Chuncheon Sacred Heart Hospital, Department of Anesthesiology and Pain Medicine, Chuncheon, South Korea; Hallym University, Institute of New Frontier Research Team, Chuncheon, South Korea.
Chuncheon Sacred Heart Hospital, Department of Anesthesiology and Pain Medicine, Chuncheon, South Korea.
Braz J Anesthesiol. 2022 Sep-Oct;72(5):622-628. doi: 10.1016/j.bjane.2021.06.016. Epub 2021 Jul 9.
Both predictions and predictors of difficult laryngoscopy are controversial. Machine learning is an excellent alternative method for predicting difficult laryngoscopy. This study aimed to develop and validate practical predictive models for difficult laryngoscopy through machine learning.
Variables for the prediction of difficult laryngoscopy included age, Mallampati grade, body mass index, sternomental distance, and neck circumference. Difficult laryngoscopy was defined as grade 3 and 4 by the Cormack-Lehane classification. Pre-anesthesia and anesthesia data of 616 patients who had undergone anesthesia at a single center were included. The dataset was divided into a base training set (n = 492) and a base test set (n = 124), with equal distribution of difficult laryngoscopy. Training data sets were trained with six algorithms (multilayer perceptron, logistic regression, supportive vector machine, random forest, extreme gradient boosting, and light gradient boosting machine), and cross-validated. The model with the highest area under the receiver operating characteristic curve (AUROC) was chosen as the final model, which was validated with the test set.
The results of cross-validation were best using the light gradient boosting machine algorithm with Mallampati score x age and sternomental distance as predictive model parameters. The predicted AUROC for the difficult laryngoscopy class was 0.71 (95% confidence interval, 0.59-0.83; p = 0.014), and the recall (sensitivity) was 0.85.
Predicting difficult laryngoscopy is possible with three parameters. Severe damage resulting from failure to predict difficult laryngoscopy with high recall is small with the reported model. The model's performance can be further enhanced by additional data training.
预测困难喉镜检查的指标和预测因素均存在争议。机器学习是预测困难喉镜检查的一种很好的替代方法。本研究旨在通过机器学习为困难喉镜检查开发和验证实用的预测模型。
用于预测困难喉镜检查的变量包括年龄、Mallampati 分级、体重指数、胸骨上切迹至下颌骨距离和颈围。采用 Cormack-Lehane 分级,将喉镜检查困难定义为 3 级和 4 级。纳入在单中心接受麻醉的 616 例患者的麻醉前和麻醉数据。数据集分为基础训练集(n=492)和基础测试集(n=124),困难喉镜检查的分布相等。使用 6 种算法(多层感知机、逻辑回归、支持向量机、随机森林、极端梯度提升和轻梯度提升机)对训练数据集进行训练,并进行交叉验证。选择具有最高受试者工作特征曲线下面积(AUROC)的模型作为最终模型,并用测试集进行验证。
使用 Mallampati 评分×年龄和胸骨上切迹至下颌骨距离作为预测模型参数的轻梯度提升机算法的交叉验证结果最佳。困难喉镜检查类别的预测 AUROC 为 0.71(95%置信区间,0.59-0.83;p=0.014),召回率(敏感性)为 0.85。
使用三个参数可以预测困难喉镜检查。使用报告的模型,因未能高召回率预测困难喉镜检查而导致的严重损害的可能性较小。通过额外的数据训练,可以进一步提高模型的性能。