Alegana Victor A, Wright Jim, Pezzulo Carla, Tatem Andrew J, Atkinson Peter M
Geography and Environment, University of Southampton, Southampton, UK.
Flowminder Foundation, Stockholm, Sweden.
BMC Med Res Methodol. 2017 Apr 20;17(1):67. doi: 10.1186/s12874-017-0346-0.
Seeking treatment in formal healthcare for uncomplicated infections is vital to combating disease in low- and middle-income countries (LMICs). Healthcare treatment-seeking behaviour varies within and between communities and is modified by socio-economic, demographic, and physical factors. As a result, it remains a challenge to quantify healthcare treatment-seeking behaviour using a metric that is comparable across communities. Here, we present an application for transforming individual categorical responses (actions related to fever) to a continuous probabilistic estimate of fever treatment for one country in Sub-Saharan Africa (SSA).
Using nationally representative household survey data from the 2013 Demographic and Health Survey (DHS) in Namibia, individual-level responses (n = 1138) were linked to theoretical estimates of travel time to the nearest public or private health facility. Bayesian Item Response Theory (IRT) models were fitted via Markov Chain Monte Carlo (MCMC) simulation to estimate parameters related to fever treatment and estimate probability of treatment for children under five years. Different models were implemented to evaluate computational needs and the effect of including predictor variables such as rurality. The mean treatment rates were then estimated at regional level.
Modelling results suggested probability of fever treatment was highest in regions with relatively high incidence of malaria historically. The minimum predicted threshold probability of seeking treatment was 0.3 (model 1: 0.340; 95% CI 0.155-0.597), suggesting that even in populations at large distances from facilities, there was still a 30% chance of an individual seeking treatment for fever. The agreement between correctly predicted probability of treatment at individual level based on a subset of data (n = 247) was high (AUC = 0.978), with a sensitivity of 96.7% and a specificity of 75.3%.
We have shown how individual responses in national surveys can be transformed to probabilistic measures comparable at population level. Our analysis of household survey data on fever suggested a 30% baseline threshold for fever treatment in Namibia. However, this threshold level is likely to vary by country or endemicity. Although our focus was on fever treatment, the methodology outlined can be extended to multiple health seeking behaviours captured in routine national survey data and to other infectious diseases.
在低收入和中等收入国家(LMICs),寻求正规医疗保健机构治疗简单感染对于抗击疾病至关重要。社区内部和社区之间的医疗保健寻求行为各不相同,并受到社会经济、人口和身体因素的影响。因此,使用一种在各社区之间具有可比性的指标来量化医疗保健寻求行为仍然是一项挑战。在此,我们展示了一个应用程序,用于将个体分类反应(与发烧相关的行为)转化为撒哈拉以南非洲(SSA)一个国家发烧治疗的连续概率估计。
利用纳米比亚2013年人口与健康调查(DHS)具有全国代表性的家庭调查数据,将个体层面的反应(n = 1138)与到最近的公共或私立医疗机构的理论旅行时间估计值相关联。通过马尔可夫链蒙特卡罗(MCMC)模拟拟合贝叶斯项目反应理论(IRT)模型,以估计与发烧治疗相关的参数,并估计五岁以下儿童的治疗概率。实施了不同的模型来评估计算需求以及纳入诸如农村地区等预测变量的影响。然后在区域层面估计平均治疗率。
建模结果表明,在历史上疟疾发病率相对较高的地区,发烧治疗的概率最高。寻求治疗的最低预测阈值概率为0.3(模型1:0.340;95%置信区间0.155 - 0.597),这表明即使在距离医疗机构较远的人群中,个体因发烧寻求治疗的概率仍有30%。基于一部分数据(n = 247)在个体层面正确预测的治疗概率之间的一致性很高(AUC = 0.978),敏感性为96.7%,特异性为75.3%。
我们展示了如何将国家调查中的个体反应转化为在人群层面具有可比性的概率度量。我们对关于发烧的家庭调查数据的分析表明,纳米比亚发烧治疗的基线阈值为30%。然而,这个阈值水平可能因国家或地方流行情况而异。尽管我们关注的是发烧治疗,但所概述的方法可以扩展到常规国家调查数据中捕获的多种健康寻求行为以及其他传染病。