United States.
The PRISM-Capabilities model consists of six components: Optimizing engagement of implementers, settings, and recipients; characteristics of intervention implementers, settings, and recipients; equity assessment and risk management; implementation and sustainability infrastructure; external environment; and ethical assessment and evaluation. Although AI was not initially used during the HCS, we highlight how AI will be leveraged to complete post-hoc analyses of each of the six components and validate the PRISM-Capabilities model.
The application of AI to CER relies on human-centered principles that prioritize human-AI collaboration, allowing for the operationalization of responsible AI practices. The PRISM-Capabilities model provides a framework to account for the complexities of real-world social science problems and explicitly positions AI tools at bottlenecks experienced with conventional approaches.
社区参与式研究(CER)利用研究人员和社区的知识、见解及专业技能来应对复杂的公共卫生挑战并改善社区福祉。CER在从问题识别、实施到评估的所有研究阶段促进合作。人工智能(AI)可以通过改进数据收集、分析、见解和参与度,同时维护研究伦理,来加强合作过程。通过将AI整合到CER中,研究人员可以提高与社区合作的能力,使研究更高效、更具包容性且更有影响力。然而,必须仔细考虑AI的伦理和社会影响,以确保其支持CER的目标。本文介绍了AI的PRISM-能力模型,以促进一种以人为本的方法,该方法在CER中使用AI时强调合作、透明度和包容性。
AI的PRISM-能力模型包括六个组成部分,以确保解决伦理问题、维持信任和透明度,并使社区有能力使用和理解AI技术。这个概念模型是专门为社区参与式实施科学研究量身定制的,有助于研究人员和社区伙伴之间的密切合作,以指导AI在整个过程中的使用。本文还提出了下一步措施,即使用“治愈社区研究”(HCS)来验证该模型,这是迄今为止最大的社区参与式研究,旨在减少美国67个受影响严重社区的致命药物过量死亡人数。
PRISM-能力模型由六个组成部分组成:优化实施者、环境和接受者的参与度;干预实施者、环境和接受者的特征;公平评估和风险管理;实施和可持续性基础设施;外部环境;以及伦理评估和评价。尽管在HCS期间最初没有使用AI,但我们强调将如何利用AI对六个组成部分中的每一个进行事后分析,并验证PRISM-能力模型。
AI在CER中的应用依赖于以人为本的原则(该原则优先考虑人机协作),从而使负责任的AI实践得以实施。PRISM-能力模型提供了一个框架,以应对现实世界社会科学问题的复杂性,并明确将AI工具置于传统方法遇到瓶颈的位置。