MRC Centre Global Infectious Disease Analysis, Department of Infectious Disease Epidemiology, School of Public Health, Faculty of Medicine, Imperial College London, Norfolk Place, London, W2 1PG, UK.
NIHR Health Protection Research Unit in Modelling Methodology, Department of Infectious Disease Epidemiology, School of Public Health, Faculty of Medicine, Imperial College London, Norfolk Place, London, W2 1PG, UK.
Sci Rep. 2019 May 8;9(1):7070. doi: 10.1038/s41598-019-43521-y.
Reducing health inequalities requires improved understanding of the causes of variation. Local-level variation reflects differences in local population characteristics and health system performance. Identifying low- and high-performing localities allows investigation into these differences. We used Multilevel Regression with Post-stratification (MRP) to synthesise data from multiple sources, using chlamydia testing as our example. We used national probability survey data to identify individual-level characteristics associated with chlamydia testing and combined this with local-level census data to calculate expected levels of testing in each local authority (LA) in England, allowing us to identify LAs where observed chlamydia testing rates were lower or higher than expected, given population characteristics. Taking account of multiple covariates, including age, sex, ethnicity, student and cohabiting status, 5.4% and 3.5% of LAs had testing rates higher than expected for 95% and 99% posterior credible intervals, respectively; 60.9% and 50.8% had rates lower than expected. Residual differences between observed and MRP expected values were smallest for LAs with large proportions of non-white ethnic populations. London boroughs that were markedly different from expected MRP values (≥90% posterior exceedance probability) had actively targeted risk groups. This type of synthesis allows more refined inferences to be made at small-area levels than previously feasible.
要减少健康不平等,就需要更好地了解造成差异的原因。地方层面的差异反映了当地人口特征和卫生系统绩效的差异。确定表现不佳和表现良好的地区,可以调查这些差异。我们使用多水平回归后分层(MRP)来综合来自多个来源的数据,以衣原体检测为例。我们使用全国概率调查数据来确定与衣原体检测相关的个体特征,并将其与地方层面的人口普查数据相结合,计算英格兰每个地方当局(LA)的预期检测水平,从而可以确定观察到的衣原体检测率低于或高于预期的 LA,考虑到人口特征。在考虑了包括年龄、性别、种族、学生和同居状况在内的多个协变量后,分别有 5.4%和 3.5%的 LA 的检测率高于 95%和 99%后验可信区间的预期值;60.9%和 50.8%的检测率低于预期。观察值与 MRP 预期值之间的剩余差异在非白人种族比例较大的 LA 中最小。与预期的 MRP 值(≥90%后验超出概率)明显不同的伦敦自治市,主动针对风险群体。这种综合方法比以前可行的方法更能在小区域层面做出更精细的推断。