Kuhlmann Levin, Manton Jonathan H, Heyse Bjorn, Vereecke Hugo E M, Lipping Tarmo, Struys Michel M R F, Liley David T J
IEEE Trans Biomed Eng. 2017 Apr;64(4):870-881. doi: 10.1109/TBME.2016.2562261. Epub 2016 Jun 14.
Tracking brain states with electrophysiological measurements often relies on short-term averages of extracted features and this may not adequately capture the variability of brain dynamics. The objective is to assess the hypotheses that this can be overcome by tracking distributions of linear models using anesthesia data, and that anesthetic brain state tracking performance of linear models is comparable to that of a high performing depth of anesthesia monitoring feature.
Individuals' brain states are classified by comparing the distribution of linear (auto-regressive moving average-ARMA) model parameters estimated from electroencephalographic (EEG) data obtained with a sliding window to distributions of linear model parameters for each brain state. The method is applied to frontal EEG data from 15 subjects undergoing propofol anesthesia and classified by the observers assessment of alertness/sedation (OAA/S) scale. Classification of the OAA/S score was performed using distributions of either ARMA parameters or the benchmark feature, Higuchi fractal dimension.
The highest average testing sensitivity of 59% (chance sensitivity: 17%) was found for ARMA (2,1) models and Higuchi fractal dimension achieved 52%, however, no statistical difference was observed. For the same ARMA case, there was no statistical difference if medians are used instead of distributions (sensitivity: 56%).
The model-based distribution approach is not necessarily more effective than a median/short-term average approach, however, it performs well compared with a distribution approach based on a high performing anesthesia monitoring measure.
These techniques hold potential for anesthesia monitoring and may be generally applicable for tracking brain states.
利用电生理测量来追踪脑状态通常依赖于提取特征的短期平均值,而这可能无法充分捕捉脑动力学的变异性。目的是评估以下假设:使用麻醉数据追踪线性模型的分布可以克服这一问题,并且线性模型的麻醉脑状态追踪性能与高性能的麻醉深度监测特征相当。
通过将从滑动窗口获得的脑电图(EEG)数据估计的线性(自回归移动平均-ARMA)模型参数的分布与每个脑状态的线性模型参数分布进行比较,对个体的脑状态进行分类。该方法应用于15名接受丙泊酚麻醉的受试者的额叶EEG数据,并根据观察者的警觉/镇静(OAA/S)量表评估进行分类。使用ARMA参数分布或基准特征(Higuchi分形维数)对OAA/S评分进行分类。
ARMA(2,1)模型的最高平均测试灵敏度为59%(机遇灵敏度:17%),Higuchi分形维数为52%,然而,未观察到统计学差异。对于相同的ARMA情况,如果使用中位数而不是分布,则没有统计学差异(灵敏度:56%)。
基于模型的分布方法不一定比中位数/短期平均方法更有效,然而,与基于高性能麻醉监测措施的分布方法相比,它表现良好。
这些技术在麻醉监测方面具有潜力,并且可能普遍适用于追踪脑状态。