Peruničić Žarko, Lalatović Ivana, Spahić Lemana, Ašić Adna, Pokvić Lejla Gurbeta, Badnjević Almir
University of Donja Gorica, Podgorica, Montenegro.
Research Institute Verlab for Biomedical Engineering, Medical Devices and Artificial Intelligence, Sarajevo, Bosnia and Herzegovina.
Technol Health Care. 2025 May;33(3):1288-1297. doi: 10.1177/09287329241301665. Epub 2024 Dec 9.
BackgroundWith the advancement of Artificial Intelligence (AI), clinical engineering has witnessed transformative opportunities, enabling predictive maintenance of medical devices, optimization of healthcare workflows, and personalized patient care. Respiratory equipment plays a vital role in modern healthcare, supporting patients with compromised or impaired respiratory capacities. However, ensuring the reliability and safety of these devices is crucial to prevent adverse events and ensure patient well-being.ObjectiveThis study aims to explore machine learning techniques to enhance predictive maintenance for mechanical ventilators. The dataset used for this study contains information about 1350 entries of mechanical ventilators, made by 15 different manufacturers and available in 30 distinct models. Different machine learning algorithms, including Logistic Regression, Decision Trees, Random Forest, K-nearest Neighbors, Support Vector Machines, Naive Bayes, and XG Boost are developed and tested in terms of their performance in predicting mechanical ventilator failures.ResultsThe ensemble methods, particularly Random Forest and XGBoost, have proven to be more adept at handling the complexities of the dataset. The Decision Tree and Random Forest models both showed remarkable accuracies of approximately 0.993, while K-Nearest Neighbors (KNN) performed exceptionally with near perfect accuracy.ConclusionAdoption of automated systems based on artificial intelligence will help in overcoming challenges of ensuring quality of MDs that are already being used in healthcare institutions. Implementing machine learning-based predictive maintenance can significantly enhance the reliability of mechanical ventilators in healthcare settings.
背景
随着人工智能(AI)的发展,临床工程迎来了变革性机遇,实现了医疗设备的预测性维护、医疗工作流程的优化以及患者个性化护理。呼吸设备在现代医疗保健中发挥着至关重要的作用,为呼吸功能受损或有障碍的患者提供支持。然而,确保这些设备的可靠性和安全性对于预防不良事件和保障患者健康至关重要。
目的
本研究旨在探索机器学习技术,以加强对机械通气机的预测性维护。本研究使用的数据集包含1350条机械通气机记录信息,这些机械通气机由15个不同制造商生产,有30种不同型号。开发并测试了不同的机器学习算法,包括逻辑回归、决策树、随机森林、K近邻、支持向量机、朴素贝叶斯和极端梯度提升,评估它们在预测机械通气机故障方面的性能。
结果
集成方法,特别是随机森林和极端梯度提升,已被证明更善于处理数据集的复杂性。决策树和随机森林模型的准确率均达到了约0.993,表现出色,而K近邻(KNN)的准确率近乎完美,表现异常出色。
结论
采用基于人工智能的自动化系统将有助于克服确保医疗机构中已使用的医疗设备质量的挑战。实施基于机器学习的预测性维护可以显著提高医疗环境中机械通气机的可靠性。