Department of Public Health and Epidemiology, Swiss Tropical Institute, PO Box, 4002 Basel, Switzerland.
Malar J. 2010 Feb 1;9:37. doi: 10.1186/1475-2875-9-37.
The Zambia Malaria Indicator Survey (ZMIS) of 2006 was the first nation-wide malaria survey, which combined parasitological data with other malaria indicators such as net use, indoor residual spraying and household related aspects. The survey was carried out by the Zambian Ministry of Health and partners with the objective of estimating the coverage of interventions and malaria related burden in children less than five years. In this study, the ZMIS data were analysed in order (i) to estimate an empirical high-resolution parasitological risk map in the country and (ii) to assess the relation between malaria interventions and parasitaemia risk after adjusting for environmental and socio-economic confounders.
The parasitological risk was predicted from Bayesian geostatistical and spatially independent models relating parasitaemia risk and environmental/climatic predictors of malaria. A number of models were fitted to capture the (potential) non-linearity in the malaria-environment relation and to identify the elapsing time between environmental effects and parasitaemia risk. These models included covariates (a) in categorical scales and (b) in penalized and basis splines terms. Different model validation methods were used to identify the best fitting model. Model-based risk predictions at unobserved locations were obtained via Bayesian predictive distributions for the best fitting model.
Model validation indicated that linear environmental predictors were able to fit the data as well as or even better than more complex non-linear terms and that the data do not support spatial dependence. Overall the averaged population-adjusted parasitaemia risk was 20.0% in children less than five years with the highest risk predicted in the northern (38.3%) province. The odds of parasitaemia in children living in a household with at least one bed net decreases by 40% (CI: 12%, 61%) compared to those without bed nets.
The map of parasitaemia risk together with the prediction error and the population at risk give an important overview of the malaria situation in Zambia. These maps can assist to achieve better resource allocation, health management and to target additional interventions to reduce the burden of malaria in Zambia significantly. Repeated surveys will enable the evaluation of the effectiveness of on-going interventions.
2006 年赞比亚疟疾指标调查(ZMIS)是第一次全国性的疟疾调查,它将寄生虫学数据与其他疟疾指标(如蚊帐使用、室内残留喷洒和家庭相关方面)相结合。该调查由赞比亚卫生部及其合作伙伴开展,目的是估计五岁以下儿童干预措施的覆盖范围和与疟疾相关的负担。在这项研究中,分析了 ZMIS 数据,以便(i)估计该国的经验丰富的高分辨率寄生虫学风险图,以及(ii)在调整环境和社会经济混杂因素后评估疟疾干预措施与寄生虫血症风险之间的关系。
寄生虫学风险是从贝叶斯地质统计学和空间独立模型中预测出来的,这些模型将寄生虫血症风险与疟疾的环境/气候预测因子联系起来。拟合了许多模型来捕捉疟疾与环境关系的(潜在)非线性,并确定环境效应与寄生虫血症风险之间的时间间隔。这些模型包括(a)分类尺度和(b)惩罚和基样条术语中的协变量。使用不同的模型验证方法来确定最佳拟合模型。通过对最佳拟合模型的贝叶斯预测分布,在未观察到的位置获得基于模型的风险预测。
模型验证表明,线性环境预测因子能够很好地拟合数据,甚至比更复杂的非线性项更好,并且数据不支持空间依赖性。总体而言,五岁以下儿童的人群调整寄生虫血症风险平均为 20.0%,北部(38.3%)省份的风险最高。与没有蚊帐的儿童相比,居住在至少有一个蚊帐的家庭中的儿童患寄生虫血症的几率降低了 40%(95%CI:12%,61%)。
寄生虫血症风险图以及预测误差和风险人群提供了赞比亚疟疾状况的重要概述。这些地图可以帮助更好地分配资源、进行健康管理,并针对减少赞比亚疟疾负担的额外干预措施进行目标定位。重复调查将使人们能够评估正在进行的干预措施的效果。