Department of Public Health and Community Medicine, Tufts University School of Medicine, USA.
Department of Biostatistics and Data Science, University of Texas, Health Sciences Center at Houston, USA.
Soc Sci Med. 2022 Feb;295:113352. doi: 10.1016/j.socscimed.2020.113352. Epub 2020 Sep 10.
Syndemics framework describes two or more co-occurring epidemics that synergistically interact with each other and the complex structural social forces that sustain them leading to excess disease burden. The term syndemic was first used to describe the interaction between substance abuse, violence, and AIDS by Merrill Singer. A broader range of syndemic studies has since emerged describing the framework's applicability to other public health scenarios. With syndemic theory garnering significant attention, the focus is shifting towards developing robust empirical analytical approaches. Unfortunately, the complex nature of the disease-disease interactions nested within several social contexts complicates empirical analyses. In answering the call to analyze syndemics at the population level, we propose the use of spatial epidemiology as an empirical framework for syndemics research. Spatial epidemiology, which typically relies on geographic information systems (GIS) and statistics, is a discipline that studies spatial variations to understand the geographic landscape and the risk environment within which disease epidemics occur. GIS maps provide visualization aids to investigate the spatial distribution of disease outcomes, the associated social factors, and environmental exposures. Analytical inference, such as estimation of disease risks and identification of spatial disease clusters, can provide a detailed statistical view of spatial distributions of diseases. Spatial and spatiotemporal models can help us to understand, measure, and analyze disease syndemics as well as the social, biological, and structural factors associated with them in space and time. In this paper, we present a background on syndemics and spatial epidemiological theory and practice. We then present a case study focused on the HIV and HCV syndemic in West Virginia to provide an example of the use of GIS and spatial analytical methods. The concepts described in this paper can be considered to enhance understanding and analysis of other syndemics for which space-time data are available.
综合征描述了两种或多种同时发生的流行病,它们相互协同作用,并与维持它们的复杂结构社会力量共同导致疾病负担过重。这个术语最初是由 Merrill Singer 用来描述药物滥用、暴力和艾滋病之间的相互作用。此后,出现了更广泛的综合征研究,描述了该框架在其他公共卫生场景中的适用性。随着综合征理论引起了广泛关注,人们的注意力正在转向开发强大的实证分析方法。不幸的是,嵌套在几个社会背景中的疾病-疾病相互作用的复杂性质使得实证分析变得复杂。为了应对在人群层面分析综合征的呼吁,我们提出使用空间流行病学作为综合征研究的实证框架。空间流行病学通常依赖地理信息系统 (GIS) 和统计学,是一门研究空间变化以了解疾病流行发生的地理景观和风险环境的学科。GIS 地图提供了可视化辅助工具,用于调查疾病结果的空间分布、相关社会因素和环境暴露。分析推断,如疾病风险估计和空间疾病集群识别,可以提供疾病空间分布的详细统计视图。空间和时空模型可以帮助我们理解、衡量和分析疾病综合征以及与之相关的社会、生物和结构因素在空间和时间上的分布。在本文中,我们介绍了综合征和空间流行病学理论和实践的背景。然后,我们提出了一个以西弗吉尼亚州 HIV 和 HCV 综合征为例的案例研究,以提供使用 GIS 和空间分析方法的示例。本文中描述的概念可以被认为是增强对其他有时空数据的综合征的理解和分析。