Gao Zhen, Lu Guoliang, Yan Peng, Lyu Chen, Li Xueyong, Shang Wei, Xie Zhaohong, Zhang Wanming
Key Laboratory of High-Efficiency and Clean Mechanical Manufacture of MOE, National Demonstration Center for Experimental Mechanical Engineering Education, School of Mechanical Engineering, Shandong University, Jinan, China.
School of Information Science and Engineering, Shandong Normal University, Jinan, China.
Front Physiol. 2018 Apr 4;9:325. doi: 10.3389/fphys.2018.00325. eCollection 2018.
In recent years, automatic change detection for real-time monitoring of electroencephalogram (EEG) signals has attracted widespread interest with a large number of clinical applications. However, it is still a challenging problem. This paper presents a novel framework for this task where joint time-domain features are firstly computed to extract temporal fluctuations of a given EEG data stream; and then, an auto-regressive (AR) linear model is adopted to model the data and temporal anomalies are subsequently calculated from that model to reflect the possibilities that a change occurs; a non-parametric statistical test based on Randomized Power Martingale (RPM) is last performed for making change decision from the resulting anomaly scores. We conducted experiments on the publicly-available Bern-Barcelona EEG database where promising results for terms of detection precision (96.97%), detection recall (97.66%) as well as computational efficiency have been achieved. Meanwhile, we also evaluated the proposed method for real detection of seizures occurrence for a monitoring epilepsy patient. The results of experiments by using both the testing database and real application demonstrated the effectiveness and feasibility of the method for the purpose of change detection in EEG signals. The proposed framework has two additional properties: (1) it uses a pre-defined AR model for modeling of the past observed data so that it can be operated in an unsupervised manner, and (2) it uses an adjustable threshold to achieve a scalable decision making so that a coarse-to-fine detection strategy can be developed for quick detection or further analysis purposes.
近年来,用于脑电图(EEG)信号实时监测的自动变化检测因其大量的临床应用而引起了广泛关注。然而,这仍然是一个具有挑战性的问题。本文提出了一种针对该任务的新颖框架,首先计算联合时域特征以提取给定EEG数据流的时间波动;然后,采用自回归(AR)线性模型对数据进行建模,并随后从该模型计算时间异常以反映发生变化的可能性;最后基于随机功率鞅(RPM)进行非参数统计检验,以便根据所得异常分数做出变化决策。我们在公开可用的伯尔尼 - 巴塞罗那EEG数据库上进行了实验,在检测精度(96.97%)、检测召回率(97.66%)以及计算效率方面都取得了有前景的结果。同时,我们还评估了所提出的方法在监测癫痫患者时对癫痫发作实际检测的效果。使用测试数据库和实际应用进行的实验结果证明了该方法在EEG信号变化检测方面的有效性和可行性。所提出的框架具有另外两个特性:(1)它使用预定义的AR模型对过去观察到的数据进行建模,以便可以以无监督的方式运行,(2)它使用可调整的阈值来实现可扩展的决策,从而可以开发一种从粗到细的检测策略用于快速检测或进一步分析目的。