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Analysis of EEG Epileptic Signals with Rough Sets and Support Vector Machines

机译:基于粗糙集和支持向量机的脑电图癫痫信号分析

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Epilepsy is a common chronic neurological disorder that impacts over 1% of the population. Animal models are used to better understand epilepsy, particularly the mechanisms and the basis for better antiepileptic therapies. For animal studies, the ability to identify accurately seizures in electroencephalographic (EEG) recordings is critical, and the use of computational tools is likely to play an important role. Electrical recording electrodes were implanted in rats before kainate-induced status epilepticus (one in each hippocampus and one on the surface of the cortex), and EEG data were collected with radio-telemetry. Several data mining methods, such as wavelets, FFTs, and neural networks, were used to develop algorithms for detecting seizures. Rough sets, which were used as an additional feature selection technique in addition to the Daubechies wavelets and the FFTs, were also used in the detection algorithm. Compared with the seizure-at-once method by using the RBF neural network classifier used earlier on the same data [12], the new method achieved higher recognition rates (i.e., 91%). Furthermore, when the entire dataset was used, as compared to only 50% used earlier, preprocessing using wavelets, Principal Component Analysis, and rough sets in concert with Support Vector Machines resulted in accuracy of 94% in identifying epileptic seizures.
机译:癫痫病是一种常见的慢性神经系统疾病,影响超过1%的人口。动物模型用于更好地了解癫痫病,尤其是更好的抗癫痫治疗的机理和基础。对于动物研究,在脑电图(EEG)记录中准确识别癫痫发作的能力至关重要,并且使用计算工具可能会发挥重要作用。在海藻酸盐诱导的癫痫持续状态之前,将电记录电极植入大鼠体内(每个海马一个,皮层表面一个),并通过无线电遥测法收集EEG数据。几种数据挖掘方法,例如小波,FFT和神经网络,被用于开发检测癫痫发作的算法。粗集,除了Daubechies小波和FFT外,还被用作其他特征选择技术,也被用于检测算法中。与使用先前在相同数据上使用的RBF神经网络分类器的“一次发作”方法相比,该新方法实现了更高的识别率(即91%)。此外,当使用整个数据集时,与之前使用的只有50%相比,使用小波,主成分分析和粗糙集与Support Vector Machines相结合进行的预处理在识别癫痫发作中的准确性为94%。

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