Department of Convergence IT Engineering, Pohang University of Science and Technology (POSTECH), Pohang, Republic of Korea.
Major of Medical Science and Engineering, Pohang University of Science and Technology (POSTECH), Pohang, Republic of Korea.
Comput Biol Med. 2024 Dec;183:109217. doi: 10.1016/j.compbiomed.2024.109217. Epub 2024 Oct 3.
Recently, stress has been recognized as a key factor in the emergence of individual and social issues. Numerous attempts have been made to develop sensor-augmented psychological stress detection techniques, although existing methods are often impractical or overly subjective. To overcome these limitations, we acquired a dataset utilizing both wireless wearable multimodal sensors and salivary cortisol tests for supervised learning. We also developed a novel deep neural network (DNN) model that maximizes the benefits of sensor fusion.
We devised a DNN involving a shuffled efficient channel attention (ECA) module called a shuffled ECA-Net, which achieves advanced feature-level sensor fusion by considering inter-modality relationships. Through an experiment involving salivary cortisol tests on 26 participants, we acquired multiple bio-signals including electrocardiograms, respiratory waveforms, and electrogastrograms in both relaxed and stressed mental states. A training dataset was generated from the obtained data. Using the dataset, our proposed model was optimized and evaluated ten times through five-fold cross-validation, while varying a random seed.
Our proposed model achieved acceptable performance in stress detection, showing 0.916 accuracy, 0.917 sensitivity, 0.916 specificity, 0.914 F1-score, and 0.964 area under the receiver operating characteristic curve (AUROC). Furthermore, we demonstrated that combining multiple bio-signals with a shuffled ECA module can more accurately detect psychological stress.
We believe that our proposed model, coupled with the evidence for the viability of multimodal sensor fusion and a shuffled ECA-Net, would significantly contribute to the resolution of stress-related issues.
最近,压力已被认为是个体和社会问题出现的关键因素。尽管现有方法往往不切实际或过于主观,但已经有许多尝试来开发传感器增强的心理压力检测技术。为了克服这些限制,我们利用无线可穿戴多模态传感器和唾液皮质醇测试获取了一个数据集,用于监督学习。我们还开发了一种新的深度神经网络 (DNN) 模型,最大限度地提高了传感器融合的优势。
我们设计了一种涉及称为 Shuffled ECA-Net 的 Shuffled Efficient Channel Attention (ECA) 模块的 DNN,该模块通过考虑模态间关系来实现高级特征级别的传感器融合。通过对 26 名参与者进行唾液皮质醇测试的实验,我们在放松和紧张的精神状态下获取了包括心电图、呼吸波和胃电图在内的多种生物信号。从获得的数据中生成了一个训练数据集。使用该数据集,我们通过五次交叉验证和随机种子变化,对我们提出的模型进行了十次优化和评估。
我们提出的模型在压力检测方面表现出可接受的性能,准确率为 0.916,灵敏度为 0.917,特异性为 0.916,F1 得分为 0.914,接收器操作特征曲线下的面积(AUROC)为 0.964。此外,我们证明了结合多个生物信号和 Shuffled ECA 模块可以更准确地检测心理压力。
我们相信,我们提出的模型,加上多模态传感器融合和 Shuffled ECA-Net 的可行性证据,将为解决与压力相关的问题做出重大贡献。