Spatial modelling of the joint burden of malaria and anaemia co-morbidity in children: A Bayesian geoadditive perspective

E. Gayawan, O. Egbon, S. Adebayo
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Abstract

ABSTRACT Malaria infection, caused by plasmodium parasites, is a serious health challenge for children in the tropical regions. It becomes a serious life-threatening issue when the victim also suffers from anaemia because malaria parasite feeds on the iron particles present in the red blood cells. We consider a latent Gaussian model to jointly estimate the spatial patterns of co-morbidity from malaria and the different levels of anaemia among children under five years of age in Nigeria. The approach allows for response variables of different family of distribution to be jointly considered while accounting for metrical covariates as possible nonlinear effects and categorical variables as linear effects. Parameter estimation was through the integrated nested Laplace approximation. Our findings show similar spatial patterns of co-morbidity between malaria and severe anaemia and malaria and moderate anaemia but in the case of age of the child, the likelihoods of co-morbidity are similar for malaria and severe anaemia and malaria and mild anaemia. Urban residency, mother’s education, and household wealth index are consistently significant to the different forms of co-morbidity. Findings from the spatial effects avail decision-makers with location-specific evidence to prioritize and roll out interventions in a more judicious manner.
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儿童疟疾和贫血合并症联合负担的空间建模:贝叶斯地理加性视角
由疟原虫引起的疟疾感染是热带地区儿童面临的严重健康挑战。当受害者还患有贫血时,疟疾就会成为一个严重的威胁生命的问题,因为疟疾寄生虫以红细胞中的铁颗粒为食。我们考虑了一个潜在的高斯模型来联合估计尼日利亚五岁以下儿童中疟疾和不同程度贫血共发病的空间格局。该方法允许联合考虑不同分布族的响应变量,同时考虑度量协变量作为可能的非线性效应和分类变量作为线性效应。参数估计是通过积分嵌套拉普拉斯逼近。我们的研究结果显示,疟疾与重度贫血、疟疾与中度贫血共发病的空间格局相似,但就儿童的年龄而言,疟疾与重度贫血、疟疾与轻度贫血共发病的可能性相似。城市居住、母亲受教育程度和家庭财富指数对不同形式的合并症均有显著影响。空间效应的研究结果为决策者提供了具体地点的证据,以更明智的方式优先考虑和推出干预措施。
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