首页> 外文期刊>Annals of the American Thoracic Society >Developing a personalized closed-loop controller of medically-induced coma in a rodent model
【24h】

Developing a personalized closed-loop controller of medically-induced coma in a rodent model

机译:在啮齿动物模型中开发医学诱导的昏迷的个性化闭环控制器

获取原文
获取原文并翻译 | 示例
       

摘要

Objective. Personalized automatic control of medically-induced coma, a critical multi-day therapy in the intensive care unit, could greatly benefit clinical care and further provide a novel scientific tool for investigating how the brain response to anesthetic infusion rate changes during therapy. Personalized control would require real-time tracking of inter- and intra-subject variabilities in the brain response to anesthetic infusion rate while simultaneously delivering the therapy, which has not been achieved. Current control systems for medically-induced coma require a separate offline model fitting experiment to deal with inter-subject variabilities, which would lead to therapy interruption. Removing the need for these offline interruptions could help facilitate clinical feasbility. In addition, current systems do not track intra-subject variabilities. Tracking intra-subject variabilities is essential for studying whether or how the brain response to anesthetic infusion rate changes during therapy. Further, such tracking could enhance control precison and thus help facilitate clinical feasibility. Approach. Here we develop a personalized closed-loop anesthetic delivery (CLAD) system in a rodent model that tracks both inter- and intra-subject variabilities in real time while simultaneously controlling the anesthetic in closed loop. We tested the CLAD in rats by administrating propofol to control the electroencephalogram (EEG) burst suppression. We first examined whether the CLAD can remove the need for offline model fitting interruption. We then used the CLAD as a tool to study whether and how the brain response to anesthetic infusion rate changes as a function of changes in the depth of medically-induced coma. Finally, we studied whether the CLAD can enhance control compared with prior systems by tracking intra-subject variabilities. Main results. The CLAD precisely controlled the EEG burst suppression in each rat without performing offline model fitting experiments. Further, using the CLAD, we discovered that the brain response to anesthetic infusion rate varied during control, and that these variations correlated with the depth of medically-induced coma in a consistent manner across individual rats. Finally, tracking these variations reduced control bias and error by more than 70% compared with prior systems. Significance. This personalized CLAD provides a new tool to study the dynamics of brain response to anesthetic infusion rate and has significant implications for enabling clinically-feasible automatic control of medically-induced coma.
机译:客观的。个性化自动控制昏迷的昏迷,重症监护病房的关键多日疗法,可以极大地利用临床护理,进一步提供一种新的科学工具,用于研究治疗期间麻醉剂输液率如何变化的脑响应如何变化。个性化控制将需要实时跟踪脑响应麻醉剂输液率的脑内和内外可变性,同时递送尚未实现的治疗。用于医学诱导的COMA的电流控制系统需要单独的离线模型拟合实验来处理对象间的可变性,这将导致治疗中断。去除对这些离线中断的需求可以帮助促进临床公开。此外,当前系统不追踪主题内的可变性。跟踪主题内部的可变性对于研究脑在治疗过程中是否如何对麻醉剂输液率变化是必不可少的。此外,这种跟踪可以增强控制精密,从而有助于促进临床可行性。方法。在这里,我们在啮齿动物模型中开发一个个性化的闭环麻醉传送(CLAD)系统,该模型实时地跟踪和内外型变量,同时控制闭环中的麻醉剂。通过施用异丙酚来控制脑电图(EEG)突发抑制,我们在大鼠中进行了测试。我们首先检查了Clad是否可以消除离线模型拟合中断的需求。然后,我们将包层作为一种工具来研究是否如何以及如何对麻醉剂输液率的反应随着医学诱导的昏迷深度的变化的函数而变化。最后,我们研究了通过跟踪主题内容的可变性,Clad是否可以与现有系统增强控制。主要结果。包层精确地控制了每个大鼠的脑电图突发抑制而不执行离线模型配合实验。此外,使用包层,我们发现对控制期间的麻醉输注速率的脑响应,并且这些变化与各个大鼠的一致方式与医学诱导的彗形深度相关。最后,跟踪这些变化与先前系统相比,将控制偏置和误差减少超过70%。意义。这种个性化的包层提供了一种新工具,用于研究脑反应对麻醉输液率的动态,并对临床可行的自动控制进行临床可行的自动控制的影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号