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Are multidimensional social classifications of areas useful in UK health service research?

机译:地区的多维社会分类对英国卫生服务研究有用吗?

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摘要

OBJECTIVES--To show the advantages and disadvantages of a multi-dimensional small area classification in the analysis of child health data in order to measure social inequalities in health and to identify the types of area that have greater health needs. DESIGN--Health data on children from the district child health information system and a survey of primary school children's height were classified by the census enumeration district of residence using the Super profiles neighbourhood classification. SETTING--County of Northumberland, United Kingdom. SUBJECTS--One cohort comprised 21,702 preschool children age 0-5 years resident in Northumberland, and another cohort 9930 school children aged 5-8.5 years. MAIN OUTCOME MEASURES--Variations between types of area in the proportions of babies with birthweight less than 2.8 kg; births to mothers aged less than 20 years; pertussis immunisation uptake; child health screening uptake; and mean height of school children. RESULTS--Areas with the poorest child health measures were those which were most socially disadvantaged. The most affluent areas tended to have the best measures of health, although rural areas also had good measures. Problems in analysis included examples of the "ecological fallacy", misleading area descriptions, and the identification of the specific factors associated with poor health measures. Advantages included a wider view of social circumstances than simply "deprivation" and the ability to identify characteristic types of areas with increased child health needs. CONCLUSIONS--There is a limited place for multidimensional small area classifications in the analysis of health data for both research and health needs assessment provided the inherent drawbacks of these data are understood in interpreting the results.
机译:目标-在儿童健康数据分析中显示多维小区域分类的优缺点,以衡量健康方面的社会不平等并确定具有更大健康需求的区域类型。设计-来自地区儿童健康信息系统的儿童健康数据以及对小学生身高的调查由居住人口普查枚举区使用Super Profile邻里分类法进行分类。地点-英国诺森伯兰郡。研究对象:一个研究对象包括居住在诺森伯兰郡的21702名0-5岁的学龄前儿童,另一研究对象是5-8.5岁的9930名学龄儿童。主要观察指标-出生体重不足2.8千克的婴儿所占比例在不同类型区域之间有所不同;未满20岁母亲的出生;百日咳疫苗的摄取儿童健康筛查摄入量;和小学生的平均身高。结果-儿童保健措施最差的地区是社会上最弱势的地区。尽管农村地区也有很好的措施,但最富裕的地区往往具有最好的卫生措施。分析中的问题包括“生态谬误”,误导性区域描述以及与不良卫生措施相关的特定因素的识别等示例。优势包括对社会环境的看法比单纯的“剥夺”更为广泛,并且能够确定儿童健康需求增加的地区的特征类型。结论-在研究和健康需求评估的健康数据分析中,多维小区域分类的位置有限,但前提是在解释结果时应理解这些数据的固有缺点。

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