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A New Neural Mass Model Driven Method and Its Application in Early Epileptic Seizure Detection

机译:一种新的神经质量模型驱动方法及其在早期癫痫发作检测中的应用

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Objective: Despite numerous neural computational models proposed to explain physiological and pathological mechanisms of brain activity, a large gap remains between theory and application of the models. Building on the successful application of data-driven methods in epileptic seizure detection, we aim to build a bridge between data and models in this paper. Methods: We first propose a novel model-driven seizure detection method based on dynamic features in epileptic EEGs, where the rationale for dynamic features in epileptic EEGs can be clarified in theory by characterizing the variation of parameters of the model. Then we apply the proposed D&F-model-driven method to the problem of early epileptic seizure detection, where the evolution of model parameters selected and optimized by the proposed method is measured and used to detect the starting point of the seizure. Results: Numerical results on two open EEG databases demonstrate that our proposed method does a good job of early epileptic seizure detection. The average detection sensitivity, false positive rate and early detection period attain 100%, 0.1/h, and 7.1 s respectively. Conclusion: This paper provides a strategy to characterize EEG signals using a NMM-related method and the model parameters optimized by real EEG may then serve as features in their own right for early seizure detection. Significance: An useful attempt to early detect epileptic seizures by combining the neural mass model with data analysis.
机译:目的:尽管提出了众多神经计算模型,以解释脑活动的生理和病理机制,但巨大的差距仍然是模型的理论和应用。建立在癫痫癫痫发作检测中的数据驱动方法的成功应用,我们的目标是在本文中建立数据和模型之间的桥梁。方法:首先提出了一种基于癫痫蜗壳中的动态特征的新型模型驱动的癫痫检测方法,其中通过表征模型参数的变化,可以在理论上阐明癫痫患者的动态特征的基本原理。然后,我们将提议的D&F模型驱动方法应用于早期癫痫发作检测的问题,其中测量了所提出的方法选择和优化的模型参数的演化,并用于检测癫痫发作的起点。结果:两个开放EEG数据库的数值结果表明,我们的提出方法良好的早期癫痫癫痫发作检测。平均检测灵敏度,假阳性率和早期检测时间分别达到100%,0.1 / h和7.1秒。结论:本文提供了一种使用NMM相关方法表征EEG信号的策略,并且通过实际EEG优化的模型参数可以用作早期癫痫发作检测的特征。意义:通过将神经质量模型与数据分析组合来早期检测癫痫发作的有用尝试。

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