Ding Xuemei, He Kevin, Kalbfleisch John D
Department of Biostatistics, University of Michigan, Ann Arbor, USA.
J R Stat Soc Ser C Appl Stat. 2023 Sep 6;73(1):28-46. doi: 10.1093/jrsssc/qlad082. eCollection 2024 Jan.
Recurrent events such as hospitalisations are outcomes that can be used to monitor dialysis facilities' quality of care. However, current methods are not adequate to analyse data from many facilities with multiple hospitalisations, especially when adjustments are needed for multiple time scales. It is also controversial whether direct or indirect standardisation should be used in comparing facilities. This study is motivated by the need of the Centers for Medicare and Medicaid Services to evaluate US dialysis facilities using Medicare claims, which involve almost 8,000 facilities and over 500,000 dialysis patients. This scope is challenging for current statistical software's computational power. We propose a method that has a flexible baseline rate function and is computationally efficient. Additionally, the proposed method shares advantages of both indirect and direct standardisation. The method is evaluated under a range of simulation settings and demonstrates substantially improved computational efficiency over the existing package . Finally, we illustrate the method with an important application to monitoring dialysis facilities in the U.S., while making time-dependent adjustments for the effects of COVID-19.
诸如住院等复发事件是可用于监测透析机构护理质量的结果。然而,当前的方法不足以分析来自许多有多次住院情况的机构的数据,尤其是当需要针对多个时间尺度进行调整时。在比较不同机构时,应使用直接标准化还是间接标准化也存在争议。本研究的动机源于医疗保险和医疗补助服务中心需要利用医疗保险理赔数据评估美国的透析机构,这些数据涉及近8000家机构和超过50万名透析患者。这样的规模对当前统计软件的计算能力构成挑战。我们提出一种具有灵活基线率函数且计算效率高的方法。此外,所提出的方法兼具间接标准化和直接标准化的优点。该方法在一系列模拟设置下进行了评估,并显示出比现有软件包显著提高的计算效率。最后,我们通过一个重要应用展示该方法,即在美国监测透析机构的同时,针对新冠疫情的影响进行随时间变化的调整。