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Joint spatial modelling of disease risk using multiple sources: an application on HIV prevalence from antenatal sentinel and demographic and health surveys in Namibia

机译:使用多种来源的疾病风险联合空间模型:纳米比亚产前哨兵和人口与健康调查对艾滋病毒流行的应用

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BackgroundIn disease mapping field, researchers often encounter data from multiple sources. Such data are fraught with challenges such as lack of a representative sample, often incomplete and most of which may have measurement errors, and may be spatially and temporally misaligned. This paper presents a joint model in the effort to deal with the sampling bias and misalignment. MethodsA joint (bivariate) spatial model was applied to estimate HIV prevalence using two sources: 2014 National HIV Sentinel survey (NHSS) among pregnant women aged 15–49?years attending antenatal care (ANC) and the 2013 Namibia Demographic and Health Surveys (NDHS). ResultsFindings revealed that health districts and constituencies in the northern part of Namibia were found to be highly associated with HIV infection. Also, the study showed that place of residence, gender, gravida, marital status, number of kids dead, wealth index, education, and condom use were significantly associated with HIV infection in Namibia. ConclusionThis study had shown determinants of HIV infection in Namibia and had revealed areas at high risk through HIV prevalence mapping. Moreover, a joint modelling approach was used in order to deal with spatially misaligned data. Finally, it was shown that prediction of HIV prevalence using the NDHS data source can be enhanced by jointly modelling other HIV data such as NHSS data. These findings would help Namibia to tailor national intervention strategies for specific regions and groups of population.
机译:背景技术在疾病作图领域,研究人员经常会遇到来自多个来源的数据。此类数据充满挑战,例如缺乏代表性样本,通常不完整,并且大多数可能存在测量误差,并且在空间和时间上可能会错位。本文提出了一个联合模型,以应对采样偏差和未对准问题。方法采用联合(双变量)空间模型通过以下两种来源估算艾滋病毒流行率:2014年全国15-49岁参加产前护理的孕妇的HIV前哨调查(NHSS)和2013年纳米比亚人口与健康调查(NDHS) )。结果发现,纳米比亚北部的卫生区和选区与艾滋病毒感染高度相关。此外,研究还表明,纳米比亚的艾滋病毒感染与居住地,性别,妊娠,婚姻状况,死亡的孩子人数,财富指数,教育程度和使用安全套有显着关系。结论这项研究显示了纳米比亚艾滋病毒感染的决定因素,并通过艾滋病毒流行率分布图揭示了高危地区。此外,使用联合建模方法来处理空间未对齐的数据。最后,结果表明,通过联合建模其他HIV数据(例如NHSS数据),可以增强使用NDHS数据源对HIV患病率的预测。这些发现将有助于纳米比亚针对特定地区和特定人群制定国家干预策略。

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