We used survival analysis to quantify the impact of postdischarge evaluation and management (E/M) services in preventing hospital readmission or death. Our approach avoids a specific pitfall of applying machine learning to this problem, which is an inflated estimate of the effect of interventions, due to survivors bias -- where the magnitude of inflation may be conditional on heterogeneous confounders in the population. This bias arises simply because in order to receive an intervention after discharge, a person must not have been readmitted in the intervening period. After deriving an expression for this phantom effect, we controlled for this and other biases within an inherently interpretable Bayesian survival framework. We identified case management services as being the most impactful for reducing readmissions overall, particularly for patients discharged to long term care facilities, with high resource utilization in the quarter preceding admission.
翻译:我们采用生存分析来量化出院后评估和管理(E / M)服务在预防再次入院或死亡方面的影响。我们的方法避免了将机器学习应用于该问题的一个特定问题,这是由于生存人群偏差导致的干预效果估计膨胀 - 这种膨胀的规模可能与人群中异质性混淆变量有关。这种偏差是由于为了在出院后接受干预,一个人必须没有在此期间再次入院。在得出这种虚假效应的表达式后,我们在 inherently interpretable(本质上可解释的)贝叶斯生存框架内控制了这种偏差和其他偏差。我们确定了病例管理服务作为总体降低再次入院的影响力最大,特别是对于去长期护理机构出院的、在入院前一个季度使用高资源的患者。