School of Computer Science, Qufu Normal University, Rizhao 276826, P. R. China.
School of Electronic and Information Engineering, Qilu University of Technology (Shandong Academy of Sciences), Jinan, P. R. China.
Int J Neural Syst. 2024 Aug;34(8):2450040. doi: 10.1142/S0129065724500400. Epub 2024 May 14.
Neonatal epilepsy is a common emergency phenomenon in neonatal intensive care units (NICUs), which requires timely attention, early identification, and treatment. Traditional detection methods mostly use supervised learning with enormous labeled data. Hence, this study offers a semi-supervised hybrid architecture for detecting seizures, which combines the extracted electroencephalogram (EEG) feature dataset and convolutional autoencoder, called Fd-CAE. First, various features in the time domain and entropy domain are extracted to characterize the EEG signal, which helps distinguish epileptic seizures subsequently. Then, the unlabeled EEG features are fed into the convolutional autoencoder (CAE) for training, which effectively represents EEG features by optimizing the loss between the input and output features. This unsupervised feature learning process can better combine and optimize EEG features from unlabeled data. After that, the pre-trained encoder part of the model is used for further feature learning of labeled data to obtain its low-dimensional feature representation and achieve classification. This model is performed on the neonatal EEG dataset collected at the University of Helsinki Hospital, which has a high discriminative ability to detect seizures, with an accuracy of 92.34%, precision of 93.61%, recall rate of 98.74%, and F1-score of 95.77%, respectively. The results show that unsupervised learning by CAE is beneficial to the characterization of EEG signals, and the proposed Fd-CAE method significantly improves classification performance.
新生儿癫痫是新生儿重症监护病房(NICU)中常见的紧急现象,需要及时关注、早期识别和治疗。传统的检测方法大多使用有大量标记数据的监督学习。因此,本研究提出了一种用于检测癫痫发作的半监督混合架构,该架构结合了提取的脑电图(EEG)特征数据集和卷积自动编码器,称为 Fd-CAE。首先,提取时域和熵域中的各种特征来表征 EEG 信号,这有助于随后区分癫痫发作。然后,将未标记的 EEG 特征输入到卷积自动编码器(CAE)中进行训练,通过优化输入和输出特征之间的损失来有效地表示 EEG 特征。这个无监督的特征学习过程可以更好地结合和优化来自未标记数据的 EEG 特征。之后,使用模型的预训练编码器部分对标记数据进行进一步的特征学习,以获得其低维特征表示并实现分类。该模型在赫尔辛基大学医院收集的新生儿 EEG 数据集上进行了评估,具有很高的检测癫痫发作的判别能力,准确率为 92.34%,精度为 93.61%,召回率为 98.74%,F1 得分为 95.77%。结果表明,CAE 的无监督学习有助于 EEG 信号的特征化,并且所提出的 Fd-CAE 方法显著提高了分类性能。