论文标题
监测老年人体育锻炼能量消耗的RNN
RNNs on Monitoring Physical Activity Energy Expenditure in Older People
论文作者
论文摘要
通过量化体育活动能量消耗(PAEE),医疗保健监测有可能刺激重要和健康的衰老,从而引起老年人的行为改变,并将这些变化与个人健康增长联系起来。为了在监视环境中测量PAEE,已经开发了可穿戴加速度计的方法,但是,主要针对年轻人。由于老年受试者的能量需求和体育活动范围有所不同,因此当前模型可能不适合估算老年人的PAEE。由于过去的活动会影响当前的PAEE,因此我们提出了一种建模方法,该方法以其对顺序数据建模的能力,即经常性神经网络(RNN)。为了培训RNN的老年人群,我们使用了36岁及60岁以上的健康参与者(平均65岁)的GOTOV数据集,进行了16种不同的活动。我们使用放置在手腕和脚踝上的加速度计,并通过间接量热法测量能量计量计。优化后,我们提出了一个由3个GRU层的RNN组成的架构,以及一个将加速度计和参与者级别数据组合的前馈网络组成。在本文中,我们描述了超越基于GRU的RNN的标准设施的努力,目的是实现精确度超过了最新技术的状态。这些工作包括将聚合函数从平均值转换为分散度量(SD,IQR,...),结合了时间和静态数据(特定于人类的细节,例如年龄,体重,BMI),并添加了先前训练的ML模型预测的符号活动数据。所得的架构设法将其性能提高了10%,同时将训练输入减少了10倍。因此,可以使用与代谢健康和认知健康和心理健康相关的生命力参数的关联来研究PAEE的关联。
Through the quantification of physical activity energy expenditure (PAEE), health care monitoring has the potential to stimulate vital and healthy ageing, inducing behavioural changes in older people and linking these to personal health gains. To be able to measure PAEE in a monitoring environment, methods from wearable accelerometers have been developed, however, mainly targeted towards younger people. Since elderly subjects differ in energy requirements and range of physical activities, the current models may not be suitable for estimating PAEE among the elderly. Because past activities influence present PAEE, we propose a modeling approach known for its ability to model sequential data, the Recurrent Neural Network (RNN). To train the RNN for an elderly population, we used the GOTOV dataset with 34 healthy participants of 60 years and older (mean 65 years old), performing 16 different activities. We used accelerometers placed on wrist and ankle, and measurements of energy counts by means of indirect calorimetry. After optimization, we propose an architecture consisting of an RNN with 3 GRU layers and a feedforward network combining both accelerometer and participant-level data. In this paper, we describe our efforts to go beyond the standard facilities of a GRU-based RNN, with the aim of achieving accuracy surpassing the state of the art. These efforts include switching aggregation function from mean to dispersion measures (SD, IQR, ...), combining temporal and static data (person-specific details such as age, weight, BMI) and adding symbolic activity data as predicted by a previously trained ML model. The resulting architecture manages to increase its performance by approximatelly 10% while decreasing training input by a factor of 10. It can thus be employed to investigate associations of PAEE with vitality parameters related to metabolic and cognitive health and mental well-being.