Wamala-Andersson Sarah, Richardson Matt X, Landerdahl Stridsberg Sara, Ryan Jillian, Sukums Felix, Goh Yong-Shian
Department of Health and Welfare Technology, School of Health, Care and Social Welfare, Malardalen University, Eskilstuna, Sweden.
University Library, Malardalen University, Eskilstuna, Sweden.
JMIR Res Protoc. 2023 Jan 24;12:e40565. doi: 10.2196/40565.
Precision health is a rapidly developing field, largely driven by the development of artificial intelligence (AI)-related solutions. AI facilitates complex analysis of numerous health data risk assessment, early detection of disease, and initiation of timely preventative health interventions that can be highly tailored to the individual. Despite such promise, ethical concerns arising from the rapid development and use of AI-related technologies have led to development of national and international frameworks to address responsible use of AI.
We aimed to address research gaps and provide new knowledge regarding (1) examples of existing AI applications and what role they play regarding precision health, (2) what salient features can be used to categorize them, (3) what evidence exists for their effects on precision health outcomes, (4) how do these AI applications comply with established ethical and responsible framework, and (5) how these AI applications address equity and social determinants of health (SDOH).
This protocol delineates a state-of-the-art literature review of novel AI-based applications in precision health. Published and unpublished studies were retrieved from 6 electronic databases. Articles included in this study were from the inception of the databases to January 2023. The review will encompass applications that use AI as a primary or supporting system or method when primarily applied for precision health purposes in human populations. It includes any geographical location or setting, including the internet, community-based, and acute or clinical settings, reporting clinical, behavioral, and psychosocial outcomes, including detection-, diagnosis-, promotion-, prevention-, management-, and treatment-related outcomes.
This is step 1 toward a full state-of-the-art literature review with data analyses, results, and discussion of findings, which will also be published. The anticipated consequences on equity from the perspective of SDOH will be analyzed. Keyword cluster relationships and analyses will be visualized to indicate which research foci are leading the development of the field and where research gaps exist. Results will be presented based on the data analysis plan that includes primary analyses, visualization of sources, and secondary analyses. Implications for future research and person-centered public health will be discussed.
Results from the review will potentially guide the continued development of AI applications, future research in reducing the knowledge gaps, and improvement of practice related to precision health. New insights regarding examples of existing AI applications, their salient features, their role regarding precision health, and the existing evidence that exists for their effects on precision health outcomes will be demonstrated. Additionally, a demonstration of how existing AI applications address equity and SDOH and comply with established ethical and responsible frameworks will be provided.
INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): PRR1-10.2196/40565.
精准健康是一个快速发展的领域,很大程度上由人工智能(AI)相关解决方案的发展所推动。人工智能有助于对大量健康数据进行复杂分析、风险评估、疾病早期检测以及启动高度个性化的及时预防性健康干预措施。尽管有如此前景,但人工智能相关技术的快速发展和使用引发的伦理问题,已促使国家和国际框架的制定,以解决人工智能的负责任使用问题。
我们旨在填补研究空白,并提供关于以下方面的新知识:(1)现有人工智能应用的示例及其在精准健康中所起的作用;(2)可用于对其进行分类的显著特征;(3)其对精准健康结果产生影响的证据;(4)这些人工智能应用如何符合既定的伦理和责任框架;(5)这些人工智能应用如何解决健康公平和健康的社会决定因素(SDOH)。
本方案概述了对精准健康中基于人工智能的新型应用的最新文献综述。从6个电子数据库中检索已发表和未发表的研究。本研究纳入的文章涵盖数据库建立之初至2023年1月。该综述将涵盖主要应用于人群精准健康目的时,将人工智能用作主要或支持系统或方法的应用。它包括任何地理位置或环境,包括互联网、社区、急性或临床环境,报告临床、行为和心理社会结果,包括与检测、诊断、促进、预防、管理和治疗相关的结果。
这是迈向全面最新文献综述的第一步,包括数据分析、结果以及对研究结果的讨论,这些也将发表。将从健康的社会决定因素角度分析对公平性的预期影响。关键词聚类关系和分析将可视化,以表明哪些研究重点引领该领域的发展以及存在哪些研究空白。结果将根据数据分析计划呈现,该计划包括初步分析、来源可视化和二次分析。将讨论对未来研究和以人为主的公共卫生的影响。
综述结果可能会指导人工智能应用的持续发展、减少知识差距的未来研究以及与精准健康相关实践的改进。将展示关于现有人工智能应用示例、其显著特征、在精准健康中的作用以及其对精准健康结果产生影响的现有证据的新见解。此外,还将展示现有人工智能应用如何解决公平性和健康的社会决定因素问题以及如何符合既定的伦理和责任框架。
国际注册报告识别号(IRRID):PRR1-10.2196/40565