Ahmed Rehan, Temko Andriy, Marnane William P, Boylan Geraldine, Lightbody Gordon
Irish Centre for Fetal and Neonatal Translational Research (INFANT), Ireland; Department of Electrical and Electronic Engineering, University College Cork, Ireland.
Irish Centre for Fetal and Neonatal Translational Research (INFANT), Ireland; Department of Electrical and Electronic Engineering, University College Cork, Ireland.
Comput Biol Med. 2017 Mar 1;82:100-110. doi: 10.1016/j.compbiomed.2017.01.017. Epub 2017 Jan 26.
Seizure events in newborns change in frequency, morphology, and propagation. This contextual information is explored at the classifier level in the proposed patient-independent neonatal seizure detection system. The system is based on the combination of a static and a sequential SVM classifier. A Gaussian dynamic time warping based kernel is used in the sequential classifier. The system is validated on a large dataset of EEG recordings from 17 neonates. The obtained results show an increase in the detection rate at very low false detections per hour, particularly achieving a 12% improvement in the detection of short seizure events over the static RBF kernel based system.
新生儿癫痫发作事件在频率、形态和传播方面会发生变化。在所提出的与患者无关的新生儿癫痫检测系统中,在分类器层面探索了这些背景信息。该系统基于静态和顺序支持向量机(SVM)分类器的组合。在顺序分类器中使用了基于高斯动态时间规整的核函数。该系统在来自17名新生儿的大量脑电图记录数据集上进行了验证。所获得的结果表明,在每小时极低的误检率情况下,检测率有所提高,特别是在检测短癫痫发作事件方面,相较于基于静态径向基函数(RBF)核的系统有12%的提升。