Kazembe Lawrence N, Kleinschmidt Immo, Holtz Timothy H, Sharp Brian L
Mathematical Sciences Department, Chancellor College, University of Malawi, Zomba, Malawi.
Int J Health Geogr. 2006 Sep 20;5:41. doi: 10.1186/1476-072X-5-41.
Current malaria control initiatives aim at reducing malaria burden by half by the year 2010. Effective control requires evidence-based utilisation of resources. Characterizing spatial patterns of risk, through maps, is an important tool to guide control programmes. To this end an analysis was carried out to predict and map malaria risk in Malawi using empirical data with the aim of identifying areas where greatest effort should be focussed.
Point-referenced prevalence of infection data for children aged 1-10 years were collected from published and grey literature and geo-referenced. The model-based geostatistical methods were applied to analyze and predict malaria risk in areas where data were not observed. Topographical and climatic covariates were added in the model for risk assessment and improved prediction. A Bayesian approach was used for model fitting and prediction.
Bivariate models showed a significant association of malaria risk with elevation, annual maximum temperature, rainfall and potential evapotranspiration (PET). However in the prediction model, the spatial distribution of malaria risk was associated with elevation, and marginally with maximum temperature and PET. The resulting map broadly agreed with expert opinion about the variation of risk in the country, and further showed marked variation even at local level. High risk areas were in the low-lying lake shore regions, while low risk was along the highlands in the country.
The map provided an initial description of the geographic variation of malaria risk in Malawi, and might help in the choice and design of interventions, which is crucial for reducing the burden of malaria in Malawi.
当前的疟疾控制倡议旨在到2010年将疟疾负担减半。有效的控制需要以证据为基础地利用资源。通过地图描绘风险的空间模式是指导控制项目的重要工具。为此,利用经验数据对马拉维的疟疾风险进行了分析和预测并绘制地图,目的是确定应集中最大努力的地区。
从已发表文献和灰色文献中收集1至10岁儿童的感染点参考患病率数据并进行地理定位。应用基于模型的地质统计学方法分析和预测未观测到数据地区的疟疾风险。在模型中加入地形和气候协变量以进行风险评估和改进预测。采用贝叶斯方法进行模型拟合和预测。
双变量模型显示疟疾风险与海拔、年最高温度、降雨量和潜在蒸散量(PET)之间存在显著关联。然而,在预测模型中,疟疾风险的空间分布与海拔有关,与最高温度和PET的相关性较小。生成的地图与专家对该国风险变化的看法大致相符,并且进一步显示即使在地方层面也存在显著差异。高风险地区位于低洼的湖岸地区,而低风险地区位于该国的高地。
该地图初步描述了马拉维疟疾风险的地理变化,可能有助于干预措施的选择和设计,这对于减轻马拉维的疟疾负担至关重要。