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Scalp EEG recordings of pediatric epilepsy patients: A dataset for automatic detection of interictal epileptiform discharges from routine EEG

机译:儿科癫痫患者的头皮EEG录音:用于自动检测常规脑电图的嵌入性癫痫株排放的数据集

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Interictal Epileptiform Discharges (IEDs) in routine EEG is crucial evidence of epilepsy in one patient. Though some studies have reported on automated detection of IEDs, the availability of open benchmark datasets for evaluating these methods is limited. This article presents a scalp EEG dataset of pediatric epilepsy patients. The dataset contains 19 channel EEG recordings of 21 subjects who are advised to undergo routine EEG tests to diagnose epilepsy. Among these 21 subjects, IEDs are found in EEG recordings of 11 subjects as confirmed by neurologists. The routine EEG recordings of the remaining 10 subjects are free from IEDs. A 32 channel EEG machine is used to record the routine EEG, and an international 10-20 electrode placement system is used to place the electrodes on the subject’s scalp. A longitudinal bipolar montage channel configuration is used to collect the signals. IEDs present in routine EEG of epileptic patients are annotated by a neuro-technician and are provided with the dataset. The raw EEG data is further segmented into 10?s epochs based on the annotations for easy analysis and validation in automated IED detection systems. These 10?s epochs are also included in the dataset. The dataset is very useful for modeling novel automated IED detection systems that reduce the burdens of neurologists or neurophysiologists. In addition, the usability of the proposed dataset has also been experimented on a model based on exponential energy and support vector machine. The classification performance of the model indicates that the proposed dataset can be used as a benchmark dataset for automated IED detection.
机译:常规EEG中的嵌入癫痫株(IED)是一个患者癫痫的关键证据。虽然有些研究已经报告了IED的自动检测,但是用于评估这些方法的开放基准数据集的可用性是有限的。本文介绍了儿科癫痫患者的头皮EEG数据集。数据集包含21个主题的19个通道EEG记录,该主题被建议接受常规EEG测试以诊断癫痫症。在这21个受试者中,IED在神经病学家证实的11个受试者的脑电图中发现。剩余10个科目的常规EEG记录免于IED。 32通道EEG机器用于记录例程EEG,并且使用国际10-20电极放置系统将电极放置在受试者的头皮上。纵向双极蒙太奇通道配置用于收集信号。癫痫患者常规EEG中存在的IED由神经技术人员注释,并提供数据集。基于注释,原始EEG数据进一步分段为10?S时期,以便在自动IED检测系统中进行分析和验证。这些10?S时期也包括在数据集中。 DataSet对于建模新型自动化IED检测系统非常有用,这些检测系统减少神经根学家或神经生理学家的负担。此外,所提出的数据集的可用性也在基于指数能量和支持向量机的模型上进行了实验。该模型的分类性能表示建议的数据集可以用作自动IED检测的基准数据集。

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