使用参与式系统建模作为慢性病预防实施绘图工具的考虑。

IF 3.3 3区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Annals of Epidemiology Pub Date : 2025-01-01 DOI:10.1016/j.annepidem.2024.12.002
Travis R. Moore , Erin Hennessy , Yuilyn Chang Chusan , Laura Ellen Ashcraft , Christina D. Economos
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引用次数: 0

摘要

有效的慢性疾病预防需要一种系统的方法来设计、实施和完善干预措施,这些干预措施考虑到影响健康结果的因素的复杂性和相互依赖性。本文提出了参与式实施系统映射(PISM)过程,该过程将参与式系统建模与实施策略开发相结合,以增强干预设计和实施规划。PISM利用研究人员和社区伙伴的协作努力来分析复杂的卫生系统,确定关键决定因素,并制定适应性强且与环境相关的量身定制的干预措施和战略。PISM过程的阶段包括战略、创新、操作和评估。我们描述并演示了每个阶段如何有助于有效和可持续的干预实施的总体目标。我们还解决了数据可用性、模型复杂性和资源约束方面的挑战。我们提供创新的数据收集方法和参与式模型开发等解决方案,以增强系统模型的稳健性和适用性。通过对慢性病预防干预措施发展的案例研究,本文说明了PISM的实际应用,并强调了它在指导流行病学家和实施科学家开发应对现实世界卫生系统复杂性的干预措施方面的潜力。该结论呼吁进一步研究以完善参与式系统建模技术,克服数据可用性方面的现有挑战,并扩大PISM在不同公共卫生背景下的使用。
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Considerations for using participatory systems modeling as a tool for implementation mapping in chronic disease prevention
Effective chronic disease prevention requires a systems approach to the design, implementation, and refinement of interventions that account for the complexity and interdependence of factors influencing health outcomes. This paper proposes the Participatory Implementation Systems Mapping (PISM) process, which combines participatory systems modeling with implementation strategy development to enhance intervention design and implementation planning. PISM leverages the collaborative efforts of researchers and community partners to analyze complex health systems, identify key determinants, and develop tailored interventions and strategies that are both adaptive and contextually relevant. The phases of the PISM process include strategize, innovate, operationalize, and assess. We describe and demonstrate how each phase contributes to the overall goal of effective and sustainable intervention implementation. We also address the challenges of data availability, model complexity, and resource constraints. We offer solutions such as innovative data collection methods and participatory model development to enhance the robustness and applicability of systems models. Through a case study on the development of a chronic disease prevention intervention, the paper illustrates the practical application of PISM and highlights its potential to guide epidemiologists and implementation scientists in developing interventions that are responsive to the complexities of real-world health systems. The conclusion calls for further research to refine participatory systems modeling techniques, overcome existing challenges in data availability, and expand the use of PISM in diverse public health contexts.
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来源期刊
Annals of Epidemiology
Annals of Epidemiology 医学-公共卫生、环境卫生与职业卫生
CiteScore
7.40
自引率
1.80%
发文量
207
审稿时长
59 days
期刊介绍: The journal emphasizes the application of epidemiologic methods to issues that affect the distribution and determinants of human illness in diverse contexts. Its primary focus is on chronic and acute conditions of diverse etiologies and of major importance to clinical medicine, public health, and health care delivery.
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