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使用每搏量、动脉压和心率进行术中每搏量优化:闭环(学习型静脉复苏器)与麻醉师。

Intraoperative stroke volume optimization using stroke volume, arterial pressure, and heart rate: closed-loop (learning intravenous resuscitator) versus anesthesiologists.

机构信息

Department of Anesthesiology & Perioperative Care, University of California Irvine, Orange, CA 92868, USA.

出版信息

J Cardiothorac Vasc Anesth. 2012 Oct;26(5):933-9. doi: 10.1053/j.jvca.2012.05.015. Epub 2012 Jul 12.

Abstract

OBJECTIVE

The authors compared the performance of a group of anesthesia providers to closed-loop (Learning Intravenous Resuscitator [LIR]) management in a simulated hemorrhage scenario using cardiac output monitoring.

DESIGN

A prospective cohort study.

SETTING

In silico simulation.

PARTICIPANTS

University hospital anesthesiologists and the LIR closed-loop fluid administration system.

INTERVENTIONS

Using a patient simulator, a 90-minute simulated hemorrhage protocol was run, which included a 1,200-mL blood loss over 30 minutes. Twenty practicing anesthesiology providers were asked to manage this scenario by providing fluids and vasopressor medication at their discretion. The simulation program was also run 20 times with the LIR closed-loop algorithm managing fluids and an additional 20 times with no intervention.

MEASUREMENTS AND MAIN RESULTS

Simulated patient weight, height, heart rate, mean arterial pressure, and cardiac output (CO) were similar at baseline. The mean stroke volume, the mean arterial pressure, CO, and the final CO were higher in the closed-loop group than in the practitioners group, and the coefficient of variance was lower. The closed-loop group received slightly more fluid (2.1 v 1.9 L, p < 0.05) than the anesthesiologist group.

CONCLUSIONS

Despite the roughly similar volumes of fluid given, the closed-loop maintained more stable hemodynamics than the practitioners primarily because the fluid was given earlier in the protocol and CO optimized before the hemorrhage began, whereas practitioners tended to resuscitate well but only after significant hemodynamic change indicated the need. Overall, these data support the potential usefulness of this closed-loop algorithm in clinical settings in which dynamic predictors are not available or applicable.

摘要

目的

作者通过心输出量监测,将一组麻醉提供者与闭环(学习静脉复苏器[LIR])管理在模拟出血情况下的表现进行了比较。

设计

前瞻性队列研究。

设置

计算机模拟。

参与者

大学医院麻醉师和 LIR 闭环液体管理系统。

干预

使用患者模拟器,运行了 90 分钟的模拟出血方案,其中包括 30 分钟内 1200 毫升的失血。要求 20 名执业麻醉师根据自己的判断提供液体和血管加压药物来管理这种情况。该模拟程序还分别以 20 次运行 LIR 闭环算法管理液体,以 20 次无干预运行。

测量和主要结果

模拟患者体重、身高、心率、平均动脉压和心输出量(CO)在基线时相似。闭环组的平均每搏量、平均动脉压、CO 和最终 CO 均高于从业者组,变异系数较低。闭环组接受的液体量略多于麻醉师组(2.1 升对 1.9 升,p < 0.05)。

结论

尽管给予的液体量大致相似,但闭环系统比从业者组维持更稳定的血液动力学,主要是因为在方案早期给予液体,在出血开始前优化 CO,而从业者倾向于在明显的血液动力学变化表明需要时进行复苏。总的来说,这些数据支持在无法或不适宜使用动态预测因子的临床环境中使用这种闭环算法的潜在用途。

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