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Advances in Automated Neonatal Seizure Detection

机译:自动新生儿癫痫发作检测进展

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This chapter highlights the current approaches in automated neonatal seizure detection and in particular focuses on classifier based methods. Automated detection of neonatal seizures has the potential to greatly improve the outcome of patients in the neonatal intensive care unit. The electroencephalogram (EEG) is the only signal on which 100% of electrographic seizures are visible and thus is considered the gold standard for neonatal seizure detection. Although a number of methods and algorithms have been proposed previously to automatically detect neonatal seizures, to date their transition to clinical use has been limited due to poor performances mainly attributed to large inter and intra-patient variability of seizure patterns and the presence of artifacts. Here, a novel detector is proposed based on time-domain, frequency-domain and information theory analysis of the signal combined with pattern recognition using machine learning principles. The proposed methodology is based on a classifier with a large and diverse feature set and includes a post-processing stage to incorporate contextual information of the signal. It is shown that this methodology achieves high classification accuracy for both classifiers and allows for the use of soft decisions, such as the probability of seizure over time, to be displayed.
机译:本章突出了自动新生儿癫痫发作检测中的当前方法,特别是对基于分类的方法。新生儿癫痫发作的自动检测有可能大大改善新生儿重症监护病房的患者的结果。脑电图(EEG)是唯一可见的电录癫痫发作的信号,因此被认为是新生儿癫痫发作检测的金标准。尽管先前提出了许多方法和算法以自动检测新生儿癫痫发作,但迄今为止,由于性能差,迄今为止,它们的过渡已经受到限制,这主要归因于癫痫发作模式的大型和患有患者的患者的较差和内含内变异性以及伪影的存在。这里,基于使用机器学习原理与模式识别结合的信号的时域,频域和信息理论分析提出了一种新的检测器。所提出的方法基于具有大型和多样的特征集的分类器,并且包括后处理阶段,以结合信号的上下文信息。结果表明,该方法为两个分类器实现了高分类准确性,并且允许使用软决策,例如随时间逐渐的癫痫发作的概率。

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