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Intelligent model-based advisory system for the management of ventilated intensive care patients. Part II: Advisory system design and evaluation.

机译:基于智能模型的咨询系统,用于管理通气的重症监护患者。第二部分:咨询系统设计和评估。

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摘要

The optimisation of ventilatory support is a crucial issue for the management of respiratory failure in critically ill patients, aiming at improving gas exchange while preventing ventilator-induced dysfunction of the respiratory system. Clinicians often rely on their knowledge/experience and regular observation of the patient's response for adjusting the level of respiratory support. Using a similar data-driven decision-making methodology, an adaptive model-based advisory system has been designed for the clinical monitoring and management of mechanically ventilated patients. The hybrid blood gas patient model SOPAVent developed in Part I of this paper and validated against clinical data for a range of patients lung abnormalities is embedded into the advisory system to predict continuously and non-invasively the patient's respiratory response to changes in the ventilator settings. The choice of appropriate ventilator settings involves finding a balance among a selection of fundamentally competing therapeutic decisions. The design approach used here is based on a goal-directed multi-objective optimisation strategy to determine the optimal ventilator settings that effectively restore gas exchange and promote improved patient's clinical conditions. As an initial step to its clinical validation, the advisory system's closed-loop stability and performance have been assessed in a series of simulations scenarios reconstructed from real ICU patients data. The results show that the designed advisory system can generate good ventilator-setting advice under patient state changes and competing ventilator management targets.
机译:呼吸支持的优化对于危重患者呼吸衰竭的治疗至关重要,目的是改善气体交换,同时防止呼吸机引起的呼吸系统功能障碍。临床医生通常依靠他们的知识/经验以及对患者反应的定期观察来调整呼吸支持水平。使用类似的数据驱动决策方法,已经设计了基于适应性模型的咨询系统,用于机械通气患者的临床监测和管理。在本文第一部分中开发的混合血气患者模型SOPAVent并已针对一系列患者的肺部异常进行了临床数据验证,该模型被嵌入咨询系统中,以连续且无创地预测患者对呼吸机设置变化的呼吸反应。选择合适的呼吸机设置涉及在基本竞争性治疗决策的选择之间找到平衡。这里使用的设计方法基于目标导向的多目标优化策略,以确定可以有效恢复气体交换并改善患者临床状况的最佳呼吸机设置。作为其临床验证的第一步,该咨询系统的闭环稳定性和性能已在根据实际ICU患者数据重建的一系列模拟方案中进行了评估。结果表明,在患者状态变化和竞争性呼吸机管理目标下,设计的咨询系统可以生成良好的呼吸机设置建议。

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