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利用 GIS 识别无人看管院外心脏骤停的高危社区。

Identification of high-risk communities for unattended out-of-hospital cardiac arrests using GIS.

机构信息

Department of Geography and Geology, Eastern Michigan University, Ypsilanti, MI, USA.

出版信息

J Community Health. 2013 Apr;38(2):277-84. doi: 10.1007/s10900-012-9611-7.

Abstract

Improving survival rates for out of hospital cardiac arrest (OHCA) at the neighborhood level is increasingly seen as priority in US cities. Since wide disparities exist in OHCA rates at the neighborhood level, it is necessary to locate neighborhoods where people are at elevated risk for cardiac arrest and target these for educational outreach and other mitigation strategies. This paper describes a GIS-based methodology that was used to identify communities with high risk for cardiac arrests in Franklin County, Ohio during the period 2004-2009. Prior work in this area used a single criterion, i.e., the density of OHCA events, to define the high-risk areas, and a single analytical technique, i.e., kernel density analysis, to identify the high-risk communities. In this paper, two criteria are used to identify the high-risk communities, the rate of OHCA incidents and the level of bystander CPR participation. We also used Local Moran's I combined with traditional map overlay techniques to add robustness to the methodology for identifying high-risk communities for OHCA. Based on the criteria established for this study, we successfully identified several communities that were at higher risk for OHCA than neighboring communities. These communities had incidence rates of OHCA that were significantly higher than neighboring communities and bystander rates that were significantly lower than neighboring communities. Other risk factors for OHCA were also high in the selected communities. The methodology employed in this study provides for a measurement conceptualization of OHCA clusters that is much broader than what has been previously offered. It is also statistically reliable and can be easily executed using a GIS.

摘要

提高社区水平院外心脏骤停(OHCA)的生存率已日益成为美国城市的优先事项。由于社区水平的 OHCA 发生率存在巨大差异,因此有必要确定哪些社区的人面临更高的心脏骤停风险,并针对这些社区开展教育宣传和其他缓解策略。本文描述了一种基于 GIS 的方法,用于确定 2004-2009 年期间俄亥俄州富兰克林县具有高心脏骤停风险的社区。该领域的先前工作使用了单一标准,即 OHCA 事件的密度,来定义高风险区域,并使用单一分析技术,即核密度分析,来识别高风险社区。在本文中,使用了两个标准来识别高风险社区,即 OHCA 事件发生率和旁观者 CPR 参与率。我们还使用局部 Moran's I 结合传统的地图叠加技术,为识别 OHCA 的高风险社区的方法增加了稳健性。根据本研究确定的标准,我们成功地识别了几个比邻近社区面临更高 OHCA 风险的社区。这些社区的 OHCA 发生率明显高于邻近社区,旁观者比率明显低于邻近社区。选定社区的其他 OHCA 风险因素也很高。本研究中采用的方法提供了一种比以往更为广泛的 OHCA 集群的测量概念化。它在统计学上也是可靠的,并且可以使用 GIS 轻松执行。

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