Stevenson N, Mesbah M, Boashash B
Centre for Clinical Research, University of Queensland, Royal Brisbane, Women's Hospital, Herston 4029, QLD, Australia.
Annu Int Conf IEEE Eng Med Biol Soc. 2008;2008:923-6. doi: 10.1109/IEMBS.2008.4649305.
Several, recently proposed, newborn EEG seizure detection techniques use quadratic time-frequency distributions (QTFDs) to generate the time-frequency representations (TFRs) at their core. The specific type of QTFD that provides the best discrimination between the TFR of nonseizure and seizure epochs of EEG, however, has yet to be thoroughly investigated. This paper proposes the selection of an optimal QTFD that maximises the the absolute error between seizure and nonseizure QTFDs calculated on a database of newborn EEG. The optimisation procedure is a data driven process that selects the optimal QTFD based on the distribution of the absolute error between nonseizure/nonseizure QTFDs and the seizure/nonseizure QTFDs. Several non-adaptive QTFDs were selected for comparison and those selected were subjected to a restriction on the kernel's volume to ensure that the QTFD can accurately represent the time-frequency distribution of signal energy. The results show that a lag independent or narrowband QTFD such as the modified B distribution provides a QTFD that best highlights the difference in time-frequency signal energy between newborn EEG seizure and nonseizure.
最近提出的几种新生儿脑电图癫痫检测技术,其核心是使用二次时间频率分布(QTFD)来生成时间频率表示(TFR)。然而,能在脑电图非癫痫发作期和癫痫发作期的TFR之间提供最佳区分的特定类型QTFD,尚未得到充分研究。本文提出选择一种最优的QTFD,以使在新生儿脑电图数据库上计算出的癫痫发作和非癫痫发作QTFD之间的绝对误差最大化。优化过程是一个数据驱动的过程,它基于非癫痫发作/非癫痫发作QTFD与癫痫发作/非癫痫发作QTFD之间绝对误差的分布来选择最优QTFD。选择了几种非自适应QTFD进行比较,并对所选的QTFD在核的体积上进行限制,以确保QTFD能够准确表示信号能量的时间频率分布。结果表明,诸如修正B分布这样的与滞后无关或窄带的QTFD,能提供一种最能突出新生儿脑电图癫痫发作和非癫痫发作之间时间频率信号能量差异的QTFD。