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通过社区观察常见疾病的传播:使用地理信息系统 (GIS) 进行监测。

Observing the spread of common illnesses through a community: using Geographic Information Systems (GIS) for surveillance.

机构信息

Lancaster General Research Institute, Lancaster, PA, USA.

出版信息

J Am Board Fam Med. 2010 Jan-Feb;23(1):32-41. doi: 10.3122/jabfm.2010.01.090137.

Abstract

BACKGROUND

The recent implementation of electronic medical record systems allows for the development of systems to track common illness across a defined community. With the threats of bioterrorism and pandemic illness, syndromic surveillance methodologies have become an important area of study. There has been limited study of the application of syndromic surveillance techniques to communities for tracking common illnesses to improve health system resource allocation and inform communities.

METHODS

We analyzed visits from 26 primary care sites and one emergency department in a health system during a 13-month period in 2007 to 2008. Visits were coded for common respiratory and gastrointestinal illnesses. Using geographic information systems techniques, we plotted home addresses and developed criteria for census tract inclusion. The spatial distribution of the illnesses patterns was analyzed using Bayesian smoothing, Kriging and SaTScan (SaTScan, Boston, MA) statistical methods.

RESULTS

The study included 857,555 visits, 107,286 of which were in the emergency department and 750,269 in the primary care sites. Patient visits were plotted and then aggregated to census tracts. We determined that at least a median of 10 visits per week was required to provide sufficient volume in defining census tracts included in the study (109 census tracts). Weekly visit rates by census tract were plotted using nearest neighbor empirical Bayesian smoothing and Kriging to produce a continuous surface. To detect statistical clustering of weekly visit rates, we used SaTScan and identified 7 weeks with statistically significant clusters for respiratory illnesses and 8 weeks with statistically significant clusters for gastrointestinal illnesses (out of 56 weeks included in the study). After adjusting for population density, the visit rate remained consistent for respiratory illnesses (analysis of variance P = .937), but the visit rate for gastrointestinal illnesses increased in the fourth population density quartile (statistically different from quartiles 1, 2 and 3; analysis of variance P < .001 with Tukey multiple comparisons test), which included the highest population density areas in the study.

CONCLUSIONS

We were able to use geographic information systems to assess visit rates for common illnesses in a defined community and identified spatial variability over time. Additional research is needed to help define parameters for implementation, but we believe this can have benefit for allocation of health resources and communicating with the community.

摘要

背景

电子病历系统的最近实施使得开发用于跟踪特定社区常见疾病的系统成为可能。随着生物恐怖主义和大流行性疾病的威胁,症状监测方法已成为一个重要的研究领域。但是,将症状监测技术应用于社区以跟踪常见疾病以改善卫生系统资源分配并为社区提供信息的研究有限。

方法

我们分析了 2007 年至 2008 年期间,一个卫生系统的 26 个初级保健站点和一个急诊部的就诊情况。就诊情况按常见呼吸道和胃肠道疾病进行编码。使用地理信息系统技术,我们绘制了家庭住址并制定了纳入普查区的标准。使用贝叶斯平滑,克里金和 SaTScan(SaTScan,波士顿,MA)统计方法分析疾病模式的空间分布。

结果

该研究包括 857,555 次就诊,其中 107,286 次就诊于急诊部,750,269 次就诊于初级保健站点。我们将患者就诊情况进行了绘制,并将其汇总到普查区。我们确定,至少每周有 10 次就诊,才能为定义研究中包含的普查区提供足够的就诊量(包括 109 个普查区)。使用最近邻经验贝叶斯平滑和克里金绘制每周就诊率图,以生成连续表面。为了检测每周就诊率的统计聚类,我们使用 SaTScan 并确定了呼吸道疾病的 7 周和胃肠道疾病的 8 周具有统计学意义的聚类(研究中包括 56 周)。在调整人口密度后,呼吸道疾病的就诊率保持一致(方差分析 P =.937),但是第四个人口密度四分位的胃肠道疾病就诊率增加(与四分位数 1、2 和 3 不同;方差分析 P <.001,Tukey 多重比较检验),包括研究中人口密度最高的地区。

结论

我们能够使用地理信息系统评估特定社区常见疾病的就诊率,并确定随时间的空间变化。需要进一步研究来帮助确定实施参数,但我们相信这对卫生资源分配和与社区沟通都有好处。

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