UVA Center for Advanced Medical Analytics, University of Virginia, Charlottesville, VA, USA.
Advanced Medical Predictive Devices, Diagnostics, and Displays; University of Virginia, Charlottesville, VA, USA.
Surgery. 2018 Apr;163(4):811-818. doi: 10.1016/j.surg.2017.08.022. Epub 2018 Feb 9.
Continuous predictive monitoring has been employed successfully to predict subclinical adverse events. Should low values on these models, however, reassure us that a patient will not have an adverse outcome? Negative predictive values of such models could help predict safe patient discharge. The goal of this study was to validate the negative predictive value of an ensemble model for critical illness (using previously developed models for respiratory instability, hemorrhage, and sepsis) based on bedside monitoring data in the intensive care units and intermediate care unit.
We calculated the relative risk of 3 critical illnesses for all patients every 15 minutes (n= 124,588) for 2,924 patients downgraded from the surgical intensive care units and intermediate care unit between May 2014 to May 2016. We constructed an ensemble model to estimate at the time of intensive care units or intermediate care unit discharge the probability of favorable outcome after downgrade.
Outputs form the ensemble model stratified patients by risk of favorable and bad outcomes in both intensive care units/intermediate care unit; area under the receiver operating characteristic curve = .639/.629 respectively for favorable outcomes and .645/.641 for adverse events. These performance characteristics are commensurate with published models for predicting readmission. The ensemble model remained a statistically significant predictor after adjusting for hospital duration of stay and admitting service. The rate of favorable outcome in the highest and lowest deciles in the intensive care units were 76.2% and 27.3% (2.8-fold decrease) and 88.3% and 33.2% in the intermediate care unit (2.7-fold decrease), respectively.
An ensemble model for critical illness predicts favorable outcome after downgrade and safe patient discharge (hospital stay <7 days, no readmission, upgrade, or death).
连续预测监测已成功用于预测亚临床不良事件。然而,这些模型的低值是否能让我们相信患者不会出现不良结局?这些模型的阴性预测值有助于预测患者安全出院。本研究的目的是验证重症监护病房和中级护理病房床边监测数据的重症综合预测模型(使用先前开发的呼吸不稳定、出血和脓毒症模型)的阴性预测值。
我们计算了 2014 年 5 月至 2016 年 5 月期间从外科重症监护病房和中级护理病房降级的 2924 名患者的所有患者每 15 分钟的 3 种危重病的相对风险(n=124588)。我们构建了一个综合模型,以估计重症监护病房或中级护理病房出院时降级后良好结局的概率。
综合模型的输出根据重症监护病房/中级护理病房中有利和不良结局的风险对患者进行分层;有利于结局的曲线下面积分别为 0.639/0.629,不良事件为 0.645/0.641。这些性能特征与预测再入院的发表模型相当。在调整了住院时间和入院服务后,综合模型仍然是一个统计学上显著的预测因素。重症监护病房中最高和最低十分位数的良好结局率分别为 76.2%和 27.3%(降低 2.8 倍),中级护理病房分别为 88.3%和 33.2%(降低 2.7 倍)。
重症综合预测模型可预测降级后和患者安全出院的有利结局(住院时间<7 天,无再入院、升级或死亡)。