基于随机分布嵌入模型的癫痫脑电信号预测研究

Zhiwei Lv, Dengxuan Bai, Jing Qian, Qiong Wang, Wei Yan, Jun Wang
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引用次数: 0

摘要

癫痫是一种常见的以大脑异常放电为特征的神经系统疾病。脑电图(EEG)被广泛用于诊断可能的癫痫发作。许多研究者通过分析脑电信号的非线性特征来预测脑区域的癫痫发作和异常放电。预测脑电信号等非线性动态系统的未来状态是一项困难的任务,特别是当实际系统中只有短期高维脑电信号样本时。因此,本文提出了一种基于随机分布嵌入(RDE)方法的方法。我们首先利用Rössler系统生成的模型序列分析RDE模型预测非线性动态系统的有效性,然后将RDE模型应用于正常人和癫痫患者的脑电信号预测。在数据量小、维度高的苛刻前提下,克服了传统机器学习预测算法需要大量训练数据量的缺点。将预测的高维障碍转化为实用信息源,能够准确预测正常人和癫痫患者脑电图信号的未来状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on prediction of epileptic EEG signal based on Randomly-Distributed-Embedding Model
Epilepsy is a common neurological disease characterized by abnormal electrical discharges in the brain. Electroencephal ogram (EEG) is widely used to diagnose possible epileptic seizures. Many researchers have been devoted to predicting the seizures and abnormal discharges of brain regions by analyzing the nonlinear characteristics of EEG signals. Predicting the future state of a nonlinear dynamic system such as EEG signals is a difficult task, especially when only short-term and high-dimensional EEG signal samples are available in the real system. Therefore, this paper proposes a method based on the Randomly Distributed Embedding (RDE) method. We first use the model sequence generated by the Rössler system to analyze the effectiveness of the RDE model for predicting nonlinear dynamic systems, and then apply the RDE model to the prediction of the EEG signals of normal people and epilepsy patients. Under the harsh premise of small amount of data with high dimensions, it overcomes the shortcomings of traditional machine learning prediction algorithms that require subst antial training data volume. It converts the high-dimensional hindrance to prediction into a source of practical information, which can accurately predict the future state of EEG signals of normal people and epilepsy patients.
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