基于可穿戴传感器的慢性疾病严重程度评估:一种基于对抗性注意的深度多源多任务学习方法

IF 7 2区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Shuo Yu, Yidong Chai, Hsinchun Chen, Scott Sherman, Randall A. Brown
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引用次数: 6

摘要

提高慢性病老年人的医疗保健质量具有重大的社会意义。为了更好地管理慢性病,研究人员和从业人员越来越多地使用客观、方便、廉价的可穿戴传感器信息系统(IS)。然而,现有的模型往往侧重于慢性病的单一方面,并且往往是可解释性有限的“黑盒子”。在本研究中,我们采用计算设计科学范式,提出了一种新的基于对抗性注意的深度多源多任务学习(AADMML)框架。利用深度学习、多任务学习、多源学习、注意机制和对抗学习,AADMML解决了现有基于可穿戴传感器的慢性疾病严重程度评估方法的局限性。考虑到帕金森病的患病率和社会意义,我们选择帕金森病作为我们的测试案例,在包含数千个实例的大规模数据集上,我们进行了基准实验,以对比最先进的模型来评估AADMML。我们提出了三个案例研究来证明AADMML的实际效用和经济效益,并将其应用于早期PD的检测。我们讨论了我们的工作是如何与is知识库相关联的,以及它的实际意义。这项工作有助于改善老年人的生活质量,并推进移动健康分析方面的信息系统研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wearable Sensor-Based Chronic Condition Severity Assessment: An Adversarial Attention-Based Deep Multisource Multitask Learning Approach
Advancing the quality of healthcare for senior citizens with chronic conditions is of great social relevance. To better manage chronic conditions, objective, convenient, and inexpensive wearable sensor- based information systems (IS) have been increasingly used by researchers and practitioners. However, existing models often focus on a single aspect of chronic conditions and are often “black boxes” with limited interpretability. In this research, we adopt the computational design science paradigm and propose a novel adversarial attention-based deep multisource multitask learning (AADMML) framework. Drawing upon deep learning, multitask learning, multisource learning, attention mechanism, and adversarial learning, AADMML addresses limitations with existing wearable sensor-based chronic condition severity assessment methods. Choosing Parkinson’s disease (PD) as our test case because of its prevalence and societal significance, we conduct benchmark experiments to evaluate AADMML against state-of-the-art models on a large-scale dataset containing thousands of instances. We present three case studies to demonstrate the practical utility and economic benefits of AADMML and by applying it to detect early-stage PD. We discuss how our work is related to the IS knowledge base and its practical implications. This work can contribute to improved life quality for senior citizens and advance IS research in mobile health analytics.
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来源期刊
Mis Quarterly
Mis Quarterly 工程技术-计算机:信息系统
CiteScore
13.30
自引率
4.10%
发文量
36
审稿时长
6-12 weeks
期刊介绍: Journal Name: MIS Quarterly Editorial Objective: The editorial objective of MIS Quarterly is focused on: Enhancing and communicating knowledge related to: Development of IT-based services Management of IT resources Use, impact, and economics of IT with managerial, organizational, and societal implications Addressing professional issues affecting the Information Systems (IS) field as a whole Key Focus Areas: Development of IT-based services Management of IT resources Use, impact, and economics of IT with managerial, organizational, and societal implications Professional issues affecting the IS field as a whole
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