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损伤在空间上有关联吗?用于小区域损伤分析的连接计数空间自相关。

Are injuries spatially related? Join-count spatial autocorrelation for small-area injury analysis.

作者信息

Bell N, Schuurman N, Hameed S M

机构信息

Department of Geography, Simon Fraser University, Burnaby, British Columbia, Canada.

出版信息

Inj Prev. 2008 Dec;14(6):346-53. doi: 10.1136/ip.2008.018903.

Abstract

OBJECTIVE

To present a geographic information systems (GIS) method for exploring the spatial pattern of injuries and to demonstrate the utility of using this method in conjunction with classic ecological models of injury patterns.

DESIGN

Profiles of patients' socioeconomic status (SES) were constructed by linking their postal code of residence to the census dissemination area that encompassed its location. Data were then integrated into a GIS, enabling the analysis of neighborhood contiguity and SES on incidence of injury.

SETTING

Data for this analysis (2001-2006) were obtained from the British Columbia Trauma Registry. Neighborhood SES was calculated using the Vancouver Area Neighborhood Deprivation Index. Spatial analysis was conducted using a join-count spatial autocorrelation algorithm.

PATIENTS

Male and female patients over the age of 18 and hospitalized from severe injury (Injury Severity Score >12) resulting from an assault or intentional self-harm and included in the British Columbia Trauma Registry were analyzed.

RESULTS

Male patients injured by assault and who resided in adjoining census areas were observed 1.3 to 5 times more often than would be expected under a random spatial pattern. Adjoining neighborhood clustering was less visible for residential patterns of patients hospitalized with injuries sustained from self-harm. A social gradient in assault injury rates existed separately for men and neighborhood SES, but less than would be expected when stratified by age, gender, and neighborhood. No social gradient between intentional injury from self-harm and neighborhood SES was observed.

CONCLUSIONS

This study demonstrates the added utility of integrating GIS technology into injury prevention research. Crucial information on the associated social and environmental influences of intentional injury patterns may be under-recognized if a spatial analysis is not also conducted. The join-count spatial autocorrelation is an ideal approach for investigating the interconnectedness of injury patterns that are rare and occur in only a small percentage of the population.

摘要

目的

介绍一种用于探究伤害空间模式的地理信息系统(GIS)方法,并展示将该方法与经典伤害模式生态模型结合使用的效用。

设计

通过将患者的居住邮政编码与包含该位置的人口普查传播区域相链接,构建患者社会经济地位(SES)概况。然后将数据整合到GIS中,以便分析邻里相邻性和SES对伤害发生率的影响。

背景

本分析的数据(2001 - 2006年)来自不列颠哥伦比亚省创伤登记处使用温哥华地区邻里剥夺指数计算邻里SES。使用连接计数空间自相关算法进行空间分析。

患者

对18岁以上因袭击或故意自残导致重伤(损伤严重程度评分>12)并纳入不列颠哥伦比亚省创伤登记处的男女患者进行分析。

结果

因袭击受伤且居住在相邻人口普查区域的男性患者被观察到的频率比随机空间模式下预期频率高1.3至5倍。因自残受伤住院患者的居住模式中,相邻邻里聚类不太明显。袭击伤害率在男性和邻里SES之间分别存在社会梯度,但按年龄、性别和邻里分层时低于预期。未观察到自残故意伤害与邻里SES之间的社会梯度。

结论

本研究证明了将GIS技术整合到伤害预防研究中的额外效用。如果不进行空间分析,关于故意伤害模式相关社会和环境影响的关键信息可能未得到充分认识。连接计数空间自相关是研究罕见且仅在一小部分人群中发生的伤害模式相互关联性的理想方法。

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