利用机器学习方法自动识别癫痫样脑电图异常

Itaf Ben Slimen, H. Seddik
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引用次数: 2

摘要

癫痫是各种神经系统疾病之一,占世界人口的1%。它的特点是大量神经元异常。本文提出了一种基于脑电图信号记录的癫痫发作检测与诊断自动化系统。癫痫发作期的特征通常是具有不同变化的癫痫样放电,包括根据形状、尖峰和振幅而变化的尖峰率。使用机器学习方法将癫痫样用作预测脑电图信号类别的指示器。基于脑电图特征,该方法在波恩数据库中获得了99.8%的分类率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Recognition of Epileptiform EEG Abnormalities Using Machine Learning Approaches
Epilepsy is one of the various neurological disorders with 1% of the world population. It is characterized by the anomalous of a large number of neurons. In this paper, a proposed automated system for seizure detection and diagnosis using EEG signals records. Seizures periods are generally characterized by epileptiform discharges with different changes including spike rate variation according to the shapes, spikes and the amplitude. The epileptiform is used as an indicator to anticipate the EEG signal class using machine learning methods. Based on EEG characterizes the proposed approach achieves a perfect classification rates with 99.8% using the Bonn database.
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