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Is it a good time to survey you? Cognitive load classification from blood volume pulse

机译:这是一个调查你的好时机吗? 血容量脉冲的认知载荷分类

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The CAPABLE project aims to improve the wellbeing of cancer patients managed at home via a mobile Coaching System recommending physical and mental health interventions. Patient reported outcomes are important for evaluation of the efficacy of these interventions. Nevertheless a large number of surveys might be overwhelming to patients. To understand the cognitive demand caused by the surveys and to find the adequate time to prompt patients to complete them we carried out a feasibility study. In this study we developed a machine learning cognitive load detector from blood volume pulse (BVP) captured by a photoplethysmography (PPG) signal. PPG sensors are available on consumer-grade smartwatches, which we will use in our Coaching System. We found that personalised 1D convolutional neural networks trained on raw BVP signal performed better in binary high vs low cognitive load classification than the personalised Support Vector Machines trained with heart rate variability and BVP features. We investigated if the further improvements can be obtained by teacher-student semi-supervised model training, nevertheless the performance gains were not notable. In the future we will include additional context information that might aid cognitive load estimation and drive both survey design as well as the timing of the prompts.
机译:能力的项目旨在通过推荐身体和精神健康干预的移动教练系统改善癌症患者的康福患者。患者报告的结果对于评估这些干预措施的疗效是重要的。然而,大量的调查可能会对患者压倒。要了解调查造成的认知需求,并找到足够的时间来提示患者完成它们,我们进行了可行性研究。在这项研究中,我们开发了一种机器学习认知负载检测器,从由光电电机描绘(PPG)信号捕获的血容量脉冲(BVP)。 PPG传感器可在消费级Smartwatches上提供,我们将在我们的教练系统中使用。我们发现,在原始BVP信号上培训的个性化1D卷积神经网络在二进制高与低认知负载分类中更好地执行,而不是用心率变异性和BVP功能训练的个性化支持向量机。我们调查了,如果通过师生半监督模型培训可以获得进一步的改进,因此性能收益并不值得注意。在未来,我们将包括可能援助认知负载估计和驱动调查设计以及提示的时机的其他上下文信息。

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