在工作场所健康促进和预防中使用人工智能的方法:系统性范围审查。

JMIR AI Pub Date : 2024-08-20 DOI:10.2196/53506
Martin Lange, Alexandra Löwe, Ina Kayser, Andrea Schaller
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引用次数: 0

摘要

背景:人工智能(AI)是各种算法和快速新兴技术的总称,在工作场所健康促进和预防(WHPP)方面具有巨大潜力。工作场所健康促进和预防干预措施旨在通过行为和组织措施,或通过最大限度地减少工作场所相关疾病和相关风险因素的负担,改善人们的健康和福祉。虽然人工智能一直是公共卫生或生物医学等其他健康相关领域的研究重点,但人工智能向 WHPP 研究的转变尚未得到系统的调查:本系统性范围界定综述旨在全面评估当前人工智能在世界卫生组织世界人口方案中的应用概况。研究结果将用于指明未来的研究方向。我们提出了以下研究问题:(1) 在 WHPP 背景下,有关人工智能算法和技术的研究有哪些特点;(2) 人工智能算法和技术涉及哪些具体的 WHPP 领域(预防、行为和组织方法);(3) 什么样的干预措施会产生什么样的结果?2023 年 7 月,我们在 PubMed、IEEE 和 ACM 这三个学术数据库中进行了一次系统的范围性文献综述(PRISMA-ScR),搜索 2000 年 1 月至 2023 年 12 月间发表的文章。研究必须:1)经过同行评议;2)用英语撰写;3)关注任何基于人工智能的算法或技术;4)在世界卫生组织世界人口政策背景下进行;5)相关领域。研究设计、人工智能算法和技术、WHPP领域以及PICO框架等信息均由Rayyan进行盲法提取并汇总:结果:共纳入 10 项研究。风险预防和建模是确定最多的 WHPP 领域(n=6),其次是行为健康促进(n=4)和组织健康促进(n=1)。有四项研究侧重于心理健康。大多数人工智能算法以机器学习为基础,有三项研究使用了综合深度学习算法。人工智能算法和技术主要在智能手机应用中实施(例如,以聊天机器人的形式),或使用智能手机作为数据源(例如,GPS)。行为方法从 8 周到 12 周不等,并与对照组进行了比较。三项研究评估了人工智能模型或框架的稳健性和准确性:尽管人工智能在与健康相关的研究中越来越受到关注,但综述显示,人工智能在 WHPP 中的应用研究还很少。我们的研究结果表明,人工智能有望在 WHPP 中实现个性化和风险预测,但目前的研究并未涵盖 WHPP 的范围。除此以外,未来的研究将受益于WHPP所有领域的广泛研究、纵向数据和报告指南:于2023年7月5日在开放科学框架[1]注册。
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Approaches for the Use of AI in Workplace Health Promotion and Prevention: Systematic Scoping Review.

Background: Artificial intelligence (AI) is an umbrella term for various algorithms and rapidly emerging technologies with huge potential for workplace health promotion and prevention (WHPP). WHPP interventions aim to improve people's health and well-being through behavioral and organizational measures or by minimizing the burden of workplace-related diseases and associated risk factors. While AI has been the focus of research in other health-related fields, such as public health or biomedicine, the transition of AI into WHPP research has yet to be systematically investigated.

Objective: The systematic scoping review aims to comprehensively assess an overview of the current use of AI in WHPP. The results will be then used to point to future research directions. The following research questions were derived: (1) What are the study characteristics of studies on AI algorithms and technologies in the context of WHPP? (2) What specific WHPP fields (prevention, behavioral, and organizational approaches) were addressed by the AI algorithms and technologies? (3) What kind of interventions lead to which outcomes?

Methods: A systematic scoping literature review (PRISMA-ScR [Preferred Reporting Items for Systematic Reviews and Meta-Analyses extension for Scoping Reviews]) was conducted in the 3 academic databases PubMed, Institute of Electrical and Electronics Engineers, and Association for Computing Machinery in July 2023, searching for papers published between January 2000 and December 2023. Studies needed to be (1) peer-reviewed, (2) written in English, and (3) focused on any AI-based algorithm or technology that (4) were conducted in the context of WHPP or (5) an associated field. Information on study design, AI algorithms and technologies, WHPP fields, and the patient or population, intervention, comparison, and outcomes framework were extracted blindly with Rayyan and summarized.

Results: A total of 10 studies were included. Risk prevention and modeling were the most identified WHPP fields (n=6), followed by behavioral health promotion (n=4) and organizational health promotion (n=1). Further, 4 studies focused on mental health. Most AI algorithms were machine learning-based, and 3 studies used combined deep learning algorithms. AI algorithms and technologies were primarily implemented in smartphone apps (eg, in the form of a chatbot) or used the smartphone as a data source (eg, Global Positioning System). Behavioral approaches ranged from 8 to 12 weeks and were compared to control groups. Additionally, 3 studies evaluated the robustness and accuracy of an AI model or framework.

Conclusions: Although AI has caught increasing attention in health-related research, the review reveals that AI in WHPP is marginally investigated. Our results indicate that AI is promising for individualization and risk prediction in WHPP, but current research does not cover the scope of WHPP. Beyond that, future research will profit from an extended range of research in all fields of WHPP, longitudinal data, and reporting guidelines.

Trial registration: OSF Registries osf.io/bfswp; https://osf.io/bfswp.

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