社会经济因素解释了孟加拉国女性公共卫生相关变量的差异:一项横断面研究。

Socio-economic factors explain differences in public health-related variables among women in Bangladesh: a cross-sectional study.

作者信息

Khan Md Mobarak H, Kraemer Alexander

机构信息

Department of Public Health Medicine, School of Public Health, University of Bielefeld, Germany.

出版信息

BMC Public Health. 2008 Jul 23;8:254. doi: 10.1186/1471-2458-8-254.

Abstract

BACKGROUND

Worldwide one billion people are living in slum communities and experts projected that this number would double by 2030. Slum populations, which are increasing at an alarming rate in Bangladesh mainly due to rural-urban migration, are often neglected and characterized by poverty, poor housing, overcrowding, poor environment, and high prevalence of communicable diseases. Unfortunately, comparisons between women living in slums and those not living in slums are very limited in Bangladesh. The objectives of the study were to examine the association of living in slums (dichotomized as slum versus non-slum) with selected public health-related variables among women, first without adjusting for the influence of other factors and then in the presence of socio-economic variables.

METHODS

Secondary data was used in this study. 120 women living in slums (as cases) and 480 age-matched women living in other areas (as controls) were extracted from the Bangladesh Demographic and Health Survey 2004. Many socio-economic and demographic variables were analysed. SPSS was used to perform simple as well as multiple analyses. P-values based on t-test and Wald test were also reported to show the significance level.

RESULTS

Unadjusted results indicated that a significantly higher percent of women living in slums came from country side, had a poorer status by household characteristics, had less access to mass media, and had less education than women not living in slums. Mean BMI, knowledge of AIDS indicated by ever heard about AIDS, knowledge of avoiding AIDS by condom use, receiving adequate antenatal visits (4 or more) during the last pregnancy, and safe delivery practices assisted by skilled sources were significantly lower among women living in slums than those women living in other areas. However, all the unadjusted significant associations with the variable slum were greatly attenuated and became insignificant (expect safe delivery practices) when some socio-economic variables namely childhood place of residence, a composite variable of household characteristics, a composite variable of mass media access, and education were inserted into the multiple regression models. Taken together, childhood place of residence, the composite variable of mass media access, and education were the strongest predictors for the health related outcomes.

CONCLUSION

Reporting unadjusted findings of public health variables in women from slums versus non-slums can be misleading due to confounding factors. Our findings suggest that an association of childhood place of residence, mass media access and public health education should be considered before making any inference based on slum versus non-slum comparisons.

摘要

背景

全球有10亿人生活在贫民窟社区,专家预计到2030年这一数字将翻倍。孟加拉国的贫民窟人口正以惊人的速度增长,主要原因是农村向城市的迁移,这些人口往往被忽视,其特点是贫困、住房条件差、过度拥挤、环境恶劣以及传染病高发。不幸的是,在孟加拉国,对生活在贫民窟的妇女和非贫民窟妇女进行的比较非常有限。本研究的目的是考察生活在贫民窟(分为贫民窟和非贫民窟)与女性中选定的公共卫生相关变量之间的关联,首先不调整其他因素的影响,然后在考虑社会经济变量的情况下进行考察。

方法

本研究使用二手数据。从2004年孟加拉国人口与健康调查中选取了120名生活在贫民窟的妇女(作为病例)和480名年龄匹配的生活在其他地区的妇女(作为对照)。分析了许多社会经济和人口统计学变量。使用SPSS进行简单分析和多元分析。还报告了基于t检验和Wald检验的P值以显示显著性水平。

结果

未经调整的结果表明,与非贫民窟妇女相比,生活在贫民窟的妇女中,来自农村的比例显著更高,家庭特征显示其状况更差,接触大众媒体的机会更少,受教育程度更低。生活在贫民窟的妇女的平均体重指数、听说过艾滋病所表明的艾滋病知识、通过使用避孕套预防艾滋病的知识、在上次怀孕期间接受足够次数(4次或更多)产前检查的比例以及由专业人员协助的安全分娩做法的比例,均显著低于生活在其他地区的妇女。然而,当将一些社会经济变量,即童年居住地、家庭特征综合变量、大众媒体接触综合变量和教育程度纳入多元回归模型时,所有与贫民窟变量未经调整的显著关联都大大减弱并变得不显著(安全分娩做法除外)。总体而言,童年居住地、大众媒体接触综合变量和教育程度是与健康相关结果的最强预测因素。

结论

由于存在混杂因素,报告贫民窟与非贫民窟女性公共卫生变量的未经调整的结果可能会产生误导。我们的研究结果表明,在基于贫民窟与非贫民窟比较做出任何推断之前,应考虑童年居住地、大众媒体接触和公共卫生教育之间的关联。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/13b1/2496908/193d4dc5ba4e/1471-2458-8-254-1.jpg

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