Department of Engineering Science, Faculty of Engineering, University of Auckland, Auckland 1142, New Zealand.
Department of Physiology, Faculty of Medical and Health Sciences, University of Auckland, Auckland 1023, New Zealand.
Sensors (Basel). 2020 Mar 5;20(5):1424. doi: 10.3390/s20051424.
Premature babies are at high risk of serious neurodevelopmental disabilities, which in many cases are related to perinatal hypoxic-ischemic encephalopathy (HIE). Studies of neuroprotection in animal models consistently suggest that treatment must be started as early as possible in the first 6 h after hypoxia-ischemia (HI), the so-called latent phase before secondary deterioration, to improve outcomes. We have shown in preterm sheep that EEG biomarkers of injury, in the form of high-frequency micro-scale spike transients, develop and evolve in this critical latent phase after severe asphyxia. Real-time automatic identification of such events is important for the early and accurate detection of HI injury, so that the right treatment can be implemented at the right time. We have previously reported successful strategies for accurate identification of EEG patterns after HI. In this study, we report an alternative high-performance approach based on the fusion of spectral Fourier analysis and Type-I fuzzy classifiers (FFT-Type-I-FLC). We assessed its performance in over 2520 min of latent phase EEG recordings from seven asphyxiated in utero preterm fetal sheep exposed to a range of different occlusion periods. The FFT-Type-I-FLC classifier demonstrated 98.9 ± 1.0% accuracy for identification of high-frequency spike transients in the gamma frequency band (namely 80-120 Hz) post-HI. The spectral-based approach (FFT-Type-I-FLC classifier) has similar accuracy to our previous reverse biorthogonal wavelets rbio2.8 basis function and type-1 fuzzy classifier (rbio-WT-Type-1-FLC), providing competitive performance (within the margin of error: 0.89%), but it is computationally simpler and would be readily adapted to identify other potentially relevant EEG waveforms.
早产儿患严重神经发育障碍的风险很高,而在许多情况下,这些障碍与围产期缺氧缺血性脑病(HIE)有关。动物模型的神经保护研究一致表明,治疗必须在缺氧缺血(HI)后最早的 6 小时内开始,即在继发性恶化之前的所谓潜伏期,以改善结果。我们已经在早产绵羊中表明,以高频微尺度尖峰瞬态形式出现的损伤脑电图生物标志物在严重窒息后的这个关键潜伏期内发展和演变。实时自动识别此类事件对于早期和准确检测 HI 损伤非常重要,以便在正确的时间实施正确的治疗。我们之前已经报道了成功的 HI 后 EEG 模式准确识别策略。在这项研究中,我们报告了一种基于频谱傅里叶分析和 I 型模糊分类器(FFT-Type-I-FLC)融合的替代高性能方法。我们评估了该方法在 7 只宫内窒息的早产胎儿羊的潜伏期 EEG 记录中的表现,这些羊暴露于一系列不同的闭塞期。FFT-Type-I-FLC 分类器在 HI 后伽马频带(即 80-120 Hz)中识别高频尖峰瞬态的准确率达到 98.9 ± 1.0%。基于频谱的方法(FFT-Type-I-FLC 分类器)与我们之前的反向双正交小波 rbio2.8 基函数和 I 型模糊分类器(rbio-WT-Type-1-FLC)具有相似的准确性,提供了有竞争力的性能(在误差范围内:0.89%),但它的计算更为简单,并且可以很容易地适应识别其他潜在相关的 EEG 波形。