A deep learning classifier for detecting seizures in neonates is proposed. This architecture is designed to detect seizure events from raw electroencephalogram (EEG) signals as opposed to the state-of-the-art hand engineered feature-based representation employed in traditional machine learning based solutions. The seizure detection system utilises only convolutional layers in order to process the multichannel time domain signal and is designed to exploit the large amount of weakly labelled data in the training stage. The system performance is assessed on a large database of continuous EEG recordings of 834h in duration; this is further validated on a held-out publicly available dataset and compared with two baseline SVM based systems. The developed system achieves a 56% relative improvement with respect to a feature-based state-of-the art baseline, reaching an AUC of 98.5%; this also compares favourably both in terms of performance and run-time. The effect of varying architectural parameters is thoroughly studied. The performance improvement is achieved through novel architecture design which allows more efficient usage of available training data and end-to-end optimisation from the front-end feature extraction to the back-end classification. The proposed architecture opens new avenues for the application of deep learning to neonatal EEG, where the performance becomes a function of the amount of training data with less dependency on the availability of precise clinical labels.
翻译:提出了用于检测新生儿缉获情况的深层次学习分类方法,该架构旨在从原始电子脑图信号中检测缉获事件,而不是传统机器学习解决方案中采用的最新手动工程地貌代表制传统机器学习解决方案。缉获检测系统仅使用进化层,以便处理多通道时间域信号,目的是在培训阶段利用大量标签不高的数据;系统绩效评估在持续时间为834小时的连续 EEEG记录大型数据库中进行;这进一步验证于公开保存的公开数据集,并与两个基于SVM的基线SVM系统进行比较;发达系统在基于地貌的状态基线方面实现了56%的相对改进,达到98.5%的AUC;这在性能和运行时间方面也比较有利;对各种建筑参数的影响进行了彻底研究;通过新的结构设计,使现有培训数据得到更高效的利用和从前端地段提取到后端的SVM系统系统;发达系统在基于地段的艺术基准基线方面实现了56%的相对改进,达到98.5%的AUC;这在业绩和运行时间上都比较有利;对不同的建筑参数参数进行了彻底的利用;拟议结构结构结构设计,从而得以更高效地利用现有培训数据到EEEEEG分类。