Asgari Shadnaz, Moshirvaziri Hana, Scalzo Fabien, Ramezan-Arab Nima
Biomedical Engineering Department, California State University, Long Beach, 1250 Bellflower Blvd.-MS 8302, Long Beach, 90840-8302, CA, USA.
Computer Engineering and Computer Science Department, California State University, Long Beach, CA, USA.
J Clin Monit Comput. 2018 Dec;32(6):977-992. doi: 10.1007/s10877-018-0118-3. Epub 2018 Feb 26.
Cardiac arrest (CA) is the leading cause of death and disability in the United States. Early and accurate prediction of CA outcome can help clinicians and families to make a better-informed decision for the patient's healthcare. Studies have shown that electroencephalography (EEG) may assist in early prognosis of CA outcome. However, visual EEG interpretation is subjective, labor-intensive, and requires interpretation by a medical expert, i.e., neurophysiologists. These limiting factors may hinder the applicability of such testing as the prognostic method in clinical settings. Automatic EEG pattern recognition using quantitative measures can make the EEG analysis more objective and less time consuming. It also allows to detect and display hidden patterns that may be useful for the prognosis over longer time periods of monitoring. Given these potential benefits, there have been an increasing interest over the last few years in the development and employment of EEG quantitative measures to predict CA outcome. This paper extensively reviews the definition and efficacy of various measures that have been employed for the prediction of outcome in CA subjects undergoing hypothermia (a neuroprotection method that has become a standard of care to improve the functional recovery of CA patients after resuscitation). The review details the State-of-the-Art and provides some perspectives on what seems to be promising for the early and accurate prognostication of CA outcome using the quantitative measures of EEG.
心脏骤停(CA)是美国死亡和残疾的主要原因。对CA预后进行早期准确预测有助于临床医生和患者家属就患者的医疗保健做出更明智的决策。研究表明,脑电图(EEG)可能有助于CA预后的早期评估。然而,EEG的视觉解读具有主观性、劳动强度大,且需要医学专家(即神经生理学家)进行解读。这些限制因素可能会阻碍这种检测方法作为预后方法在临床环境中的应用。使用定量测量的自动EEG模式识别可以使EEG分析更加客观且耗时更少。它还能够检测和显示隐藏模式,这些模式可能对更长监测时间段的预后有用。鉴于这些潜在益处,在过去几年中,人们对开发和应用EEG定量测量来预测CA预后的兴趣日益浓厚。本文广泛回顾了用于预测接受低温治疗(一种神经保护方法,已成为改善CA患者复苏后功能恢复的护理标准)的CA患者预后的各种测量方法的定义和功效。该综述详细介绍了当前的技术水平,并就使用EEG定量测量对CA预后进行早期准确预测的前景提供了一些观点。