Addy Nii Antiaye, Shaban-Nejad Arash, Buckeridge David L, Dubé Laurette
McGill Center for the Convergence in Health and Economics (MCCHE), Desautels Faculty of Management, McGill University, Montreal, Quebec H3A 1G5, Canada.
School of Public Health, University of California, Berkeley, CA 94720, USA.
Int J Environ Res Public Health. 2015 Jan 23;12(2):1314-33. doi: 10.3390/ijerph120201314.
Multi-stakeholder partnerships (MSPs) have become a widespread means for deploying policies in a whole of society strategy to address the complex problem of childhood obesity. However, decision-making in MSPs is fraught with challenges, as decision-makers are faced with complexity, and have to reconcile disparate conceptualizations of knowledge across multiple sectors with diverse sets of indicators and data. These challenges can be addressed by supporting MSPs with innovative tools for obtaining, organizing and using data to inform decision-making. The purpose of this paper is to describe and analyze the development of a knowledge-based infrastructure to support MSP decision-making processes. The paper emerged from a study to define specifications for a knowledge-based infrastructure to provide decision support for community-level MSPs in the Canadian province of Quebec. As part of the study, a process assessment was conducted to understand the needs of communities as they collect, organize, and analyze data to make decisions about their priorities. The result of this process is a "portrait", which is an epidemiological profile of health and nutrition in their community. Portraits inform strategic planning and development of interventions, and are used to assess the impact of interventions. Our key findings indicate ambiguities and disagreement among MSP decision-makers regarding causal relationships between actions and outcomes, and the relevant data needed for making decisions. MSP decision-makers expressed a desire for easy-to-use tools that facilitate the collection, organization, synthesis, and analysis of data, to enable decision-making in a timely manner. Findings inform conceptual modeling and ontological analysis to capture the domain knowledge and specify relationships between actions and outcomes. This modeling and analysis provide the foundation for an ontology, encoded using OWL 2 Web Ontology Language. The ontology is developed to provide semantic support for the MSP process, defining objectives, strategies, actions, indicators, and data sources. In the future, software interacting with the ontology can facilitate interactive browsing by decision-makers in the MSP in the form of concepts, instances, relationships, and axioms. Our ontology also facilitates the integration and interpretation of community data, and can help in managing semantic interoperability between different knowledge sources. Future work will focus on defining specifications for the development of a database of indicators and an information system to help decision-makers to view, analyze and organize indicators for their community. This work should improve MSP decision-making in the development of interventions to address childhood obesity.
多利益相关方伙伴关系(MSPs)已成为在全社会战略中部署政策以解决儿童肥胖这一复杂问题的广泛手段。然而,MSPs中的决策充满挑战,因为决策者面临复杂性,并且必须协调多个部门对知识的不同概念化,以及各种指标和数据。通过为MSPs提供用于获取、组织和使用数据以辅助决策的创新工具,可以应对这些挑战。本文的目的是描述和分析一种基于知识的基础设施的发展,以支持MSP决策过程。本文源于一项研究,旨在为基于知识的基础设施定义规范,为加拿大魁北克省的社区层面MSPs提供决策支持。作为该研究的一部分,进行了一次过程评估,以了解社区在收集、组织和分析数据以就其优先事项做出决策时的需求。这一过程的结果是一幅“画像”,它是其社区健康与营养的流行病学概况。画像为干预措施的战略规划和制定提供信息,并用于评估干预措施的影响。我们的主要发现表明,MSP决策者在行动与结果之间的因果关系以及决策所需的相关数据方面存在模糊性和分歧。MSP决策者表示希望有易于使用的工具,以促进数据的收集、组织、综合和分析,从而能够及时做出决策。研究结果为概念建模和本体分析提供了信息,以捕捉领域知识并明确行动与结果之间的关系。这种建模和分析为使用OWL 2网络本体语言编码的本体奠定了基础。该本体旨在为MSP过程提供语义支持,定义目标、战略、行动、指标和数据源。未来,与本体交互的软件可以以概念、实例、关系和公理的形式促进MSP中决策者的交互式浏览。我们的本体还便于社区数据的整合和解释,并有助于管理不同知识源之间的语义互操作性。未来的工作将集中于为指标数据库和信息系统的开发定义规范,以帮助决策者查看、分析和组织其社区的指标。这项工作应能改善MSP在制定解决儿童肥胖问题的干预措施时的决策。