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Blood Gas Predictions for Patients Under Artificial Ventilation Using Fuzzy Logic Models

机译:采用模糊逻辑模型,人工通风患者的血气预测

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This paper proposes a new modelling framework for accurate predictions of arterial blood gases (ABG) of the previously developed SOPAVent model (Simulation of Patients under Artificial Ventilation). Three ABG parameters which were elicited from the SOPAVent model are the partial arterial pressure of oxygen (PaO_2), the partial arterial pressure of carbon-dioxide (PaCO_2) and the acid-base (pH). SOPAVent generate predictions of initial ABG and predictions of ABG after ventilator settings were modified. SOPAVent's sub-models, the relative dead space (Kd) and the carbon-dioxide production (VCO_2) were designed using interval type-2 fuzzy logic system (IT2FLS). Further explorations of the models were carried out using fuzzy c-means clustering (FCM) and tuning of fuzzy parameters using 'new structure' particle swarm optimization algorithm (nPSO). The new models were integrated into the SOPAVent system for blood gas predictions. SOPAVent was validated using real intensive care unit (ICU) patient data, obtained from the Royal Hallamshire Hospital and Northern General Hospital, Sheffield (UK). The prediction accuracy of SOPAVent was compared with the pre-existing SOPAVent model where the Kd and VCO_2 sub-models were developed using machine learning algorithms. Significant improvements in accuracy and correlation were achieved under this frameworks for PaCO_2 and pH for both the initial ABG predictions and the post ventilator settings adjustments.
机译:本文提出了一种以前开发的SOPAVent模式的动脉血气(ABG)的准确预测一个新的建模框架(在人工通气患者的仿真)。这是从SOPAVent模型引起三个ABG参数是氧(PaO_2),二氧化碳的分动脉压(PaCO_2)和酸 - 碱(pH值)的部分动脉压力。 SOPAVent产生初始ABG和ABG的预测的预测后呼吸机的设置进行了修改。 SOPAVent的子模型,相对死空间(KD)和二氧化碳生产(VCO_2)使用间隔2型模糊逻辑系统(IT2FLS)设计。模型的进一步探索进行了使用模糊C均值聚类(FCM),并使用“新结构”粒子群优化算法(nPSO)模糊参数的调谐。新车型被纳入血气预测的SOPAVent系统。用真实的重症监护病房(ICU)的病人数据,从皇家海莱姆医院和北综合医院,谢菲尔德(英国)获得SOPAVent进行了验证。 SOPAVent的预测精度与其中Kd和VCO_2子模型使用机器学习算法开发的预先存在的SOPAVent模型进行了比较。在精度和相关显著改善是根据本框架PaCO_2和pH初始ABG的预测和后呼吸机参数调整都实现的。

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