使用智能可穿戴设备监测和预防老年人抑郁症:定量研究结果

Fiza Mughal, W. Raffe, Peter Stubbs, J. Garcia
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摘要

近年来,抑郁症已成为人们日益关注的问题。自2019冠状病毒病大流行开始以来,所有年龄组的抑郁症患者都显著增加。由于心理健康在老年人中经常被污名化,因此较少公开讨论或治疗。我们提出了一种限制显性用户交互的心理健康监测方法,使用Fitbit智能手表数据来确定老年人的抑郁倾向。我们分析了从Fitbit Alta HR设备中提取的生理用户数据,并使用这些数据来训练机器学习模型来检测抑郁倾向。虽然这不是一个诊断工具,但其目的是在早期识别生理症状,并指导用户进行专业的医疗指导和治疗。我们在我们的数据集上训练了19个预测模型,梯度增强回归器优于所有其他模型。虽然大多数模型表现不佳,但表现最好的模型达到了0.32的r平方。由于样本量有限,存在模型过拟合的风险。虽然这些初步结果对一个模型来说很有希望,但它们需要在更大的老年人样本中得到复制,因为老年人表现出更广泛的抑郁倾向。
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Towards depression monitoring and prevention in older populations using smart wearables: Quantitative Findings
Depression has become a growing concern over the recent years. Since the start of the COVID-19 pandemic, depression among all age groups has increased significantly. As mental health is often stigmatized among older aged people, it is less openly discussed or treated. We propose a mental health monitoring approach that limits explicit user interaction, using Fitbit smartwatch data to determine depressive tendencies in older-aged people. We analysed physiological user data extracted from a Fitbit Alta HR device and use this data to train a machine learning model to detect depressive tendencies. While this is not a diagnostic tool, the aim is to identify physiological signs early on and direct the user toward professional medical guidance and treatment. We trained 19 predictive models on our dataset, the gradient boosting regressor outperformed all other models. The best performing model achieved at R-square of 0.32 although most models were poorly performing. Due to the limited sample size, there is a risk of model overfitting. Although these preliminary results are promising for one model, they would need to be replicated in a larger sample of older people, who exhibit a wider range of depressive tendencies.
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