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首页> 外文期刊>International Journal of Health Geographics >A systematic review of spatial decision support systems in public health informatics supporting the identification of high risk areas for zoonotic disease outbreaks
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A systematic review of spatial decision support systems in public health informatics supporting the identification of high risk areas for zoonotic disease outbreaks

机译:公共卫生信息学中的空间决策支持系统的系统审查,支持识别高原疾病爆发的高风险区域

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Zoonotic diseases account for a substantial portion of infectious disease outbreaks and burden on public health programs to maintain surveillance and preventative measures. Taking advantage of new modeling approaches and data sources have become necessary in an interconnected global community. To facilitate data collection, analysis, and decision-making, the number of spatial decision support systems reported in the last 10?years has increased. This systematic review aims to describe characteristics of spatial decision support systems developed to assist public health officials in the management of zoonotic disease outbreaks. A systematic search of the Google Scholar database was undertaken for published articles written between 2008 and 2018, with no language restriction. A manual search of titles and abstracts using Boolean logic and keyword search terms was undertaken using predefined inclusion and exclusion criteria. Data extraction included items such as spatial database management, visualizations, and report generation. For this review we screened 34 full text articles. Design and reporting quality were assessed, resulting in a final set of 12 articles which were evaluated on proposed interventions and identifying characteristics were described. Multisource data integration, and user centered design were inconsistently applied, though indicated diverse utilization of modeling techniques. The characteristics, data sources, development and modeling techniques implemented in the design of recent SDSS that target zoonotic disease outbreak were described. There are still many challenges to address during the design process to effectively utilize the value of emerging data sources and modeling methods. In the future, development should adhere to comparable standards for functionality and system development such as user input for system requirements, and flexible interfaces to visualize data that exist on different scales. PROSPERO registration number: CRD42018110466.
机译:从动物疾病患者占大量传染病爆发和公共卫生计划的负担,以维持监测和预防措施。利用新的建模方法和数据来源在互联的全球社区中是必要的。为了促进数据收集,分析和决策,在过去10个年内报告的空间决策支持系统的数量增加。该系统审查旨在描述开发的空间决策支持系统的特征,以协助公共卫生官员在管理中疾病爆发的管理中。对谷歌学者数据库的系统搜索是针对2008年至2018年之间编写的已发表的文章进行的,没有语言限制。使用布尔逻辑和关键字搜索条件的手动搜索标题和摘要,并使用预定义包含和排除标准进行。数据提取包括空间数据库管理,可视化和报告生成等项目。如有审查,我们浏览了34条全文文章。评估设计和报告质量,导致最终组合的12项被评估的拟议的干预和识别特征。 Multisource数据集成以及用户居中的设计不一致地应用,但表明建模技术的不同利用率。描述了在近期靶向疾病爆发的最近SDS设计中实施的特征,数据源,开发和建模技术。在设计过程中解决了许多挑战,以有效利用新出现的数据源和建模方法的价值。在未来,开发应遵守功能和系统开发的可比标准,如用户输入的系统要求,以及灵活的接口,可视化不同尺度上存在的数据。 Prospero注册号:CRD42018110466。

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