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Potential EEG biomarkers of sedation doses in intensive care patients unveiled by using a machine learning approach

机译:通过使用机器学习方法推出的重症监护病患者镇静剂剂量的潜在脑电图。

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摘要

Objective. Sedation of neurocritically ill patients is one of the most challenging situation in ICUs. Quantitative knowledge on the sedation effect on brain activity in that complex scenario could help to uncover new markers for sedation assessment. Hence, we aim to evaluate the existence of changes of diverse EEG-derived measures in deeply-sedated (BASS-Richmond agitation-sedation scale -4 and -5) neurocritically ill patients, and also whether sedation doses are related with those eventual changes. Approach. We performed an observational prospective cohort study in the intensive care unit of the Hospital de la Princesa. Twenty-six adult patients suffered from traumatic brain injury and subarachnoid hemorrhage were included in the present study. Long-term continuous electroencephalographic (EEG) recordings (2141h) and hourly annotated information were used to determine the relationship between intravenous sedation infusion doses and network and spectral EEG measures. To do that, two different strategies were followed: assessment of the statistical dependence between both variables using the Spearman correlation rank and by performing an automatic classification method based on a machine learning algorithm. Main results. More than 60% of patients presented a correlation greater than 0.5 in at least one of the calculated EEG measures with the sedation dose. The automatic classification method presented an accuracy of 84.3% in discriminating between different sedation doses. In both cases the nodes' degree was the most relevant measurement. Significance. The results presented here provide evidences of brain activity changes during deep sedation linked to sedation doses. Particularly, the capability of network EEG-derived measures in discriminating between different sedation doses could be the framework for the development of accurate methods for sedation levels assessment.
机译:客观的。神经分子病患者的镇静是ICU中最具挑战性的患者之一。对该复杂情景中脑活动镇静效应的定量知识可以帮助揭示镇静评估的新标志。因此,我们的目标是评估深度镇静(低音 - 富含搅拌镇静标度-4和-5)神经转储患者的各种EEG衍生措施变化的存在,以及镇静剂量是否与最终变化有关。方法。我们在医院德兰普斯萨的重症监护室进行了一个观察前瞻性研究。目前的研究包括26名成年患者患有创伤性脑损伤和蛛网膜下腔出血的患者。长期连续脑电图(EEG)记录(2141H)和每小时注释的信息用于确定静脉镇静输注剂量和网络与谱脑电图措施之间的关系。为此,遵循两种不同的策略:使用Spearman相关等级和通过基于机器学习算法执行自动分类方法来评估两个变量之间的统计依赖性。主要结果。超过60%的患者在具有镇静剂量的至少一种计算出的EEG措施中呈现大于0.5的相关性。自动分类方法在不同镇静剂量之间鉴别鉴别呈现84.3%的精度。在这两种情况下,节点的程度是最相关的测量。意义。这里提出的结果提供了与镇静剂量相关的深镇静期间脑活动变化的证据。特别是,在不同镇静剂量之间区分不同镇静剂量之间的网络EEG导出的措施的能力可能是开发镇静水平评估准确方法的框架。

著录项

  • 来源
    《Journal of neural engineering》 |2019年第2期|026031.1-026031.11|共11页
  • 作者单位

    Hosp Univ la Princesa Inst Invest Sanitaria Madrid Spain|Hosp Univ La Princesa Fdn Invest Biomed Hosp la Princesa C Diego de Leon 62 Madrid 28006 Spain;

    Hosp Univ la Princesa Inst Invest Sanitaria Madrid Spain;

    Hosp Univ la Princesa Clin Neurophysiol Madrid Spain|Hosp Univ la Princesa Inst Invest Sanitaria Madrid Spain;

    Hosp Univ la Princesa Neurosurg Madrid Spain;

    Hosp Univ la Princesa Clin Neurophysiol Madrid Spain|Hosp Univ la Princesa Inst Invest Sanitaria Madrid Spain;

    Hosp Univ la Princesa Intens Care Unit Madrid Spain|Hosp Univ la Princesa Inst Invest Sanitaria Madrid Spain;

    Hosp Univ la Princesa Intens Care Unit Madrid Spain|Hosp Univ la Princesa Inst Invest Sanitaria Madrid Spain;

    Hosp Univ la Princesa Intens Care Unit Madrid Spain|Hosp Univ la Princesa Inst Invest Sanitaria Madrid Spain;

    Hosp Univ la Princesa Neurosurg Madrid Spain|Hosp Univ la Princesa Inst Invest Sanitaria Madrid Spain;

    Hosp Univ la Princesa Inst Invest Sanitaria Madrid Spain|Consejo Nacl Invest Cient & Tecn Buenos Aires DF Argentina;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    EEG; ICU; sedation; brain networks; machine learning;

    机译:EEG;ICU;镇静;脑网络;机器学习;
  • 入库时间 2022-08-18 21:11:04

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