Moskowitz Ari, Andersen Lars W, Karlsson Mathias, Grossestreuer Anne V, Chase Maureen, Cocchi Michael N, Berg Katherine, Donnino Michael W
Beth Israel Deaconess Medical Center, Department of Medicine, Division of Pulmonary, Critical Care, and Sleep Medicine, Boston, MA, United States.
Beth Israel Deaconess Medical Center, Department of Emergency Medicine, Boston, MA, United States; Research Center for Emergency Medicine, Aarhus University Hospital, Aarhus, Denmark.
Resuscitation. 2017 Jun;115:5-10. doi: 10.1016/j.resuscitation.2017.02.022. Epub 2017 Mar 4.
Acute respiratory compromise (ARC) is a common and highly morbid event in hospitalized patients. To date, however, few investigators have explored predictors of outcome in initial survivors of ARC events. In the present study, we leveraged the American Heart Association's Get With The Guidelines-Resuscitation (GWTG-R) ARC data registry to develop a prognostic score for initial survivors of ARC events.
Using GWTG-R ARC data, we identified 13,193 index ARC events. These events were divided into a derivation cohort (9807 patients) and a validation cohort (3386 patients). A score for predicting in-hospital mortality was developed using multivariable modeling with generalized estimating equations.
The two cohorts were well balanced in terms of baseline demographics, illness-types, pre-event conditions, event characteristics, and overall mortality. After model optimization, nine variables associated with the outcome of interest were included. Age, hypotension preceding the event, and intubation during the event were the greatest predictors of in-hospital mortality. The final score demonstrated good discrimination in both the derivation and validation cohorts. The score was also very well calibrated in both cohorts. Observed average mortality was <10% in the lowest score category of both cohorts and >70% in the highest category, illustrating a wide range of mortality separated effectively by the scoring system.
In the present study, we developed and internally validated a prognostic score for initial survivors of in-hospital ARC events. This tool will be useful for clinical prognostication, selecting cohorts for interventional studies, and for quality improvement initiatives seeking to risk-adjust for hospital-to-hospital comparisons.
急性呼吸功能不全(ARC)在住院患者中是一种常见且高发病的事件。然而,迄今为止,很少有研究者探讨ARC事件初始幸存者的预后预测因素。在本研究中,我们利用美国心脏协会的“遵循指南 - 复苏(GWTG - R)”ARC数据登记库,为ARC事件的初始幸存者制定了一个预后评分。
使用GWTG - R ARC数据,我们识别出13193例索引ARC事件。这些事件被分为一个推导队列(9807例患者)和一个验证队列(3386例患者)。使用广义估计方程的多变量建模方法制定了一个预测住院死亡率的评分。
两个队列在基线人口统计学、疾病类型、事件前状况、事件特征和总体死亡率方面平衡良好。经过模型优化,纳入了9个与感兴趣结局相关的变量。年龄、事件前低血压和事件期间插管是住院死亡率的最大预测因素。最终评分在推导队列和验证队列中均显示出良好的区分度。该评分在两个队列中也校准得非常好。在两个队列中,最低评分类别中观察到的平均死亡率<10%,最高类别中>70%,这说明评分系统有效地分隔了广泛的死亡率范围。
在本研究中,我们为住院ARC事件的初始幸存者开发并在内部验证了一个预后评分。这个工具将有助于临床预后评估、选择干预研究的队列,以及用于寻求对医院间比较进行风险调整的质量改进计划。