Personalized Graph Attention Network for Multivariate Time-series Change Analysis: A Case Study on Long-term Maternal Monitoring

IF 0.4 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Yuning Wang, I. Azimi, M. Feli, A. Rahmani, P. Liljeberg
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引用次数: 0

Abstract

Internet-of-Things-based systems have recently emerged, enabling long-term health monitoring systems for the daily activities of individuals. The data collected from such systems are multivariate and longitudinal, which call for tailored analysis techniques to extract the trends and abnormalities in the monitoring. Different methods in the literature have been proposed to identify trends in data. However, they do not include the time dependency and cannot distinguish changes in long-term health data. Moreover, their evaluations are limited to lab settings or short-term analysis. Long-term health monitoring applications require a modeling technique to merge the multisensory data into a meaningful indicator. In this paper, we propose a personalized neural network method to track changes and abnormalities in multivariate health data. Our proposed method leverages convolutional and graph attention layers to produce personalized scores indicating the abnormality level (i.e., deviations from the baseline) of users' data throughout the monitoring. We implement and evaluate the proposed method via a case study on long-term maternal health monitoring. Sleep and stress of pregnant women are remotely monitored using a smartwatch and a mobile application during pregnancy and 3-months postpartum. Our analysis includes 46 women. We build personalized sleep and stress models for each individual using the data from the beginning of the monitoring. Then, we compare the two groups by measuring the data variations. The abnormality scores produced by the proposed method are compared with the findings from the self-report questionnaire data collected in the monitoring and abnormality scores generated by an autoencoder method. The proposed method outperforms the baseline methods in exploring the changes between high-risk and low-risk pregnancy groups. The proposed method's scores also show correlations with the self-report data. Consequently, the results indicate that the proposed method effectively detects the abnormality in multivariate long-term health monitoring.
多变量时间序列变化分析的个性化图关注网络——以长期产妇监测为例
最近出现了基于物联网的系统,使个人日常活动的长期健康监测系统成为可能。从这些系统收集的数据是多变量的和纵向的,这就需要有针对性的分析技术来提取监测中的趋势和异常。文献中提出了不同的方法来确定数据的趋势。然而,它们不包括时间依赖性,不能区分长期健康数据的变化。此外,他们的评估仅限于实验室环境或短期分析。长期健康监测应用需要一种建模技术,将多感官数据合并为有意义的指标。在本文中,我们提出了一种个性化的神经网络方法来跟踪多变量健康数据的变化和异常。我们提出的方法利用卷积和图形关注层来生成个性化分数,表明在整个监测过程中用户数据的异常水平(即与基线的偏差)。我们通过一个关于长期产妇健康监测的案例研究来实施和评估拟议的方法。在怀孕期间和产后3个月,通过智能手表和移动应用程序远程监测孕妇的睡眠和压力。我们的分析包括46名女性。我们利用监测开始时的数据为每个人建立个性化的睡眠和压力模型。然后,我们通过测量数据变化来比较两组。将该方法生成的异常分数与监测中收集的自我报告问卷数据和自动编码器方法生成的异常分数进行比较。该方法在探索高危和低危妊娠组之间的变化方面优于基线方法。该方法的得分也显示出与自我报告数据的相关性。结果表明,该方法能有效地检测出多变量长期健康监测中的异常。
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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来源期刊
Applied Computing Review
Applied Computing Review COMPUTER SCIENCE, INFORMATION SYSTEMS-
自引率
40.00%
发文量
8
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