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[基于健康指标的北莱茵-威斯特法伦州县区和市区聚类分析]

[Health indicator-based cluster analysis of districts and urban districts in North Rhine-Westphalia].

作者信息

Strohmeier K P, Schultz A, Bardehle D, Annuss R, Lenz A

机构信息

Ruhr-Universität Bochum, Bochum, Germany.

出版信息

Gesundheitswesen. 2007 Jan;69(1):26-33. doi: 10.1055/s-2007-960491.

Abstract

OBJECTIVE

North Rhine-Westphalia (NRW's) indicator set for health reporting activities comprises more than 70 regional health indicators, which means that these data are available for health reporting purposes for all 54 districts and urban districts. Morbidity and mortality indicators differ in part quite considerably and require further interpretation. With the help of selected indicators, the authors of the following article try to explain the relation between social status and health status.

METHODOLOGY

Ten years ago, NRW, as part of its health reporting activities, started to carry out multivariate analyses to classify socio-demographically different types of regions, leading to the establishment of six types of regions which can be linked to health-related data. Social structure indicators are part of a first step submitted to a main component analysis and grouped together by a small number of features and/or factors which clearly reflect differences in living conditions. As a result, two factors were extracted: an economic prosperity factor which is mainly determined by the disposable income and a so-called A-factor which mainly describes the fact that poorer, elderly, unemployed and foreign population groups live concentrated in regions with a declining population but high population density. These factors are, in a second step, used for a cluster analysis aimed at classifying the 54 districts and urban districts and at establishing different types of regions. In a subsequent step, the cluster method is used to explain regional variations of selected health indicators.

RESULTS

It is a proven fact that morbidity and mortality are influenced by social status. With the help of selected indicators, six clusters with a different socio-economic structure influencing the health status of the population can be established for NRW. Special attention should be paid to the cluster of the Ruhr area with its below-average social situation. With 90% NRW's population primarily living within the other 5 clusters which are differently structured but increasingly adjusting their living conditions to each other. The authors of this publication assign four health status indicators to predefined clusters and analyse the relation between the social and health status: female and male life expectancy, the proportion of underweight live births, infant mortality and avoidable deaths.In regions with high A-factor values (poverty pole), i. e., in several ways socially deprived regions, male and female average life expectancy is significantly lower than in regions with a clearly less pronounced accumulation of problems. Moreover, a significantly higher life expectancy for male live births can be observed in regions with a high disposable income. The model fails to establish a convincing correlation between social status and infant mortality and breast cancer.

CONCLUSIONS

Knowledge about socio-demographic differences in the health status of the population is particularly important for prevention measures in order to be able to react appropriately to health risks in districts and urban districts. The analysis shows that an intense regional accumulation of problems will have a negative influence on health status, an influence which is more significant than the positive influence of prosperous regions on the health status.

摘要

目的

北莱茵 - 威斯特法伦州(NRW)用于健康报告活动的指标集包含70多个区域健康指标,这意味着这些数据可用于所有54个区和市区的健康报告目的。发病率和死亡率指标在部分方面差异相当大,需要进一步解读。借助选定的指标,以下文章的作者试图解释社会地位与健康状况之间的关系。

方法

十年前,NRW作为其健康报告活动的一部分,开始进行多变量分析,以对社会人口统计学上不同类型的地区进行分类,从而建立了六种可与健康相关数据相联系的地区类型。社会结构指标是提交给主成分分析的第一步的一部分,并通过少量能清晰反映生活条件差异的特征和/或因素进行分组。结果,提取了两个因素:一个主要由可支配收入决定的经济繁荣因素,以及一个所谓的A因素,该因素主要描述了贫困、老年、失业和外国人群体集中生活在人口下降但人口密度高的地区这一事实。在第二步中,这些因素用于聚类分析,旨在对54个区和市区进行分类并建立不同类型的地区。在随后的步骤中,聚类方法用于解释选定健康指标的区域差异。

结果

发病率和死亡率受社会地位影响这一事实已得到证实。借助选定的指标,可以为NRW建立六个具有不同社会经济结构且影响人口健康状况的聚类。应特别关注社会状况低于平均水平的鲁尔区聚类。NRW 90%的人口主要生活在其他5个聚类中,这些聚类结构不同,但生活条件正日益相互调整。本出版物的作者将四个健康状况指标分配给预定义的聚类,并分析社会与健康状况之间的关系:男女预期寿命、低体重活产比例、婴儿死亡率和可避免死亡。在A因素值高的地区(贫困极点),即在几个方面社会贫困的地区,男女平均预期寿命明显低于问题积累明显较少的地区。此外,在可支配收入高的地区,可以观察到男性活产的预期寿命明显更高。该模型未能在社会地位与婴儿死亡率和乳腺癌之间建立令人信服的相关性。

结论

了解人口健康状况中的社会人口统计学差异对于预防措施尤为重要,以便能够对各区和市区的健康风险做出适当反应。分析表明,问题的强烈区域积累将对健康状况产生负面影响,这种影响比繁荣地区对健康状况的积极影响更为显著。

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