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Detection of neonatal seizure using multiple filters

机译:使用多个过滤器检测新生儿癫痫发作

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摘要

It is often impossible to accurately differentiate between seizure and non-seizure related activities in infants based on clinical manifestations alone. The electroencephalogram (EEG) is therefore the best tool available for the recognition, management, and prognosis of neonatal seizures. The EEG signal is known to change structural characteristics between seizure and non-seizure states. In this work, matching pursuit (MP) decomposition, based on a coherent time-frequency (TF) dictionary, has provided us with a measure for quantifying changes in the structure of the neonatal EEG signal as it alternates between the various states. The quantification of state changes served as the basis for detecting seizures in 35 newborn patients. For each record, a patient-dependent threshold that marks the transition to seizure state is established. The use of multiple filters reduced the amount of artifacts and enhanced the detector performance. Overall, 93.4% detection accuracy and 0.26 false alarms per hour were achieved.
机译:基于单独的临床表现,常常在婴儿中准确地区分癫痫发作和非癫痫发作相关活动。因此,脑电图(EEG)是新生儿癫痫发作的识别,管理和预后的最佳工具。已知EEG信号以改变癫痫发作和非癫痫质量之间的结构特征。在这项工作中,基于相干时频(TF)字典的匹配追求(MP)分解已经为我们提供了一种用于量化新生儿EEG信号的结构的变化,因为它在各种状态之间交替。状态变化的量化是在35例新生患者中检测癫痫发作的基础。对于每个记录,建立标记过渡到癫痫发作状态的患者相关阈值。使用多个滤波器降低了伪影量并增强了检测器性能。总体而言,达到了93.4%的检测精度和0.26每小时的误报。

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