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Monitoring Lung Mechanics during Mechanical Ventilation using Machine Learning Algorithms

机译:使用机器学习算法在机械通气期间监测肺力学

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Evaluation of lung mechanics is the primary component for designing lung protective optimal ventilation strategies. This paper presents a machine learning approach for bedside assessment of respiratory resistance (R) and compliance (C). We develop machine learning algorithms to track flow rate and airway pressure and estimate R and C continuously and in real-time. An experimental study is conducted, by connecting a pressure control ventilator to a test lung that simulates various R and C values, to gather sensor data for validation of the devised algorithms. We develop supervised learning algorithms based on decision tree, decision table, and Support Vector Machine (SVM) techniques to predict R and C values. Our experimental results demonstrate that the proposed algorithms achieve 90.3%, 93.1%, and 63.9% accuracy in assessing respiratory R and C using decision table, decision tree, and SVM, respectively. These results along with our ability to estimate R and C with 99.4% accuracy using a linear regression model demonstrate the potential of the proposed approach for constructing a new generation of ventilation technologies that leverage novel computational models to control their underlying parameters for personalized healthcare and context-aware interventions.
机译:肺力学评估是设计肺保护最佳通气策略的主要组成部分。本文提出了一种机器学习方法,可在床边评估呼吸阻力(R)和顺应性(C)。我们开发了机器学习算法来跟踪流速和气道压力,并连续实时地估算R和C。通过将压力控制呼吸机连接到模拟各种R和C值的测试肺进行实验研究,以收集传感器数据以验证所设计的算法。我们基于决策树,决策表和支持向量机(SVM)技术开发有监督的学习算法,以预测R和C值。我们的实验结果表明,在使用决策表,决策树和SVM评估呼吸R和C时,所提出的算法分别达到90.3%,93.1%和63.9%的准确性。这些结果以及我们使用线性回归模型以99.4%的精度估算R和C的能力证明了所提出的方法在构建新一代通风技术方面的潜力,该技术利用新颖的计算模型来控制其个性化医疗保健和环境的基本参数意识的干预。

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