Zhou Wei, Zhu Hangyu, Chen Wei, Chen Chen, Xu Jun
Jiangsu Key Laboratory of Intelligent Medical Image Computing, Nanjing 210044, China.
School of Future Technology, Nanjing University of Information Science and Technology, Nanjing 210044, China.
Bioengineering (Basel). 2024 Dec 4;11(12):1226. doi: 10.3390/bioengineering11121226.
The pivotal role of sleep has led to extensive research endeavors aimed at automatic sleep stage classification. However, existing methods perform poorly when classifying small groups or individuals, and these results are often considered outliers in terms of overall performance. These outliers may introduce bias during model training, adversely affecting feature selection and diminishing model performance. To address the above issues, this paper proposes an ensemble-based sequential convolutional neural network (E-SCNN) that incorporates a clustering module and neural networks. E-SCNN effectively ensembles machine learning and deep learning techniques to minimize outliers, thereby enhancing model robustness at the individual level. Specifically, the clustering module categorizes individuals based on similarities in feature distribution and assigns personalized weights accordingly. Subsequently, by combining these tailored weights with the robust feature extraction capabilities of convolutional neural networks, the model generates more accurate sleep stage classifications. The proposed model was verified on two public datasets, and experimental results demonstrate that the proposed method obtains overall accuracies of 84.8% on the Sleep-EDF Expanded dataset and 85.5% on the MASS dataset. E-SCNN can alleviate the outlier problem, which is important for improving sleep quality monitoring for individuals.
睡眠的关键作用引发了旨在实现自动睡眠阶段分类的广泛研究努力。然而,现有方法在对小群体或个体进行分类时表现不佳,并且这些结果在整体性能方面通常被视为异常值。这些异常值可能在模型训练期间引入偏差,对特征选择产生不利影响并降低模型性能。为了解决上述问题,本文提出了一种基于集成的序列卷积神经网络(E-SCNN),它结合了一个聚类模块和神经网络。E-SCNN有效地整合了机器学习和深度学习技术,以最小化异常值,从而在个体层面提高模型的鲁棒性。具体而言,聚类模块根据特征分布的相似性对个体进行分类,并相应地分配个性化权重。随后,通过将这些定制的权重与卷积神经网络强大的特征提取能力相结合,该模型生成更准确的睡眠阶段分类。所提出的模型在两个公共数据集上得到验证,实验结果表明,所提出的方法在Sleep-EDF扩展数据集上获得了84.8%的总体准确率,在MASS数据集上获得了85.5%的总体准确率。E-SCNN可以缓解异常值问题,这对于改善个体的睡眠质量监测很重要。