Near Real-time Stress Prediction for Patients with Disturbed Allostatic Load

William da Rosa Fröhlich, S. Rigo, M. Bez
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Abstract

Stress is one relevant cause of diseases nowadays, and prolonged exposure to stress can cause a disturbance in the allostatic load. Alternatives have been sought to deal with this situation and verify the impact of this allostatic load disorder. Wearable sensors are an option for automatically identifying acute stress since they can measure signs such as electrocardiogram, heart rate, electroencephalogram, electromyogram, or galvanic skin response. All these signals have intrinsic characteristics in a normal state and change if associated with stress occurrence. The literature presents Machine Learning Approaches and Deep Learning Models as alternatives to pattern detection in physiological signals. Nevertheless, we identify a gap regarding the allostatic load impact identification and the real-time classification when using these models. this article aims to acquire data in stress induction experiments in clinical and non-clinical patients, train a machine learning model, and, in sequence, carry out a new experiment to evaluate the classification in near real-time. The classification experiment presented results with accuracy above 92.72%. When it comes to real-time classification experiments we obtained an accuracy of 78.93%. Evaluating participants in experiments divided into clinical and non-clinical groups, a decrease of 5% in precision was identified. Based on the results obtained, we verified that the allostatic load can present challenges for real-time stress classification.
扰动适应负荷患者的近实时应力预测
压力是当今疾病的一个相关原因,长期暴露在压力下会引起适应负荷的紊乱。已经寻求替代方案来处理这种情况,并验证这种适应负荷紊乱的影响。可穿戴传感器是自动识别急性应激的一种选择,因为它们可以测量心电图、心率、脑电图、肌电图或皮肤电反应等体征。这些信号在正常状态下都具有固有的特征,在发生应力时发生变化。文献介绍了机器学习方法和深度学习模型作为生理信号模式检测的替代方案。然而,我们在使用这些模型时发现了关于适应负荷影响识别和实时分类的差距。本文旨在获取临床和非临床患者的应激诱导实验数据,训练机器学习模型,依次进行新的实验,近实时评估分类。分类实验结果准确率在92.72%以上。在实时分类实验中,准确率达到78.93%。将实验参与者分为临床组和非临床组进行评估,发现精确度降低了5%。基于所获得的结果,我们验证了适应载荷可以为实时应力分类带来挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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