From the Department of Anesthesia and Perioperative Care.
Department of Surgery.
Anesth Analg. 2020 Dec;131(6):1901-1910. doi: 10.1213/ANE.0000000000005085.
Postoperative delirium is an important problem for surgical inpatients and was the target of a multidisciplinary quality improvement project at our institution. We developed and tested a semiautomated delirium risk stratification instrument, Age, WORLD backwards, Orientation, iLlness severity, Surgery-specific risk (AWOL-S), in 3 independent cohorts from our tertiary care hospital and describe its performance characteristics and impact on clinical care.
The risk stratification instrument was derived with elective surgical patients who were admitted at least overnight and received at least 1 postoperative delirium screen (Nursing Delirium Screening Scale [NuDESC] or Confusion Assessment Method for the Intensive Care Unit [CAM-ICU]) and preoperative cognitive screening tests (orientation to place and ability to spell WORLD backward). Using data pragmatically collected between December 7, 2016, and June 15, 2017, we derived a logistic regression model predicting probability of delirium in the first 7 postoperative hospital days. A priori predictors included age, cognitive screening, illness severity or American Society of Anesthesiologists physical status, and surgical delirium risk. We applied model odds ratios to 2 subsequent cohorts ("validation" and "sustained performance") and assessed performance using area under the receiver operator characteristic curves (AUC-ROC). A post hoc sensitivity analysis assessed performance in emergency and preadmitted patients. Finally, we retrospectively evaluated the use of benzodiazepines and anticholinergic medications in patients who screened at high risk for delirium.
The logistic regression model used to derive odds ratios for the risk prediction tool included 2091 patients. Model AUC-ROC was 0.71 (0.67-0.75), compared with 0.65 (0.58-0.72) in the validation (n = 908) and 0.75 (0.71-0.78) in the sustained performance (n = 3168) cohorts. Sensitivity was approximately 75% in the derivation and sustained performance cohorts; specificity was approximately 59%. The AUC-ROC for emergency and preadmitted patients was 0.71 (0.67-0.75; n = 1301). After AWOL-S was implemented clinically, patients at high risk for delirium (n = 3630) had 21% (3%-36%) lower relative risk of receiving an anticholinergic medication perioperatively after controlling for secular trends.
The AWOL-S delirium risk stratification tool has moderate accuracy for delirium prediction in a cohort of elective surgical patients, and performance is largely unchanged in emergent/preadmitted surgical patients. Using AWOL-S risk stratification as a part of a multidisciplinary delirium reduction intervention was associated with significantly lower rates of perioperative anticholinergic but not benzodiazepine, medications in those at high risk for delirium. AWOL-S offers a feasible starting point for electronic medical record-based postoperative delirium risk stratification and may serve as a useful paradigm for other institutions.
术后谵妄是外科住院患者的一个重要问题,也是我们机构多学科质量改进项目的目标。我们开发并测试了一种半自动谵妄风险分层工具,即年龄、WORLD 倒转、定向、疾病严重程度、手术特异性风险(AWOL-S),并在我们的三级保健医院的 3 个独立队列中描述了其性能特征及其对临床护理的影响。
该风险分层工具是针对至少住院过夜并接受至少 1 次术后谵妄筛查(护理谵妄筛查量表[NuDESC]或重症监护病房谵妄评估方法[CAM-ICU])和术前认知筛查测试(定向位置和拼写 WORLD 倒转的能力)的择期手术患者得出的。使用 2016 年 12 月 7 日至 2017 年 6 月 15 日期间实际收集的数据,我们得出了一个预测术后 7 天内发生谵妄概率的逻辑回归模型。先验预测因子包括年龄、认知筛查、疾病严重程度或美国麻醉医师协会身体状况和手术性谵妄风险。我们将模型比值比应用于随后的 2 个队列(“验证”和“持续性能”),并使用接收器操作特征曲线下的面积(AUC-ROC)评估性能。事后敏感性分析评估了在急诊和预入院患者中该模型的性能。最后,我们回顾性评估了在高风险发生谵妄的患者中使用苯二氮䓬类药物和抗胆碱能药物的情况。
用于推导风险预测工具的比值比的逻辑回归模型包括 2091 名患者。模型 AUC-ROC 为 0.71(0.67-0.75),与验证队列(n=908)中的 0.65(0.58-0.72)和持续性能队列(n=3168)中的 0.75(0.71-0.78)相比。在推导和持续性能队列中,敏感性约为 75%;特异性约为 59%。急诊和预入院患者的 AUC-ROC 为 0.71(0.67-0.75;n=1301)。在 AWOL-S 临床实施后,在控制了时间趋势后,患有谵妄高风险的患者(n=3630)接受围手术期抗胆碱能药物的相对风险降低了 21%(3%-36%)。
在一组择期手术患者中,AWOL-S 谵妄风险分层工具对谵妄预测具有中等准确性,并且在紧急/预入院手术患者中的性能基本不变。使用 AWOL-S 风险分层作为多学科谵妄减少干预的一部分与高风险发生谵妄的患者围手术期使用抗胆碱能药物而不是苯二氮䓬类药物的风险显著降低相关。AWOL-S 为基于电子病历的术后谵妄风险分层提供了一个可行的起点,可能成为其他机构的有用范例。