Opportunities and Challenges for Developing Syndromic Surveillance Systems for the Detection of Social Epidemics.

Online journal of public health informatics Pub Date : 2020-06-18 eCollection Date: 2020-01-01 DOI:10.5210/ojphi.v12i1.10579
David Scales
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Abstract

This commentary explores the potential and challenges of developing syndromic surveillance systems with the ability to more rapidly detect epidemics of addiction, poverty, housing instability, food insecurity, social isolation and other social determinants of health (SDoH). Epidemiologists tracking SDoH heavily rely on expensive government surveys released annually, delaying for months if not years the timely detection of social epidemics, defined as sudden, rapid or unexpected changes in social determinants of population health. Conversely, infectious disease syndromic surveillance is an effective early warning tool for epidemic diseases using various types of non-traditional epidemiological data from emergency room chief complaints to search query data. Based on such experience, novel social syndromic surveillance systems for early detection of social epidemics with health implications are not only possible but necessary. Challenges to their widespread implementation include incorporating disparate proprietary data sources and database integration. Significantly more resources are critically needed to address these barriers to allow for accessing, integrating and rapidly analyzing appropriate data streams to make syndromic surveillance for social determinants of health widely available to public health professionals.

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发展综合征监测系统以检测社会流行病的机遇和挑战。
本评论探讨了发展综合征监测系统的潜力和挑战,该系统能够更迅速地发现成瘾、贫困、住房不稳定、粮食不安全、社会孤立和其他健康社会决定因素(SDoH)的流行。追踪SDoH的流行病学家严重依赖每年发布的昂贵的政府调查,这使得及时发现社会流行病(定义为人口健康的社会决定因素突然、迅速或意外的变化)的时间推迟了数月甚至数年。相反,传染病综合征监测是一种有效的流行病预警工具,利用急诊室主诉的各类非传统流行病学数据来检索查询数据。根据这些经验,用于早期发现具有健康影响的社会流行病的新型社会综合症监测系统不仅是可能的,而且是必要的。它们的广泛实现面临的挑战包括合并不同的专有数据源和数据库集成。迫切需要更多的资源来消除这些障碍,以便能够获取、整合和快速分析适当的数据流,以便向公共卫生专业人员广泛提供对健康社会决定因素的综合征监测。
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