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Suitability of an inter-burst detection method for grading hypoxic-ischemic encephalopathy in newborn EEG

机译:爆发间检测方法对新生儿脑电图缺氧缺血性脑病分级的适用性

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Electroencephalography (EEG) is an important clinical tool for grading injury caused by lack of oxygen or blood to the brain during birth. Characteristics of low-voltage waveforms, known as inter-bursts, are related to different grades of injury. This study assesses the suitability of an existing inter-burst detection method, developed from preterm infants born <30 weeks of gestational age, to detect inter-bursts in term infants. Different features from the temporal organisation of the inter-bursts are combined using a multi-layer perceptron (MLP) machine learning algorithm to classify four grades of injury in the EEG. We find that the best performing feature, percentage of inter-bursts, has an accuracy of 59.3%. Combining this with the maximum duration of inter-bursts in the MLP produces a testing accuracy of 77.8%, with similar performance to existing multi-feature methods. These results validate the use of the preterm detection method in term EEG and show how simple measures of the inter-burst interval can be used to classify different grades of injury.
机译:脑电图(EEG)是一种重要的临床工具,可用于分级出生时因缺氧或缺血导致的脑损伤。低压波形的特性(称为突发)与不同等级的伤害有关。这项研究评估了从胎龄小于30周出生的早产儿开发的现有爆发间检测方法是否适合检测足月婴儿间的爆发。使用多层感知器(MLP)机器学习算法组合了爆发间的时间性组织的不同特征,以将EEG中的四个损伤等级分类。我们发现,性能最佳的爆发间隔百分比的准确度为59.3%。将此与MLP中的最大间断持续时间相结合,可产生77.8%的测试准确度,其性能与现有的多特征方法相似。这些结果验证了在术语脑电图中使用早产检测方法,并显示了如何使用爆发间间隔的简单测量方法对不同等级的损伤进行分类。

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