首页> 外文期刊>Health Research Policy and Systems >Enhancing implementation science by applying best principles of systems science
【24h】

Enhancing implementation science by applying best principles of systems science

机译:通过应用系统科学的最佳原则加强实现科学

获取原文
           

摘要

Implementation science holds promise for better ensuring that research is translated into evidence-based policy and practice, but interventions often fail or even worsen the problems they are intended to solve due to a lack of understanding of real world structures and dynamic complexity. While systems science alone cannot possibly solve the major challenges in public health, systems-based approaches may contribute to changing the language and methods for conceptualising and acting within complex systems. The overarching goal of this paper is to improve the modelling used in dissemination and implementation research by applying best principles of systems science. Best principles, as distinct from the more customary term ‘best practices’, are used to underscore the need to extract the core issues from the context in which they are embedded in order to better ensure that they are transferable across settings. Toward meaningfully grappling with the complex and challenging problems faced in adopting and integrating evidence-based health interventions and changing practice patterns within specific settings, we propose and illustrate four best principles derived from our systems science experience: (1) model the problem, not the system; (2) pay attention to what is important, not just what is quantifiable; (3) leverage the utility of models as boundary objects; and (4) adopt a portfolio approach to model building. To improve our mental models of the real world, system scientists have created methodologies such as system dynamics, agent-based modelling, geographic information science and social network simulation. To understand dynamic complexity, we need the ability to simulate. Otherwise, our understanding will be limited. The practice of dynamic systems modelling, as discussed herein, is the art and science of linking system structure to behaviour for the purpose of changing structure to improve behaviour. A useful computer model creates a knowledge repository and a virtual library for internally consistent exploration of alternative assumptions. Among the benefits of systems modelling are iterative practice, participatory potential and possibility thinking. We trust that the best principles proposed here will resonate with implementation scientists; applying them to the modelling process may abet the translation of research into effective policy and practice.
机译:实施科学持希望更好地确保转化为基于证据的政策和实践,但由于对缺乏对现实世界结构和动态复杂性的理解,干预措施通常会失败甚至恶化他们旨在解决的问题。虽然单独的系统科学不可能解决公共卫生的主要挑战,但基于系统的方法可能有助于改变复杂系统内概念化和行动的语言和方法。本文的总体目标是通过应用系统科学最佳原则来改善传播和实施研究的建模。与常规术语“最佳实践”不同的最佳原则用于强调从嵌入它们的上下文中提取核心问题的需要,以便更好地确保它们在环境中可转让。在有意义地努力争取在采用和整合基于证据的健康干预和更改特定设置中的实践模式的复杂和挑战性问题,我们提出并说明了来自我们的系统科学经验的四个最佳原则:(1)模型问题,而不是系统; (2)注意重要的是什么,而不仅仅是可量化的; (3)利用模型作为边界对象的效用; (4)采用模型建设的投资组合方法。为了改善现实世界的心理模型,系统科学家已经创造了系统动态,基于代理的建模,地理信息科学和社交网络仿真等方法。要了解动态复杂性,我们需要模拟能力。否则,我们的理解将有限。如本文所讨论的,动态系统建模的实践是将系统结构连接到行为的艺术和科学,以改变结构以改善行为。有用的计算机模型创建了一个知识存储库和虚拟库,用于替代假设的内部一致探索。系统建模的好处是迭代实践,参与潜力和可能性思考。我们相信这里提出的最好的原则将与实施科学家共鸣;将它们应用于建模过程可能会在有效的政策和实践中介绍研究。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号