Nonyane Bareng A S, Steiner Laura, Shearer Kate, Genade Leisha, Martinson Neil, Hoffmann Christopher J, Golub Jonathan E, Lebina Limakatso
Department of International Health, Johns Hopkins University Bloomberg School of Public Health, Baltimore, Maryland, USA.
Division of Infectious Diseases, The Johns Hopkins University School of Medicine, Baltimore, Maryland, USA.
BMJ Public Health. 2023 Sep 14;1(1):e000070. doi: 10.1136/bmjph-2023-000070. eCollection 2023 Nov.
We consider an analytical problem of characterising patterns and identifying discrepancies between database systems for longitudinal aggregated healthcare data involving multiple facilities.
We used routinely collected data on the registered number of people living with HIV who initiated antiretroviral treatment (ART) in 69 South African facilities in 2019; reported in the Three Interlinked Electronic register (Tier.net) and the District Health Information System. A Bayesian multiplicative interaction model quantified the average time effect as realised through the heterogeneous facility-specific slopes and quantified discrepancies between the two database sources.
The estimated average trends showed a slight dip in June and a large dip in December. The estimated slopes identified clusters of facilities based on their ranges of fluctuations over time. The differences in average monthly ART initiations between the two database sources had a median of 1.6 (IQR 0.8-3.3), while 3 outlying facilities differed by at least 10 ART initiations between the 2 sources.
Multiplicative interaction models are a powerful tool for quantifying average trends over time and for evaluating discrepancies between reporting systems for multiple facilities with heterogeneous time slopes. The Bayesian framework enables efficient estimation for a very large number of parameters.
我们考虑一个分析问题,即对涉及多个机构的纵向汇总医疗保健数据的数据库系统中的模式进行特征描述并识别差异。
我们使用了2019年在南非69个机构中开始接受抗逆转录病毒治疗(ART)的艾滋病毒感染者登记人数的常规收集数据;这些数据在三个相互关联的电子登记册(Tier.net)和地区卫生信息系统中报告。一个贝叶斯乘法交互模型量化了通过不同机构特定斜率实现的平均时间效应,并量化了两个数据库来源之间的差异。
估计的平均趋势显示6月略有下降,12月大幅下降。估计的斜率根据各机构随时间波动的范围确定了机构集群。两个数据库来源之间每月ART起始人数的差异中位数为1.6(四分位间距0.8 - 3.3),而有3个外围机构在两个来源之间的ART起始人数差异至少为10人。
乘法交互模型是一种强大的工具,可用于量化随时间的平均趋势,并评估具有不同时间斜率的多个机构报告系统之间的差异。贝叶斯框架能够对大量参数进行有效估计。