International Center for Equity in Health, Universidade Federal de Pelotas, R. Marechal Deodoro, Centro, Pelotas, 1160, Brazil.
Post-Graduate Program in Epidemiology, Universidade Federal de Pelotas, Pelotas, Brazil.
BMC Public Health. 2022 Nov 17;22(1):2104. doi: 10.1186/s12889-022-14371-7.
The composite coverage index (CCI) provides an integrated perspective towards universal health coverage in the context of reproductive, maternal, newborn and child health. Given the sample design of most household surveys does not provide coverage estimates below the first administrative level, approaches for achieving more granular estimates are needed. We used a model-based geostatistical approach to estimate the CCI at multiple resolutions in Peru.
We generated estimates for the eight indicators on which the CCI is based for the departments, provinces, and areas of 5 × 5 km of Peru using data from two national household surveys carried out in 2018 and 2019 plus geospatial covariates. Bayesian geostatistical models were fit using the INLA-SPDE approach. We assessed model fit using cross-validation at the survey cluster level and by comparing modelled and direct survey estimates at the department-level.
CCI coverage in the provinces along the coast was consistently higher than in the remainder of the country. Jungle areas in the north and east presented the lowest coverage levels and the largest gaps between and within provinces. The greatest inequalities were found, unsurprisingly, in the largest provinces where populations are scattered in jungle territory and are difficult to reach.
Our study highlighted provinces with high levels of inequality in CCI coverage indicating areas, mostly low-populated jungle areas, where more attention is needed. We also uncovered other areas, such as the border with Bolivia, where coverage is lower than the coastal provinces and should receive increased efforts. More generally, our results make the case for high-resolution estimates to unveil geographic inequities otherwise hidden by the usual levels of survey representativeness.
综合覆盖指数(CCI)在生殖、孕产妇、新生儿和儿童健康背景下为全民健康覆盖提供了一个综合视角。鉴于大多数家庭调查的样本设计无法提供低于第一行政级别的覆盖估计数,因此需要采用更精细的估计方法。我们使用基于模型的地质统计学方法在秘鲁多个分辨率下估计 CCI。
我们使用 2018 年和 2019 年两次全国性家庭调查的数据以及地理空间协变量,为秘鲁的部门、省和 5×5 公里的地区生成了基于 CCI 的八项指标的估计值。使用 INLA-SPDE 方法拟合贝叶斯地质统计学模型。我们通过在调查群集水平上进行交叉验证,并通过在部门水平上比较模型估计值和直接调查估计值来评估模型拟合情况。
沿海省份的 CCI 覆盖率始终高于该国其他地区。北部和东部的丛林地区覆盖率最低,且省与省之间以及省内之间的差距最大。不出所料,在人口分散在丛林地区且难以到达的最大省份中,发现了最大的不平等。
我们的研究强调了 CCI 覆盖不平等程度较高的省份,表明存在需要更多关注的地区,主要是人口稀少的丛林地区。我们还发现了其他地区,例如与玻利维亚的边界,那里的覆盖率低于沿海省份,应加大努力。更普遍地说,我们的研究结果表明需要进行高分辨率的估计,以揭示否则被通常的调查代表性所隐藏的地理不平等现象。