A Framework for AI-enabled Proactive mHealth with Automated Decision-making for a User's Context

Muhammad Sulaiman, Anne Håkansson, Randi Karlsen
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Abstract

Health promotion is to enable people to take control over their health. Digital health with mHealth empowers users to establish proactive health, ubiquitously. The users shall have increased control over their health to improve their life by being proactive. To develop proactive health with the principles of prediction, prevention, and ubiquitous health, artificial intelligence with mHealth can play a pivotal role. There are various challenges for establishing proactive mHealth. For example, the system must be adaptive and provide timely interventions by considering the uniqueness of the user. The context of the user is also highly relevant for proactive mHealth. The context provides parameters as input along with information to formulate the current state of the user. Automated decision-making is significant with user-level decision-making as it enables decisions to promote well-being by technological means without human involvement. This paper presents a design framework of AI-enabled proactive mHealth that includes automated decision-making with predictive analytics, Just-in-time adaptive interventions and a P5 approach to mHealth. The significance of user-level decision-making for automated decision-making is presented. Furthermore, the paper provides a holistic view of the user's context with profile and characteristics. The paper also discusses the need for multiple parameters as inputs, and the identification of sources e.g., wearables, sensors, and other resources, with the challenges in the implementation of the framework. Finally, a proof-of-concept based on the framework provides design and implementation steps, architecture, goals, and feedback process. The framework shall provide the basis for the further development of AI-enabled proactive mHealth.
一个支持人工智能的主动移动医疗框架,具有针对用户上下文的自动决策
促进健康是为了使人们能够控制自己的健康。数字健康与移动健康授权用户建立主动健康,无处不在。使用者应加强对自身健康的控制,积极主动地改善生活。为了发展具有预测、预防和无处不在的健康原则的主动健康,具有移动健康的人工智能可以发挥关键作用。建立主动移动医疗存在各种挑战。例如,系统必须是自适应的,并通过考虑用户的独特性提供及时的干预。用户的背景也与主动移动健康高度相关。上下文提供参数作为输入和信息,以确定用户的当前状态。自动化决策对于用户级决策具有重要意义,因为它使决策能够通过技术手段促进福祉,而无需人工参与。本文提出了一个基于人工智能的主动移动医疗的设计框架,其中包括带有预测分析的自动决策、即时适应性干预和移动医疗的P5方法。提出了用户级决策对自动化决策的重要意义。此外,本文提供了一个整体的视图,用户的背景资料和特征。本文还讨论了对多个参数作为输入的需求,以及可穿戴设备、传感器和其他资源等来源的识别,以及框架实施中的挑战。最后,基于框架的概念验证提供了设计和实现步骤、体系结构、目标和反馈过程。该框架将为人工智能主动移动医疗的进一步发展提供基础。
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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