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Equation Discovery for Model Identification in Respiratory Mechanics of the Mechanically Ventilated Human Lung

机译:机械通气的人肺呼吸力学中模型识别的方程发现

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Lung protective ventilation strategies reduce the risk of ventilator associated lung injury. To develop such strategies, knowledge about mechanical properties of the mechanically ventilated human lung is essential. This study was designed to develop an equation discovery system to identify mathematical models of the respiratory system in time-series data obtained from mechanically ventilated patients. Two techniques were combined: (i) the usage of declarative bias to reduce search space complexity and inherently providing the processing of background knowledge, (ii) A newly developed heuristic for traversing the hypothesis space with a greedy, randomized strategy analogical to the GSAT algorithm. In 96.8% of all runs the applied equation discovery system was capable to detect the well-established equation of motion model of the respiratory system in the provided data. We see the potential of this semi-automatic approach to detect more complex mathematical descriptions of the respiratory system from respiratory data.
机译:肺部保护性通气策略可降低呼吸机相关性肺损伤的风险。为了制定这样的策略,关于机械通气的人肺的机械特性的知识是必不可少的。本研究旨在开发一种方程式发现系统,以从机械通气患者获得的时间序列数据中识别呼吸系统的数学模型。结合了两种技术:(i)使用声明性偏见来减少搜索空间的复杂性并固有地提供背景知识的处理;(ii)一种新开发的启发式算法,用于通过类似于GSAT算法的贪婪随机策略遍历假设空间。在所有运行的96.8%中,应用的方程发现系统能够在提供的数据中检测到呼吸系统运动模型的公认方程。我们看到这种半自动方法从呼吸数据中检测出呼吸系统更复杂的数学描述的潜力。

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