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Temporal Evolution of Seizure Burden for Automated Neonatal EEG Classification

机译:用于自动新生儿EEG分类癫痫发作负担的时间演变

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The aim of this paper is to use recent advances in the clinical understanding of the temporal evolution of seizure burden in neonates with hypoxic ischemic encephalopathy to improve the performance of automated detection algorithms. Probabilistic weights are designed from temporal locations of neonatal seizure events relative to time of birth. These weights are obtained by fitting a skew-normal distribution to the temporal seizure density and introduced into the probabilistic framework of the previously developed neonatal seizure detector. The results are validated on the largest available clinical dataset, comprising 816.7 hours. By exploiting these priors, the ROC area is increased by 23% (relative) reaching 96.75%. The number of false detections per hour is decreased from 0.72 to 0.36, while maintaining the correct detection of seizure burden at 75%.
机译:本文的目的是利用近期对缺氧缺血性脑病癫痫发作癫痫发作的暂时演变的临床认识的最新进展,以改善自动检测算法的性能。概率的重量由相对于出生时间的新生儿癫痫发作事件的时间位置设计。通过拟合倾斜正态分布到时间癫痫发作密度来获得这些重量,并引入先前开发的新生儿癫痫发作探测器的概率框架中。结果在最大可用的临床数据集上验证,包括816.7小时。通过利用这些前锋,ROC面积增加23%(相对)达到96.75%。每小时误报的数量从0.72降至0.36,同时保持正确检测癫痫发作率为75%。

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