Department of Emergency Medicine, University of Pittsburgh School of Medicine, Pittsburgh, PA.
Department of Critical Care Medicine, University of Pittsburgh School of Medicine, Pittsburgh, PA.
Crit Care Med. 2023 Apr 1;51(4):503-512. doi: 10.1097/CCM.0000000000005790. Epub 2023 Feb 8.
Withdrawal of life-sustaining therapies for perceived poor neurologic prognosis (WLST-N) is common after resuscitation from cardiac arrest and may bias outcome estimates from models trained using observational data. We compared several approaches to outcome prediction with the goal of identifying strategies to quantify and reduce this bias.
Retrospective observational cohort study.
Two academic medical centers ("UPMC" and "University of Alabama Birmingham" [UAB]).
Comatose adults resuscitated from cardiac arrest.
None.
As potential predictors, we considered clinical, laboratory, imaging, and quantitative electroencephalography data available early after hospital arrival. We followed patients until death, discharge, or awakening from coma. We used penalized Cox regression with a least absolute shrinkage and selection operator penalty and five-fold cross-validation to predict time to awakening in UPMC patients and then externally validated the model in UAB patients. This model censored patients after WLST-N, considering subsequent potential for awakening to be unknown. Next, we developed a penalized logistic model predicting awakening, which treated failure to awaken after WLST-N as a true observed outcome, and a separate logistic model predicting WLST-N. We scaled and centered individual patients' Cox and logistic predictions for awakening to allow direct comparison and then explored the difference in predictions across probabilities of WLST-N. Overall, 1,254 patients were included, and 29% awakened. Cox models performed well (mean area under the curve was 0.93 in the UPMC test sets and 0.83 in external validation). Logistic predictions of awakening were systematically more pessimistic than Cox-based predictions for patients at higher risk of WLST-N, suggesting potential for self-fulfilling prophecies to arise when failure to awaken after WLST-N is considered as the ground truth outcome.
Compared with traditional binary outcome prediction, censoring outcomes after WLST-N may reduce potential for bias and self-fulfilling prophecies.
在心肺复苏后,由于对神经预后的感知不良而停止生命支持治疗(WLST-N)是很常见的,这可能会影响使用观察性数据训练的模型的结果估计。我们比较了几种结局预测方法,目的是确定量化和减少这种偏差的策略。
回顾性观察队列研究。
两个学术医疗中心(“UPMC”和“阿拉巴马大学伯明翰分校”[UAB])。
心肺复苏后昏迷的成年人。
无。
作为潜在的预测因素,我们考虑了在入院后早期可获得的临床、实验室、影像学和定量脑电图数据。我们随访患者直至死亡、出院或从昏迷中苏醒。我们使用带有最小绝对收缩和选择算子惩罚的惩罚性 Cox 回归和五折交叉验证来预测 UPMC 患者的苏醒时间,然后在 UAB 患者中进行外部验证。该模型在 WLST-N 后对患者进行删失,认为 WLST-N 后可能苏醒的情况未知。接下来,我们开发了一个惩罚性逻辑模型来预测苏醒,将 WLST-N 后未能苏醒视为真实观察到的结果,以及一个单独的逻辑模型来预测 WLST-N。我们对个体患者的 Cox 和逻辑苏醒预测进行缩放和中心化,以允许直接比较,然后探讨了 WLST-N 概率下的预测差异。总体而言,共纳入 1254 例患者,其中 29%苏醒。Cox 模型表现良好(UPMC 测试集的平均曲线下面积为 0.93,外部验证为 0.83)。对于 WLST-N 风险较高的患者,基于逻辑的苏醒预测比 Cox 预测更为悲观,这表明当 WLST-N 后未能苏醒被视为真实结局时,可能会出现自我实现的预言。
与传统的二元结局预测相比,在 WLST-N 后对结局进行删失可能会减少潜在的偏倚和自我实现的预言。