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A Novel Mutual-Information-Guided Sparse Feature Selection Approach for Epilepsy Diagnosis Using Interictal EEG Signals

机译:使用Interictal EEG信号进行癫痫诊断的新型相互信息引导的稀疏特征方法

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Diagnosing people with possible epilepsy has major implications for their health, occupation, driving and social interactions. The current epilepsy diagnosis procedure is often subject to errors with considerable interobserver variations by manually observing long-term lengthy EEG recordings that require the presence of seizure (ictal) activities. It is costly and often difficult to obtain long-term EEG data with seizure activities that imped epilepsy diagnosis for many people, in particular in areas that lack of medical resources and well-trained neurologists. There is a desperate need for a new diagnostic tool that is capable of providing quick and accurate epilepsy-screening using short-term interictal EEG signals. However, it is challenging to analyze interictal EEG recordings when patients behaviors same as normal subjects. This research is dedicated to develop new automatic data-driven pattern recognition system for interictal EEG signals and design a quick screening process to help neurologists diagnose patients with epilepsy. In particular, we propose a novel information-theory-guided spare feature selection framework to select the most important EEG features to discriminate epileptic or non-epileptic EEG patterns accurately. The proposed approach were tested on an EEG dataset with 11 patients and 11 normal subjects, achieved an impressive diagnostic accuracy of 90% based on visually-evoked potentials in a human-computer task. This preliminary study indicates that it is promising to provide fast, reliable, and affordable epilepsy diagnostic solutions using short-term interictal EEG signals.
机译:诊断可能癫痫的人对其健康,职业,驾驶和社会互动具有重大影响。目前的癫痫诊断程序通常通过手动观察需要癫痫发作(ICTAL)活动的长期冗长的EEG记录具有相当多的Interobserver变化的误差。令人常旧的且往往难以获得具有癫痫发作活动的长期脑电图数据,这些活动阻碍了许多人的癫痫诊断,特别是在缺乏医疗资源和训练有素的神经科学家的领域。一种绝望的需要一种新的诊断工具,其能够使用短期交织EEG信号提供快速和准确的癫痫筛选。然而,当患者与正常科目相同的行为时,分析仪器脑电图录音挑战。该研究专用于开发新的自动数据驱动模式识别系统,用于嵌入脑电图信号,并设计快速筛选过程,以帮助神经根学家诊断癫痫患者。特别是,我们提出了一种新颖的信息理论引导的备用特征选择框架,以选择最重要的EEG特征来精确地区分癫痫或非癫痫脑电坡图案。在11名患者和11名患者的EEG数据集上测试了所提出的方法,基于人机任务中的视觉诱发电位实现了90%的令人印象深刻的诊断准确性。这项初步研究表明,使用短期交织EEG信号提供快速,可靠和实惠的癫痫诊断解决方案。

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