Department of Anaesthesiology, Central People's Hospital of Zhanjiang, Zhanjiang, China.
Department of Anesthesiology, Pain and Perioperative Medicine, First Affiliated Hospital of Zhengzhou University, Zhengzhou, China.
Front Public Health. 2022 Aug 10;10:937471. doi: 10.3389/fpubh.2022.937471. eCollection 2022.
In this paper, we examine whether machine learning and deep learning can be used to predict difficult airway intubation in patients undergoing thyroid surgery.
We used 10 machine learning and deep learning algorithms to establish a corresponding model through a training group, and then verify the results in a test group. We used R for the statistical analysis and constructed the machine learning prediction model in Python.
The top 5 weighting factors for difficult airways identified by the average algorithm in machine learning were age, sex, weight, height, and BMI. In the training group, the AUC values and accuracy and the Gradient Boosting precision were 0.932, 0.929, and 100%, respectively. As for the modeled effects of predicting difficult airways in test groups, among the models constructed by the 10 algorithms, the three algorithms with the highest AUC values were Gradient Boosting, CNN, and LGBM, with values of 0.848, 0.836, and 0.812, respectively; In addition, among the algorithms, Gradient Boosting had the highest accuracy with a value of 0.913; Additionally, among the algorithms, the Gradient Boosting algorithm had the highest precision with a value of 100%.
According to our results, Gradient Boosting performed best overall, with an AUC >0.8, an accuracy >90%, and a precision of 100%. Besides, the top 5 weighting factors identified by the average algorithm in machine learning for difficult airways were age, sex, weight, height, and BMI.
在本文中,我们研究了机器学习和深度学习是否可用于预测甲状腺手术患者的困难气道插管。
我们使用 10 种机器学习和深度学习算法,通过训练组建立相应的模型,然后在测试组中验证结果。我们使用 R 进行统计分析,并在 Python 中构建机器学习预测模型。
平均算法在机器学习中确定的困难气道的前 5 个加权因素为年龄、性别、体重、身高和 BMI。在训练组中,AUC 值、准确性和 Gradient Boosting 精度分别为 0.932、0.929 和 100%。至于在测试组中预测困难气道的建模效果,在 10 种算法构建的模型中,AUC 值最高的三种算法分别为 Gradient Boosting、CNN 和 LGBM,值分别为 0.848、0.836 和 0.812;此外,在这些算法中,Gradient Boosting 的准确率最高,为 0.913;此外,在这些算法中,Gradient Boosting 的精度最高,为 100%。
根据我们的结果,Gradient Boosting 的总体性能最佳,AUC>0.8,准确率>90%,精度为 100%。此外,机器学习中平均算法确定的困难气道的前 5 个加权因素为年龄、性别、体重、身高和 BMI。