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一种基于约束交叉网络的用于检测睡眠状态的新型特征提取器。

A novel feature extractor based on constrained cross network for detecting sleep state.

作者信息

Tian Chenlei, Song Fei

机构信息

College of Science, Nanjing Forestry University, Nanjing, 210037, People's Republic of China.

出版信息

Sci Rep. 2025 Jul 1;15(1):21899. doi: 10.1038/s41598-025-08627-6.

Abstract

With increasing awareness of healthy living and social pressure, more and more people have begun to pay attention to their sleep state. Most existing methods that utilize wrist-worn devices data for detection rely on heuristic algorithms or traditional machine learning, which suffer from low classification efficiency and insufficient accuracy. This study explores an improved feature extractor based on the Constrained Cross Network to enhance the accuracy of the sleep-wake binary classification problem. The feature extractor consists of Feature Derivation Module and Feature Interaction Module. Feature Derivation Module leverages dilated convolutions, gated recurrent units, and attention mechanisms to construct new features in batches. The main structure of Feature Interaction Module is composed of Constrained Cross Network. This module is based on the improved Cross Network in the Improved Deep&Cross Network (DCN-v2), aiming to model high-order feature interactions. The dataset consists of 277 individuals, with varying numbers of recorded days. The ratio of sleep to wake states is 3:7. We extracted 80% of the 7,523 subsamples (divided by day) for training and validation, while the remaining 20% was used as the test set. Compared with the CNN-based method, the proposed method improves the F1-score from 75.84% to 91.14%, and the accuracy increases from 90.03% to 95.70%. After adding a non-wear identification mask, the proposed method achieves an F1-score of 94.25%, with the accuracy further improved to 97.38%. When using the same classifier, the Constrained Cross Network contributed approximately 34% to the feature extractor's performance, while the entire feature extractor further improved the effectiveness of feature extraction. Compared to traditional DNNs, the proposed method offers a more efficient approach to feature extraction, resulting in a notable enhancement in model performance, albeit with a moderate increase in computational complexity. Furthermore, given the explicit feature construction characteristics of the Cross Network, this method has the potential to assist in developing more pronounced manual features in future research.

摘要

随着人们对健康生活的意识不断提高以及社会压力的增大,越来越多的人开始关注自己的睡眠状态。大多数现有的利用腕戴设备数据进行检测的方法依赖于启发式算法或传统机器学习,这些方法存在分类效率低和准确性不足的问题。本研究探索了一种基于约束交叉网络的改进特征提取器,以提高睡眠-清醒二元分类问题的准确性。该特征提取器由特征推导模块和特征交互模块组成。特征推导模块利用空洞卷积、门控循环单元和注意力机制批量构建新特征。特征交互模块的主要结构由约束交叉网络组成。该模块基于改进的深度交叉网络(DCN-v2)中的交叉网络进行改进,旨在对高阶特征交互进行建模。数据集由277名个体组成,记录天数各不相同。睡眠与清醒状态的比例为3:7。我们从7523个子样本(按天划分)中提取了80%用于训练和验证,其余20%用作测试集。与基于卷积神经网络(CNN)的方法相比,所提出的方法将F1分数从75.84%提高到91.14%,准确率从90.03%提高到95.70%。添加非佩戴识别掩码后,所提出的方法实现了94.25%的F1分数,准确率进一步提高到97.38%。在使用相同分类器时,约束交叉网络对特征提取器的性能贡献约为34%,而整个特征提取器进一步提高了特征提取的有效性。与传统深度神经网络(DNN)相比,所提出的方法提供了一种更有效的特征提取方法,尽管计算复杂度略有增加,但模型性能有显著提升。此外,鉴于交叉网络明确的特征构建特性,该方法有可能在未来的研究中帮助开发更显著的手工特征。

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