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Patient-Specific Epileptic Seizure Prediction in Long-Term Scalp EEG Signal Using Multivariate Statistical Process Control

机译:长期头皮脑电信号中使用多变量统计过程控制的患者特定的癫痫发作预测

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An accurate epileptic seizure prediction algorithm can alleviate the problem and reduce risks in the life of a patient suffering from epilepsy. The main motive of this work is to propose a model which can predict seizures well in advance of its occurrence. Multivariate statistical process control (MSPC) has been used for seizure predictions in long-term scalp EEG signal. It has been observed that excessive neuronal activity in the preictal period of seizure changes the electrical characteristic from chaotic to rhythmic behavior. These changes have been utilized for prediction. Eight temporal based features are used for predicting the seizures by using multivariate statistical process control, which is widely known as an anomaly monitoring method. 90 seizures from the CHB-MIT EEG data of ten patients are analyzed.Result: The results of the proposed method demonstrated that 80 seizures out of 90 in preictal period were correctly predicted prior to the seizure onset, thereby giving a sensitivity of 88.89%. The false positive rate is observed to 0.39 per hour.Conclusion: This study proposed a temporal based patient-specific epileptic seizure prediction method using MSPC in long-term scalp EEG signals. It also provides the possibility of realizing an EEG-based epileptic seizure prediction system which requires less computational power.Significance: The proposed method does not require preictal data for modeling. The extracted features are computationally easy. The tested result shows good accuracy on the CHB-MIT data base. (C) 2019 AGBM. Published by Elsevier Masson SAS. All rights reserved.
机译:准确的癫痫发作预测算法可以缓解这一问题,并减少癫痫患者生命中的风险。这项工作的主要目的是提出一种可以在癫痫发作发生之前就对其进行预测的模型。多元统计过程控制(MSPC)已用于长期头皮脑电信号的癫痫发作预测。已经观察到癫痫发作前期神经元的过度活动将电学特征从混沌行为转变为有节奏的行为。这些变化已被用于预测。八种基于时间的特征用于通过使用多元统计过程控制来预测癫痫发作,这是众所周知的异常监视方法。从10例患者的CHB-MIT EEG数据中分析了90例癫痫发作。结果:该方法的结果表明,发作前90例发作前90例中80例癫痫发作可正确预测,因此敏感性为88.89%。观察到的假阳性率为每小时0.39。结论:本研究提出了一种基于时间的患者特异性癫痫发作预测方法,该方法在长期头皮脑电信号中使用MSPC。它还为实现基于脑电图的癫痫发作预测系统提供了可能,该系统需要较少的计算能力。意义:所提出的方法不需要模型的前期数据。提取的特征在计算上很容易。测试结果在CHB-MIT数据库上显示出良好的准确性。 (C)2019 AGBM。由Elsevier Masson SAS发布。版权所有。

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