谵妄
脑电图
彗差(光学)
镇静
接收机工作特性
重症监护室
麻醉
重症监护
格拉斯哥昏迷指数
医学
心理学
重症监护医学
内科学
精神科
光学
物理
作者
Shawniqua Williams Roberson,Naureen Abdul Azeez,Jenna N. Fulton,Kevin Zhang,Aaron X.T. Lee,Fei Ye,Pratik P. Pandharipande,Nathan E. Brummel,Mayur B. Patel,E. Wesley Ely
标识
DOI:10.1016/j.clinph.2022.11.012
摘要
To identify quantitative electroencephalography (EEG)-based indicators of delirium or coma in mechanically ventilated patients.We prospectively enrolled 28 mechanically ventilated intensive care unit (ICU) patients to undergo 24-hour continuous EEG, 25 of whom completed the study. We assessed patients twice daily using the Richmond Agitation-Sedation Scale (RASS) and Confusion Assessment Method for the ICU (CAM-ICU). We evaluated the spectral profile, regional connectivity and complexity of 5-minute EEG segments after each assessment. We used penalized regression to select EEG metrics associated with delirium or coma, and compared mixed-effects models predicting delirium with and without the selected EEG metrics.Delta variability, high-beta variability, relative theta power, and relative alpha power contributed independently to EEG-based identification of delirium or coma. A model with these metrics achieved better prediction of delirium or coma than a model with clinical variables alone (Akaike Information Criterion: 36 vs 43, p = 0.006 by likelihood ratio test). The area under the receiver operating characteristic curve for an ad hoc hypothetical delirium score using these metrics was 0.94 (95%CI 0.83-0.99).We identified four EEG metrics that, in combination, provided excellent discrimination between delirious/comatose and non-delirious mechanically ventilated ICU patients.Our findings give insight to neurophysiologic changes underlying delirium and provide a basis for pragmatic, EEG-based delirium monitoring technology.
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