Roessgen M, Zoubir A M, Boashash B
Signal Processing Research Centre, Queensland University of Technology, Brisbane, Australia.
IEEE Trans Biomed Eng. 1998 Jun;45(6):673-85. doi: 10.1109/10.678601.
Seizures are often the first sign of neurological disease or dysfunction in the newborn. However, their clinical manifestation is often subtle, which tends to hinder their diagnosis at the earliest possible time. This represents an undesirable situation since the failure to quickly and accurately diagnose seizure can lead to longer-term brain injury or even death. In this paper we consider the problem of automatic seizure detection in the neonate based on electroencephalogram (EEG) data. We propose a new approach based on a model for the generation of the EEG, which is derived from the histology and biophysics of a localized portion of the brain. We show that by using this approach, good detection performance of electrographic seizure is possible. The model for seizure is first presented along with an estimator for the model parameters. Then we present a seizure-detection scheme based on the model parameter estimates. This scheme is compared with the quadratic detection filter (QDF), and is shown to give superior performance over the latter. This is due to the ability of the model-based detector to account for the variability (nonstationarity) of the EEG by adjusting its parameters appropriately.
癫痫发作往往是新生儿神经系统疾病或功能障碍的首个迹象。然而,其临床表现通常较为隐匿,这往往会阻碍在尽可能早的时间进行诊断。这是一种不理想的情况,因为未能快速准确地诊断癫痫发作可能会导致长期脑损伤甚至死亡。在本文中,我们考虑基于脑电图(EEG)数据进行新生儿癫痫自动检测的问题。我们提出了一种基于EEG生成模型的新方法,该模型源自大脑局部区域的组织学和生物物理学。我们表明,通过使用这种方法,可以实现对脑电图癫痫发作的良好检测性能。首先介绍癫痫发作模型以及模型参数的估计器。然后我们提出一种基于模型参数估计的癫痫发作检测方案。将该方案与二次检测滤波器(QDF)进行比较,结果表明其性能优于后者。这是由于基于模型的检测器能够通过适当调整其参数来考虑EEG的变异性(非平稳性)。