Huang Huimin, Wang Jiayi, Zhu Ying, Liu Jinxing, Zhang Ling, Shi Wei, Hu Wenyue, Ding Yi, Zhou Ren, Jiang Hong
Department of Anesthesiology, Shanghai Ninth People's Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai 200023, China.
J Clin Med. 2023 Jan 30;12(3):1066. doi: 10.3390/jcm12031066.
(1) Background: Extubation failure after general anesthesia is significantly associated with morbidity and mortality. The risk of a difficult airway after the general anesthesia of head, neck, and maxillofacial surgeries is significantly higher than that after general surgery, increasing the incidence of extubation failure. This study aimed to develop a multivariable prediction model based on a supervised machine-learning algorithm to predict extubation failure in adult patients after head, neck, and maxillofacial surgeries. (2) Methods: A single-center retrospective study was conducted in adult patients who underwent head, neck, and maxillofacial general anesthesia between July 2015 and July 2022 at the Shanghai Ninth People's Hospital. The primary outcome was extubation failure after general anesthesia. The dataset was divided into training (70%) and final test sets (30%). A five-fold cross-validation was conducted in the training set to reduce bias caused by the randomly divided dataset. Clinical data related to extubation failure were collected and a stepwise logistic regression was performed to screen out the key features. Six machine-learning methods were introduced for modeling, including random forest (RF), k-nearest neighbor (KNN), logistic regression (LOG), support vector machine (SVM), extreme gradient boosting (XGB), and optical gradient boosting machine (GBM). The best performance model in the first cross-validation dataset was further optimized and the final performance was assessed using the final test set. (3) Results: In total, 89,279 patients over seven years were reviewed. Extubation failure occurred in 77 patients. Next, 186 patients with a successful extubation were screened as the control group according to the surgery type for patients with extubation failure. Based on the stepwise regression, seven variables were screened for subsequent analysis. After training, SVM and LOG models showed better prediction ability. In the k-fold dataset, the area under the curve using SVM and LOG were 0.74 (95% confidence interval, 0.55-0.93) and 0.71 (95% confidence interval, 0.59-0.82), respectively, in the k-fold dataset. (4) Conclusion: Applying our machine-learning model to predict extubation failure after general anesthesia in clinical practice might help to reduce morbidity and mortality of patients with difficult airways after head, neck, and maxillofacial surgeries.
(1)背景:全身麻醉后拔管失败与发病率和死亡率显著相关。头、颈和颌面外科手术全身麻醉后出现困难气道的风险显著高于普通外科手术,这增加了拔管失败的发生率。本研究旨在基于监督机器学习算法开发一种多变量预测模型,以预测成年患者头、颈和颌面外科手术后的拔管失败情况。(2)方法:对2015年7月至2022年7月在上海第九人民医院接受头、颈和颌面全身麻醉的成年患者进行单中心回顾性研究。主要结局是全身麻醉后拔管失败。数据集分为训练集(70%)和最终测试集(30%)。在训练集中进行五折交叉验证,以减少随机划分数据集导致的偏差。收集与拔管失败相关的临床数据,并进行逐步逻辑回归以筛选出关键特征。引入六种机器学习方法进行建模,包括随机森林(RF)、k近邻(KNN)、逻辑回归(LOG)、支持向量机(SVM)、极端梯度提升(XGB)和光梯度提升机(GBM)。对第一个交叉验证数据集中性能最佳的模型进行进一步优化,并使用最终测试集评估最终性能。(3)结果:总共回顾了7年中的89279例患者。77例患者发生拔管失败。接下来,根据拔管失败患者的手术类型,筛选出186例拔管成功的患者作为对照组。基于逐步回归,筛选出七个变量进行后续分析。经过训练,SVM和LOG模型显示出更好的预测能力。在k折数据集中,使用SVM和LOG时曲线下面积在k折数据集中分别为0.74(95%置信区间,0.55 - 0.93)和0.71(95%置信区间,0.59 - 0.82)。(4)结论:在临床实践中应用我们的机器学习模型预测全身麻醉后的拔管失败情况,可能有助于降低头、颈和颌面外科手术后困难气道患者的发病率和死亡率。