IRCCS Fondazione Don Carlo Gnocchi, Firenze 50143, Italy; The Biorobotics Institute, Scuola Superiore Sant'Anna, Pontedera 56025, Pisa, Italy; Department of Excellence in Robotics & AI, Scuola Superiore Sant'Anna, Pisa 56127, Italy.
IRCCS Fondazione Don Carlo Gnocchi, Firenze 50143, Italy.
Clin Neurophysiol. 2022 Dec;144:98-114. doi: 10.1016/j.clinph.2022.09.017. Epub 2022 Oct 10.
Disorders of consciousness (DoC) are acquired conditions of severely altered consciousness. Electroencephalography (EEG)-derived biomarkers have been studied as clinical predictors of consciousness recovery. Therefore, this study aimed to systematically review the methods, features, and models used to derive prognostic EEG markers in patients with DoC in a rehabilitation setting.
We conducted a systematic literature search of EEG-based strategies for consciousness recovery prognosis in five electronic databases.
The search resulted in 2964 papers. After screening, 15 studies were included in the review. Our analyses revealed that simpler experimental settings and similar filtering cut-off frequencies are preferred. The results of studies were categorised by extracting qualitative and quantitative features. The quantitative features were further classified into evoked/event-related potentials, spectral measures, entropy measures, and graph-theory measures. Despite the variety of methods, features from all categories, including qualitative ones, exhibited significant correlations with DoC prognosis. Moreover, no agreement was found on the optimal set of EEG-based features for the multivariate prognosis of patients with DoC, which limits the computational methods applied for outcome prediction and correlation analysis to classical ones. Nevertheless, alpha power, reactivity, and higher complexity metrics were often found to be predictive of consciousness recovery.
This study's findings confirm the essential role of qualitative EEG and suggest an important role for quantitative EEG. Their joint use could compensate for their reciprocal limitations.
This study emphasises the need for further efforts toward guidelines on standardised EEG analysis pipeline, given the already proven role of EEG markers in the recovery prognosis of patients with DoC.
意识障碍(DOC)是一种严重意识改变的获得性疾病。脑电图(EEG)衍生的生物标志物已被研究为意识恢复的临床预测指标。因此,本研究旨在系统地回顾在康复环境中对 DOC 患者进行意识恢复预后预测的 EEG 标志物的方法、特征和模型。
我们在五个电子数据库中对基于 EEG 的意识恢复预后策略进行了系统的文献检索。
搜索结果得到 2964 篇论文。经过筛选,有 15 项研究被纳入综述。我们的分析表明,更简单的实验设置和相似的滤波截止频率更受欢迎。研究结果通过提取定性和定量特征进行分类。定量特征进一步分为诱发/事件相关电位、频谱测量、熵测量和图论测量。尽管方法多种多样,但来自所有类别的特征,包括定性特征,都与 DOC 预后显著相关。此外,对于 DOC 患者的多变量预后,没有找到基于 EEG 的最佳特征集,这限制了用于结果预测和相关分析的计算方法应用到经典方法上。然而,α 功率、反应性和更高的复杂性指标通常被发现与意识恢复有关。
本研究的结果证实了定性 EEG 的重要作用,并提示了定量 EEG 的重要作用。它们的联合使用可以弥补彼此的局限性。
鉴于 EEG 标志物在 DOC 患者恢复预后中的已有作用,本研究强调需要进一步努力制定标准化 EEG 分析流程指南。