Altıntop Çiğdem Gülüzar, Latifoğlu Fatma, Akın Aynur Karayol, Ülgey Ayşe
Department of Biomedical Engineering, Erciyes University, Kayseri 38039, Turkey.
Department of Anesthesiology and Reanimation, Erciyes University, Kayseri 38039, Turkey.
Diagnostics (Basel). 2023 Apr 10;13(8):1383. doi: 10.3390/diagnostics13081383.
"Coma" is defined as an inability to obey commands, to speak, or to open the eyes. So, a coma is a state of unarousable unconsciousness. In a clinical setting, the ability to respond to a command is often used to infer consciousness. Evaluation of the patient's level of consciousness (LeOC) is important for neurological evaluation. The Glasgow Coma Scale (GCS) is the most widely used and popular scoring system for neurological evaluation and is used to assess a patient's level of consciousness. The aim of this study is the evaluation of GCSs with an objective approach based on numerical results. So, EEG signals were recorded from 39 patients in a coma state with a new procedure proposed by us in a deep coma state (GCS: between 3 and 8). The EEG signals were divided into four sub-bands as alpha, beta, delta, and theta, and their power spectral density was calculated. As a result of power spectral analysis, 10 different features were extracted from EEG signals in the time and frequency domains. The features were statistically analyzed to differentiate the different LeOC and to relate with the GCS. Additionally, some machine learning algorithms have been used to measure the performance of the features for distinguishing patients with different GCSs in a deep coma. This study demonstrated that GCS 3 and GCS 8 patients were classified from other levels of consciousness in terms of decreased theta activity. To the best of our knowledge, this is the first study to classify patients in a deep coma (GCS between 3 and 8) with 96.44% classification performance.
“昏迷”的定义为无法听从指令、无法说话或无法睁眼。因此,昏迷是一种无法唤醒的无意识状态。在临床环境中,对指令做出反应的能力常被用于推断意识。评估患者的意识水平(LeOC)对于神经学评估很重要。格拉斯哥昏迷量表(GCS)是神经学评估中使用最广泛且最受欢迎的评分系统,用于评估患者的意识水平。本研究的目的是基于数值结果采用客观方法评估格拉斯哥昏迷量表。因此,我们采用一种新方法,对39例处于昏迷状态(深度昏迷状态,GCS:3至8分)的患者记录脑电图(EEG)信号。EEG信号被分为四个子频段,即α、β、δ和θ,并计算其功率谱密度。通过功率谱分析,从EEG信号的时域和频域中提取了10种不同特征。对这些特征进行统计分析,以区分不同的意识水平并与GCS相关联。此外,还使用了一些机器学习算法来衡量这些特征在区分深度昏迷中不同GCS患者方面的性能。本研究表明,就θ活动减少而言,GCS 3分和GCS 8分的患者与其他意识水平的患者得以区分。据我们所知,这是第一项对深度昏迷(GCS在3至8分之间)患者进行分类的研究,分类性能达96.44%。