The recent availability of routine medical data, especially in a university-clinical context, may enable the discovery of typical healthcare pathways, i.e., typical temporal sequences of clinical interventions or hospital readmissions. However, such pathways are heterogeneous in a large provider such as a university hospital, and it is important to identify similar care pathways that can still be considered typical pathways. We understand the pathway as a temporal process with possible transitions from a single initial treatment state to hospital readmission of different types, which constitutes a competing risk setting. In this paper, we propose a multi-state model-based approach to uncover pathway similarity between two groups of individuals. We describe a new bootstrap procedure for testing the similarity of transition intensities from two competing risk models with constant transition intensities. In a large simulation study, we investigate the performance of our similarity approach with respect to different sample sizes and different similarity thresholds. The studies are motivated by an application from urological clinical routine and we show how the results can be transferred to the application example.
翻译:最近提供的常规医疗数据,特别是在大学和临床范围内,可能有助于发现典型的保健途径,即临床干预或医院重新接纳的典型时间序列。然而,在大学医院等大型提供者中,这种途径是多种多样的,必须查明仍然可被视为典型途径的类似护理途径。我们理解,这种途径是一个时间过程,有可能从单一的最初治疗国过渡到不同种类的医院重新接纳,这构成了一种相互竞争的风险环境。我们在本文件中提出了一种基于多国模式的方法,以发现两个群体之间的相似途径。我们描述了从两个相互竞争的风险模式和不断过渡强度测试过渡强度相似的过渡强度的新靴式程序。在一次大型模拟研究中,我们研究了我们在不同样本大小和不同相似阈值方面类似方法的绩效。研究的动机是来自泌尿临床常规的应用,我们展示了如何将结果转移给应用实例。