Department of Electrical & Computer Engineering, The University of Texas at San Antonio, San Antonio, TX, United States.
The University of Texas Health Science Center at San Antonio, San Antonio, TX, United States.
JMIR Mhealth Uhealth. 2022 Jun 9;10(6):e35053. doi: 10.2196/35053.
Artificial intelligence (AI) has revolutionized health care delivery in recent years. There is an increase in research for advanced AI techniques, such as deep learning, to build predictive models for the early detection of diseases. Such predictive models leverage mobile health (mHealth) data from wearable sensors and smartphones to discover novel ways for detecting and managing chronic diseases and mental health conditions.
Currently, little is known about the use of AI-powered mHealth (AIM) settings. Therefore, this scoping review aims to map current research on the emerging use of AIM for managing diseases and promoting health. Our objective is to synthesize research in AIM models that have increasingly been used for health care delivery in the last 2 years.
Using Arksey and O'Malley's 5-point framework for conducting scoping reviews, we reviewed AIM literature from the past 2 years in the fields of biomedical technology, AI, and information systems. We searched 3 databases, PubsOnline at INFORMS, e-journal archive at MIS Quarterly, and Association for Computing Machinery (ACM) Digital Library using keywords such as "mobile healthcare," "wearable medical sensors," "smartphones", and "AI." We included AIM articles and excluded technical articles focused only on AI models. We also used the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) technique for identifying articles that represent a comprehensive view of current research in the AIM domain.
We screened 108 articles focusing on developing AIM models for ensuring better health care delivery, detecting diseases early, and diagnosing chronic health conditions, and 37 articles were eligible for inclusion, with 31 of the 37 articles being published last year (76%). Of the included articles, 9 studied AI models to detect serious mental health issues, such as depression and suicidal tendencies, and chronic health conditions, such as sleep apnea and diabetes. Several articles discussed the application of AIM models for remote patient monitoring and disease management. The considered primary health concerns belonged to 3 categories: mental health, physical health, and health promotion and wellness. Moreover, 14 of the 37 articles used AIM applications to research physical health, representing 38% of the total studies. Finally, 28 out of the 37 (76%) studies used proprietary data sets rather than public data sets. We found a lack of research in addressing chronic mental health issues and a lack of publicly available data sets for AIM research.
The application of AIM models for disease detection and management is a growing research domain. These models provide accurate predictions for enabling preventive care on a broader scale in the health care domain. Given the ever-increasing need for remote disease management during the pandemic, recent AI techniques, such as federated learning and explainable AI, can act as a catalyst for increasing the adoption of AIM and enabling secure data sharing across the health care industry.
人工智能(AI)近年来彻底改变了医疗保健服务的提供方式。人们越来越多地研究先进的 AI 技术,例如深度学习,以构建用于疾病早期检测的预测模型。这些预测模型利用来自可穿戴传感器和智能手机的移动健康(mHealth)数据,以发现用于检测和管理慢性病和心理健康状况的新方法。
目前,人们对基于人工智能的移动健康(AIM)设置的使用知之甚少。因此,本范围界定综述旨在绘制当前关于新兴的使用 AIM 来管理疾病和促进健康的研究图谱。我们的目标是综合研究用于在过去 2 年中越来越多地用于医疗保健服务交付的 AIM 模型中的研究。
我们使用 Arksey 和 O'Malley 的进行范围界定综述的 5 点框架,在生物医学技术、AI 和信息系统领域回顾了过去 2 年中有关 AIM 的文献。我们使用了“移动医疗保健”、“可穿戴医疗传感器”、“智能手机”和“AI”等关键字,在 3 个数据库中进行了搜索,包括 INFORMS 的 PubsOnline、MIS Quarterly 的 e-journal archive 和 Association for Computing Machinery(ACM)Digital Library。我们纳入了 AIM 文章,排除了仅关注 AI 模型的技术文章。我们还使用了 PRISMA(系统评价和荟萃分析的首选报告项目)技术来确定代表 AIM 领域当前研究全面视图的文章。
我们筛选了 108 篇重点关注开发 AIM 模型以确保更好的医疗保健服务交付、早期发现疾病和诊断慢性健康状况的文章,其中 37 篇符合纳入标准,其中 31 篇是去年(76%)发表的。在纳入的文章中,有 9 篇研究了 AI 模型,以检测严重的心理健康问题,如抑郁和自杀倾向,以及慢性健康状况,如睡眠呼吸暂停和糖尿病。有几篇文章讨论了 AIM 模型在远程患者监测和疾病管理中的应用。考虑到的主要健康问题属于 3 个类别:心理健康、身体健康和健康促进与健康。此外,14 篇 37 篇(38%)文章的 AIM 应用研究的是身体健康,28 篇(76%)文章使用了专有数据集,而不是公共数据集。我们发现,针对慢性心理健康问题的研究较少,并且针对 AIM 研究的公共数据集也较少。
基于 AI 的模型用于疾病检测和管理的应用是一个不断发展的研究领域。这些模型为更广泛地进行预防性护理提供了准确的预测,从而在医疗保健领域提供了更好的服务。鉴于大流行期间对远程疾病管理的需求不断增加,最近的 AI 技术(如联邦学习和可解释 AI)可以成为推动 AIM 采用和实现医疗保健行业内安全数据共享的催化剂。