Fatigue is a broad, multifactorial concept that includes the subjective perception of reduced physical and mental energy levels. It is also one of the key factors that strongly affect patients' health-related quality of life. To date, most fatigue assessment methods were based on self-reporting, which may suffer from many factors such as recall bias. To address this issue, in this work, we recorded multi-modal physiological data (including ECG, accelerometer, skin temperature and respiratory rate, as well as demographic information such as age, BMI) in free-living environments and developed automated fatigue assessment models. Specifically, we extracted features from each modality and employed the random forest-based mixed-effects models, which can take advantage of the demographic information for improved performance. We conducted experiments on our collected dataset, and very promising preliminary results were achieved. Our results suggested ECG played an important role in the fatigue assessment tasks.
翻译:法蒂格是一个广泛、多因素的概念,包括对降低身心能量水平的主观看法,也是严重影响病人健康生活质量的关键因素之一;迄今为止,大多数疲劳评估方法都是基于自我报告,可能有许多因素,如召回偏见;为解决这一问题,我们在这项工作中记录了自由生活环境中的多模式生理数据(包括ECG、加速计、皮肤温度和呼吸速率,以及人口信息,如年龄、BMI),并开发了自动疲劳评估模型。具体地说,我们从每种模式中提取了特征,采用了随机的森林混合效应模型,这可以利用人口信息改善绩效。我们在收集的数据集上进行了实验,并取得了非常有希望的初步结果。我们的结果表明,ECG在疲劳评估任务中发挥了重要作用。