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Autosomal dominant nocturnal frontal lobe epilepsy seizure characterization through wavelet transform of eeg records and self organizing maps

机译:通过脑电图记录的小波变换和自组织图谱表征常染色体显性夜夜额叶癫痫发作

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In this paper, a Manifold Learning approach for the automatic detection of Autosomal Dominant Nocturnal Frontal Lobe Epilepsy seizures is presented, with the aim to support neurologists in the labelling efforts. Features extracted from polysomnography signals are used in order to detect and discriminate seizure epochs. This task has been addressed by mapping the electroencephalographic signal epochs in different regions of the features space. The result is a Self Organizing Map, which allows to investigate over not straightforward relations in the complex input space for the characterization of seizures.
机译:在本文中,提出了一种用于自动检测常染色体显性夜夜额叶癫痫发作的流形学习方法,旨在支持神经科医生进行标记工作。从多导睡眠图信号中提取的特征用于检测和区分癫痫发作时期。通过在特征空间的不同区域中映射脑电图信号历元来解决此任务。结果是一个自组织图,它可以研究复杂输入空间中不直接的关系以表征癫痫发作。

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