Bahar Tajadini, Saeid R Seydnejad, Soheila Rezakhani
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引用次数: 0
Abstract
This article aims to provide and implement a patient-specific seizure (for Intervention Time (IT) detection) prediction algorithm using non-invasive data to develop warning devices to prevent further patient injury and reduce stress. Employing algorithms with high initial data volume and computations time to increase the accuracy is an important problem in prediction issues. Consequently, reduction of calculations is met by applying only two effective EEG signal channels without manual removal of artifacts by visual inspection as the algorithm's input. Autoregression (AR) modeling and Cepstrum detect changes due to IT period. We carry out the goal of higher accuracy by increasing sensitivity to interictal epileptiform discharges or artifacts and reduce errors caused by them, taking advantage of the discrete wavelet transform and the comparison of two channels epochs by applying the median filter. Averaging and positive envelope methods are introduced to patient-specific thresholds become more differentiated as soon as possible and can be lead to sooner prediction. We examined this method on a mathematical model of adult epilepsy as well as on 10 patients with EEG data. The results of our experiments confirm that performance of the proposed approach in accuracy and average false prediction rate is superior to other algorithms. Simulation results have been shown the robustness of our proposed method to artifacts and errors, which is a step towards the development of real-time alarm devices by non-invasive techniques.
本文旨在利用无创数据提供并实施一种针对特定患者的癫痫发作(干预时间(IT)检测)预测算法,以开发预警设备,防止对患者造成进一步伤害并减轻压力。采用初始数据量大、计算时间长的算法来提高准确性是预测问题中的一个重要问题。因此,通过仅应用两个有效的脑电信号通道,而不通过目视检查手动去除伪影作为算法输入,可以减少计算量。自回归(AR)建模和倒频谱(Cepstrum)可检测 IT 期间的变化。我们通过提高对发作间期癫痫样放电或伪像的敏感性来实现更高精度的目标,并利用离散小波变换和应用中值滤波器对两个通道的历时进行比较,减少由它们引起的误差。平均法和正包络法的引入使患者特定的阈值尽快得到区分,并能更快地进行预测。我们在一个成人癫痫数学模型以及 10 名患者的脑电图数据上检验了这种方法。实验结果证实,所提出的方法在准确率和平均错误预测率方面都优于其他算法。仿真结果表明,我们提出的方法对伪影和误差具有鲁棒性,这为利用无创技术开发实时报警设备迈出了一步。