Department of Anesthesia, Critical Care and Pain Medicine.
Department of Neurology, Massachusetts General Hospital, Boston, Massachusetts, USA.
Curr Opin Crit Care. 2022 Jun 1;28(3):360-366. doi: 10.1097/MCC.0000000000000940.
Two years of coronavirus disease 2019 (COVID-19) pandemic highlighted that excessive sedation in the ICU leading to coma and other adverse outcomes remains pervasive. There is a need to improve monitoring and management of sedation in mechanically ventilated patients. Remote technologies that are based on automated analysis of electroencephalogram (EEG) could enhance standard care and alert clinicians real-time when severe EEG suppression or other abnormal brain states are detected.
High rates of drug-induced coma as well as delirium were found in several large cohorts of mechanically ventilated patients with COVID-19 pneumonia. In patients with acute respiratory distress syndrome, high doses of sedatives comparable to general anesthesia have been commonly administered without defined EEG endpoints. Continuous limited-channel EEG can reveal pathologic brain states such as burst suppression, that cannot be diagnosed by neurological examination alone. Recent studies documented that machine learning-based analysis of continuous EEG signal is feasible and that this approach can identify burst suppression as well as delirium with high specificity.
Preventing oversedation in the ICU remains a challenge. Continuous monitoring of EEG activity, automated EEG analysis, and generation of alerts to clinicians may reduce drug-induced coma and potentially improve patient outcomes.
COVID-19 大流行持续了两年,突出表明 ICU 中过度镇静导致昏迷和其他不良后果的情况仍然普遍存在。有必要改善机械通气患者镇静的监测和管理。基于脑电图(EEG)自动分析的远程技术可以增强标准护理,并在检测到严重 EEG 抑制或其他异常脑状态时实时向临床医生发出警报。
在几大 COVID-19 肺炎机械通气患者队列中,发现药物诱导性昏迷和谵妄的发生率很高。在急性呼吸窘迫综合征患者中,经常给予与全身麻醉相当的高剂量镇静剂,而没有明确的 EEG 终点。连续有限通道 EEG 可揭示诸如爆发抑制等病理脑状态,仅凭神经检查无法诊断。最近的研究表明,基于机器学习的连续 EEG 信号分析是可行的,并且这种方法可以以高特异性识别爆发抑制和谵妄。
预防 ICU 中的过度镇静仍然是一个挑战。持续监测 EEG 活动、自动 EEG 分析和向临床医生发出警报可能会减少药物诱导性昏迷,并有可能改善患者的预后。