Abbasi Hamid, Unsworth Charles P
Department of Engineering Science, The University of Auckland, Auckland, New Zealand.
Neural Regen Res. 2020 Feb;15(2):222-231. doi: 10.4103/1673-5374.265542.
Perinatal hypoxic-ischemic-encephalopathy significantly contributes to neonatal death and life-long disability such as cerebral palsy. Advances in signal processing and machine learning have provided the research community with an opportunity to develop automated real-time identification techniques to detect the signs of hypoxic-ischemic-encephalopathy in larger electroencephalography/amplitude-integrated electroencephalography data sets more easily. This review details the recent achievements, performed by a number of prominent research groups across the world, in the automatic identification and classification of hypoxic-ischemic epileptiform neonatal seizures using advanced signal processing and machine learning techniques. This review also addresses the clinical challenges that current automated techniques face in order to be fully utilized by clinicians, and highlights the importance of upgrading the current clinical bedside sampling frequencies to higher sampling rates in order to provide better hypoxic-ischemic biomarker detection frameworks. Additionally, the article highlights that current clinical automated epileptiform detection strategies for human neonates have been only concerned with seizure detection after the therapeutic latent phase of injury. Whereas recent animal studies have demonstrated that the latent phase of opportunity is critically important for early diagnosis of hypoxic-ischemic-encephalopathy electroencephalography biomarkers and although difficult, detection strategies could utilize biomarkers in the latent phase to also predict the onset of future seizures.
围产期缺氧缺血性脑病是导致新生儿死亡和终身残疾(如脑瘫)的重要原因。信号处理和机器学习的进展为研究界提供了一个机会,使其能够开发自动化实时识别技术,从而更轻松地在更大的脑电图/振幅整合脑电图数据集中检测缺氧缺血性脑病的迹象。本综述详细介绍了世界各地一些杰出研究团队最近在使用先进信号处理和机器学习技术自动识别和分类缺氧缺血性癫痫样新生儿发作方面所取得的成果。本综述还探讨了当前自动化技术在被临床医生充分利用时所面临的临床挑战,并强调了将当前临床床边采样频率提升至更高采样率以提供更好的缺氧缺血生物标志物检测框架的重要性。此外,文章强调,目前针对人类新生儿的临床自动化癫痫样检测策略仅关注损伤治疗潜伏期后的癫痫发作检测。而最近的动物研究表明,机会潜伏期对于缺氧缺血性脑病脑电图生物标志物的早期诊断至关重要,尽管存在困难,但检测策略可以利用潜伏期的生物标志物来预测未来癫痫发作的发生。