Sezari Parisa, Kohzadi Zeinab, Dabbagh Ali, Jafari Alireza, Khoshtinatan Saba, Mottaghi Kamran, Kohzadi Zahra, Rahmatizadeh Shahabedin
Department of Anesthesiology, School of Medicine, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
Department of Health Information Technology and Management, School of Allied Medical Sciences, Shahid Beheshti University of Medical Sciences, 1th floor, No 21, Darband St., Tajrish sq., Tehran, Iran.
BMC Anesthesiol. 2024 Dec 18;24(1):453. doi: 10.1186/s12871-024-02842-w.
To protect patients during anesthesia, difficult airway management is a serious issue that needs to be carefully planned for and carried out. Machine learning prediction tools have recently become increasingly common in medicine, frequently surpassing more established techniques. This study aims to utilize machine learning techniques on predictive parameters for challenging airway management.
This study was cross-sectional. The Shahid Beheshti University of Medical Sciences in Iran's Loghman Hakim and Shahid Labbafinezhad hospitals provided 622 records in total for analysis. Using the forest of trees approach and feature importance, important features were chosen. The Synthetic Minority Oversampling Technique (SMOTE) and repeated edited nearest neighbor under-sampling were used to balance the data. Using Python and 10-fold cross-validation, seven machine learning algorithms were assessed: Logistic Regression, Support Vector Machines (SVM), Random Forest (INFORMATION-GAIN and GINI-INDEX), Decision Tree, and K-Nearest Neighbors (KNN). Metrics like F-measure, AUC, Recall, Accuracy, Specificity, and Precision were used to evaluate the performance of the model.
Twenty-four important features were chosen from the original 32 features. The under-sampling strategy produced better results than SMOTE. Among the algorithms, KNN (Euclidean, Minkowski) had better performance than other algorithms. The highest values for accuracy, precision, recall, F-measure, and AUC were obtained at 0.87, 0.88, 0.82, 0.85, and 0.87, respectively.
Algorithms for machine learning provide insightful information for anticipating challenging airway management. By making it possible to forecast airway difficulties more accurately, these techniques can potentially improve clinical practice and patient outcomes.
为在麻醉期间保护患者,困难气道管理是一个需要精心规划和实施的严肃问题。机器学习预测工具最近在医学中越来越普遍,常常超越了更为成熟的技术。本研究旨在将机器学习技术应用于具有挑战性的气道管理的预测参数。
本研究为横断面研究。伊朗沙希德·贝赫什提医科大学的洛格曼·哈基姆医院和沙希德·拉巴法内扎德医院总共提供了622条记录用于分析。使用树森林方法和特征重要性来选择重要特征。采用合成少数过采样技术(SMOTE)和重复编辑最近邻欠采样来平衡数据。使用Python和10折交叉验证,评估了七种机器学习算法:逻辑回归、支持向量机(SVM)、随机森林(信息增益和基尼指数)、决策树和K近邻(KNN)。使用F值、AUC、召回率、准确率、特异性和精确率等指标来评估模型的性能。
从最初的32个特征中选择了24个重要特征。欠采样策略产生的结果比SMOTE更好。在这些算法中,KNN(欧几里得、闵可夫斯基)的性能优于其他算法。准确率、精确率、召回率、F值和AUC的最高值分别为0.87、0.88、0.82、0.85和0.87。
机器学习算法为预测具有挑战性的气道管理提供了有见地的信息。通过使更准确地预测气道困难成为可能,这些技术有可能改善临床实践和患者预后。