Zhang Xu, Barnes Sean, Golden Bruce, Smith Paul
Department of Mathematics, University of Maryland, College Park, MD, USA.
Robert H. Smith School of Business, University of Maryland, College Park, MD, USA.
J Appl Stat. 2020 Jan 3;48(1):41-60. doi: 10.1080/02664763.2019.1709810. eCollection 2021.
Research concerning hospital readmissions has mostly focused on statistical and machine learning models that attempt to predict this unfortunate outcome for individual patients. These models are useful in certain settings, but their performance in many cases is insufficient for implementation in practice, and the dynamics of how readmission risk changes over time is often ignored. Our objective is to develop a model for aggregated readmission risk over time - using a continuous-time Markov chain - beginning at the point of discharge. We derive point and interval estimators for readmission risk, and find the asymptotic distributions for these probabilities. Finally, we validate our derived estimators using simulation, and apply our methods to estimate readmission risk over time using discharge and readmission data for surgical patients.
关于医院再入院的研究大多集中在统计和机器学习模型上,这些模型试图预测个体患者的这种不良结果。这些模型在某些情况下是有用的,但它们在许多情况下的表现不足以在实际中实施,而且再入院风险随时间变化的动态情况常常被忽视。我们的目标是开发一个从出院时开始的随时间变化的综合再入院风险模型——使用连续时间马尔可夫链。我们推导了再入院风险的点估计和区间估计,并找到了这些概率的渐近分布。最后,我们通过模拟验证了我们推导的估计量,并应用我们的方法,利用外科手术患者的出院和再入院数据来估计随时间变化的再入院风险。