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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Physiology-Informed Real-Time Mean Arterial Blood Pressure Learning and Prediction for Septic Patients Receiving Norepinephrine
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Physiology-Informed Real-Time Mean Arterial Blood Pressure Learning and Prediction for Septic Patients Receiving Norepinephrine

机译:生理信息知识的实时平均动脉血压学习与接受去甲肾上腺素患者的预测

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摘要

Objective: Septic shock is a life-threatening manifestation of infection with a mortality of 20–50% [1] . A catecholamine vasopressor, norepinephrine (NE), is widely used to treat septic shock primarily by increasing blood pressure. For this reason, future blood pressure knowledge is invaluable for properly controlling NE infusion rates in septic patients. However, recent machine learning and data-driven methods often treat the physiological effects of NE as a black box. In this paper, a real-time, physiology-informed human mean arterial blood pressure model for septic shock patients undergoing NE infusion is studied. Methods: Our methods combine learning theory, adaptive filter theory, and physiology. We learn least mean square adaptive filters to predict three physiological parameters (heart rate, pulse pressure, and the product of total arterial compliance and arterial resistance) from previous data and previous NE infusion rate. These predictions are combined according to a physiology model to predict future mean arterial blood pressure. Results: Our model successfully forecasts mean arterial blood pressure on 30 septic patients from two databases. Specifically, we predict mean arterial blood pressure 3.33 minutes to 20 minutes into the future with a root mean square error from 3.56 mmHg to 6.22 mmHg. Additionally, we compare the computational cost of different models and discover a correlation between learned NE response models and a patient's SOFA score. Conclusion: Our approach advances our capability to predict the effects of changing NE infusion rates in septic patients. Significance: More accurately predicted MAP can lessen clinicians’ workload and reduce error in NE titration.
机译:<斜体xmlns:mml =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”>目标:化粪池休克是一种威胁危及生命的感染表现,死亡率为20-50% [1] 。一种儿茶酚胺血管加压器,Norepinephrine(Ne),广泛用于主要通过增加血压来治疗化粪池休克。因此,未来的血压知识对于脓毒症患者的肾性输液率适当地控制NE血压知识是无价的。然而,最近的机器学习和数据驱动的方法通常认为NE作为黑匣子的生理效果。本文研究了封闭乳液休克患者的实时,生理信息的人类平均动脉血压模型。 方法:我们的方法结合学习理论,自适应滤波理论和生理学。我们学习最低均方形自适应过滤器,以预测先前数据和先前的网状输注速率的三种生理参数(心率,脉冲压力和总动脉依从性和动脉阻力的产物)。这些预测根据生理模型组合以预测未来的平均动脉血压。 结果:我们的模型成功预测来自两个数据库的30名脓毒症患者的平均动脉血压。具体而言,我们预测平均动脉血压3.33分钟到20分钟进入未来,从3.56mmHg到6.22 mmHg的根均线误差。此外,我们还比较不同模型的计算成本,并发现学习的网元响应模型和患者的沙发评分之间的相关性。 结论:我们的方法预测了预测在脓毒症患者中改变NE输液率的影响。 <斜体XMLNS:mml =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”>意义:更多准确预测的地图可以减少临床医生的工作负载并减少网元滴定中的错误。

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