Ozdemir Habib, Sasmaz Muhammed Ikbal, Guven Ramazan, Avci Akkan
Health Data Research and Artificial Intelligence Applications Institute, Health Institutes of Turkiye, Istanbul, Türkiye.
Faculty of Medicine, Department of Emergency Medicine, Manisa Celal Bayar University, Manisa, Türkiye.
Ir J Med Sci. 2025 Feb;194(1):277-287. doi: 10.1007/s11845-024-03767-6. Epub 2024 Aug 1.
Arterial blood gas evaluation is crucial for critically ill patients, as it provides essential information about acid-base metabolism and respiratory balance, but evaluation can be complex and time-consuming. Artificial intelligence can perform tasks that require human intelligence, and it is revolutionizing healthcare through technological advancements.
This study aims to assess arterial blood gas evaluation using artificial intelligence algorithms.
The study included 21.541 retrospective arterial blood gas samples, categorized into 15 different classes by experts for evaluating acid-base metabolism status. Six machine learning algorithms were utilized; accuracy, balanced accuracy, sensitivity, specificity, precision, and F1 values of the models were determined; and ROC curves were drawn to assess areas under the curve for each class. Evaluation of which sample was estimated in which class was conducted using the confusion matrices of the models.
The bagging classifier (BC) model achieved the highest balanced accuracy with 99.24%, whereas the XGBoost model reached the highest accuracy with 99.66%. The BC model shows 100% sensitivity for nine classes and 100% specificity for 10 classes, and the model correctly predicted 6438 of 6463 test samples and achieved an accuracy of 99.61%, with an area under the curve > 0.9 in all classes on a class basis.
The machine learning models developed exhibited remarkable accuracy, sensitivity, and specificity in predicting the status of acid-base metabolism. However, implementing these models can aid clinicians, freeing up their time for more intricate tasks.
动脉血气评估对于重症患者至关重要,因为它能提供有关酸碱代谢和呼吸平衡的重要信息,但评估过程可能复杂且耗时。人工智能可以执行需要人类智能的任务,并且正在通过技术进步彻底改变医疗保健。
本研究旨在使用人工智能算法评估动脉血气。
该研究纳入了21541份回顾性动脉血气样本,专家将其分为15个不同类别以评估酸碱代谢状态。使用了六种机器学习算法;确定了模型的准确率、平衡准确率、灵敏度、特异性、精确率和F1值;绘制了ROC曲线以评估每个类别的曲线下面积。使用模型的混淆矩阵对哪些样本被估计在哪个类别中进行评估。
装袋分类器(BC)模型的平衡准确率最高,为99.24%,而XGBoost模型的准确率最高,为99.66%。BC模型对九个类别显示出100%的灵敏度,对十个类别显示出100%的特异性,该模型正确预测了6463个测试样本中的6438个,准确率达到99.61%,在各分类基础上所有类别的曲线下面积均>0.9。
所开发的机器学习模型在预测酸碱代谢状态方面表现出了显著的准确性、灵敏度和特异性。然而,实施这些模型可以帮助临床医生,使他们有时间处理更复杂的任务。