Waheed Shahan, Razzak Junaid Abdul, Khan Nadeemullah, Raheem Ahmed, Mian Asad Iqbal
Department of Emergency Medicine, Aga Khan University & Hospital (AKUH), Karachi, Pakistan.
Department of Emergency Medicine, New York Presbyterian Weill Cornell Medicine, New York, USA.
BMC Emerg Med. 2024 Mar 12;24(1):40. doi: 10.1186/s12873-024-00958-3.
Prediction of serious outcomes among patients with physiological instability is crucial in airway management. In this study, we aim to develop a score to predict serious outcomes following intubation in critically ill adults with physiological instability by using clinical and laboratory parameters collected prior to intubation.
This single-center analytical cross-sectional study was conducted in the Emergency Department from 2016 to 2020. The airway score was derived using the transparent reporting of a multivariable prediction model for individual prognosis or diagnosis (TRIPOD) methodology. To gauge model's performance, the train-test split technique was utilized. The discrete random number generation approach was used to divide the dataset into two groups: development (training) and validation (testing). The validation dataset's instances were used to calculate the final score, and its validity was measured using ROC analysis and area under the curve (AUC). By computing the Youden's J statistic using the metrics sensitivity, specificity, positive predictive value, and negative predictive value, the discriminating factor of the additive score was determined.
The mean age of the 1021 patients who needed endotracheal intubations was 52.2 years (± 17.5), and 632 (62%) of them were male. In the development dataset, there were 527 (64.9%) physiologically difficult airways, 298 (36.7%) post-intubation hypotension, 124 (12%) cardiac arrest, 347 (42.7%) shock index > 0.9, and 456 [56.2%] instances of pH < 7.3. On the contrary, in the validation dataset, there were 143 (68.4%) physiologically difficult airways, 33 (15.8%) post-intubation hypotension, 41 (19.6%) cardiac arrest, 87 (41.6%) shock index > 0.9, and 121 (57.9%) had pH < 7.3, respectively. There were 12 variables in the difficult airway physiological score (DAPS), and a DAPS of 9 had an area under the curve of 0.857. The accuracy of DAPS was 77%, the sensitivity was 74%, the specificity was 83.3%, and the positive predictive value was 91%.
DAPS demonstrated strong discriminating ability for anticipating physiologically challenging airways. The proposed model may be helpful in the clinical setting for screening patients who are at high risk of deterioration.
预测生理不稳定患者的严重后果在气道管理中至关重要。在本研究中,我们旨在通过使用插管前收集的临床和实验室参数,开发一种评分系统,以预测生理不稳定的危重症成年患者插管后的严重后果。
本单中心分析性横断面研究于2016年至2020年在急诊科进行。气道评分采用个体预后或诊断多变量预测模型的透明报告(TRIPOD)方法得出。为评估模型的性能,采用了训练-测试分割技术。使用离散随机数生成方法将数据集分为两组:开发(训练)组和验证(测试)组。验证数据集的实例用于计算最终得分,并使用ROC分析和曲线下面积(AUC)测量其有效性。通过使用敏感性、特异性、阳性预测值和阴性预测值等指标计算约登指数,确定相加评分的鉴别因素。
1021例需要气管插管的患者的平均年龄为52.2岁(±17.5),其中632例(62%)为男性。在开发数据集中,有527例(64.9%)生理上困难的气道,298例(36.7%)插管后低血压,124例(12%)心脏骤停,347例(42.7%)休克指数>0.9,456例(56.2%)pH<7.3。相反,在验证数据集中,分别有143例(68.4%)生理上困难的气道,33例(15.8%)插管后低血压,41例(19.6%)心脏骤停,87例(41.6%)休克指数>0.9,121例(57.9%)pH<7.3。困难气道生理评分(DAPS)中有12个变量,DAPS为9时曲线下面积为0.857。DAPS的准确率为77%,敏感性为74%,特异性为83.3%,阳性预测值为91%。
DAPS在预测生理上具有挑战性的气道方面表现出很强的鉴别能力。所提出的模型可能有助于在临床环境中筛选有病情恶化高风险的患者。