一种识别老年护理日常生活活动的深度学习方法:利用交互依赖和时间模式

MIS Q. Pub Date : 2021-06-01 DOI:10.25300/misq/2021/15574
Hongyi Zhu, S. Samtani, Randall A. Brown, Hsinchun Chen
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引用次数: 23

摘要

确保独居老年人的健康和安全是一个日益受到社会关注的问题。日常生活活动(ADL)方法是监测疾病进展和这些个体照顾自己能力的常用手段。然而,目前基于传感器的ADL监测系统主要依赖于可穿戴运动传感器,捕获的信息不足,无法准确识别ADL,也无法全面了解不同粒度的ADL。当前的医疗保健信息系统和移动分析研究侧重于研究系统、设备和提供的服务,需要基于移动传感器数据的端到端解决方案来全面识别adl。本研究采用设计科学范式,采用先进的深度学习算法,开发了一种新的分层、多相ADL识别框架,对不同粒度的ADL进行建模。我们为卷积神经网络提出了一种新的二维交互核,以利用人与物体运动传感器之间的交互。我们根据最先进的基准(例如,支持向量机,DeepConvLSTM,隐马尔可夫模型和基于主题建模的ADLR)在两个现实生活中的运动传感器数据集上严格评估每个提议的模块和整个框架,这些数据集由不同粒度的adl组成:Opportunity和INTER。结果和一个案例研究表明,我们的框架可以更准确地识别不同层次的adl。我们讨论了利益相关者如何从我们提议的框架中进一步受益。除了展示实用性之外,我们还讨论了对未来基于设计科学的网络安全、医疗保健和移动分析应用程序的IS知识库的贡献。
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A Deep Learning Approach for Recognizing Activity of Daily Living (ADL) for Senior Care: Exploiting Interaction Dependency and Temporal Patterns
Ensuring the health and safety of senior citizens who live alone is a growing societal concern. The Activity of Daily Living (ADL) approach is a common means to monitor disease progression and the ability of these individuals to care for themselves. However, the prevailing sensor-based ADL monitoring systems primarily rely on wearable motion sensors, capture insufficient information for accurate ADL recognition, and do not provide a comprehensive understanding of ADLs at different granularities. Current healthcare IS and mobile analytics research focuses on studying the system, device, and provided services, and is in need of an end-to-end solution to comprehensively recognize ADLs based on mobile sensor data. This study adopts the design science paradigm and employs advanced deep learning algorithms to develop a novel hierarchical, multiphase ADL recognition framework to model ADLs at different granularities. We propose a novel 2D interaction kernel for convolutional neural networks to leverage interactions between human and object motion sensors. We rigorously evaluate each proposed module and the entire framework against state-of-the-art benchmarks (e.g., support vector machines, DeepConvLSTM, hidden Markov models, and topic-modeling-based ADLR) on two real-life motion sensor datasets that consist of ADLs at varying granularities: Opportunity and INTER. Results and a case study demonstrate that our framework can recognize ADLs at different levels more accurately. We discuss how stakeholders can further benefit from our proposed framework. Beyond demonstrating practical utility, we discuss contributions to the IS knowledge base for future design science-based cybersecurity, healthcare, and mobile analytics applications.
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