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Modelling typhoid risk in Dhaka Metropolitan Area of Bangladesh: the role of socio-economic and environmental factors

机译:孟加拉国达卡市区的伤寒风险建模:社会经济和环境因素的作用

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Background Developing countries in South Asia, such as Bangladesh, bear a disproportionate burden of diarrhoeal diseases such as Cholera, Typhoid and Paratyphoid. These seem to be aggravated by a number of social and environmental factors such as lack of access to safe drinking water, overcrowdedness and poor hygiene brought about by poverty. Some socioeconomic data can be obtained from census data whilst others are more difficult to elucidate. This study considers a range of both census data and spatial data from other sources, including remote sensing, as potential predictors of typhoid risk. Typhoid data are aggregated from hospital admission records for the period from 2005 to 2009. The spatial and statistical structures of the data are analysed and Principal Axis Factoring is used to reduce the degree of co-linearity in the data. The resulting factors are combined into a Quality of Life index, which in turn is used in a regression model of typhoid occurrence and risk. Results The three Principal Factors used together explain 87% of the variance in the initial candidate predictors, which eminently qualifies them for use as a set of uncorrelated explanatory variables in a linear regression model. Initial regression result using Ordinary Least Squares (OLS) were disappointing, this was explainable by analysis of the spatial autocorrelation inherent in the Principal factors. The use of Geographically Weighted Regression caused a considerable increase in the predictive power of regressions based on these factors. The best prediction, determined by analysis of the Akaike Information Criterion (AIC) was found when the three factors were combined into a quality of life index, using a method previously published by others, and had a coefficient of determination of 73%. Conclusions The typhoid occurrence/risk prediction equation was used to develop the first risk map showing areas of Dhaka Metropolitan Area whose inhabitants are at greater or lesser risk of typhoid infection. This, coupled with seasonal information on typhoid incidence also reported in this paper, has the potential to advise public health professionals on developing prevention strategies such as targeted vaccination.
机译:背景技术南亚的发展中国家,例如孟加拉国,腹泻病的负担过重,例如霍乱,伤寒和副伤寒。似乎由于许多社会和环境因素而加剧了这些因素,例如缺乏安全的饮用水,人满为患以及贫困带来的卫生条件差。一些社会经济数据可以从人口普查数据中获得,而另一些则更难以阐明。这项研究将一系列普查数据和其他来源的空间数据(包括遥感)视为伤寒风险的潜在预测指标。伤寒数据是从2005年至2009年期间的住院记录中汇总的。分析了数据的空间和统计结构,并使用了主轴因子分解来减少数据的共线性程度。由此产生的因素被合并为生活质量指数,该指数又被用于伤寒发生和风险的回归模型中。结果一起使用的三个主因子解释了初始候选预测变量中87%的方差,从而突出地证明了它们有资格用作线性回归模型中的一组不相关的解释变量。使用普通最小二乘(OLS)得出的初始回归结果令人失望,这可以通过分析主因子中固有的空间自相关来解释。地理加权回归的使用大大提高了基于这些因素的回归的预测能力。通过使用Akaike信息准则(AIC)的分析确定的最佳预测是使用其他人先前发布的方法将三个因素合并为生活质量指数时得出的,确定系数为73%。结论使用伤寒发生/风险预测方程式开发了第一个风险图,显示了达卡市区的居民面临或多或少的伤寒风险。加上本文还报道了有关伤寒发病的季节性信息,有可能为公共卫生专业人员提供有关制定预防策略(如定向疫苗接种)的建议。

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