Prediction of Epileptic Seizures: A Statistical Approach with DCT Compression

Nancy El-Fequi, A. Ashour, Entessar Saaed Gemeaa, F. A. Abd El-Samie
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引用次数: 1

Abstract

Electroencephalogram (EEG) signal compression is an essential process to speed-up the medical signal transmission with reduced storage requirements, costs, and required bandwidth. The main objective of the present work is to compress the EEG signals and study the effect of the compression process on the epileptic seizure prediction. A lossy EEG data compression scheme using Discrete Cosine Transform (DCT) is applied, followed by seizure prediction. The used dataset includes healthy, pre-ictal, and ictal signals with multiple channels. The EEG signals are segmented to segments of 10 sec length. Also, the probability density functions (PDFs) for seizure prediction are measured, including amplitude, derivative, local media, local variance, and local mean PDFs. During the testing phase, only the selected bins of PDFs are used in the prediction process to identify each signal segment as pre-ictal or normal. A method of equal benefit decision fusion is carried out in the final prediction stage leading to a single sequence of decisions representing the activities of all segments. Relative to a patient-specific estimation level, this series after being filtered with a moving average filter is compared.
预测癫痫发作:DCT压缩的统计方法
脑电图(EEG)信号压缩是加快医疗信号传输速度的重要过程,它能降低存储要求、降低成本和带宽要求。本研究的主要目的是对脑电图信号进行压缩,并研究压缩过程对癫痫发作预测的影响。采用离散余弦变换(DCT)进行有损脑电数据压缩,然后进行癫痫发作预测。使用的数据集包括具有多个通道的健康信号、预警信号和预警信号。脑电图信号被分割成10秒长的片段。此外,还测量了用于癫痫发作预测的概率密度函数(pdf),包括振幅、导数、局部媒体、局部方差和局部平均pdf。在测试阶段,只有选定的pdf箱在预测过程中使用,以确定每个信号段为临界前或正常。在最后的预测阶段,采用等利益决策融合方法,得到代表所有环节活动的单一决策序列。相对于患者特定的估计水平,用移动平均滤波器过滤后的这个序列进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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