Urban Health Collaborative, Dornsife School of Public Health, Drexel University, 3600 Market St, Philadelphia, PA, 19104, USA; South Australian Health and Medical Research Institute, North Terrace, Adelaide, SA, 5000, Australia.
Department of Industrial Engineering, Universidad de Los Andes, Bogotá, Colombia; Social and Health Complexity Center, Universidad de Los Andes, Bogotá, Colombia.
Soc Sci Med. 2021 Aug;282:114157. doi: 10.1016/j.socscimed.2021.114157. Epub 2021 Jun 21.
Urban health is shaped by a system of factors spanning multiple levels and scales, and through a complex set of interactions. Building on causal loop diagrams developed via several group model building workshops, we apply the cross-impact balance (CIB) method to understand the strength and nature of the relationships between factors in the food and transportation system, and to identify possible future urban health scenarios (i.e., permutations of factor states that impact health in cities). We recruited 16 food and transportation system experts spanning private, academic, non-government, and policy sectors from six Latin American countries to complete an interviewer-assisted questionnaire. The questionnaire, which was pilot tested on six researchers, used a combination of questions and visual prompts to elicit participants' perceptions about the bivariate relationships between 11 factors in the food and transportation system. Each participant answered questions related to a unique set of relationships within their domain of expertise. Using CIB analysis, we identified 21 plausible future scenarios for the system. In the baseline model, 'healthy' scenarios (with low chronic disease, high physical activity, and low consumption of highly processed foods) were characterized by high public transportation subsidies, low car use, high street safety, and high free time, illustrating the links between transportation, free time and dietary behaviors. In analyses of interventions, low car use, high public transport subsidies and high free time were associated with the highest proportion of factors in a healthful state and with high proportions of 'healthy' scenarios. High political will for social change also emerged as critically important in promoting healthy systems and urban health outcomes. The CIB method can play a novel role in augmenting understandings of complex urban systems by enabling insights into future scenarios that can be used alongside other approaches to guide urban health policy planning and action.
城市健康受到跨越多个层次和规模的因素系统的影响,并通过一系列复杂的相互作用来塑造。基于通过多个小组建模研讨会开发的因果关系图,我们应用交叉影响平衡(CIB)方法来理解食品和交通系统中因素之间关系的强弱和性质,并确定可能的未来城市健康情景(即,影响城市健康的因素状态的排列组合)。我们从六个拉丁美洲国家招募了 16 名来自私营、学术、非政府和政策部门的食品和交通系统专家,让他们完成了一份采访者辅助的问卷。该问卷对六名研究人员进行了试点测试,使用问题和视觉提示的组合来征求参与者对食品和交通系统中 11 个因素之间的二元关系的看法。每位参与者回答了与其专业领域内的一组独特关系相关的问题。使用 CIB 分析,我们确定了该系统的 21 个可能的未来情景。在基线模型中,“健康”情景(慢性病低、身体活动高、高度加工食品低)的特点是公共交通补贴高、汽车使用低、街道安全高和空闲时间多,说明了交通、空闲时间和饮食行为之间的联系。在干预措施的分析中,低汽车使用、高公共交通补贴和高空闲时间与健康状态因素比例最高和“健康”情景比例最高有关。对社会变革的强烈政治意愿也被证明是促进健康系统和城市健康结果的关键。CIB 方法可以通过提供对未来情景的深入了解,在增强对复杂城市系统的理解方面发挥新的作用,这些情景可以与其他方法一起用于指导城市健康政策规划和行动。