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High-Resolution Physiological Stress Prediction Models based on Ensemble Learning and Recurrent Neural Networks

机译:基于集成学习和递归神经网络的高分辨率生理压力预测模型

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High-resolution stress detection is an essential requirement for designing time- and event-based stress monitoring systems as a building block for mobile and e-health systems aimed at supporting personalised treatments, both in clinical and remote settings. However, most of the existing solutions focus on binary or few-class stress detection, thus providing a limited feedback and reducing their utility and applicability in real- world scenarios. In this paper we present an alternative approach that overcomes the standard formulation of stress detection as supervised classification problem, by using ensemble learners and recurrent neural networks (RNNs) as the most relevant models for solving time series regression tasks. We trained and tested models using WESAD, a public multimodal wearable dataset for stress and affect detection, and we defined and computed stress scores based on various validated questionnaires stored in the dataset to be used as ground truth. Leave-One- Subject-Out (LOSO) cross-validation scheme has been applied to test the generalisation capabilities of each model in predicting individual stress scores. Results show that Nonlinear AutoRegressive network with eXogenous inputs (NARX), Random Forest (RF), and Least-Squares Gradient Boosting (LSBoost) provide high-resolution personalised stress predictions for the majority of analysed subjects. The proposed predictive models may be integrated as support to decision making into a Decision Support System (DSS) for online stress monitoring, with the main goal to design personalised stress management and alleviation strategies related to the inferred stress severity.
机译:高分辨率压力检测是设计基于时间和事件的压力监测系统的基本要求,它是移动和电子医疗系统的组成部分,旨在支持临床和远程环境中的个性化治疗。但是,大多数现有解决方案都将重点放在二进制或几类压力检测上,从而提供了有限的反馈,并降低了它们在实际场景中的效用和适用性。在本文中,我们提出了一种替代方法,该方法通过使用集成学习器和递归神经网络(RNN)作为解决时间序列回归任务的最相关模型,来克服将压力检测作为监督分类问题的标准公式。我们使用WESAD(一个用于压力和情感检测的公共多模式可穿戴数据集)训练和测试了模型,并基于存储在数据集中用作基础事实的各种经过验证的调查表定义和计算了压力得分。留一法则(LOSO)交叉验证方案已用于测试每个模型在预测单个压力分数时的泛化能力。结果表明,带有外源输入(NARX),随机森林(RF)和最小二乘梯度增强(LSBoost)的非线性自回归网络可为大多数分析对象提供高分辨率的个性化应力预测。拟议的预测模型可以作为决策支持集成到在线压力监测的决策支持系统(DSS)中,其主要目标是设计与推断出的压力严重性有关的个性化压力管理和缓解策略。

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