Nearly 300,000 older adults experience a hip fracture every year, the majority of which occur following a fall. Unfortunately, recovery after fall-related trauma such as hip fracture is poor, where older adults diagnosed with Alzheimer's Disease and Related Dementia (ADRD) spend a particularly long time in hospitals or rehabilitation facilities during the post-operative recuperation period. Because older adults value functional recovery and spending time at home versus facilities as key outcomes after hospitalization, identifying factors that influence days spent at home after hospitalization is imperative. While several individual-level factors have been identified, the characteristics of the treating hospital have recently been identified as contributors. However, few methodological rigorous approaches are available to help overcome potential sources of bias such as hospital-level unmeasured confounders, informative hospital size, and loss to follow-up due to death. This article develops a useful tool equipped with unsupervised learning to simultaneously handle statistical complexities that are often encountered in health services research, especially when using large administrative claims databases. The proposed estimator has a closed form, thus only requiring light computation load in a large-scale study. We further develop its asymptotic properties that can be used to make statistical inference in practice. Extensive simulation studies demonstrate superiority of the proposed estimator compared to existing estimators.
翻译:每年有近300,000名年老成年人骨折,其中大部分是在跌倒后发生的。不幸的是,与秋天有关的创伤(如臀骨折)的康复情况很差,因为经诊断患有阿尔茨海默氏病和相关的痴呆症(ADRD)的老年成年人在手术后康复期间在医院或康复设施里度过了特别长的时间。因为老年成年人重视功能康复和在家时间,而住院后在设施中度过的时间是住院后的关键结果,因此确定影响住院后在家度过天数的因素是必要的。虽然已经查明了几个个人因素,但治疗医院的特点最近被确定为贡献者。然而,几乎没有什么方法严格的方法来帮助克服潜在的偏见来源,例如医院一级非计量的共创者、信息化的医院规模以及因死亡而导致的跟踪损失。这篇文章开发了一种有用的工具,该工具配备了不受监督的学习,可以同时处理保健服务研究中经常遇到的复杂统计问题,特别是在使用大型行政索赔数据库时。拟议的估计有封闭的形式,因此只需要在大规模研究中进行轻度计算。我们进一步开发其抑制性特性,以便模拟现有的高超度研究。我们用来进行统计的模拟。</s>